1404 lines
45 KiB
Python
1404 lines
45 KiB
Python
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"""
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---------------------------------------------------------------------
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.. sectionauthor:: Juan Arias de Reyna <arias@us.es>
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This module implements zeta-related functions using the Riemann-Siegel
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expansion: zeta_offline(s,k=0)
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* coef(J, eps): Need in the computation of Rzeta(s,k)
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* Rzeta_simul(s, der=0) computes Rzeta^(k)(s) and Rzeta^(k)(1-s) simultaneously
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for 0 <= k <= der. Used by zeta_offline and z_offline
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* Rzeta_set(s, derivatives) computes Rzeta^(k)(s) for given derivatives, used by
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z_half(t,k) and zeta_half
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* z_offline(w,k): Z(w) and its derivatives of order k <= 4
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* z_half(t,k): Z(t) (Riemann Siegel function) and its derivatives of order k <= 4
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* zeta_offline(s): zeta(s) and its derivatives of order k<= 4
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* zeta_half(1/2+it,k): zeta(s) and its derivatives of order k<= 4
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* rs_zeta(s,k=0) Computes zeta^(k)(s) Unifies zeta_half and zeta_offline
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* rs_z(w,k=0) Computes Z^(k)(w) Unifies z_offline and z_half
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----------------------------------------------------------------------
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This program uses Riemann-Siegel expansion even to compute
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zeta(s) on points s = sigma + i t with sigma arbitrary not
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necessarily equal to 1/2.
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It is founded on a new deduction of the formula, with rigorous
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and sharp bounds for the terms and rest of this expansion.
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More information on the papers:
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J. Arias de Reyna, High Precision Computation of Riemann's
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Zeta Function by the Riemann-Siegel Formula I, II
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We refer to them as I, II.
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In them we shall find detailed explanation of all the
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procedure.
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The program uses Riemann-Siegel expansion.
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This is useful when t is big, ( say t > 10000 ).
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The precision is limited, roughly it can compute zeta(sigma+it)
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with an error less than exp(-c t) for some constant c depending
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on sigma. The program gives an error when the Riemann-Siegel
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formula can not compute to the wanted precision.
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"""
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import math
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class RSCache(object):
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def __init__(ctx):
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ctx._rs_cache = [0, 10, {}, {}]
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from .functions import defun
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#-------------------------------------------------------------------------------#
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# #
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# coef(ctx, J, eps, _cache=[0, 10, {} ] ) #
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# #
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#-------------------------------------------------------------------------------#
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# This function computes the coefficients c[n] defined on (I, equation (47))
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# but see also (II, section 3.14).
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#
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# Since these coefficients are very difficult to compute we save the values
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# in a cache. So if we compute several values of the functions Rzeta(s) for
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# near values of s, we do not recompute these coefficients.
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#
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# c[n] are the Taylor coefficients of the function:
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#
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# F(z):= (exp(pi*j*(z*z/2+3/8))-j* sqrt(2) cos(pi*z/2))/(2*cos(pi *z))
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#
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#
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def _coef(ctx, J, eps):
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r"""
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Computes the coefficients `c_n` for `0\le n\le 2J` with error less than eps
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**Definition**
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The coefficients c_n are defined by
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.. math ::
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\begin{equation}
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F(z)=\frac{e^{\pi i
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\bigl(\frac{z^2}{2}+\frac38\bigr)}-i\sqrt{2}\cos\frac{\pi}{2}z}{2\cos\pi
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z}=\sum_{n=0}^\infty c_{2n} z^{2n}
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\end{equation}
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they are computed applying the relation
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.. math ::
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\begin{multline}
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c_{2n}=-\frac{i}{\sqrt{2}}\Bigl(\frac{\pi}{2}\Bigr)^{2n}
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\sum_{k=0}^n\frac{(-1)^k}{(2k)!}
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2^{2n-2k}\frac{(-1)^{n-k}E_{2n-2k}}{(2n-2k)!}+\\
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+e^{3\pi i/8}\sum_{j=0}^n(-1)^j\frac{
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E_{2j}}{(2j)!}\frac{i^{n-j}\pi^{n+j}}{(n-j)!2^{n-j+1}}.
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\end{multline}
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"""
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newJ = J+2 # compute more coefficients that are needed
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neweps6 = eps/2. # compute with a slight more precision that are needed
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# PREPARATION FOR THE COMPUTATION OF V(N) AND W(N)
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# See II Section 3.16
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#
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# Computing the exponent wpvw of the error II equation (81)
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wpvw = max(ctx.mag(10*(newJ+3)), 4*newJ+5-ctx.mag(neweps6))
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# Preparation of Euler numbers (we need until the 2*RS_NEWJ)
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E = ctx._eulernum(2*newJ)
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# Now we have in the cache all the needed Euler numbers.
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#
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# Computing the powers of pi
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#
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# We need to compute the powers pi**n for 1<= n <= 2*J
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# with relative error less than 2**(-wpvw)
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# it is easy to show that this is obtained
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# taking wppi as the least d with
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# 2**d>40*J and 2**d> 4.24 *newJ + 2**wpvw
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# In II Section 3.9 we need also that
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# wppi > wptcoef[0], and that the powers
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# here computed 0<= k <= 2*newJ are more
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# than those needed there that are 2*L-2.
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# so we need J >= L this will be checked
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# before computing tcoef[]
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wppi = max(ctx.mag(40*newJ), ctx.mag(newJ)+3 +wpvw)
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ctx.prec = wppi
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pipower = {}
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pipower[0] = ctx.one
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pipower[1] = ctx.pi
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for n in range(2,2*newJ+1):
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pipower[n] = pipower[n-1]*ctx.pi
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# COMPUTING THE COEFFICIENTS v(n) AND w(n)
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# see II equation (61) and equations (81) and (82)
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ctx.prec = wpvw+2
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v={}
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w={}
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for n in range(0,newJ+1):
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va = (-1)**n * ctx._eulernum(2*n)
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va = ctx.mpf(va)/ctx.fac(2*n)
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v[n]=va*pipower[2*n]
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for n in range(0,2*newJ+1):
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wa = ctx.one/ctx.fac(n)
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wa=wa/(2**n)
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w[n]=wa*pipower[n]
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# COMPUTATION OF THE CONVOLUTIONS RS_P1 AND RS_P2
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# See II Section 3.16
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ctx.prec = 15
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wpp1a = 9 - ctx.mag(neweps6)
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P1 = {}
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for n in range(0,newJ+1):
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ctx.prec = 15
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wpp1 = max(ctx.mag(10*(n+4)),4*n+wpp1a)
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ctx.prec = wpp1
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sump = 0
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for k in range(0,n+1):
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sump += ((-1)**k) * v[k]*w[2*n-2*k]
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P1[n]=((-1)**(n+1))*ctx.j*sump
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P2={}
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for n in range(0,newJ+1):
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ctx.prec = 15
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wpp2 = max(ctx.mag(10*(n+4)),4*n+wpp1a)
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ctx.prec = wpp2
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sump = 0
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for k in range(0,n+1):
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sump += (ctx.j**(n-k)) * v[k]*w[n-k]
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P2[n]=sump
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# COMPUTING THE COEFFICIENTS c[2n]
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# See II Section 3.14
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ctx.prec = 15
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wpc0 = 5 - ctx.mag(neweps6)
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wpc = max(6,4*newJ+wpc0)
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ctx.prec = wpc
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mu = ctx.sqrt(ctx.mpf('2'))/2
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nu = ctx.expjpi(3./8)/2
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c={}
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for n in range(0,newJ):
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ctx.prec = 15
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wpc = max(6,4*n+wpc0)
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ctx.prec = wpc
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c[2*n] = mu*P1[n]+nu*P2[n]
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for n in range(1,2*newJ,2):
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c[n] = 0
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return [newJ, neweps6, c, pipower]
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def coef(ctx, J, eps):
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_cache = ctx._rs_cache
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if J <= _cache[0] and eps >= _cache[1]:
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return _cache[2], _cache[3]
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orig = ctx._mp.prec
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try:
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data = _coef(ctx._mp, J, eps)
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finally:
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ctx._mp.prec = orig
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if ctx is not ctx._mp:
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data[2] = dict((k,ctx.convert(v)) for (k,v) in data[2].items())
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data[3] = dict((k,ctx.convert(v)) for (k,v) in data[3].items())
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ctx._rs_cache[:] = data
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return ctx._rs_cache[2], ctx._rs_cache[3]
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#-------------------------------------------------------------------------------#
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# #
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# Rzeta_simul(s,k=0) #
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# #
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#-------------------------------------------------------------------------------#
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# This function return a list with the values:
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# Rzeta(sigma+it), conj(Rzeta(1-sigma+it)),Rzeta'(sigma+it), conj(Rzeta'(1-sigma+it)),
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# .... , Rzeta^{(k)}(sigma+it), conj(Rzeta^{(k)}(1-sigma+it))
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#
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# Useful to compute the function zeta(s) and Z(w) or its derivatives.
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#
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def aux_M_Fp(ctx, xA, xeps4, a, xB1, xL):
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# COMPUTING M NUMBER OF DERIVATIVES Fp[m] TO COMPUTE
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# See II Section 3.11 equations (47) and (48)
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aux1 = 126.0657606*xA/xeps4 # 126.06.. = 316/sqrt(2*pi)
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aux1 = ctx.ln(aux1)
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aux2 = (2*ctx.ln(ctx.pi)+ctx.ln(xB1)+ctx.ln(a))/3 -ctx.ln(2*ctx.pi)/2
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m = 3*xL-3
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aux3= (ctx.loggamma(m+1)-ctx.loggamma(m/3.0+2))/2 -ctx.loggamma((m+1)/2.)
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while((aux1 < m*aux2+ aux3)and (m>1)):
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m = m - 1
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aux3 = (ctx.loggamma(m+1)-ctx.loggamma(m/3.0+2))/2 -ctx.loggamma((m+1)/2.)
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xM = m
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return xM
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def aux_J_needed(ctx, xA, xeps4, a, xB1, xM):
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# DETERMINATION OF J THE NUMBER OF TERMS NEEDED
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# IN THE TAYLOR SERIES OF F.
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# See II Section 3.11 equation (49))
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# Only determine one
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h1 = xeps4/(632*xA)
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h2 = xB1*a * 126.31337419529260248 # = pi^2*e^2*sqrt(3)
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h2 = h1 * ctx.power((h2/xM**2),(xM-1)/3) / xM
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h3 = min(h1,h2)
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return h3
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def Rzeta_simul(ctx, s, der=0):
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# First we take the value of ctx.prec
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wpinitial = ctx.prec
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# INITIALIZATION
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# Take the real and imaginary part of s
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t = ctx._im(s)
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xsigma = ctx._re(s)
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ysigma = 1 - xsigma
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# Now compute several parameter that appear on the program
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ctx.prec = 15
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a = ctx.sqrt(t/(2*ctx.pi))
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xasigma = a ** xsigma
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yasigma = a ** ysigma
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# We need a simple bound A1 < asigma (see II Section 3.1 and 3.3)
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xA1=ctx.power(2, ctx.mag(xasigma)-1)
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yA1=ctx.power(2, ctx.mag(yasigma)-1)
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# We compute various epsilon's (see II end of Section 3.1)
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eps = ctx.power(2, -wpinitial)
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eps1 = eps/6.
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xeps2 = eps * xA1/3.
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yeps2 = eps * yA1/3.
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# COMPUTING SOME COEFFICIENTS THAT DEPENDS
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# ON sigma
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# constant b and c (see I Theorem 2 formula (26) )
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# coefficients A and B1 (see I Section 6.1 equation (50))
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#
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# here we not need high precision
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ctx.prec = 15
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if xsigma > 0:
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xb = 2.
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xc = math.pow(9,xsigma)/4.44288
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# 4.44288 =(math.sqrt(2)*math.pi)
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xA = math.pow(9,xsigma)
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xB1 = 1
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else:
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xb = 2.25158 # math.sqrt( (3-2* math.log(2))*math.pi )
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xc = math.pow(2,-xsigma)/4.44288
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xA = math.pow(2,-xsigma)
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xB1 = 1.10789 # = 2*sqrt(1-log(2))
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if(ysigma > 0):
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yb = 2.
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yc = math.pow(9,ysigma)/4.44288
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# 4.44288 =(math.sqrt(2)*math.pi)
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yA = math.pow(9,ysigma)
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yB1 = 1
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else:
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yb = 2.25158 # math.sqrt( (3-2* math.log(2))*math.pi )
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yc = math.pow(2,-ysigma)/4.44288
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yA = math.pow(2,-ysigma)
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yB1 = 1.10789 # = 2*sqrt(1-log(2))
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# COMPUTING L THE NUMBER OF TERMS NEEDED IN THE RIEMANN-SIEGEL
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# CORRECTION
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# See II Section 3.2
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ctx.prec = 15
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xL = 1
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while 3*xc*ctx.gamma(xL*0.5) * ctx.power(xb*a,-xL) >= xeps2:
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xL = xL+1
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xL = max(2,xL)
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yL = 1
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while 3*yc*ctx.gamma(yL*0.5) * ctx.power(yb*a,-yL) >= yeps2:
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yL = yL+1
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yL = max(2,yL)
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# The number L has to satify some conditions.
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# If not RS can not compute Rzeta(s) with the prescribed precision
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# (see II, Section 3.2 condition (20) ) and
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# (II, Section 3.3 condition (22) ). Also we have added
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# an additional technical condition in Section 3.17 Proposition 17
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if ((3*xL >= 2*a*a/25.) or (3*xL+2+xsigma<0) or (abs(xsigma) > a/2.) or \
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(3*yL >= 2*a*a/25.) or (3*yL+2+ysigma<0) or (abs(ysigma) > a/2.)):
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ctx.prec = wpinitial
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raise NotImplementedError("Riemann-Siegel can not compute with such precision")
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# We take the maximum of the two values
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L = max(xL, yL)
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# INITIALIZATION (CONTINUATION)
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#
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# eps3 is the constant defined on (II, Section 3.5 equation (27) )
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# each term of the RS correction must be computed with error <= eps3
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xeps3 = xeps2/(4*xL)
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yeps3 = yeps2/(4*yL)
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# eps4 is defined on (II Section 3.6 equation (30) )
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# each component of the formula (II Section 3.6 equation (29) )
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# must be computed with error <= eps4
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xeps4 = xeps3/(3*xL)
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yeps4 = yeps3/(3*yL)
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# COMPUTING M NUMBER OF DERIVATIVES Fp[m] TO COMPUTE
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xM = aux_M_Fp(ctx, xA, xeps4, a, xB1, xL)
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yM = aux_M_Fp(ctx, yA, yeps4, a, yB1, yL)
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M = max(xM, yM)
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# COMPUTING NUMBER OF TERMS J NEEDED
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h3 = aux_J_needed(ctx, xA, xeps4, a, xB1, xM)
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h4 = aux_J_needed(ctx, yA, yeps4, a, yB1, yM)
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h3 = min(h3,h4)
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J = 12
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jvalue = (2*ctx.pi)**J / ctx.gamma(J+1)
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while jvalue > h3:
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J = J+1
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jvalue = (2*ctx.pi)*jvalue/J
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# COMPUTING eps5[m] for 1 <= m <= 21
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# See II Section 10 equation (43)
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# We choose the minimum of the two possibilities
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eps5={}
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xforeps5 = math.pi*math.pi*xB1*a
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yforeps5 = math.pi*math.pi*yB1*a
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for m in range(0,22):
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xaux1 = math.pow(xforeps5, m/3)/(316.*xA)
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yaux1 = math.pow(yforeps5, m/3)/(316.*yA)
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aux1 = min(xaux1, yaux1)
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aux2 = ctx.gamma(m+1)/ctx.gamma(m/3.0+0.5)
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aux2 = math.sqrt(aux2)
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eps5[m] = (aux1*aux2*min(xeps4,yeps4))
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|
||
|
# COMPUTING wpfp
|
||
|
# See II Section 3.13 equation (59)
|
||
|
twenty = min(3*L-3, 21)+1
|
||
|
aux = 6812*J
|
||
|
wpfp = ctx.mag(44*J)
|
||
|
for m in range(0,twenty):
|
||
|
wpfp = max(wpfp, ctx.mag(aux*ctx.gamma(m+1)/eps5[m]))
|
||
|
|
||
|
# COMPUTING N AND p
|
||
|
# See II Section
|
||
|
ctx.prec = wpfp + ctx.mag(t)+20
|
||
|
a = ctx.sqrt(t/(2*ctx.pi))
|
||
|
N = ctx.floor(a)
|
||
|
p = 1-2*(a-N)
|
||
|
|
||
|
# now we get a rounded version of p
|
||
|
# to the precision wpfp
|
||
|
# this possibly is not necessary
|
||
|
num=ctx.floor(p*(ctx.mpf('2')**wpfp))
|
||
|
difference = p * (ctx.mpf('2')**wpfp)-num
|
||
|
if (difference < 0.5):
|
||
|
num = num
|
||
|
else:
|
||
|
num = num+1
|
||
|
p = ctx.convert(num * (ctx.mpf('2')**(-wpfp)))
|
||
|
|
||
|
# COMPUTING THE COEFFICIENTS c[n] = cc[n]
|
||
|
# We shall use the notation cc[n], since there is
|
||
|
# a constant that is called c
|
||
|
# See II Section 3.14
|
||
|
# We compute the coefficients and also save then in a
|
||
|
# cache. The bulk of the computation is passed to
|
||
|
# the function coef()
|
||
|
#
|
||
|
# eps6 is defined in II Section 3.13 equation (58)
|
||
|
eps6 = ctx.power(ctx.convert(2*ctx.pi), J)/(ctx.gamma(J+1)*3*J)
|
||
|
|
||
|
# Now we compute the coefficients
|
||
|
cc = {}
|
||
|
cont = {}
|
||
|
cont, pipowers = coef(ctx, J, eps6)
|
||
|
cc=cont.copy() # we need a copy since we have to change his values.
|
||
|
Fp={} # this is the adequate locus of this
|
||
|
for n in range(M, 3*L-2):
|
||
|
Fp[n] = 0
|
||
|
Fp={}
|
||
|
ctx.prec = wpfp
|
||
|
for m in range(0,M+1):
|
||
|
sumP = 0
|
||
|
for k in range(2*J-m-1,-1,-1):
|
||
|
sumP = (sumP * p)+ cc[k]
|
||
|
Fp[m] = sumP
|
||
|
# preparation of the new coefficients
|
||
|
for k in range(0,2*J-m-1):
|
||
|
cc[k] = (k+1)* cc[k+1]
|
||
|
|
||
|
# COMPUTING THE NUMBERS xd[u,n,k], yd[u,n,k]
|
||
|
# See II Section 3.17
|
||
|
#
|
||
|
# First we compute the working precisions xwpd[k]
|
||
|
# Se II equation (92)
|
||
|
xwpd={}
|
||
|
d1 = max(6,ctx.mag(40*L*L))
|
||
|
xd2 = 13+ctx.mag((1+abs(xsigma))*xA)-ctx.mag(xeps4)-1
|
||
|
xconst = ctx.ln(8/(ctx.pi*ctx.pi*a*a*xB1*xB1)) /2
|
||
|
for n in range(0,L):
|
||
|
xd3 = ctx.mag(ctx.sqrt(ctx.gamma(n-0.5)))-ctx.floor(n*xconst)+xd2
|
||
|
xwpd[n]=max(xd3,d1)
|
||
|
|
||
|
# procedure of II Section 3.17
|
||
|
ctx.prec = xwpd[1]+10
|
||
|
xpsigma = 1-(2*xsigma)
|
||
|
xd = {}
|
||
|
xd[0,0,-2]=0; xd[0,0,-1]=0; xd[0,0,0]=1; xd[0,0,1]=0
|
||
|
xd[0,-1,-2]=0; xd[0,-1,-1]=0; xd[0,-1,0]=1; xd[0,-1,1]=0
|
||
|
for n in range(1,L):
|
||
|
ctx.prec = xwpd[n]+10
|
||
|
for k in range(0,3*n//2+1):
|
||
|
m = 3*n-2*k
|
||
|
if(m!=0):
|
||
|
m1 = ctx.one/m
|
||
|
c1= m1/4
|
||
|
c2=(xpsigma*m1)/2
|
||
|
c3=-(m+1)
|
||
|
xd[0,n,k]=c3*xd[0,n-1,k-2]+c1*xd[0,n-1,k]+c2*xd[0,n-1,k-1]
|
||
|
else:
|
||
|
xd[0,n,k]=0
|
||
|
for r in range(0,k):
|
||
|
add=xd[0,n,r]*(ctx.mpf('1.0')*ctx.fac(2*k-2*r)/ctx.fac(k-r))
|
||
|
xd[0,n,k] -= ((-1)**(k-r))*add
|
||
|
xd[0,n,-2]=0; xd[0,n,-1]=0; xd[0,n,3*n//2+1]=0
|
||
|
for mu in range(-2,der+1):
|
||
|
for n in range(-2,L):
|
||
|
for k in range(-3,max(1,3*n//2+2)):
|
||
|
if( (mu<0)or (n<0) or(k<0)or (k>3*n//2)):
|
||
|
xd[mu,n,k] = 0
|
||
|
for mu in range(1,der+1):
|
||
|
for n in range(0,L):
|
||
|
ctx.prec = xwpd[n]+10
|
||
|
for k in range(0,3*n//2+1):
|
||
|
aux=(2*mu-2)*xd[mu-2,n-2,k-3]+2*(xsigma+n-2)*xd[mu-1,n-2,k-3]
|
||
|
xd[mu,n,k] = aux - xd[mu-1,n-1,k-1]
|
||
|
|
||
|
# Now we compute the working precisions ywpd[k]
|
||
|
# Se II equation (92)
|
||
|
ywpd={}
|
||
|
d1 = max(6,ctx.mag(40*L*L))
|
||
|
yd2 = 13+ctx.mag((1+abs(ysigma))*yA)-ctx.mag(yeps4)-1
|
||
|
yconst = ctx.ln(8/(ctx.pi*ctx.pi*a*a*yB1*yB1)) /2
|
||
|
for n in range(0,L):
|
||
|
yd3 = ctx.mag(ctx.sqrt(ctx.gamma(n-0.5)))-ctx.floor(n*yconst)+yd2
|
||
|
ywpd[n]=max(yd3,d1)
|
||
|
|
||
|
# procedure of II Section 3.17
|
||
|
ctx.prec = ywpd[1]+10
|
||
|
ypsigma = 1-(2*ysigma)
|
||
|
yd = {}
|
||
|
yd[0,0,-2]=0; yd[0,0,-1]=0; yd[0,0,0]=1; yd[0,0,1]=0
|
||
|
yd[0,-1,-2]=0; yd[0,-1,-1]=0; yd[0,-1,0]=1; yd[0,-1,1]=0
|
||
|
for n in range(1,L):
|
||
|
ctx.prec = ywpd[n]+10
|
||
|
for k in range(0,3*n//2+1):
|
||
|
m = 3*n-2*k
|
||
|
if(m!=0):
|
||
|
m1 = ctx.one/m
|
||
|
c1= m1/4
|
||
|
c2=(ypsigma*m1)/2
|
||
|
c3=-(m+1)
|
||
|
yd[0,n,k]=c3*yd[0,n-1,k-2]+c1*yd[0,n-1,k]+c2*yd[0,n-1,k-1]
|
||
|
else:
|
||
|
yd[0,n,k]=0
|
||
|
for r in range(0,k):
|
||
|
add=yd[0,n,r]*(ctx.mpf('1.0')*ctx.fac(2*k-2*r)/ctx.fac(k-r))
|
||
|
yd[0,n,k] -= ((-1)**(k-r))*add
|
||
|
yd[0,n,-2]=0; yd[0,n,-1]=0; yd[0,n,3*n//2+1]=0
|
||
|
|
||
|
for mu in range(-2,der+1):
|
||
|
for n in range(-2,L):
|
||
|
for k in range(-3,max(1,3*n//2+2)):
|
||
|
if( (mu<0)or (n<0) or(k<0)or (k>3*n//2)):
|
||
|
yd[mu,n,k] = 0
|
||
|
for mu in range(1,der+1):
|
||
|
for n in range(0,L):
|
||
|
ctx.prec = ywpd[n]+10
|
||
|
for k in range(0,3*n//2+1):
|
||
|
aux=(2*mu-2)*yd[mu-2,n-2,k-3]+2*(ysigma+n-2)*yd[mu-1,n-2,k-3]
|
||
|
yd[mu,n,k] = aux - yd[mu-1,n-1,k-1]
|
||
|
|
||
|
# COMPUTING THE COEFFICIENTS xtcoef[k,l]
|
||
|
# See II Section 3.9
|
||
|
#
|
||
|
# computing the needed wp
|
||
|
xwptcoef={}
|
||
|
xwpterm={}
|
||
|
ctx.prec = 15
|
||
|
c1 = ctx.mag(40*(L+2))
|
||
|
xc2 = ctx.mag(68*(L+2)*xA)
|
||
|
xc4 = ctx.mag(xB1*a*math.sqrt(ctx.pi))-1
|
||
|
for k in range(0,L):
|
||
|
xc3 = xc2 - k*xc4+ctx.mag(ctx.fac(k+0.5))/2.
|
||
|
xwptcoef[k] = (max(c1,xc3-ctx.mag(xeps4)+1)+1 +20)*1.5
|
||
|
xwpterm[k] = (max(c1,ctx.mag(L+2)+xc3-ctx.mag(xeps3)+1)+1 +20)
|
||
|
ywptcoef={}
|
||
|
ywpterm={}
|
||
|
ctx.prec = 15
|
||
|
c1 = ctx.mag(40*(L+2))
|
||
|
yc2 = ctx.mag(68*(L+2)*yA)
|
||
|
yc4 = ctx.mag(yB1*a*math.sqrt(ctx.pi))-1
|
||
|
for k in range(0,L):
|
||
|
yc3 = yc2 - k*yc4+ctx.mag(ctx.fac(k+0.5))/2.
|
||
|
ywptcoef[k] = ((max(c1,yc3-ctx.mag(yeps4)+1))+10)*1.5
|
||
|
ywpterm[k] = (max(c1,ctx.mag(L+2)+yc3-ctx.mag(yeps3)+1)+1)+10
|
||
|
|
||
|
# check of power of pi
|
||
|
# computing the fortcoef[mu,k,ell]
|
||
|
xfortcoef={}
|
||
|
for mu in range(0,der+1):
|
||
|
for k in range(0,L):
|
||
|
for ell in range(-2,3*k//2+1):
|
||
|
xfortcoef[mu,k,ell]=0
|
||
|
for mu in range(0,der+1):
|
||
|
for k in range(0,L):
|
||
|
ctx.prec = xwptcoef[k]
|
||
|
for ell in range(0,3*k//2+1):
|
||
|
xfortcoef[mu,k,ell]=xd[mu,k,ell]*Fp[3*k-2*ell]/pipowers[2*k-ell]
|
||
|
xfortcoef[mu,k,ell]=xfortcoef[mu,k,ell]/((2*ctx.j)**ell)
|
||
|
|
||
|
def trunc_a(t):
|
||
|
wp = ctx.prec
|
||
|
ctx.prec = wp + 2
|
||
|
aa = ctx.sqrt(t/(2*ctx.pi))
|
||
|
ctx.prec = wp
|
||
|
return aa
|
||
|
|
||
|
# computing the tcoef[k,ell]
|
||
|
xtcoef={}
|
||
|
for mu in range(0,der+1):
|
||
|
for k in range(0,L):
|
||
|
for ell in range(-2,3*k//2+1):
|
||
|
xtcoef[mu,k,ell]=0
|
||
|
ctx.prec = max(xwptcoef[0],ywptcoef[0])+3
|
||
|
aa= trunc_a(t)
|
||
|
la = -ctx.ln(aa)
|
||
|
|
||
|
for chi in range(0,der+1):
|
||
|
for k in range(0,L):
|
||
|
ctx.prec = xwptcoef[k]
|
||
|
for ell in range(0,3*k//2+1):
|
||
|
xtcoef[chi,k,ell] =0
|
||
|
for mu in range(0, chi+1):
|
||
|
tcoefter=ctx.binomial(chi,mu)*ctx.power(la,mu)*xfortcoef[chi-mu,k,ell]
|
||
|
xtcoef[chi,k,ell] += tcoefter
|
||
|
|
||
|
# COMPUTING THE COEFFICIENTS ytcoef[k,l]
|
||
|
# See II Section 3.9
|
||
|
#
|
||
|
# computing the needed wp
|
||
|
# check of power of pi
|
||
|
# computing the fortcoef[mu,k,ell]
|
||
|
yfortcoef={}
|
||
|
for mu in range(0,der+1):
|
||
|
for k in range(0,L):
|
||
|
for ell in range(-2,3*k//2+1):
|
||
|
yfortcoef[mu,k,ell]=0
|
||
|
for mu in range(0,der+1):
|
||
|
for k in range(0,L):
|
||
|
ctx.prec = ywptcoef[k]
|
||
|
for ell in range(0,3*k//2+1):
|
||
|
yfortcoef[mu,k,ell]=yd[mu,k,ell]*Fp[3*k-2*ell]/pipowers[2*k-ell]
|
||
|
yfortcoef[mu,k,ell]=yfortcoef[mu,k,ell]/((2*ctx.j)**ell)
|
||
|
# computing the tcoef[k,ell]
|
||
|
ytcoef={}
|
||
|
for chi in range(0,der+1):
|
||
|
for k in range(0,L):
|
||
|
for ell in range(-2,3*k//2+1):
|
||
|
ytcoef[chi,k,ell]=0
|
||
|
for chi in range(0,der+1):
|
||
|
for k in range(0,L):
|
||
|
ctx.prec = ywptcoef[k]
|
||
|
for ell in range(0,3*k//2+1):
|
||
|
ytcoef[chi,k,ell] =0
|
||
|
for mu in range(0, chi+1):
|
||
|
tcoefter=ctx.binomial(chi,mu)*ctx.power(la,mu)*yfortcoef[chi-mu,k,ell]
|
||
|
ytcoef[chi,k,ell] += tcoefter
|
||
|
|
||
|
# COMPUTING tv[k,ell]
|
||
|
# See II Section 3.8
|
||
|
#
|
||
|
# a has a good value
|
||
|
ctx.prec = max(xwptcoef[0], ywptcoef[0])+2
|
||
|
av = {}
|
||
|
av[0] = 1
|
||
|
av[1] = av[0]/a
|
||
|
|
||
|
ctx.prec = max(xwptcoef[0],ywptcoef[0])
|
||
|
for k in range(2,L):
|
||
|
av[k] = av[k-1] * av[1]
|
||
|
|
||
|
# Computing the quotients
|
||
|
xtv = {}
|
||
|
for chi in range(0,der+1):
|
||
|
for k in range(0,L):
|
||
|
ctx.prec = xwptcoef[k]
|
||
|
for ell in range(0,3*k//2+1):
|
||
|
xtv[chi,k,ell] = xtcoef[chi,k,ell]* av[k]
|
||
|
# Computing the quotients
|
||
|
ytv = {}
|
||
|
for chi in range(0,der+1):
|
||
|
for k in range(0,L):
|
||
|
ctx.prec = ywptcoef[k]
|
||
|
for ell in range(0,3*k//2+1):
|
||
|
ytv[chi,k,ell] = ytcoef[chi,k,ell]* av[k]
|
||
|
|
||
|
# COMPUTING THE TERMS xterm[k]
|
||
|
# See II Section 3.6
|
||
|
xterm = {}
|
||
|
for chi in range(0,der+1):
|
||
|
for n in range(0,L):
|
||
|
ctx.prec = xwpterm[n]
|
||
|
te = 0
|
||
|
for k in range(0, 3*n//2+1):
|
||
|
te += xtv[chi,n,k]
|
||
|
xterm[chi,n] = te
|
||
|
|
||
|
# COMPUTING THE TERMS yterm[k]
|
||
|
# See II Section 3.6
|
||
|
yterm = {}
|
||
|
for chi in range(0,der+1):
|
||
|
for n in range(0,L):
|
||
|
ctx.prec = ywpterm[n]
|
||
|
te = 0
|
||
|
for k in range(0, 3*n//2+1):
|
||
|
te += ytv[chi,n,k]
|
||
|
yterm[chi,n] = te
|
||
|
|
||
|
# COMPUTING rssum
|
||
|
# See II Section 3.5
|
||
|
xrssum={}
|
||
|
ctx.prec=15
|
||
|
xrsbound = math.sqrt(ctx.pi) * xc /(xb*a)
|
||
|
ctx.prec=15
|
||
|
xwprssum = ctx.mag(4.4*((L+3)**2)*xrsbound / xeps2)
|
||
|
xwprssum = max(xwprssum, ctx.mag(10*(L+1)))
|
||
|
ctx.prec = xwprssum
|
||
|
for chi in range(0,der+1):
|
||
|
xrssum[chi] = 0
|
||
|
for k in range(1,L+1):
|
||
|
xrssum[chi] += xterm[chi,L-k]
|
||
|
yrssum={}
|
||
|
ctx.prec=15
|
||
|
yrsbound = math.sqrt(ctx.pi) * yc /(yb*a)
|
||
|
ctx.prec=15
|
||
|
ywprssum = ctx.mag(4.4*((L+3)**2)*yrsbound / yeps2)
|
||
|
ywprssum = max(ywprssum, ctx.mag(10*(L+1)))
|
||
|
ctx.prec = ywprssum
|
||
|
for chi in range(0,der+1):
|
||
|
yrssum[chi] = 0
|
||
|
for k in range(1,L+1):
|
||
|
yrssum[chi] += yterm[chi,L-k]
|
||
|
|
||
|
# COMPUTING S3
|
||
|
# See II Section 3.19
|
||
|
ctx.prec = 15
|
||
|
A2 = 2**(max(ctx.mag(abs(xrssum[0])), ctx.mag(abs(yrssum[0]))))
|
||
|
eps8 = eps/(3*A2)
|
||
|
T = t *ctx.ln(t/(2*ctx.pi))
|
||
|
xwps3 = 5 + ctx.mag((1+(2/eps8)*ctx.power(a,-xsigma))*T)
|
||
|
ywps3 = 5 + ctx.mag((1+(2/eps8)*ctx.power(a,-ysigma))*T)
|
||
|
|
||
|
ctx.prec = max(xwps3, ywps3)
|
||
|
|
||
|
tpi = t/(2*ctx.pi)
|
||
|
arg = (t/2)*ctx.ln(tpi)-(t/2)-ctx.pi/8
|
||
|
U = ctx.expj(-arg)
|
||
|
a = trunc_a(t)
|
||
|
xasigma = ctx.power(a, -xsigma)
|
||
|
yasigma = ctx.power(a, -ysigma)
|
||
|
xS3 = ((-1)**(N-1)) * xasigma * U
|
||
|
yS3 = ((-1)**(N-1)) * yasigma * U
|
||
|
|
||
|
# COMPUTING S1 the zetasum
|
||
|
# See II Section 3.18
|
||
|
ctx.prec = 15
|
||
|
xwpsum = 4+ ctx.mag((N+ctx.power(N,1-xsigma))*ctx.ln(N) /eps1)
|
||
|
ywpsum = 4+ ctx.mag((N+ctx.power(N,1-ysigma))*ctx.ln(N) /eps1)
|
||
|
wpsum = max(xwpsum, ywpsum)
|
||
|
|
||
|
ctx.prec = wpsum +10
|
||
|
'''
|
||
|
# This can be improved
|
||
|
xS1={}
|
||
|
yS1={}
|
||
|
for chi in range(0,der+1):
|
||
|
xS1[chi] = 0
|
||
|
yS1[chi] = 0
|
||
|
for n in range(1,int(N)+1):
|
||
|
ln = ctx.ln(n)
|
||
|
xexpn = ctx.exp(-ln*(xsigma+ctx.j*t))
|
||
|
yexpn = ctx.conj(1/(n*xexpn))
|
||
|
for chi in range(0,der+1):
|
||
|
pown = ctx.power(-ln, chi)
|
||
|
xterm = pown*xexpn
|
||
|
yterm = pown*yexpn
|
||
|
xS1[chi] += xterm
|
||
|
yS1[chi] += yterm
|
||
|
'''
|
||
|
xS1, yS1 = ctx._zetasum(s, 1, int(N)-1, range(0,der+1), True)
|
||
|
|
||
|
# END OF COMPUTATION of xrz, yrz
|
||
|
# See II Section 3.1
|
||
|
ctx.prec = 15
|
||
|
xabsS1 = abs(xS1[der])
|
||
|
xabsS2 = abs(xrssum[der] * xS3)
|
||
|
xwpend = max(6, wpinitial+ctx.mag(6*(3*xabsS1+7*xabsS2) ) )
|
||
|
|
||
|
ctx.prec = xwpend
|
||
|
xrz={}
|
||
|
for chi in range(0,der+1):
|
||
|
xrz[chi] = xS1[chi]+xrssum[chi]*xS3
|
||
|
|
||
|
ctx.prec = 15
|
||
|
yabsS1 = abs(yS1[der])
|
||
|
yabsS2 = abs(yrssum[der] * yS3)
|
||
|
ywpend = max(6, wpinitial+ctx.mag(6*(3*yabsS1+7*yabsS2) ) )
|
||
|
|
||
|
ctx.prec = ywpend
|
||
|
yrz={}
|
||
|
for chi in range(0,der+1):
|
||
|
yrz[chi] = yS1[chi]+yrssum[chi]*yS3
|
||
|
yrz[chi] = ctx.conj(yrz[chi])
|
||
|
ctx.prec = wpinitial
|
||
|
return xrz, yrz
|
||
|
|
||
|
def Rzeta_set(ctx, s, derivatives=[0]):
|
||
|
r"""
|
||
|
Computes several derivatives of the auxiliary function of Riemann `R(s)`.
|
||
|
|
||
|
**Definition**
|
||
|
|
||
|
The function is defined by
|
||
|
|
||
|
.. math ::
|
||
|
|
||
|
\begin{equation}
|
||
|
{\mathop{\mathcal R }\nolimits}(s)=
|
||
|
\int_{0\swarrow1}\frac{x^{-s} e^{\pi i x^2}}{e^{\pi i x}-
|
||
|
e^{-\pi i x}}\,dx
|
||
|
\end{equation}
|
||
|
|
||
|
To this function we apply the Riemann-Siegel expansion.
|
||
|
"""
|
||
|
der = max(derivatives)
|
||
|
# First we take the value of ctx.prec
|
||
|
# During the computation we will change ctx.prec, and finally we will
|
||
|
# restaurate the initial value
|
||
|
wpinitial = ctx.prec
|
||
|
# Take the real and imaginary part of s
|
||
|
t = ctx._im(s)
|
||
|
sigma = ctx._re(s)
|
||
|
# Now compute several parameter that appear on the program
|
||
|
ctx.prec = 15
|
||
|
a = ctx.sqrt(t/(2*ctx.pi)) # Careful
|
||
|
asigma = ctx.power(a, sigma) # Careful
|
||
|
# We need a simple bound A1 < asigma (see II Section 3.1 and 3.3)
|
||
|
A1 = ctx.power(2, ctx.mag(asigma)-1)
|
||
|
# We compute various epsilon's (see II end of Section 3.1)
|
||
|
eps = ctx.power(2, -wpinitial)
|
||
|
eps1 = eps/6.
|
||
|
eps2 = eps * A1/3.
|
||
|
# COMPUTING SOME COEFFICIENTS THAT DEPENDS
|
||
|
# ON sigma
|
||
|
# constant b and c (see I Theorem 2 formula (26) )
|
||
|
# coefficients A and B1 (see I Section 6.1 equation (50))
|
||
|
# here we not need high precision
|
||
|
ctx.prec = 15
|
||
|
if sigma > 0:
|
||
|
b = 2.
|
||
|
c = math.pow(9,sigma)/4.44288
|
||
|
# 4.44288 =(math.sqrt(2)*math.pi)
|
||
|
A = math.pow(9,sigma)
|
||
|
B1 = 1
|
||
|
else:
|
||
|
b = 2.25158 # math.sqrt( (3-2* math.log(2))*math.pi )
|
||
|
c = math.pow(2,-sigma)/4.44288
|
||
|
A = math.pow(2,-sigma)
|
||
|
B1 = 1.10789 # = 2*sqrt(1-log(2))
|
||
|
# COMPUTING L THE NUMBER OF TERMS NEEDED IN THE RIEMANN-SIEGEL
|
||
|
# CORRECTION
|
||
|
# See II Section 3.2
|
||
|
ctx.prec = 15
|
||
|
L = 1
|
||
|
while 3*c*ctx.gamma(L*0.5) * ctx.power(b*a,-L) >= eps2:
|
||
|
L = L+1
|
||
|
L = max(2,L)
|
||
|
# The number L has to satify some conditions.
|
||
|
# If not RS can not compute Rzeta(s) with the prescribed precision
|
||
|
# (see II, Section 3.2 condition (20) ) and
|
||
|
# (II, Section 3.3 condition (22) ). Also we have added
|
||
|
# an additional technical condition in Section 3.17 Proposition 17
|
||
|
if ((3*L >= 2*a*a/25.) or (3*L+2+sigma<0) or (abs(sigma)> a/2.)):
|
||
|
#print 'Error Riemann-Siegel can not compute with such precision'
|
||
|
ctx.prec = wpinitial
|
||
|
raise NotImplementedError("Riemann-Siegel can not compute with such precision")
|
||
|
|
||
|
# INITIALIZATION (CONTINUATION)
|
||
|
#
|
||
|
# eps3 is the constant defined on (II, Section 3.5 equation (27) )
|
||
|
# each term of the RS correction must be computed with error <= eps3
|
||
|
eps3 = eps2/(4*L)
|
||
|
|
||
|
# eps4 is defined on (II Section 3.6 equation (30) )
|
||
|
# each component of the formula (II Section 3.6 equation (29) )
|
||
|
# must be computed with error <= eps4
|
||
|
eps4 = eps3/(3*L)
|
||
|
|
||
|
# COMPUTING M. NUMBER OF DERIVATIVES Fp[m] TO COMPUTE
|
||
|
M = aux_M_Fp(ctx, A, eps4, a, B1, L)
|
||
|
Fp = {}
|
||
|
for n in range(M, 3*L-2):
|
||
|
Fp[n] = 0
|
||
|
|
||
|
# But I have not seen an instance of M != 3*L-3
|
||
|
#
|
||
|
# DETERMINATION OF J THE NUMBER OF TERMS NEEDED
|
||
|
# IN THE TAYLOR SERIES OF F.
|
||
|
# See II Section 3.11 equation (49))
|
||
|
h1 = eps4/(632*A)
|
||
|
h2 = ctx.pi*ctx.pi*B1*a *ctx.sqrt(3)*math.e*math.e
|
||
|
h2 = h1 * ctx.power((h2/M**2),(M-1)/3) / M
|
||
|
h3 = min(h1,h2)
|
||
|
J=12
|
||
|
jvalue = (2*ctx.pi)**J / ctx.gamma(J+1)
|
||
|
while jvalue > h3:
|
||
|
J = J+1
|
||
|
jvalue = (2*ctx.pi)*jvalue/J
|
||
|
|
||
|
# COMPUTING eps5[m] for 1 <= m <= 21
|
||
|
# See II Section 10 equation (43)
|
||
|
eps5={}
|
||
|
foreps5 = math.pi*math.pi*B1*a
|
||
|
for m in range(0,22):
|
||
|
aux1 = math.pow(foreps5, m/3)/(316.*A)
|
||
|
aux2 = ctx.gamma(m+1)/ctx.gamma(m/3.0+0.5)
|
||
|
aux2 = math.sqrt(aux2)
|
||
|
eps5[m] = aux1*aux2*eps4
|
||
|
|
||
|
# COMPUTING wpfp
|
||
|
# See II Section 3.13 equation (59)
|
||
|
twenty = min(3*L-3, 21)+1
|
||
|
aux = 6812*J
|
||
|
wpfp = ctx.mag(44*J)
|
||
|
for m in range(0, twenty):
|
||
|
wpfp = max(wpfp, ctx.mag(aux*ctx.gamma(m+1)/eps5[m]))
|
||
|
# COMPUTING N AND p
|
||
|
# See II Section
|
||
|
ctx.prec = wpfp + ctx.mag(t) + 20
|
||
|
a = ctx.sqrt(t/(2*ctx.pi))
|
||
|
N = ctx.floor(a)
|
||
|
p = 1-2*(a-N)
|
||
|
|
||
|
# now we get a rounded version of p to the precision wpfp
|
||
|
# this possibly is not necessary
|
||
|
num = ctx.floor(p*(ctx.mpf(2)**wpfp))
|
||
|
difference = p * (ctx.mpf(2)**wpfp)-num
|
||
|
if difference < 0.5:
|
||
|
num = num
|
||
|
else:
|
||
|
num = num+1
|
||
|
p = ctx.convert(num * (ctx.mpf(2)**(-wpfp)))
|
||
|
|
||
|
# COMPUTING THE COEFFICIENTS c[n] = cc[n]
|
||
|
# We shall use the notation cc[n], since there is
|
||
|
# a constant that is called c
|
||
|
# See II Section 3.14
|
||
|
# We compute the coefficients and also save then in a
|
||
|
# cache. The bulk of the computation is passed to
|
||
|
# the function coef()
|
||
|
#
|
||
|
# eps6 is defined in II Section 3.13 equation (58)
|
||
|
eps6 = ctx.power(2*ctx.pi, J)/(ctx.gamma(J+1)*3*J)
|
||
|
|
||
|
# Now we compute the coefficients
|
||
|
cc={}
|
||
|
cont={}
|
||
|
cont, pipowers = coef(ctx, J, eps6)
|
||
|
cc = cont.copy() # we need a copy since we have
|
||
|
Fp={}
|
||
|
for n in range(M, 3*L-2):
|
||
|
Fp[n] = 0
|
||
|
ctx.prec = wpfp
|
||
|
for m in range(0,M+1):
|
||
|
sumP = 0
|
||
|
for k in range(2*J-m-1,-1,-1):
|
||
|
sumP = (sumP * p) + cc[k]
|
||
|
Fp[m] = sumP
|
||
|
# preparation of the new coefficients
|
||
|
for k in range(0, 2*J-m-1):
|
||
|
cc[k] = (k+1) * cc[k+1]
|
||
|
|
||
|
# COMPUTING THE NUMBERS d[n,k]
|
||
|
# See II Section 3.17
|
||
|
|
||
|
# First we compute the working precisions wpd[k]
|
||
|
# Se II equation (92)
|
||
|
wpd = {}
|
||
|
d1 = max(6, ctx.mag(40*L*L))
|
||
|
d2 = 13+ctx.mag((1+abs(sigma))*A)-ctx.mag(eps4)-1
|
||
|
const = ctx.ln(8/(ctx.pi*ctx.pi*a*a*B1*B1)) /2
|
||
|
for n in range(0,L):
|
||
|
d3 = ctx.mag(ctx.sqrt(ctx.gamma(n-0.5)))-ctx.floor(n*const)+d2
|
||
|
wpd[n] = max(d3,d1)
|
||
|
|
||
|
# procedure of II Section 3.17
|
||
|
ctx.prec = wpd[1]+10
|
||
|
psigma = 1-(2*sigma)
|
||
|
d = {}
|
||
|
d[0,0,-2]=0; d[0,0,-1]=0; d[0,0,0]=1; d[0,0,1]=0
|
||
|
d[0,-1,-2]=0; d[0,-1,-1]=0; d[0,-1,0]=1; d[0,-1,1]=0
|
||
|
for n in range(1,L):
|
||
|
ctx.prec = wpd[n]+10
|
||
|
for k in range(0,3*n//2+1):
|
||
|
m = 3*n-2*k
|
||
|
if (m!=0):
|
||
|
m1 = ctx.one/m
|
||
|
c1 = m1/4
|
||
|
c2 = (psigma*m1)/2
|
||
|
c3 = -(m+1)
|
||
|
d[0,n,k] = c3*d[0,n-1,k-2]+c1*d[0,n-1,k]+c2*d[0,n-1,k-1]
|
||
|
else:
|
||
|
d[0,n,k]=0
|
||
|
for r in range(0,k):
|
||
|
add = d[0,n,r]*(ctx.one*ctx.fac(2*k-2*r)/ctx.fac(k-r))
|
||
|
d[0,n,k] -= ((-1)**(k-r))*add
|
||
|
d[0,n,-2]=0; d[0,n,-1]=0; d[0,n,3*n//2+1]=0
|
||
|
|
||
|
for mu in range(-2,der+1):
|
||
|
for n in range(-2,L):
|
||
|
for k in range(-3,max(1,3*n//2+2)):
|
||
|
if ((mu<0)or (n<0) or(k<0)or (k>3*n//2)):
|
||
|
d[mu,n,k] = 0
|
||
|
|
||
|
for mu in range(1,der+1):
|
||
|
for n in range(0,L):
|
||
|
ctx.prec = wpd[n]+10
|
||
|
for k in range(0,3*n//2+1):
|
||
|
aux=(2*mu-2)*d[mu-2,n-2,k-3]+2*(sigma+n-2)*d[mu-1,n-2,k-3]
|
||
|
d[mu,n,k] = aux - d[mu-1,n-1,k-1]
|
||
|
|
||
|
# COMPUTING THE COEFFICIENTS t[k,l]
|
||
|
# See II Section 3.9
|
||
|
#
|
||
|
# computing the needed wp
|
||
|
wptcoef = {}
|
||
|
wpterm = {}
|
||
|
ctx.prec = 15
|
||
|
c1 = ctx.mag(40*(L+2))
|
||
|
c2 = ctx.mag(68*(L+2)*A)
|
||
|
c4 = ctx.mag(B1*a*math.sqrt(ctx.pi))-1
|
||
|
for k in range(0,L):
|
||
|
c3 = c2 - k*c4+ctx.mag(ctx.fac(k+0.5))/2.
|
||
|
wptcoef[k] = max(c1,c3-ctx.mag(eps4)+1)+1 +10
|
||
|
wpterm[k] = max(c1,ctx.mag(L+2)+c3-ctx.mag(eps3)+1)+1 +10
|
||
|
|
||
|
# check of power of pi
|
||
|
|
||
|
# computing the fortcoef[mu,k,ell]
|
||
|
fortcoef={}
|
||
|
for mu in derivatives:
|
||
|
for k in range(0,L):
|
||
|
for ell in range(-2,3*k//2+1):
|
||
|
fortcoef[mu,k,ell]=0
|
||
|
|
||
|
for mu in derivatives:
|
||
|
for k in range(0,L):
|
||
|
ctx.prec = wptcoef[k]
|
||
|
for ell in range(0,3*k//2+1):
|
||
|
fortcoef[mu,k,ell]=d[mu,k,ell]*Fp[3*k-2*ell]/pipowers[2*k-ell]
|
||
|
fortcoef[mu,k,ell]=fortcoef[mu,k,ell]/((2*ctx.j)**ell)
|
||
|
|
||
|
def trunc_a(t):
|
||
|
wp = ctx.prec
|
||
|
ctx.prec = wp + 2
|
||
|
aa = ctx.sqrt(t/(2*ctx.pi))
|
||
|
ctx.prec = wp
|
||
|
return aa
|
||
|
|
||
|
# computing the tcoef[chi,k,ell]
|
||
|
tcoef={}
|
||
|
for chi in derivatives:
|
||
|
for k in range(0,L):
|
||
|
for ell in range(-2,3*k//2+1):
|
||
|
tcoef[chi,k,ell]=0
|
||
|
ctx.prec = wptcoef[0]+3
|
||
|
aa = trunc_a(t)
|
||
|
la = -ctx.ln(aa)
|
||
|
|
||
|
for chi in derivatives:
|
||
|
for k in range(0,L):
|
||
|
ctx.prec = wptcoef[k]
|
||
|
for ell in range(0,3*k//2+1):
|
||
|
tcoef[chi,k,ell] = 0
|
||
|
for mu in range(0, chi+1):
|
||
|
tcoefter = ctx.binomial(chi,mu) * la**mu * \
|
||
|
fortcoef[chi-mu,k,ell]
|
||
|
tcoef[chi,k,ell] += tcoefter
|
||
|
|
||
|
# COMPUTING tv[k,ell]
|
||
|
# See II Section 3.8
|
||
|
|
||
|
# Computing the powers av[k] = a**(-k)
|
||
|
ctx.prec = wptcoef[0] + 2
|
||
|
|
||
|
# a has a good value of a.
|
||
|
# See II Section 3.6
|
||
|
av = {}
|
||
|
av[0] = 1
|
||
|
av[1] = av[0]/a
|
||
|
|
||
|
ctx.prec = wptcoef[0]
|
||
|
for k in range(2,L):
|
||
|
av[k] = av[k-1] * av[1]
|
||
|
|
||
|
# Computing the quotients
|
||
|
tv = {}
|
||
|
for chi in derivatives:
|
||
|
for k in range(0,L):
|
||
|
ctx.prec = wptcoef[k]
|
||
|
for ell in range(0,3*k//2+1):
|
||
|
tv[chi,k,ell] = tcoef[chi,k,ell]* av[k]
|
||
|
|
||
|
# COMPUTING THE TERMS term[k]
|
||
|
# See II Section 3.6
|
||
|
term = {}
|
||
|
for chi in derivatives:
|
||
|
for n in range(0,L):
|
||
|
ctx.prec = wpterm[n]
|
||
|
te = 0
|
||
|
for k in range(0, 3*n//2+1):
|
||
|
te += tv[chi,n,k]
|
||
|
term[chi,n] = te
|
||
|
|
||
|
# COMPUTING rssum
|
||
|
# See II Section 3.5
|
||
|
rssum={}
|
||
|
ctx.prec=15
|
||
|
rsbound = math.sqrt(ctx.pi) * c /(b*a)
|
||
|
ctx.prec=15
|
||
|
wprssum = ctx.mag(4.4*((L+3)**2)*rsbound / eps2)
|
||
|
wprssum = max(wprssum, ctx.mag(10*(L+1)))
|
||
|
ctx.prec = wprssum
|
||
|
for chi in derivatives:
|
||
|
rssum[chi] = 0
|
||
|
for k in range(1,L+1):
|
||
|
rssum[chi] += term[chi,L-k]
|
||
|
|
||
|
# COMPUTING S3
|
||
|
# See II Section 3.19
|
||
|
ctx.prec = 15
|
||
|
A2 = 2**(ctx.mag(rssum[0]))
|
||
|
eps8 = eps/(3* A2)
|
||
|
T = t * ctx.ln(t/(2*ctx.pi))
|
||
|
wps3 = 5 + ctx.mag((1+(2/eps8)*ctx.power(a,-sigma))*T)
|
||
|
|
||
|
ctx.prec = wps3
|
||
|
tpi = t/(2*ctx.pi)
|
||
|
arg = (t/2)*ctx.ln(tpi)-(t/2)-ctx.pi/8
|
||
|
U = ctx.expj(-arg)
|
||
|
a = trunc_a(t)
|
||
|
asigma = ctx.power(a, -sigma)
|
||
|
S3 = ((-1)**(N-1)) * asigma * U
|
||
|
|
||
|
# COMPUTING S1 the zetasum
|
||
|
# See II Section 3.18
|
||
|
ctx.prec = 15
|
||
|
wpsum = 4 + ctx.mag((N+ctx.power(N,1-sigma))*ctx.ln(N)/eps1)
|
||
|
|
||
|
ctx.prec = wpsum + 10
|
||
|
'''
|
||
|
# This can be improved
|
||
|
S1 = {}
|
||
|
for chi in derivatives:
|
||
|
S1[chi] = 0
|
||
|
for n in range(1,int(N)+1):
|
||
|
ln = ctx.ln(n)
|
||
|
expn = ctx.exp(-ln*(sigma+ctx.j*t))
|
||
|
for chi in derivatives:
|
||
|
term = ctx.power(-ln, chi)*expn
|
||
|
S1[chi] += term
|
||
|
'''
|
||
|
S1 = ctx._zetasum(s, 1, int(N)-1, derivatives)[0]
|
||
|
|
||
|
# END OF COMPUTATION
|
||
|
# See II Section 3.1
|
||
|
ctx.prec = 15
|
||
|
absS1 = abs(S1[der])
|
||
|
absS2 = abs(rssum[der] * S3)
|
||
|
wpend = max(6, wpinitial + ctx.mag(6*(3*absS1+7*absS2)))
|
||
|
ctx.prec = wpend
|
||
|
rz = {}
|
||
|
for chi in derivatives:
|
||
|
rz[chi] = S1[chi]+rssum[chi]*S3
|
||
|
ctx.prec = wpinitial
|
||
|
return rz
|
||
|
|
||
|
|
||
|
def z_half(ctx,t,der=0):
|
||
|
r"""
|
||
|
z_half(t,der=0) Computes Z^(der)(t)
|
||
|
"""
|
||
|
s=ctx.mpf('0.5')+ctx.j*t
|
||
|
wpinitial = ctx.prec
|
||
|
ctx.prec = 15
|
||
|
tt = t/(2*ctx.pi)
|
||
|
wptheta = wpinitial +1 + ctx.mag(3*(tt**1.5)*ctx.ln(tt))
|
||
|
wpz = wpinitial + 1 + ctx.mag(12*tt*ctx.ln(tt))
|
||
|
ctx.prec = wptheta
|
||
|
theta = ctx.siegeltheta(t)
|
||
|
ctx.prec = wpz
|
||
|
rz = Rzeta_set(ctx,s, range(der+1))
|
||
|
if der > 0: ps1 = ctx._re(ctx.psi(0,s/2)/2 - ctx.ln(ctx.pi)/2)
|
||
|
if der > 1: ps2 = ctx._re(ctx.j*ctx.psi(1,s/2)/4)
|
||
|
if der > 2: ps3 = ctx._re(-ctx.psi(2,s/2)/8)
|
||
|
if der > 3: ps4 = ctx._re(-ctx.j*ctx.psi(3,s/2)/16)
|
||
|
exptheta = ctx.expj(theta)
|
||
|
if der == 0:
|
||
|
z = 2*exptheta*rz[0]
|
||
|
if der == 1:
|
||
|
zf = 2j*exptheta
|
||
|
z = zf*(ps1*rz[0]+rz[1])
|
||
|
if der == 2:
|
||
|
zf = 2 * exptheta
|
||
|
z = -zf*(2*rz[1]*ps1+rz[0]*ps1**2+rz[2]-ctx.j*rz[0]*ps2)
|
||
|
if der == 3:
|
||
|
zf = -2j*exptheta
|
||
|
z = 3*rz[1]*ps1**2+rz[0]*ps1**3+3*ps1*rz[2]
|
||
|
z = zf*(z-3j*rz[1]*ps2-3j*rz[0]*ps1*ps2+rz[3]-rz[0]*ps3)
|
||
|
if der == 4:
|
||
|
zf = 2*exptheta
|
||
|
z = 4*rz[1]*ps1**3+rz[0]*ps1**4+6*ps1**2*rz[2]
|
||
|
z = z-12j*rz[1]*ps1*ps2-6j*rz[0]*ps1**2*ps2-6j*rz[2]*ps2-3*rz[0]*ps2*ps2
|
||
|
z = z + 4*ps1*rz[3]-4*rz[1]*ps3-4*rz[0]*ps1*ps3+rz[4]+ctx.j*rz[0]*ps4
|
||
|
z = zf*z
|
||
|
ctx.prec = wpinitial
|
||
|
return ctx._re(z)
|
||
|
|
||
|
def zeta_half(ctx, s, k=0):
|
||
|
"""
|
||
|
zeta_half(s,k=0) Computes zeta^(k)(s) when Re s = 0.5
|
||
|
"""
|
||
|
wpinitial = ctx.prec
|
||
|
sigma = ctx._re(s)
|
||
|
t = ctx._im(s)
|
||
|
#--- compute wptheta, wpR, wpbasic ---
|
||
|
ctx.prec = 53
|
||
|
# X see II Section 3.21 (109) and (110)
|
||
|
if sigma > 0:
|
||
|
X = ctx.sqrt(abs(s))
|
||
|
else:
|
||
|
X = (2*ctx.pi)**(sigma-1) * abs(1-s)**(0.5-sigma)
|
||
|
# M1 see II Section 3.21 (111) and (112)
|
||
|
if sigma > 0:
|
||
|
M1 = 2*ctx.sqrt(t/(2*ctx.pi))
|
||
|
else:
|
||
|
M1 = 4 * t * X
|
||
|
# T see II Section 3.21 (113)
|
||
|
abst = abs(0.5-s)
|
||
|
T = 2* abst*math.log(abst)
|
||
|
# computing wpbasic, wptheta, wpR see II Section 3.21
|
||
|
wpbasic = max(6,3+ctx.mag(t))
|
||
|
wpbasic2 = 2+ctx.mag(2.12*M1+21.2*M1*X+1.3*M1*X*T)+wpinitial+1
|
||
|
wpbasic = max(wpbasic, wpbasic2)
|
||
|
wptheta = max(4, 3+ctx.mag(2.7*M1*X)+wpinitial+1)
|
||
|
wpR = 3+ctx.mag(1.1+2*X)+wpinitial+1
|
||
|
ctx.prec = wptheta
|
||
|
theta = ctx.siegeltheta(t-ctx.j*(sigma-ctx.mpf('0.5')))
|
||
|
if k > 0: ps1 = (ctx._re(ctx.psi(0,s/2)))/2 - ctx.ln(ctx.pi)/2
|
||
|
if k > 1: ps2 = -(ctx._im(ctx.psi(1,s/2)))/4
|
||
|
if k > 2: ps3 = -(ctx._re(ctx.psi(2,s/2)))/8
|
||
|
if k > 3: ps4 = (ctx._im(ctx.psi(3,s/2)))/16
|
||
|
ctx.prec = wpR
|
||
|
xrz = Rzeta_set(ctx,s,range(k+1))
|
||
|
yrz={}
|
||
|
for chi in range(0,k+1):
|
||
|
yrz[chi] = ctx.conj(xrz[chi])
|
||
|
ctx.prec = wpbasic
|
||
|
exptheta = ctx.expj(-2*theta)
|
||
|
if k==0:
|
||
|
zv = xrz[0]+exptheta*yrz[0]
|
||
|
if k==1:
|
||
|
zv1 = -yrz[1] - 2*yrz[0]*ps1
|
||
|
zv = xrz[1] + exptheta*zv1
|
||
|
if k==2:
|
||
|
zv1 = 4*yrz[1]*ps1+4*yrz[0]*(ps1**2)+yrz[2]+2j*yrz[0]*ps2
|
||
|
zv = xrz[2]+exptheta*zv1
|
||
|
if k==3:
|
||
|
zv1 = -12*yrz[1]*ps1**2-8*yrz[0]*ps1**3-6*yrz[2]*ps1-6j*yrz[1]*ps2
|
||
|
zv1 = zv1 - 12j*yrz[0]*ps1*ps2-yrz[3]+2*yrz[0]*ps3
|
||
|
zv = xrz[3]+exptheta*zv1
|
||
|
if k == 4:
|
||
|
zv1 = 32*yrz[1]*ps1**3 +16*yrz[0]*ps1**4+24*yrz[2]*ps1**2
|
||
|
zv1 = zv1 +48j*yrz[1]*ps1*ps2+48j*yrz[0]*(ps1**2)*ps2
|
||
|
zv1 = zv1+12j*yrz[2]*ps2-12*yrz[0]*ps2**2+8*yrz[3]*ps1-8*yrz[1]*ps3
|
||
|
zv1 = zv1-16*yrz[0]*ps1*ps3+yrz[4]-2j*yrz[0]*ps4
|
||
|
zv = xrz[4]+exptheta*zv1
|
||
|
ctx.prec = wpinitial
|
||
|
return zv
|
||
|
|
||
|
def zeta_offline(ctx, s, k=0):
|
||
|
"""
|
||
|
Computes zeta^(k)(s) off the line
|
||
|
"""
|
||
|
wpinitial = ctx.prec
|
||
|
sigma = ctx._re(s)
|
||
|
t = ctx._im(s)
|
||
|
#--- compute wptheta, wpR, wpbasic ---
|
||
|
ctx.prec = 53
|
||
|
# X see II Section 3.21 (109) and (110)
|
||
|
if sigma > 0:
|
||
|
X = ctx.power(abs(s), 0.5)
|
||
|
else:
|
||
|
X = ctx.power(2*ctx.pi, sigma-1)*ctx.power(abs(1-s),0.5-sigma)
|
||
|
# M1 see II Section 3.21 (111) and (112)
|
||
|
if (sigma > 0):
|
||
|
M1 = 2*ctx.sqrt(t/(2*ctx.pi))
|
||
|
else:
|
||
|
M1 = 4 * t * X
|
||
|
# M2 see II Section 3.21 (111) and (112)
|
||
|
if (1-sigma > 0):
|
||
|
M2 = 2*ctx.sqrt(t/(2*ctx.pi))
|
||
|
else:
|
||
|
M2 = 4*t*ctx.power(2*ctx.pi, -sigma)*ctx.power(abs(s),sigma-0.5)
|
||
|
# T see II Section 3.21 (113)
|
||
|
abst = abs(0.5-s)
|
||
|
T = 2* abst*math.log(abst)
|
||
|
# computing wpbasic, wptheta, wpR see II Section 3.21
|
||
|
wpbasic = max(6,3+ctx.mag(t))
|
||
|
wpbasic2 = 2+ctx.mag(2.12*M1+21.2*M2*X+1.3*M2*X*T)+wpinitial+1
|
||
|
wpbasic = max(wpbasic, wpbasic2)
|
||
|
wptheta = max(4, 3+ctx.mag(2.7*M2*X)+wpinitial+1)
|
||
|
wpR = 3+ctx.mag(1.1+2*X)+wpinitial+1
|
||
|
ctx.prec = wptheta
|
||
|
theta = ctx.siegeltheta(t-ctx.j*(sigma-ctx.mpf('0.5')))
|
||
|
s1 = s
|
||
|
s2 = ctx.conj(1-s1)
|
||
|
ctx.prec = wpR
|
||
|
xrz, yrz = Rzeta_simul(ctx, s, k)
|
||
|
if k > 0: ps1 = (ctx.psi(0,s1/2)+ctx.psi(0,(1-s1)/2))/4 - ctx.ln(ctx.pi)/2
|
||
|
if k > 1: ps2 = ctx.j*(ctx.psi(1,s1/2)-ctx.psi(1,(1-s1)/2))/8
|
||
|
if k > 2: ps3 = -(ctx.psi(2,s1/2)+ctx.psi(2,(1-s1)/2))/16
|
||
|
if k > 3: ps4 = -ctx.j*(ctx.psi(3,s1/2)-ctx.psi(3,(1-s1)/2))/32
|
||
|
ctx.prec = wpbasic
|
||
|
exptheta = ctx.expj(-2*theta)
|
||
|
if k == 0:
|
||
|
zv = xrz[0]+exptheta*yrz[0]
|
||
|
if k == 1:
|
||
|
zv1 = -yrz[1]-2*yrz[0]*ps1
|
||
|
zv = xrz[1]+exptheta*zv1
|
||
|
if k == 2:
|
||
|
zv1 = 4*yrz[1]*ps1+4*yrz[0]*(ps1**2) +yrz[2]+2j*yrz[0]*ps2
|
||
|
zv = xrz[2]+exptheta*zv1
|
||
|
if k == 3:
|
||
|
zv1 = -12*yrz[1]*ps1**2 -8*yrz[0]*ps1**3-6*yrz[2]*ps1-6j*yrz[1]*ps2
|
||
|
zv1 = zv1 - 12j*yrz[0]*ps1*ps2-yrz[3]+2*yrz[0]*ps3
|
||
|
zv = xrz[3]+exptheta*zv1
|
||
|
if k == 4:
|
||
|
zv1 = 32*yrz[1]*ps1**3 +16*yrz[0]*ps1**4+24*yrz[2]*ps1**2
|
||
|
zv1 = zv1 +48j*yrz[1]*ps1*ps2+48j*yrz[0]*(ps1**2)*ps2
|
||
|
zv1 = zv1+12j*yrz[2]*ps2-12*yrz[0]*ps2**2+8*yrz[3]*ps1-8*yrz[1]*ps3
|
||
|
zv1 = zv1-16*yrz[0]*ps1*ps3+yrz[4]-2j*yrz[0]*ps4
|
||
|
zv = xrz[4]+exptheta*zv1
|
||
|
ctx.prec = wpinitial
|
||
|
return zv
|
||
|
|
||
|
def z_offline(ctx, w, k=0):
|
||
|
r"""
|
||
|
Computes Z(w) and its derivatives off the line
|
||
|
"""
|
||
|
s = ctx.mpf('0.5')+ctx.j*w
|
||
|
s1 = s
|
||
|
s2 = ctx.conj(1-s1)
|
||
|
wpinitial = ctx.prec
|
||
|
ctx.prec = 35
|
||
|
# X see II Section 3.21 (109) and (110)
|
||
|
# M1 see II Section 3.21 (111) and (112)
|
||
|
if (ctx._re(s1) >= 0):
|
||
|
M1 = 2*ctx.sqrt(ctx._im(s1)/(2 * ctx.pi))
|
||
|
X = ctx.sqrt(abs(s1))
|
||
|
else:
|
||
|
X = (2*ctx.pi)**(ctx._re(s1)-1) * abs(1-s1)**(0.5-ctx._re(s1))
|
||
|
M1 = 4 * ctx._im(s1)*X
|
||
|
# M2 see II Section 3.21 (111) and (112)
|
||
|
if (ctx._re(s2) >= 0):
|
||
|
M2 = 2*ctx.sqrt(ctx._im(s2)/(2 * ctx.pi))
|
||
|
else:
|
||
|
M2 = 4 * ctx._im(s2)*(2*ctx.pi)**(ctx._re(s2)-1)*abs(1-s2)**(0.5-ctx._re(s2))
|
||
|
# T see II Section 3.21 Prop. 27
|
||
|
T = 2*abs(ctx.siegeltheta(w))
|
||
|
# defining some precisions
|
||
|
# see II Section 3.22 (115), (116), (117)
|
||
|
aux1 = ctx.sqrt(X)
|
||
|
aux2 = aux1*(M1+M2)
|
||
|
aux3 = 3 +wpinitial
|
||
|
wpbasic = max(6, 3+ctx.mag(T), ctx.mag(aux2*(26+2*T))+aux3)
|
||
|
wptheta = max(4,ctx.mag(2.04*aux2)+aux3)
|
||
|
wpR = ctx.mag(4*aux1)+aux3
|
||
|
# now the computations
|
||
|
ctx.prec = wptheta
|
||
|
theta = ctx.siegeltheta(w)
|
||
|
ctx.prec = wpR
|
||
|
xrz, yrz = Rzeta_simul(ctx,s,k)
|
||
|
pta = 0.25 + 0.5j*w
|
||
|
ptb = 0.25 - 0.5j*w
|
||
|
if k > 0: ps1 = 0.25*(ctx.psi(0,pta)+ctx.psi(0,ptb)) - ctx.ln(ctx.pi)/2
|
||
|
if k > 1: ps2 = (1j/8)*(ctx.psi(1,pta)-ctx.psi(1,ptb))
|
||
|
if k > 2: ps3 = (-1./16)*(ctx.psi(2,pta)+ctx.psi(2,ptb))
|
||
|
if k > 3: ps4 = (-1j/32)*(ctx.psi(3,pta)-ctx.psi(3,ptb))
|
||
|
ctx.prec = wpbasic
|
||
|
exptheta = ctx.expj(theta)
|
||
|
if k == 0:
|
||
|
zv = exptheta*xrz[0]+yrz[0]/exptheta
|
||
|
j = ctx.j
|
||
|
if k == 1:
|
||
|
zv = j*exptheta*(xrz[1]+xrz[0]*ps1)-j*(yrz[1]+yrz[0]*ps1)/exptheta
|
||
|
if k == 2:
|
||
|
zv = exptheta*(-2*xrz[1]*ps1-xrz[0]*ps1**2-xrz[2]+j*xrz[0]*ps2)
|
||
|
zv =zv + (-2*yrz[1]*ps1-yrz[0]*ps1**2-yrz[2]-j*yrz[0]*ps2)/exptheta
|
||
|
if k == 3:
|
||
|
zv1 = -3*xrz[1]*ps1**2-xrz[0]*ps1**3-3*xrz[2]*ps1+j*3*xrz[1]*ps2
|
||
|
zv1 = (zv1+ 3j*xrz[0]*ps1*ps2-xrz[3]+xrz[0]*ps3)*j*exptheta
|
||
|
zv2 = 3*yrz[1]*ps1**2+yrz[0]*ps1**3+3*yrz[2]*ps1+j*3*yrz[1]*ps2
|
||
|
zv2 = j*(zv2 + 3j*yrz[0]*ps1*ps2+ yrz[3]-yrz[0]*ps3)/exptheta
|
||
|
zv = zv1+zv2
|
||
|
if k == 4:
|
||
|
zv1 = 4*xrz[1]*ps1**3+xrz[0]*ps1**4 + 6*xrz[2]*ps1**2
|
||
|
zv1 = zv1-12j*xrz[1]*ps1*ps2-6j*xrz[0]*ps1**2*ps2-6j*xrz[2]*ps2
|
||
|
zv1 = zv1-3*xrz[0]*ps2*ps2+4*xrz[3]*ps1-4*xrz[1]*ps3-4*xrz[0]*ps1*ps3
|
||
|
zv1 = zv1+xrz[4]+j*xrz[0]*ps4
|
||
|
zv2 = 4*yrz[1]*ps1**3+yrz[0]*ps1**4 + 6*yrz[2]*ps1**2
|
||
|
zv2 = zv2+12j*yrz[1]*ps1*ps2+6j*yrz[0]*ps1**2*ps2+6j*yrz[2]*ps2
|
||
|
zv2 = zv2-3*yrz[0]*ps2*ps2+4*yrz[3]*ps1-4*yrz[1]*ps3-4*yrz[0]*ps1*ps3
|
||
|
zv2 = zv2+yrz[4]-j*yrz[0]*ps4
|
||
|
zv = exptheta*zv1+zv2/exptheta
|
||
|
ctx.prec = wpinitial
|
||
|
return zv
|
||
|
|
||
|
@defun
|
||
|
def rs_zeta(ctx, s, derivative=0, **kwargs):
|
||
|
if derivative > 4:
|
||
|
raise NotImplementedError
|
||
|
s = ctx.convert(s)
|
||
|
re = ctx._re(s); im = ctx._im(s)
|
||
|
if im < 0:
|
||
|
z = ctx.conj(ctx.rs_zeta(ctx.conj(s), derivative))
|
||
|
return z
|
||
|
critical_line = (re == 0.5)
|
||
|
if critical_line:
|
||
|
return zeta_half(ctx, s, derivative)
|
||
|
else:
|
||
|
return zeta_offline(ctx, s, derivative)
|
||
|
|
||
|
@defun
|
||
|
def rs_z(ctx, w, derivative=0):
|
||
|
w = ctx.convert(w)
|
||
|
re = ctx._re(w); im = ctx._im(w)
|
||
|
if re < 0:
|
||
|
return rs_z(ctx, -w, derivative)
|
||
|
critical_line = (im == 0)
|
||
|
if critical_line :
|
||
|
return z_half(ctx, w, derivative)
|
||
|
else:
|
||
|
return z_offline(ctx, w, derivative)
|