import numpy as np from ._zeros_py import _xtol, _rtol, _iter import scipy._lib._elementwise_iterative_method as eim from scipy._lib._util import _RichResult def _chandrupatla(func, a, b, *, args=(), xatol=_xtol, xrtol=_rtol, fatol=None, frtol=0, maxiter=_iter, callback=None): """Find the root of an elementwise function using Chandrupatla's algorithm. For each element of the output of `func`, `chandrupatla` seeks the scalar root that makes the element 0. This function allows for `a`, `b`, and the output of `func` to be of any broadcastable shapes. Parameters ---------- func : callable The function whose root is desired. The signature must be:: func(x: ndarray, *args) -> ndarray where each element of ``x`` is a finite real and ``args`` is a tuple, which may contain an arbitrary number of components of any type(s). ``func`` must be an elementwise function: each element ``func(x)[i]`` must equal ``func(x[i])`` for all indices ``i``. `_chandrupatla` seeks an array ``x`` such that ``func(x)`` is an array of zeros. a, b : array_like The lower and upper bounds of the root of the function. Must be broadcastable with one another. args : tuple, optional Additional positional arguments to be passed to `func`. xatol, xrtol, fatol, frtol : float, optional Absolute and relative tolerances on the root and function value. See Notes for details. maxiter : int, optional The maximum number of iterations of the algorithm to perform. callback : callable, optional An optional user-supplied function to be called before the first iteration and after each iteration. Called as ``callback(res)``, where ``res`` is a ``_RichResult`` similar to that returned by `_chandrupatla` (but containing the current iterate's values of all variables). If `callback` raises a ``StopIteration``, the algorithm will terminate immediately and `_chandrupatla` will return a result. Returns ------- res : _RichResult An instance of `scipy._lib._util._RichResult` with the following attributes. The descriptions are written as though the values will be scalars; however, if `func` returns an array, the outputs will be arrays of the same shape. x : float The root of the function, if the algorithm terminated successfully. nfev : int The number of times the function was called to find the root. nit : int The number of iterations of Chandrupatla's algorithm performed. status : int An integer representing the exit status of the algorithm. ``0`` : The algorithm converged to the specified tolerances. ``-1`` : The algorithm encountered an invalid bracket. ``-2`` : The maximum number of iterations was reached. ``-3`` : A non-finite value was encountered. ``-4`` : Iteration was terminated by `callback`. ``1`` : The algorithm is proceeding normally (in `callback` only). success : bool ``True`` when the algorithm terminated successfully (status ``0``). fun : float The value of `func` evaluated at `x`. xl, xr : float The lower and upper ends of the bracket. fl, fr : float The function value at the lower and upper ends of the bracket. Notes ----- Implemented based on Chandrupatla's original paper [1]_. If ``xl`` and ``xr`` are the left and right ends of the bracket, ``xmin = xl if abs(func(xl)) <= abs(func(xr)) else xr``, and ``fmin0 = min(func(a), func(b))``, then the algorithm is considered to have converged when ``abs(xr - xl) < xatol + abs(xmin) * xrtol`` or ``fun(xmin) <= fatol + abs(fmin0) * frtol``. This is equivalent to the termination condition described in [1]_ with ``xrtol = 4e-10``, ``xatol = 1e-5``, and ``fatol = frtol = 0``. The default values are ``xatol = 2e-12``, ``xrtol = 4 * np.finfo(float).eps``, ``frtol = 0``, and ``fatol`` is the smallest normal number of the ``dtype`` returned by ``func``. References ---------- .. [1] Chandrupatla, Tirupathi R. "A new hybrid quadratic/bisection algorithm for finding the zero of a nonlinear function without using derivatives". Advances in Engineering Software, 28(3), 145-149. https://doi.org/10.1016/s0965-9978(96)00051-8 See Also -------- brentq, brenth, ridder, bisect, newton Examples -------- >>> from scipy import optimize >>> def f(x, c): ... return x**3 - 2*x - c >>> c = 5 >>> res = optimize._chandrupatla._chandrupatla(f, 0, 3, args=(c,)) >>> res.x 2.0945514818937463 >>> c = [3, 4, 5] >>> res = optimize._chandrupatla._chandrupatla(f, 0, 3, args=(c,)) >>> res.x array([1.8932892 , 2. , 2.09455148]) """ res = _chandrupatla_iv(func, args, xatol, xrtol, fatol, frtol, maxiter, callback) func, args, xatol, xrtol, fatol, frtol, maxiter, callback = res # Initialization temp = eim._initialize(func, (a, b), args) func, xs, fs, args, shape, dtype = temp x1, x2 = xs f1, f2 = fs status = np.full_like(x1, eim._EINPROGRESS, dtype=int) # in progress nit, nfev = 0, 2 # two function evaluations performed above xatol = _xtol if xatol is None else xatol xrtol = _rtol if xrtol is None else xrtol fatol = np.finfo(dtype).tiny if fatol is None else fatol frtol = frtol * np.minimum(np.abs(f1), np.abs(f2)) work = _RichResult(x1=x1, f1=f1, x2=x2, f2=f2, x3=None, f3=None, t=0.5, xatol=xatol, xrtol=xrtol, fatol=fatol, frtol=frtol, nit=nit, nfev=nfev, status=status) res_work_pairs = [('status', 'status'), ('x', 'xmin'), ('fun', 'fmin'), ('nit', 'nit'), ('nfev', 'nfev'), ('xl', 'x1'), ('fl', 'f1'), ('xr', 'x2'), ('fr', 'f2')] def pre_func_eval(work): # [1] Figure 1 (first box) x = work.x1 + work.t * (work.x2 - work.x1) return x def post_func_eval(x, f, work): # [1] Figure 1 (first diamond and boxes) # Note: y/n are reversed in figure; compare to BASIC in appendix work.x3, work.f3 = work.x2.copy(), work.f2.copy() j = np.sign(f) == np.sign(work.f1) nj = ~j work.x3[j], work.f3[j] = work.x1[j], work.f1[j] work.x2[nj], work.f2[nj] = work.x1[nj], work.f1[nj] work.x1, work.f1 = x, f def check_termination(work): # [1] Figure 1 (second diamond) # Check for all terminal conditions and record statuses. # See [1] Section 4 (first two sentences) i = np.abs(work.f1) < np.abs(work.f2) work.xmin = np.choose(i, (work.x2, work.x1)) work.fmin = np.choose(i, (work.f2, work.f1)) stop = np.zeros_like(work.x1, dtype=bool) # termination condition met # This is the convergence criterion used in bisect. Chandrupatla's # criterion is equivalent to this except with a factor of 4 on `xrtol`. work.dx = abs(work.x2 - work.x1) work.tol = abs(work.xmin) * work.xrtol + work.xatol i = work.dx < work.tol # Modify in place to incorporate tolerance on function value. Note that # `frtol` has been redefined as `frtol = frtol * np.minimum(f1, f2)`, # where `f1` and `f2` are the function evaluated at the original ends of # the bracket. i |= np.abs(work.fmin) <= work.fatol + work.frtol work.status[i] = eim._ECONVERGED stop[i] = True i = (np.sign(work.f1) == np.sign(work.f2)) & ~stop work.xmin[i], work.fmin[i], work.status[i] = np.nan, np.nan, eim._ESIGNERR stop[i] = True i = ~((np.isfinite(work.x1) & np.isfinite(work.x2) & np.isfinite(work.f1) & np.isfinite(work.f2)) | stop) work.xmin[i], work.fmin[i], work.status[i] = np.nan, np.nan, eim._EVALUEERR stop[i] = True return stop def post_termination_check(work): # [1] Figure 1 (third diamond and boxes / Equation 1) xi1 = (work.x1 - work.x2) / (work.x3 - work.x2) phi1 = (work.f1 - work.f2) / (work.f3 - work.f2) alpha = (work.x3 - work.x1) / (work.x2 - work.x1) j = ((1 - np.sqrt(1 - xi1)) < phi1) & (phi1 < np.sqrt(xi1)) f1j, f2j, f3j, alphaj = work.f1[j], work.f2[j], work.f3[j], alpha[j] t = np.full_like(alpha, 0.5) t[j] = (f1j / (f1j - f2j) * f3j / (f3j - f2j) - alphaj * f1j / (f3j - f1j) * f2j / (f2j - f3j)) # [1] Figure 1 (last box; see also BASIC in appendix with comment # "Adjust T Away from the Interval Boundary") tl = 0.5 * work.tol / work.dx work.t = np.clip(t, tl, 1 - tl) def customize_result(res, shape): xl, xr, fl, fr = res['xl'], res['xr'], res['fl'], res['fr'] i = res['xl'] < res['xr'] res['xl'] = np.choose(i, (xr, xl)) res['xr'] = np.choose(i, (xl, xr)) res['fl'] = np.choose(i, (fr, fl)) res['fr'] = np.choose(i, (fl, fr)) return shape return eim._loop(work, callback, shape, maxiter, func, args, dtype, pre_func_eval, post_func_eval, check_termination, post_termination_check, customize_result, res_work_pairs) def _chandrupatla_iv(func, args, xatol, xrtol, fatol, frtol, maxiter, callback): # Input validation for `_chandrupatla` if not callable(func): raise ValueError('`func` must be callable.') if not np.iterable(args): args = (args,) tols = np.asarray([xatol if xatol is not None else 1, xrtol if xrtol is not None else 1, fatol if fatol is not None else 1, frtol if frtol is not None else 1]) if (not np.issubdtype(tols.dtype, np.number) or np.any(tols < 0) or np.any(np.isnan(tols)) or tols.shape != (4,)): raise ValueError('Tolerances must be non-negative scalars.') maxiter_int = int(maxiter) if maxiter != maxiter_int or maxiter < 0: raise ValueError('`maxiter` must be a non-negative integer.') if callback is not None and not callable(callback): raise ValueError('`callback` must be callable.') return func, args, xatol, xrtol, fatol, frtol, maxiter, callback def _chandrupatla_minimize(func, x1, x2, x3, *, args=(), xatol=None, xrtol=None, fatol=None, frtol=None, maxiter=100, callback=None): """Find the minimizer of an elementwise function. For each element of the output of `func`, `_chandrupatla_minimize` seeks the scalar minimizer that minimizes the element. This function allows for `x1`, `x2`, `x3`, and the elements of `args` to be arrays of any broadcastable shapes. Parameters ---------- func : callable The function whose minimizer is desired. The signature must be:: func(x: ndarray, *args) -> ndarray where each element of ``x`` is a finite real and ``args`` is a tuple, which may contain an arbitrary number of arrays that are broadcastable with `x`. ``func`` must be an elementwise function: each element ``func(x)[i]`` must equal ``func(x[i])`` for all indices ``i``. `_chandrupatla` seeks an array ``x`` such that ``func(x)`` is an array of minima. x1, x2, x3 : array_like The abscissae of a standard scalar minimization bracket. A bracket is valid if ``x1 < x2 < x3`` and ``func(x1) > func(x2) <= func(x3)``. Must be broadcastable with one another and `args`. args : tuple, optional Additional positional arguments to be passed to `func`. Must be arrays broadcastable with `x1`, `x2`, and `x3`. If the callable to be differentiated requires arguments that are not broadcastable with `x`, wrap that callable with `func` such that `func` accepts only `x` and broadcastable arrays. xatol, xrtol, fatol, frtol : float, optional Absolute and relative tolerances on the minimizer and function value. See Notes for details. maxiter : int, optional The maximum number of iterations of the algorithm to perform. callback : callable, optional An optional user-supplied function to be called before the first iteration and after each iteration. Called as ``callback(res)``, where ``res`` is a ``_RichResult`` similar to that returned by `_chandrupatla_minimize` (but containing the current iterate's values of all variables). If `callback` raises a ``StopIteration``, the algorithm will terminate immediately and `_chandrupatla_minimize` will return a result. Returns ------- res : _RichResult An instance of `scipy._lib._util._RichResult` with the following attributes. (The descriptions are written as though the values will be scalars; however, if `func` returns an array, the outputs will be arrays of the same shape.) success : bool ``True`` when the algorithm terminated successfully (status ``0``). status : int An integer representing the exit status of the algorithm. ``0`` : The algorithm converged to the specified tolerances. ``-1`` : The algorithm encountered an invalid bracket. ``-2`` : The maximum number of iterations was reached. ``-3`` : A non-finite value was encountered. ``-4`` : Iteration was terminated by `callback`. ``1`` : The algorithm is proceeding normally (in `callback` only). x : float The minimizer of the function, if the algorithm terminated successfully. fun : float The value of `func` evaluated at `x`. nfev : int The number of points at which `func` was evaluated. nit : int The number of iterations of the algorithm that were performed. xl, xm, xr : float The final three-point bracket. fl, fm, fr : float The function value at the bracket points. Notes ----- Implemented based on Chandrupatla's original paper [1]_. If ``x1 < x2 < x3`` are the points of the bracket and ``f1 > f2 <= f3`` are the values of ``func`` at those points, then the algorithm is considered to have converged when ``x3 - x1 <= abs(x2)*xrtol + xatol`` or ``(f1 - 2*f2 + f3)/2 <= abs(f2)*frtol + fatol``. Note that first of these differs from the termination conditions described in [1]_. The default values of `xrtol` is the square root of the precision of the appropriate dtype, and ``xatol=fatol = frtol`` is the smallest normal number of the appropriate dtype. References ---------- .. [1] Chandrupatla, Tirupathi R. (1998). "An efficient quadratic fit-sectioning algorithm for minimization without derivatives". Computer Methods in Applied Mechanics and Engineering, 152 (1-2), 211-217. https://doi.org/10.1016/S0045-7825(97)00190-4 See Also -------- golden, brent, bounded Examples -------- >>> from scipy.optimize._chandrupatla import _chandrupatla_minimize >>> def f(x, args=1): ... return (x - args)**2 >>> res = _chandrupatla_minimize(f, -5, 0, 5) >>> res.x 1.0 >>> c = [1, 1.5, 2] >>> res = _chandrupatla_minimize(f, -5, 0, 5, args=(c,)) >>> res.x array([1. , 1.5, 2. ]) """ res = _chandrupatla_iv(func, args, xatol, xrtol, fatol, frtol, maxiter, callback) func, args, xatol, xrtol, fatol, frtol, maxiter, callback = res # Initialization xs = (x1, x2, x3) temp = eim._initialize(func, xs, args) func, xs, fs, args, shape, dtype = temp # line split for PEP8 x1, x2, x3 = xs f1, f2, f3 = fs phi = dtype.type(0.5 + 0.5*5**0.5) # golden ratio status = np.full_like(x1, eim._EINPROGRESS, dtype=int) # in progress nit, nfev = 0, 3 # three function evaluations performed above fatol = np.finfo(dtype).tiny if fatol is None else fatol frtol = np.finfo(dtype).tiny if frtol is None else frtol xatol = np.finfo(dtype).tiny if xatol is None else xatol xrtol = np.sqrt(np.finfo(dtype).eps) if xrtol is None else xrtol # Ensure that x1 < x2 < x3 initially. xs, fs = np.vstack((x1, x2, x3)), np.vstack((f1, f2, f3)) i = np.argsort(xs, axis=0) x1, x2, x3 = np.take_along_axis(xs, i, axis=0) f1, f2, f3 = np.take_along_axis(fs, i, axis=0) q0 = x3.copy() # "At the start, q0 is set at x3..." ([1] after (7)) work = _RichResult(x1=x1, f1=f1, x2=x2, f2=f2, x3=x3, f3=f3, phi=phi, xatol=xatol, xrtol=xrtol, fatol=fatol, frtol=frtol, nit=nit, nfev=nfev, status=status, q0=q0, args=args) res_work_pairs = [('status', 'status'), ('x', 'x2'), ('fun', 'f2'), ('nit', 'nit'), ('nfev', 'nfev'), ('xl', 'x1'), ('xm', 'x2'), ('xr', 'x3'), ('fl', 'f1'), ('fm', 'f2'), ('fr', 'f3')] def pre_func_eval(work): # `_check_termination` is called first -> `x3 - x2 > x2 - x1` # But let's calculate a few terms that we'll reuse x21 = work.x2 - work.x1 x32 = work.x3 - work.x2 # [1] Section 3. "The quadratic minimum point Q1 is calculated using # the relations developed in the previous section." [1] Section 2 (5/6) A = x21 * (work.f3 - work.f2) B = x32 * (work.f1 - work.f2) C = A / (A + B) # q1 = C * (work.x1 + work.x2) / 2 + (1 - C) * (work.x2 + work.x3) / 2 q1 = 0.5 * (C*(work.x1 - work.x3) + work.x2 + work.x3) # much faster # this is an array, so multiplying by 0.5 does not change dtype # "If Q1 and Q0 are sufficiently close... Q1 is accepted if it is # sufficiently away from the inside point x2" i = abs(q1 - work.q0) < 0.5 * abs(x21) # [1] (7) xi = q1[i] # Later, after (9), "If the point Q1 is in a +/- xtol neighborhood of # x2, the new point is chosen in the larger interval at a distance # tol away from x2." # See also QBASIC code after "Accept Ql adjust if close to X2". j = abs(q1[i] - work.x2[i]) <= work.xtol[i] xi[j] = work.x2[i][j] + np.sign(x32[i][j]) * work.xtol[i][j] # "If condition (7) is not satisfied, golden sectioning of the larger # interval is carried out to introduce the new point." # (For simplicity, we go ahead and calculate it for all points, but we # change the elements for which the condition was satisfied.) x = work.x2 + (2 - work.phi) * x32 x[i] = xi # "We define Q0 as the value of Q1 at the previous iteration." work.q0 = q1 return x def post_func_eval(x, f, work): # Standard logic for updating a three-point bracket based on a new # point. In QBASIC code, see "IF SGN(X-X2) = SGN(X3-X2) THEN...". # There is an awful lot of data copying going on here; this would # probably benefit from code optimization or implementation in Pythran. i = np.sign(x - work.x2) == np.sign(work.x3 - work.x2) xi, x1i, x2i, x3i = x[i], work.x1[i], work.x2[i], work.x3[i], fi, f1i, f2i, f3i = f[i], work.f1[i], work.f2[i], work.f3[i] j = fi > f2i x3i[j], f3i[j] = xi[j], fi[j] j = ~j x1i[j], f1i[j], x2i[j], f2i[j] = x2i[j], f2i[j], xi[j], fi[j] ni = ~i xni, x1ni, x2ni, x3ni = x[ni], work.x1[ni], work.x2[ni], work.x3[ni], fni, f1ni, f2ni, f3ni = f[ni], work.f1[ni], work.f2[ni], work.f3[ni] j = fni > f2ni x1ni[j], f1ni[j] = xni[j], fni[j] j = ~j x3ni[j], f3ni[j], x2ni[j], f2ni[j] = x2ni[j], f2ni[j], xni[j], fni[j] work.x1[i], work.x2[i], work.x3[i] = x1i, x2i, x3i work.f1[i], work.f2[i], work.f3[i] = f1i, f2i, f3i work.x1[ni], work.x2[ni], work.x3[ni] = x1ni, x2ni, x3ni, work.f1[ni], work.f2[ni], work.f3[ni] = f1ni, f2ni, f3ni def check_termination(work): # Check for all terminal conditions and record statuses. stop = np.zeros_like(work.x1, dtype=bool) # termination condition met # Bracket is invalid; stop and don't return minimizer/minimum i = ((work.f2 > work.f1) | (work.f2 > work.f3)) work.x2[i], work.f2[i] = np.nan, np.nan stop[i], work.status[i] = True, eim._ESIGNERR # Non-finite values; stop and don't return minimizer/minimum finite = np.isfinite(work.x1+work.x2+work.x3+work.f1+work.f2+work.f3) i = ~(finite | stop) work.x2[i], work.f2[i] = np.nan, np.nan stop[i], work.status[i] = True, eim._EVALUEERR # [1] Section 3 "Points 1 and 3 are interchanged if necessary to make # the (x2, x3) the larger interval." # Note: I had used np.choose; this is much faster. This would be a good # place to save e.g. `work.x3 - work.x2` for reuse, but I tried and # didn't notice a speed boost, so let's keep it simple. i = abs(work.x3 - work.x2) < abs(work.x2 - work.x1) temp = work.x1[i] work.x1[i] = work.x3[i] work.x3[i] = temp temp = work.f1[i] work.f1[i] = work.f3[i] work.f3[i] = temp # [1] Section 3 (bottom of page 212) # "We set a tolerance value xtol..." work.xtol = abs(work.x2) * work.xrtol + work.xatol # [1] (8) # "The convergence based on interval is achieved when..." # Note: Equality allowed in case of `xtol=0` i = abs(work.x3 - work.x2) <= 2 * work.xtol # [1] (9) # "We define ftol using..." ftol = abs(work.f2) * work.frtol + work.fatol # [1] (10) # "The convergence based on function values is achieved when..." # Note 1: modify in place to incorporate tolerance on function value. # Note 2: factor of 2 is not in the text; see QBASIC start of DO loop i |= (work.f1 - 2 * work.f2 + work.f3) <= 2*ftol # [1] (11) i &= ~stop stop[i], work.status[i] = True, eim._ECONVERGED return stop def post_termination_check(work): pass def customize_result(res, shape): xl, xr, fl, fr = res['xl'], res['xr'], res['fl'], res['fr'] i = res['xl'] < res['xr'] res['xl'] = np.choose(i, (xr, xl)) res['xr'] = np.choose(i, (xl, xr)) res['fl'] = np.choose(i, (fr, fl)) res['fr'] = np.choose(i, (fl, fr)) return shape return eim._loop(work, callback, shape, maxiter, func, args, dtype, pre_func_eval, post_func_eval, check_termination, post_termination_check, customize_result, res_work_pairs)