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'''Adaptive Simpson's method''', also called '''adaptive Simpson's rule''', is a method of [[numerical integration]] proposed by G.F. Kuncir in 1962.<ref name="kuncir">{{Citation|author=G.F. Kuncir|title=Algorithm 103: Simpson's rule integrator|journal=Communications of the ACM|volume=5|issue=6|page=347|year=1962}}</ref> It is probably the first recursive adaptive algorithm for numerical integration to appear in print,<ref name="henriksson">For an earlier, non-recursive adaptive integrator more reminiscent of [[Numerical ordinary differential equations|ODE solvers]], see {{Citation|author=S. Henriksson|title=Contribution no. 2: Simpson numerical integration with variable length of step|journal=BIT Numerical Mathematics|volume=1|page=290|year=1961}}</ref> although more modern adaptive methods based on [[Gauss–Kronrod quadrature formula|Gauss–Kronrod quadrature]] and [[Clenshaw–Curtis quadrature]] are now generally preferred. Adaptive Simpson's method uses an estimate of the error we get from calculating a definite integral using [[Simpson's rule]].  If the error exceeds a user-specified tolerance, the algorithm calls for subdividing the interval of integration in two and applying adaptive Simpson's method to each subinterval in a recursive manner.  The technique is usually much more efficient than [[Composite simpson's rule|composite Simpson's rule]] since it uses fewer function evaluations in places where the function is well-approximated by a [[cubic function]].
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A criterion for determining when to stop subdividing an interval, suggested by J.N. Lyness,<ref name="lyness">{{Citation|author=J.N. Lyness|title=Notes on the adaptive Simpson quadrature routine|journal=Journal of the ACM|volume=16|issue=3|pages=483–495|year=1969}}</ref>  is
 
:<math>|S(a,c) + S(c,b) - S(a,b)|/15 < \epsilon \,</math>
 
where <math>[a,b]\,\!</math> is an interval with midpoint <math>c\,\!</math>, <math>S(a,b)\,\!</math>, <math>S(a,c)\,\!</math>, and <math>S(c,b)\,\!</math> are the estimates given by Simpson's rule on the corresponding intervals and <math>\epsilon\,\!</math> is the desired tolerance for the interval.
 
[[Simpson's rule]] is an interpolatory quadrature rule which is exact when the integrand is a polynomial of degree three or lower. Using [[Richardson extrapolation]], the more accurate Simpson estimate <math>S(a,c) + S(c,b)\,</math> for six function values is combined with the less accurate estimate <math>S(a,b)\,</math> for three function values by applying the correction <math>[S(a,c) + S(c,b) - S(a,b)]/15 \,</math>. The thus obtained estimate is exact for polynomials of degree five or less.
 
==Sample implementations ==
===Python===
Here is an implementation of adaptive Simpson's method in [[Python (programming language)|Python]]. Note that this is explanatory code, without regard for efficiency. Every call to recursive_asr entails six function evaluations. For actual use, one will want to modify it so that the minimum of two function evaluations are performed.
 
<source lang="python">
def simpsons_rule(f,a,b):
    c = (a+b) / 2.0
    h3 = abs(b-a) / 6.0
    return h3*(f(a) + 4.0*f(c) + f(b))
 
def recursive_asr(f,a,b,eps,whole):
    "Recursive implementation of adaptive Simpson's rule."
    c = (a+b) / 2.0
    left = simpsons_rule(f,a,c)
    right = simpsons_rule(f,c,b)
    if abs(left + right - whole) <= 15*eps:
        return left + right + (left + right - whole)/15.0
    return recursive_asr(f,a,c,eps/2.0,left) + recursive_asr(f,c,b,eps/2.0,right)
 
def adaptive_simpsons_rule(f,a,b,eps):
    "Calculate integral of f from a to b with max error of eps."
    return recursive_asr(f,a,b,eps,simpsons_rule(f,a,b))
 
from math import sin
print adaptive_simpsons_rule(sin,0,1,.000000001)
</source>
 
===C===
Here is an implementation of the adaptive Simpson's method in C99 that avoids redundant evaluations of f and quadrature computations.
The amount of memory used is O(D) where D is the maximum recursion depth. Each stack frame caches computed values
that may be needed in subsequent calls.
 
<source lang="C">
 
#include <math.h> // include file for fabs and sin
#include <stdio.h> // include file for printf
//
// Recursive auxiliary function for adaptiveSimpsons() function below
//                                                                                               
double adaptiveSimpsonsAux(double (*f)(double), double a, double b, double epsilon,               
                        double S, double fa, double fb, double fc, int bottom) {               
  double c = (a + b)/2, h = b - a;                                                                 
  double d = (a + c)/2, e = (c + b)/2;                                                             
  double fd = f(d), fe = f(e);                                                                     
  double Sleft = (h/12)*(fa + 4*fd + fc);                                                         
  double Sright = (h/12)*(fc + 4*fe + fb);                                                         
  double S2 = Sleft + Sright;                                                                     
  if (bottom <= 0 || fabs(S2 - S) <= 15*epsilon)                                                   
    return S2 + (S2 - S)/15;                                                                       
  return adaptiveSimpsonsAux(f, a, c, epsilon/2, Sleft,  fa, fc, fd, bottom-1) +                   
        adaptiveSimpsonsAux(f, c, b, epsilon/2, Sright, fc, fb, fe, bottom-1);                   
}       
 
//
// Adaptive Simpson's Rule
//
double adaptiveSimpsons(double (*f)(double),  // ptr to function
                          double a, double b,  // interval [a,b]
                          double epsilon,  // error tolerance
                          int maxRecursionDepth) {  // recursion cap       
  double c = (a + b)/2, h = b - a;                                                                 
  double fa = f(a), fb = f(b), fc = f(c);                                                         
  double S = (h/6)*(fa + 4*fc + fb);                                                               
  return adaptiveSimpsonsAux(f, a, b, epsilon, S, fa, fb, fc, maxRecursionDepth);                 
}                                                                                                 
 
int main(){
double I = adaptiveSimpsons(sin, 0, 1, 0.000000001, 10); // compute integral of sin(x)
                                                          // from 0 to 1 and store it in
                                                          // the new variable I
printf("I = %lf\n",I); // print the result
return 0;
}
 
                                                                                     
</source>
 
===Racket===
Here is an implementation of the adaptive Simpson method in [[Racket (programming language)|Racket]] with a behavioral software contract. The exported function computes the indeterminate integral for some given function ''f''.
 
<source lang="Lisp">
;; -----------------------------------------------------------------------------
;; interface, with contract
 
;; Simpson's rule for approximating an integral
(define (simpson f L R)
  (* (/ (- R L) 6) (+ (f L) (* 4 (f (mid L R))) (f R))))
 
(provide/contract
[adaptive-simpson
  (->i ((f (-> real? real?)) (L real?) (R  (L) (and/c real? (>/c L))))
      (#:epsilon (ε real?))
      (r real?))]
[step (-> real? real?)])
 
 
;; -----------------------------------------------------------------------------
;; implementation
 
(define (adaptive-simpson f L R #:epsilon [ε .000000001])
  (define f@L (f L))
  (define f@R (f R))
  (define-values (M f@M whole) (simpson-1call-to-f f L f@L R f@R))
  (asr f L f@L R f@R ε whole M f@M))
 
;; computationally efficient: 2 function calls per step
(define (asr f L f@L R f@R ε whole M f@M)
  (define-values (leftM  f@leftM  left*)  (simpson-1call-to-f f L f@L M f@M))
  (define-values (rightM f@rightM right*) (simpson-1call-to-f f M f@M R f@R))
  (define delta* (- (+ left* right*) whole))
  (cond
    [(<= (abs delta*) (* 15 ε)) (+ left* right* (/ delta* 15))]
    [else (define epsilon1 (/ ε 2))
          (+ (asr f L f@L M f@M epsilon1 left*  leftM  f@leftM)
            (asr f M f@M R f@R epsilon1 right* rightM f@rightM))]))
 
(define (simpson-1call-to-f f L f@L R f@R)
  (define M (mid L R))
  (define f@M (f M))
  (values M f@M (* (/ (abs (- R L)) 6) (+ f@L (* 4 f@M) f@R))))
 
(define (mid L R) (/ (+ L R) 2.))
</source>
The code is an excerpt of a "#lang racket" module and that includes a (require rackunit) line.
 
==Bibliography==
<references/>
 
==External links==
*[http://math.fullerton.edu/mathews/n2003/AdaptiveQuadMod.html Module for Adaptive Simpson's Rule]
 
[[Category:Numerical integration (quadrature)]]

Latest revision as of 06:29, 9 February 2014

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