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{{Short description|Functions used to evaluate optimization algorithms}}
In applied mathematics, '''test functions''', known as '''artificial landscapes''', are useful to evaluate characteristics of optimization algorithms, such as [[Rate of convergence|convergence rate]], precision, robustness and general performance.
Here some test functions are presented with the aim of giving an idea about the different situations that optimization algorithms have to face when coping with these kinds of problems. In the first part, some objective functions for single-objective optimization cases are presented. In the second part, test functions with their respective [[Pareto front|Pareto fronts]] for [[multi-objective optimization]] problems (MOP) are given.
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| <math>f(1,1) = 0</math>
| <math>-10\le x,y \le 10</math>
|-▼
| [[Griewank function]]
| <math>f(\boldsymbol{x})= 1+ \frac {1}{4000} \sum _{i=1}^n x_i^2 -\prod _{i=1}^n P_i(x_i)</math>, where <math>P_i(x_i)=\cos \left( \frac {x_i}{\sqrt {i}} \right)</math>
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| [[Himmelblau's function]]
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| [[Image:Shekel_2D.jpg|200px|A Shekel function in 2 dimensions and with 10 maxima]]
| <math>
f(\
</math>
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! Name !! Plot !! Formula !! Global minimum !! Search ___domain
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|| <math>f(x,y) = (1-x)^2 + 100(y-x^2)^2</math>,▼
▲|| <math>f(1.0,1.0) = 0</math>
▲|| <math>-1.5\le x \le 1.5</math>, <math>-0.5\le y \le 2.5</math>
|-
| Rosenbrock function constrained to a disk<ref>{{Cite web|url=https://www.mathworks.com/help/optim/ug/example-nonlinear-constrained-minimization.html?requestedDomain=www.mathworks.com|title=Solve a Constrained Nonlinear Problem - MATLAB & Simulink|website=www.mathworks.com|access-date=2017-08-29}}</ref>
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| '''Keane's bump function'''{{anchor|Keane's bump function}}<ref>{{cite journal |last1=Mishra |first1=Sudhanshu |title=Minimization of Keane’s Bump Function by the Repulsive Particle Swarm and the Differential Evolution Methods |date=5 May 2007 |url=https://econpapers.repec.org/paper/pramprapa/3098.htm |journal=MPRA Paper|publisher=University Library of Munich, Germany}}</ref>
|| [[File:
|| <math>f(\boldsymbol{x
subjected to: <math> 0.75 -
|| <math>
▲|| [[File:Simionescu contour.svg|200px|Simionescu function]]
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||<math>-3\le x,y \le 3</math>.
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* [https://github.com/nathanrooy/landscapes landscapes]▼
==References==
<references/>▼
== External links ==
▲<references/>
▲* [https://github.com/nathanrooy/landscapes landscapes]
{{DEFAULTSORT:Test functions for optimization}}
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