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  • Search: subject:"Repulsive Particle Swarm method of Global optimization"
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Year of publication
Subject
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Gielis super-formula 2 Repulsive Particle Swarm method of Global optimization 2 empirical 2 estimation 2 fit 2 global 2 local optima 2 nonlinear programming 2 supershapes 2 Bounded rationality 1 Decentralized decision making 1 Elliptic functions 1 Jacobian 1 Jacobian Elliptic functions 1 Least squares multimodal nonlinear curve-fitting 1 Particle Swarm method 1 Ricardo Chacón 1 Weierstrass 1 cellular automata 1 curve fitting 1 data 1 fractals 1 multiple sub-optima 1 multiple sub-optimum 1 parameters 1
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Online availability
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Free 2
Type of publication
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Book / Working Paper 2
Language
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Undetermined 2
Author
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Mishra, SK 2
Institution
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Volkswirtschaftliche Fakultät, Ludwig-Maximilians-Universität München 2
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MPRA Paper 2
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RePEc 2
Showing 1 - 2 of 2
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Least Squares Fitting of Chacón-Gielis Curves by the Particle Swarm Method of Optimization
Mishra, SK - Volkswirtschaftliche Fakultät, … - 2006
Ricardo Chacón generalized Johan Gielis's superformula by introducing elliptic functions in place of trigonometric functions. In this paper an attempt has been made to fit the Chacón-Gielis curves (modified by various functions) to simulated data by the least squares principle. Estimation has...
Persistent link: https://www.econbiz.de/10005621577
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Global Optimization by Particle Swarm Method:A Fortran Program
Mishra, SK - Volkswirtschaftliche Fakultät, … - 2006
Programs that work very well in optimizing convex functions very often perform poorly when the problem has multiple local minima or maxima. They are often caught or trapped in the local minima/maxima. Several methods have been developed to escape from being caught in such local optima. The...
Persistent link: https://www.econbiz.de/10005626839
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