A common type of problem encountered in mathematics is optimizing nonlinear functions. Many popular algorithms that are currently available for finding nonlinear least squares estimators, a special class of nonlinear problems, are sometimes inadequate. They might not converge to an optimal value, or if they do, it could be to a local rather than global optimum. Genetic algorithms have been applied successfully to function optimization and therefore would bea effective for nonlinear least squares estimation. This paper provides an illustration of a genetic algorithm applied to a simple nonlinear least squares example. © 2004 Taylor & Francis Group, LLC
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A common type of problem encountered in mathematics is optimizing nonlinear functions. Many popular ...
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This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
In conventional least square (LS) regressions for nonlinear problems, it is not easy to obtain analy...
This thesis presents a class of methods for solving nonlinear least squares problems. A comprehensiv...
Abstract---Genetic algorithms represent an efficient global method for nonlinear optimization proble...
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Least squares parameter estimation algorithms for nonlinear systems are investigated based on a nonl...
This paper discusses the trade-off between accuracy, reliability and computing time in global optimi...
In iterative non-linear least-squares fitting, the reliable estimation of initial parameters that le...
Biological research data are often represented using nonlinear model specifications that lend themse...
Adaptive Least Squares Matching (ALSM) is a powerful technique for precisely locating objects in dig...
Abstract. Most processes in the real world are controlled by nonlinear models. This explains the int...
A common type of problem encountered in mathematics is optimizing nonlinear functions. Many popular ...
R software is considered software in which various available functions make it possible to conduct e...
This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
In conventional least square (LS) regressions for nonlinear problems, it is not easy to obtain analy...
This thesis presents a class of methods for solving nonlinear least squares problems. A comprehensiv...
Abstract---Genetic algorithms represent an efficient global method for nonlinear optimization proble...
Abstract: Genetic Algorithm (GA) is a calculus free optimization technique based on principles of na...
Some non-linear optimisation problems are difficult to solve by con-ventional hill-climbing methods,...
The recursive least-squares algorithm with a forgetting factor has been extensively applied and stud...
Least squares parameter estimation algorithms for nonlinear systems are investigated based on a nonl...
This paper discusses the trade-off between accuracy, reliability and computing time in global optimi...
In iterative non-linear least-squares fitting, the reliable estimation of initial parameters that le...
Biological research data are often represented using nonlinear model specifications that lend themse...
Adaptive Least Squares Matching (ALSM) is a powerful technique for precisely locating objects in dig...
Abstract. Most processes in the real world are controlled by nonlinear models. This explains the int...