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A Genetic Algorithm Based Clustering Approach for Piecewise Linearization of Nonlinear Functions

机译:基于遗传算法的非线性函数分段线性化聚类方法

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In recent years, piecewise linearization has developed as an attractive tool for the representation of various complex nonlinear systems. The piecewise linearization of individual functions provide a platform for the piecewise affine approximation of nonlinear systems containing a large number of scaler valued nonlinear functions. Inspite of the wide application of piecewise linearization, the optimal approximation of a continuous time nonlinear function by the minimum number of piecewise linearised functions has not been addressed properly in literature. This paper deals with an evolutionary optimization based clustering approach for obtaining the optimal piecewise linear approximation of a class of nonlinear functions. The technique is based on the trade-off between increasing the approximation accuracy and simplifying the approximation by the minimum number of linearized sectors. The technique has been successfully applied to some common nonlinear functions.
机译:近年来,分段线性化已成为各种复杂非线性系统表示的有吸引力的工具。各个功能的分段线性化为包含大量缩放器值的非线性功能的非线性系统的分段仿射近似提供了平台。在广泛应用的广泛应用中,通过在文献中正确地解决了通过最小分段线性功能的连续时间非线性函数的最佳逼近。本文涉及基于进化优化的聚类方法,用于获得一类非线性函数的最优分段线性近似。该技术基于增加近似精度和通过最小线性化扇区简化近似之间的权衡。该技术已成功应用于某种常见的非线性功能。

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