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Control Vector Parameterization‐Based Adaptive Invasive Weed Optimization for Dynamic Processes
Authors:Jing Tian  Panpan Zhang  Yalin Wang  Xinggao Liu  Chunhua Yang  Jiangang Lu  Weihua Gui  Youxian Sun
Affiliation:1. Zhejiang University, College of Control Science and Engineering, State Key Laboratory of Industry Control Technology, Hangzhou, China;2. Central South University, School of Information Science and Engineering, Changsha, China
Abstract:A novel optimal approach named invasive weed optimization‐control vector parameterization (IWO‐CVP) for chemical dynamic optimization problems is proposed where CVP is used to transform the problem into a nonlinear programming (NLP) problem and an IWO algorithm is then applied to tackle the NLP problem. To improve efficiency, a new adaptive dispersion IWO‐based approach (ADIWO‐CVP) is further suggested to maintain the exploration ability of the algorithm throughout the entire searching procedure. Several classic chemical dynamic optimization problems are tested and detailed comparisons are carried out among ADIWO‐CVP, IWO‐CVP, and other methods. The research results demonstrate that ADIWO‐CVP not only is efficient, but also outperforms IWO‐CVP in terms of both accuracy and convergence speed.
Keywords:Adaptive dispersion  Control vector parameterization  Dynamic optimization  Invasive weed optimization  Nonlinear programming
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