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首页> 外文期刊>Engineering Optimization >Dynamic optimization of chemical engineering problems using a control vector parameterization method with an iterative genetic algorithm
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Dynamic optimization of chemical engineering problems using a control vector parameterization method with an iterative genetic algorithm

机译:使用迭代遗传算法的控制矢量参数化方法动态优化化学工程问题

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摘要

An approach that combines genetic algorithm (GA) and control vector parameterization (CVP) is proposed to solve the dynamic optimization problems of chemical processes using numerical methods. In the new CVP method, control variables are approximated with polynomials based on state variables and time in the entire time interval. The iterative method, which reduces redundant expense and improves computing efficiency, is used with GA to reduce the width of the search region. Constrained dynamic optimization problems are even more difficult. A new method that embeds the information of infeasible chromosomes into the evaluation function is introduced in this study to solve dynamic optimization problems with or without constraint. The results demonstrated the feasibility and robustness of the proposed methods. The proposed algorithm can be regarded as a useful optimization tool, especially when gradient information is not available.
机译:提出了一种结合遗传算法(GA)和控制矢量参数化(CVP)的方法,以数值方法解决化学过程的动态优化问题。在新的CVP方法中,基于状态变量和整个时间间隔中的时间,使用多项式来近似控制变量。与GA配合使用的迭代方法可减少冗余费用并提高计算效率,以减少搜索区域的宽度。受约束的动态优化问题甚至更加困难。为了解决有或没有约束的动态优化问题,本文引入了一种将不可行染色体信息嵌入评估函数的新方法。结果证明了所提方法的可行性和鲁棒性。所提出的算法可以被视为有用的优化工具,尤其是在没有梯度信息的情况下。

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