Evolutionary optimization with adaptive surrogates and its application in crude oil distillation

Xuhua Shi, Chudong Tong, Li Wang
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引用次数: 4

Abstract

Surrogate modelling and model management are key points for evolutionary optimization of chemical processes. This paper proposes an evolutionary algorithm with the help of adaptive surrogate functions (EASF), in which approximate models' establishment and management are combined to search the optimal result. To construct an appropriate surrogate model, a new hybrid modelling framework with adaptive Radial Basis Functions (RBF) (ARBF) is put forward. Different from most neural network modelling methods, ARBF is able to adaptively adjust the sample size by current approximation errors to effectively take into account the tradeoff between approximation accuracy and sample size. For model management, an approximation error fuzzy control strategy (AEFCS) is introduced. AEFCS in combination with ARBF can effectively perform exploratory and exploitative search in the evolutionary optimization. The superiority of EASF is demonstrated by the simulation results on three benchmark problems. To illustrate the performance of EASF further, it is employed to optimize the operating conditions of crude oil distillation process, and satisfactory results are obtained.
自适应代理的进化优化及其在原油蒸馏中的应用
代理建模和模型管理是化工过程进化优化的关键。本文提出了一种基于自适应代理函数(EASF)的进化算法,该算法将近似模型的建立和管理相结合,以搜索最优结果。为了构造合适的代理模型,提出了一种新的自适应径向基函数(RBF)混合建模框架。与大多数神经网络建模方法不同,ARBF能够根据当前逼近误差自适应调整样本量,有效地考虑了逼近精度和样本量之间的权衡。在模型管理方面,引入近似误差模糊控制策略(AEFCS)。在进化优化中,AEFCS与ARBF结合可以有效地进行探索性和利用性搜索。三个基准问题的仿真结果证明了EASF算法的优越性。为了进一步说明EASF的性能,将其应用于原油蒸馏过程的操作条件优化,取得了满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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