基于自适应Levy突变和差分进化的极值优化混合算法及其应用

Fu Xiaogang, Yu Jingshou
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引用次数: 2

摘要

提出了一种基于自适应levy突变和差分进化的极值优化混合算法。它采用了全局搜索和局部搜索相结合的思想。在全局搜索过程中,DE是一种基于群体差异的进化算法,可以快速逼近近似最优解。在局部搜索过程中,具有自适应lsamvy变异的EO算法作为一种强大的局部搜索能力,帮助DE算法从局部最大值点中求出。仿真研究和应用证明了该算法具有较强的全局搜索能力和较强的抗早收敛能力。然后应用HEODE训练人工神经网络,构建了一个实用的加氢裂化装置主分馏塔燃油端点软传感器。仿真结果表明,本文提出的方法在航油端点软测量中是可行和有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Algorithm Based on Extremal Optimization with Adaptive Levy Mutation and Differential Evolution and Application
A hybrid algorithm based on Extremal Optimization (EO) with adaptive levy mutation and Differential Evolution (HEODE) was proposed in this paper. It applied the idea of combination mechanism of global and local search. In the process of the global search, DE is an evolutionary algorithm based on the difference in group that can quickly approach a approximate optimal solution. During the local search, as a powerful local search capabilities algorithm EO with adaptive lévy mutation helps DE out of local maximum points. Simulation study and its application have proved its capability of strong global search and high immunity against premature convergence. Then HEODE is applied to train artificial neural network to construct a practical soft-sensor of jet fuel endpoint of main fractionator of hydrocracking unit. The obtained results indicate that the new method proposed by this paper is feasible and effective in soft-sensing of jet fuel endpoint.
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