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A multi-objective differential evolutionary algorithm with angle-based objective space division and parameter adaption for solving sodium gluconate production process and benchmark problems

机译:一种多目标差分进化算法,具有基于角度的目标空间分割和参数适应,用于求解葡萄糖酸钠生产过程和基准问题

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摘要

Convergence and diversity are two main performance indicators in multi-objective evolutionary algorithms. The fitness value in the objective space represents information which guides the evolution. To extract this useful information, a multi-objective differential evolutionary algorithm with angle-based objective space division and parameter adaption is proposed (MODE-ASP). In MODE-ASP, the objective space is split into several subspaces based on angle, and the optimal direction in each subspace is extracted to accelerate the convergence. A probability model is also built to achieve adaption of the parameters along with the evolution of the population. Compared with 5 state-of-the-art algorithms with 20 benchmark functions, MODE-ASP is shown to give a better performance. Moreover, the operating conditions of the sodium gluconate fermentation process are optimized with three proposed objective functions, to improve the utilization rates of equipment and conversion rates effectively. The MODE-ASP is shown to obtain a better Pareto front in this application.
机译:收敛和多样性是多目标进化算法中的两个主要性能指标。客观空间中的健身值代表引导演变的信息。为了提取该有用信息,提出了一种具有基于角度的目标空间分割和参数自适应的多目标差分进化算法(Mode-ASP)。在Mode-ASP中,客观空间被分成基于角度的多个子空间,并提取每个子空间中的最佳方向以加速收敛。建立概率模型以实现参数的适应以及群体的演变。与5个具有20个基准功能的最先进的算法相比,模式-AP显示为更好的性能。此外,葡萄糖酸钠发酵过程的运行条件是用三种提出的目标函数进行优化,以有效地提高设备的利用率和转化率。模式-AP显示在本申请中获得更好的帕累托前线。

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