Wenxuan Fang;Wei Du;Guo Yu;Renchu He;Yang Tang;Yaochu Jin
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引用次数: 0

摘要

汽油调和调度具有挑战性,涉及多个相互冲突的目标和一个包含许多混合整数的巨大决策空间。鉴于这些困难,一种有前途的解决方案是使用基于偏好的多目标进化算法(PBMOEAs)。然而,在实际应用中,决策者的适当偏好往往很难从他们的操作经验中归纳和总结出来。本文提出了一种新的框架,称为基于偏好预测的多目标进化优化(PP-EMO)。在 PP-EMO 中,当我们向基于机器学习的偏好预测模型输入优化环境时,该模型可自动从历史操作经验中获取新环境下的合适偏好。我们发现,预测的偏好能够指导优化工作,从而有效地获得一组有前景的调度方案。最后,我们进行了各种环境下的对比测试,实验结果表明,所提出的 PP-EMO 框架优于现有方法。在苛刻的运行条件下,与无偏好相比,PP-EMO 降低了约 25% 的运行成本,减少了 50% 的混合误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preference Prediction-Based Evolutionary Multiobjective Optimization for Gasoline Blending Scheduling
Gasoline blending scheduling is challenging, involving multiple conflicting objectives and a large decision space with many mixed integers. Due to these difficulties, one promising solution is to use preference-based multiobjective evolutionary algorithms (PBMOEAs). However, in practical applications, suitable preferences of decision makers are often difficult to generalize and summarize from their operational experience. This article proposes a novel framework called preference prediction-based evolutionary multiobjective optimization (PP-EMO). In PP-EMO, suitable preferences for a new environment can be automatically obtained from historical operational experience by a machine learning-based preference prediction model when we feed the model with the input of the optimization environment. We have found that the predicted preference is able to guide the optimization to efficiently obtain a set of promising scheduling scenarios. Finally, we conducted comparative tests across various environments, and the experimental results demonstrate that the proposed PP-EMO framework outperforms existing methods. Compared with no preference, PP-EMO reduces operating costs by about 25% and decreases blending errors by 50% under demanding operational conditions.
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CiteScore
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