基于线性回归的自主智能优化,解决受限多目标问题

Yan Wang;Xiaoyan Sun;Yong Zhang;Dunwei Gong;Hejuan Hu;Mingcheng Zuo
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摘要

由于现有算法的性能参差不齐,要自主生成适用于受限多目标优化问题的算法非常具有挑战性。本文提出了一种基于线性回归(LR)的自主智能优化方法。它首先通过集中采样提取约束多目标优化问题的典型特征,形成特征向量。然后,设计一个 LR 模型来学习优化问题与智能优化算法(IOA)之间的关系。最后,训练有素的模型通过输入特征向量自主生成合适的 IOA。所提出的方法被应用于六个具有不同特征的受限多目标基准测试集,并与七种流行的优化算法进行了比较。实验结果验证了所提方法的有效性。此外,还将所提方法用于解决煤矿综合能源系统的运行优化问题,实验结果表明了该方法的实用性。
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Linear Regression-Based Autonomous Intelligent Optimization for Constrained Multiobjective Problems
It is very challenging to autonomously generate algorithms suitable for constrained multiobjective optimization problems due to the diverse performance of existing algorithms. In this article, we propose a linear regression (LR)-based autonomous intelligent optimization method. It first extracts typical features of a constrained multiobjective optimization problem by focused sampling to form a feature vector. Then, a LR model is designed to learn the relationship between optimization problems and intelligent optimization algorithms (IOAs). Finally, the trained model autonomously generates a suitable IOA by inputting the feature vector. The proposed method is applied to six constrained multiobjective benchmark test sets with various characteristics and compared with seven popular optimization algorithms. The experimental results verify the effectiveness of the proposed method. In addition, the proposed method is used to solve the operation optimization problems of an integrated coal mine energy system, and the experimental results show its practicability.
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