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一种用于动态作业车间调度的遗传编程进化紧凑调度规则的新型特征选择方法

A novel feature selection for evolving compact dispatching rules using genetic programming for dynamic job shop scheduling

International Journal of Production Research · 2022
被引 53
ABS 3

中文导读

提出一种自适应特征选择机制,通过估计终端权重来缩小搜索空间,在保持解质量的同时生成更可解释的调度规则,并缩短计算时间。

Abstract

Because of advances in computational power and machine learning algorithms, the automated design of scheduling rules using Genetic Programming (GP) is successfully applied to solve dynamic job shop scheduling problems. Although GP-evolved rules usually outperform dispatching rules reported in the literature, intensive computational costs and rule interpretability persist as important limitations. Furthermore, the importance of features in the terminal set varies greatly among scenarios. The inclusion of irrelevant features broadens the search space. Therefore, proper selection of features is necessary to increase the convergence speed and to improve rule understandability using fewer features. In this paper, we propose a new representation of the GP rules that abstracts the importance of each terminal. Moreover, an adaptive feature selection mechanism is developed to estimate terminals’ weights from earlier generations in restricting the search space of the current generation. The proposed approach is compared with three GP algorithms from the literature and 30 human-made rules from the literature under different job shop configurations and scheduling objectives, including total weighted tardiness, mean tardiness, and mean flow time. Experimentally obtained results demonstrate that the proposed approach outperforms methods from the literature in generating more interpretable rules in a shorter computational time without sacrificing solution quality.

作业车间调度遗传编程特征选择调度规则可解释性