학술논문

Task Relatedness-Based Multitask Genetic Programming for Dynamic Flexible Job Shop Scheduling
Document Type
Periodical
Source
IEEE Transactions on Evolutionary Computation IEEE Trans. Evol. Computat. Evolutionary Computation, IEEE Transactions on. 27(6):1705-1719 Dec, 2023
Subject
Computing and Processing
Task analysis
Job shop scheduling
Optimization
Knowledge transfer
Shape
Dynamic scheduling
Heuristic algorithms
Adaptive strategy
assisted task selection
dynamic flexible job shop scheduling (DFJSS)
genetic programming (GP)
multitask learning
Language
ISSN
1089-778X
1941-0026
Abstract
Multitask learning has been successfully used in handling multiple related tasks simultaneously. In reality, there are often many tasks to be solved together, and the relatedness between them is unknown in advance. In this article, we focus on the multitask genetic programming (GP) for the dynamic flexible job shop scheduling (DFJSS) problems, and address two challenges. The first is how to measure the relatedness between tasks accurately. The second is how to select task pairs to transfer knowledge during the multitask learning process. To measure the relatedness between DFJSS tasks, we propose a new relatedness metric based on the behavior distributions of the variable-length GP individuals. In addition, for more effective knowledge transfer, we develop an adaptive strategy to choose the most suitable assisted task for the target task based on the relatedness information between tasks. The findings show that in all of the multitask scenarios studied, the proposed algorithm can substantially increase the effectiveness of the learned scheduling heuristics for all the desired tasks. The effectiveness of the proposed algorithm has also been verified by the analysis of task relatedness and structures of the evolved scheduling heuristics, and the discussions of population diversity and knowledge transfer.