Litcius/Paper detail

An improved genetic algorithm with dynamic neighborhood search for job shop scheduling problem

Kongfu Hu, Lei Wang, Jingcao Cai, Long Cheng

2023Mathematical Biosciences & Engineering13 citationsDOIOpen Access PDF

Abstract

The job shop scheduling problem (JSP) has consistently garnered significant attention. This paper introduces an improved genetic algorithm (IGA) with dynamic neighborhood search to tackle job shop scheduling problems with the objective of minimization the makespan. An inserted operation based on idle time is introduced during the decoding phase. An improved POX crossover operator is presented. A novel mutation operation is designed for searching neighborhood solutions. A new genetic recombination strategy based on a dynamic gene bank is provided. The elite retention strategy is presented. Several benchmarks are used to evaluate the algorithm's performance, and the computational results demonstrate that IGA delivers promising and competitive outcomes for the considered JSP.

Topics & Concepts

Job shop schedulingCrossoverComputer scienceMathematical optimizationMinificationScheduling (production processes)IdleFlow shop schedulingMathematicsScheduleArtificial intelligenceOperating systemScheduling and Optimization AlgorithmsAdvanced Manufacturing and Logistics OptimizationMetaheuristic Optimization Algorithms Research