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Multiobjective Optimization of Energy-Efficient JOB-Shop Scheduling With Dynamic Reference Point-Based Fuzzy Relative Entropy

Lijun He, Raymond Chiong, Wenfeng Li, Sandeep Dhakal, Yulian Cao, Yu Zhang

2021IEEE Transactions on Industrial Informatics90 citationsDOI

Abstract

Energy-efficient production scheduling research has received much attention because of the massive energy consumption of the manufacturing process. In this article, we study an energy-efficient job-shop scheduling problem with sequence-dependent setup time, aiming to minimize the makespan, total tardiness and total energy consumption simultaneously. To effectively evaluate and select solutions for a multiobjective optimization problem of this nature, a novel fitness evaluation mechanism (FEM) based on fuzzy relative entropy (FRE) is developed. FRE coefficients are calculated and used to evaluate the solutions. A multiobjective optimization framework is proposed based on the FEM and an adaptive local search strategy. A hybrid multiobjective genetic algorithm is then incorporated into the proposed framework to solve the problem at hand. Extensive experiments carried out confirm that our algorithm outperforms five other well-known multiobjective algorithms in solving the problem.

Topics & Concepts

Mathematical optimizationTardinessJob shop schedulingMulti-objective optimizationEnergy consumptionComputer scienceFuzzy logicEntropy (arrow of time)Flow shop schedulingScheduling (production processes)Evolutionary algorithmMathematicsEngineeringArtificial intelligenceScheduleQuantum mechanicsOperating systemElectrical engineeringPhysicsScheduling and Optimization AlgorithmsAdvanced Multi-Objective Optimization AlgorithmsProcess Optimization and Integration