Abstract

With the increasingly customized product requirements of customers, the manufactured products have the characteristics of multi-variety and small-batch production. A high-quality production scheduling scheme can reduce energy consumption, improve production capacity and processing quality of the enterprise. The high-dimensional many-objective green flexible job shop scheduling problem (Ma-OFJSSP) urgently needs to be solved. However, the existing optimization method are difficult to effectively optimize the Ma-OFJSSP. This study proposes a many-objective flexible job shop scheduling model. An optimization method SV-MA is designed to effectively optimize the Ma-OFJSSP model. The SV-MA memetic algorithm combines an improved strength Pareto evolution method (SPEA2) and the variable neighborhood search method. To effectively distinguish the better solutions and increase the selection pressure of the non-dominated solutions, the fitness calculation method based on the shift-based density estimation strategy is adopted. The SV-MA algorithm designs the variable neighborhood strategy which combines with scheduling knowledge. Finally, in the workshop scheduling benchmarks and the machining workshop engineering case, the feasibility and effectiveness of the proposed model and SV-MA algorithm are verified by comparison with other methods. The production scheduling scheme obtained by the proposed model and SV-MA optimization algorithm can improve production efficiency and reduce energy consumption in the production process.

Highlights

  • The main contributions of this paper are as follows: To effectively distinguish the better solutions and increase the selection pressure of the non-dominated solutions, the fitness calculation method based on the shift-based density estimation strategy is adopted

  • The production scheduling scheme obtained by the proposed model and the SV-MA optimization algorithm can improve production efficiency and reduce energy consumption in the production process

  • This paper adopts the following two neighborhood structures: NN1: The critical operation neighborhood search based on key block

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Summary

Introduction

With the transformation and upgrading of manufacturing industry, production scheduling is becoming more and more important in manufacturing enterprises. A high-quality flexible job shop scheduling scheme can reduce energy consumption and improve the production operation capacity and processing quality of the enterprise [4]. The existing optimization method are difficult to effectively optimize the many-objective green flexible job shop scheduling problem (Ma-OFJSSP). In engineering, realizing the scheduling optimization of the Ma-OFJSSP can increase production capacity, improve the production operation capacity and manufacturing quality, and save energy and reduce consumption. In the high-dimensional many-objective scheduling optimization algorithm, it is necessary to design a suitable chromosome encoding and decoding method. To effectively solve the high-dimensional Ma-OFJSSP, a new memetic algorithm SV-MA method is proposed to optimize the Ma-OFJSSP. The production scheduling scheme obtained by the proposed model and the SV-MA optimization algorithm can improve production efficiency and reduce energy consumption in the production process.

Related Work
Problem and Model Description
Overview of SV-MA Method
Fitness
The Crossover and Mutation Method
Variable Neighborhood Search
The Environment Selection Method
Comparison with Other Algorithms
Engineering Case—The Component Production Factory
Conclusions

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