Litcius/Paper detail

KMOEA: A Knowledge-Based Multiobjective Algorithm for Distributed Hybrid Flow Shop in a Prefabricated System

Jun-Qing Li, Xiaolong Chen, Peiyong Duan, Jianhui Mou

2021IEEE Transactions on Industrial Informatics102 citationsDOI

Abstract

In this article, a distributed hybrid flow shop scheduling problem with variable speed constraints is considered. To solve it, a knowledge-based adaptive reference points multiobjective algorithm (KMOEA) is developed. In the proposed algorithm, each solution is represented with a 3-D vector, where the factory assignment, machine assignment, operation scheduling, and speed setting are encoded. Then, four problem-specific lemmas are proposed, which are used as the knowledge to guide the main components of the algorithm, including the initialization, global, and local search procedures. Next, an efficient initialization approach is presented, which is embedded with several problem-related initialization rules. Furthermore, a novel Pareto-based crossover heuristic is designed to learn from more promising solutions. To enhance the local search abilities, a speed adjustment local search method is investigated. Finally, a set of instances generated based on the realistic prefabricated production system is tested to verify the efficiency and effectiveness of the proposed algorithm.

Topics & Concepts

InitializationVariable neighborhood searchComputer scienceFlow shop schedulingMathematical optimizationLocal search (optimization)CrossoverPareto principleAlgorithmJob shop schedulingScheduling (production processes)Multi-objective optimizationHeuristicMathematicsArtificial intelligenceMetaheuristicScheduleOperating systemProgramming languageScheduling and Optimization AlgorithmsAdvanced Multi-Objective Optimization AlgorithmsAdvanced Control Systems Optimization