4.6 Article

Multi-objective migrating bird optimization algorithm for cost-oriented assembly line balancing problem with collaborative robots

期刊

NEURAL COMPUTING & APPLICATIONS
卷 33, 期 14, 页码 8575-8596

出版社

SPRINGER LONDON LTD
DOI: 10.1007/s00521-020-05610-2

关键词

Assembly line balancing; Human-robot collaboration; Collaborative robots; Multi-objective optimization; Migrating bird optimization

资金

  1. National Natural Science Foundation of China [61803287, 51875421]
  2. China Postdoctoral Science Foundation [2018M642928]

向作者/读者索取更多资源

This paper tackles the cost-oriented assembly line balancing problem with collaborative robots by developing a multi-objective mixed-integer programming model to minimize cycle time and total collaborative robot purchasing cost, and using the multi-objective migrating bird optimization algorithm to obtain a set of high-quality Pareto solutions. The developed algorithm produces competing performance in comparison with other existing multi-objective optimization algorithms.
Industries are increasingly looking for opportunities at utilizing collaborative robots in assembly lines to perform the tasks independently or assist the human workers due to the advancement of industry 4.0 technologies. Purchasing cost is one of the important factors to be considered by production managers, while designing or redesigning assembly line when collaborative robots are being utilized. Several objectives are to be optimized in an assembly line balancing problem and optimizing line efficiency along with purchasing cost sometimes results in conflicting situation. This paper presents the first study to tackle the cost-oriented assembly line balancing problem with collaborative robots, where several different types of collaborative robots with different purchasing costs are available and selected. A multi-objective mixed-integer programming model is developed to minimize the cycle time and the total collaborative robot purchasing cost. The multi-objective migrating bird optimization algorithm is developed to obtain a set of high-quality Pareto solutions. This algorithm utilizes the fast non-dominated sorting approach to update the population and develops a restart mechanism to select one solution in the permanent Pareto archive to replace the abandoned solution which remains unchanged for several iterations. The computational study validates that the utilization of the multi-objective model is reasonable and developed algorithm produces competing performance in comparison with multi-objective non-dominated sorting genetic algorithm II, multi-objective simulated annealing algorithm and two multi-objective artificial bee colony algorithms.

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