Energy-efficient scheduling model and method for assembly blocking permutation flow-shop in industrial robotics field

被引:0
|
作者
Min Kong
Peng Wu
Yajing Zhang
Weizhong Wang
Muhammet Deveci
Seifedine Kadry
机构
[1] Anhui Normal University,School of Economics and Management
[2] Hefei University of Technology,School of Management
[3] Turkish Naval Academy,Department of Industrial Engineering
[4] National Defence University,The Bartlett School of Sustainable Construction
[5] University College London,Department of Electrical and Computer Engineering
[6] Lebanese American University,Department of Applied Data Science
[7] Noroff University College,Artificial Intelligence Research Center (AIRC)
[8] Ajman University,MEU Research Unit
[9] Middle East University,undefined
关键词
Efficient-energy scheduling; Industrial robotics; Production assembly; Heuristic algorithm; Meta-heuristic algorithm;
D O I
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中图分类号
学科分类号
摘要
Implementing green and sustainable development strategies has become essential for industrial robot manufacturing companies to fulfill their societal obligations. By enhancing assembly efficiency and minimizing energy consumption in workshops, these enterprises can differentiate themselves in the fiercely competitive market landscape and ultimately bolster their financial gains. Consequently, this study focuses on examining the collaborative assembly challenges associated with three crucial parts: the body, electrical cabinet, and pipeline pack, within the industrial robot manufacturing process. Considering the energy consumption during both active and idle periods of the industrial robot workshop assembly system, this paper presents a multi-stage energy-efficient scheduling model to minimize the total energy consumption. Two classes of heuristic algorithms are proposed to address this model. Our contribution is the restructuring of the existing complex mathematical programming model, based on the structural properties of scheduling sub-problems across multiple stages. This reformation not only effectively reduces the variable scale and eliminates redundant constraints, but also enables the Gurobi solver to tackle large-scale problems. Extensive experimental results indicate that compared to traditional workshop experience, the constructed green scheduling model and algorithm can provide more precise guidance for the assembly process in the workshop. Regarding total energy consumption, the assembly plans obtained through our designed model and algorithm exhibit approximately 3% lower energy consumption than conventional workshop experience-based approaches.
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