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Multi-objective optimization of arc welding parameters: the trade-offs between energy and thermal efficiency

机译:电弧焊参数的多目标优化:能量和热效率之间的权衡

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Arc welding is a common joining method, which is usually characterized by high energy consumption and low energy efficiency. With the recent focus on energy management and carbon emissions, energy saving has become a priority for manufacturing industry. In the past, energy saving technologies for welding had primarily aim for heat source improvement, with less emphasis on parameter optimization. It is obvious that parameter optimization methods for energy reduction can be applied to existing equipment where large investments are not required. Therefore, a multi-objective optimization method based on Fitness Sharing Genetic Algorithm (FSGA) is proposed for energy reduction and thermal efficiency improvement of arc welding process in this paper. Two objectives including energy consumption and thermal efficiency are considered in the optimization model with two independent variables, namely welding current and welding velocity. Additionally, the limits of the variables and welding quality are also considered. A case study of rail track joints using Shielded Metal Arc Welding (SMAW) is conducted for the verification of the proposed optimization method. Finally, the optimization method and results are analyzed with the actual data and Genetic Algorithm (GA) respectively. Comparison with actual data shows that the proposed approach has a more significant effect on energy saving and thermal efficiency improvement. The optimization analysis shows that FSGA has a better population diversity and global search capability compared with GA. (C) 2016 Published by Elsevier Ltd.
机译:电弧焊是一种常见的焊接方法,通常具有能耗高,能量效率低的特点。随着近来对能源管理和碳排放的关注,节能已成为制造业的首要任务。过去,焊接节能技术的主要目的是改善热源,而很少强调参数优化。显然,用于节能的参数优化方法可以应用于不需要大量投资的现有设备。因此,本文提出了一种基于适应度共享遗传算法(FSGA)的多目标优化方法,以减少电弧焊接过程的能耗并提高热效率。在优化模型中考虑了两个目标,包括能耗和热效率,该目标具有两个独立变量,即焊接电流和焊接速度。此外,还应考虑变量的限制和焊接质量。进行了使用屏蔽金属弧焊(SMAW)的铁路轨道接头案例研究,以验证所提出的优化方法。最后,分别以实际数据和遗传算法(GA)分析了优化方法和结果。与实际数据的比较表明,所提出的方法对节能和提高热效率具有更大的影响。优化分析表明,与GA相比,FSGA具有更好的种群多样性和全局搜索能力。 (C)2016由Elsevier Ltd.出版

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