Extremal-Micro Genetic Algorithm Model for Time-Cost Optimization with Optimal Labour Productivity

Sivakumar A, Bagath Singh N, S. P, Karthi Vinith K.S.
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Abstract

In a highly competitive manufacturing environment, it is critical to balance production time and cost simultaneously. Numerous attempts have been made to provide various solutions to strike a balance between these factors. However, more effort is still required to address these challenges in terms of labour productivity. This study proposes an integrated substitution and management improvement technique for enhancing the effectiveness of labour resources and equipment. Furthermore, in the context of time-cost optimization with optimal labour productivity, an extremal-micro genetic algorithm (Ex-μGA) model has been proposed. A real-world case from the labour-intensive medium-scale bus body fabricating industry is used to validate the proposed model performance. According to the results, the proposed model can optimize production time and cost by 34 % and 19 %, respectively, while maintaining optimal labour productivity. In addition, this study provides an alternative method for dealing with production parameter imbalances and assisting production managers in developing labour schedules more effectively.
具有最优劳动生产率的时间成本优化极值-微遗传算法模型
在竞争激烈的制造业环境中,平衡生产时间和成本是至关重要的。为了在这些因素之间取得平衡,已经进行了许多尝试,以提供各种解决办法。然而,在劳动生产率方面,仍需要作出更多努力来应对这些挑战。本研究提出一种整合替代与管理改进技术,以提升劳动资源与设备的效能。在时间成本优化和最优劳动生产率的背景下,提出了一种极限微遗传算法(Ex-μGA)模型。以劳动密集型中型客车车身制造行业为例,验证了所提模型的性能。结果表明,该模型在保持最优劳动生产率的前提下,可使生产时间和成本分别优化34%和19%。此外,本研究提供了另一种方法来处理生产参数不平衡,并协助生产经理更有效地制定劳动时间表。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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