Optimizing Cellular Manufacturing Systems Through Multi-Objective Cobot Coordination and Tool Allocation

S. M. Saleemuddin, Sanjeev Reddy K Hudgikar
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Abstract

Objectives: This study aims to enhance cellular manufacturing systems by optimizing cobot and tool assignments, maximizing flexibility, and minimizing production time, workload imbalances, energy consumption, error rates and rework. Methods: This study employs a sophisticated multi-objective optimization approach, integrating constraints into the cellular manufacturing system using advanced linear or integer programming techniques. The model is designed to dynamically adapt in real-time, allowing for flexibility in response to evolving production needs. We systematically evaluate cobot and tool assignments, balancing conflicting objectives within a comprehensive mathematical framework. The optimization process is fine-tuned to consider machine capacities, part type assignments, and tool compatibility, ensuring the practicality and realism of the proposed solutions. The overarching goal is to identify optimal configurations that minimize production time, workload imbalances, energy consumption, error rates and rework while maximizing system adaptability. Findings: The optimal cobot and tool assignments, determined through the multi-objective optimization model, yielded substantial improvements across critical metrics compared to a scenario without cobots. This data showcases a 26% reduction in production time, a 20% decrease in workload imbalance, a 20% improvement in flexibility, a 28% reduction in energy consumption, and a 26% decrease in error rates and rework when utilizing the proposed multi-objective optimization approach. These tangible improvements underscore the practical benefits of integrating cobots in cellular manufacturing systems.Top of Form Novelty: This study introduces a novel multi-objective optimization approach for cellular manufacturing, enhancing adaptability and efficiency through strategic cobot and tool assignments. Keywords: Cellular Manufacturing Systems, Cobots, Tool Assignment, Multi­Objective Optimization, Production Time, Workload Balancing, Energy Consumption, Error Rates, Flexibility
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通过多目标机器人协调和工具分配优化单元制造系统
研究目的本研究旨在通过优化机器人和工具分配,最大限度地提高灵活性,并最大限度地减少生产时间、工作量不平衡、能源消耗、错误率和返工率,从而增强单元制造系统。研究方法本研究采用了一种复杂的多目标优化方法,利用先进的线性或整数编程技术将约束条件整合到单元制造系统中。该模型可实时动态调整,灵活应对不断变化的生产需求。我们系统地评估了机器人和工具的分配,在一个全面的数学框架内平衡了相互冲突的目标。我们对优化过程进行了微调,以考虑机器能力、零件类型分配和工具兼容性,从而确保所提解决方案的实用性和现实性。总体目标是确定最佳配置,最大限度地减少生产时间、工作量不平衡、能耗、错误率和返工,同时最大限度地提高系统适应性。研究结果通过多目标优化模型确定的最佳 cobot 和工具分配,与没有 cobot 的情况相比,在各项关键指标上都有显著改善。这些数据表明,利用所提出的多目标优化方法,生产时间减少了 26%,工作量不平衡减少了 20%,灵活性提高了 20%,能耗降低了 28%,错误率和返工率降低了 26%。这些实实在在的改进凸显了将机器人集成到单元化制造系统中的实际好处。 顶部新颖性:本研究为单元化制造引入了一种新颖的多目标优化方法,通过战略性的机器人和工具分配提高了适应性和效率。关键词细胞制造系统、机器人、工具分配、多目标优化、生产时间、工作量平衡、能耗、错误率、灵活性
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