"Harnessing the Power of Artificial Intelligence in Flexible Manufacturing Systems: Enhancing Efficiency, Adaptability, and Competitiveness"

4 Pub Date : 2023-12-16 DOI:10.46632/cset/1/4/2
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Abstract

A promising paradigm in contemporary manufacturing is the fusion of Artificial Intelligence (AI) technology with Flexible Manufacturing Systems (FMS). FMS, characterized by their ability to adapt to dynamic production demands, have found a perfect ally in AI, which offers advanced capabilities in data analysis, decision-making, and process optimization. This abstract provides an overview of the synergistic relationship between AI and FMS and highlights the potential benefits and challenges associated with their integration. Firstly, this abstract explores the role of AI in FMS, focusing on three key areas: planning and scheduling, intelligent control, and predictive maintenance. FMS is equipped with AI technologies like machine learning and deep learning to quickly analyze massive amounts of data, spot trends, and make precise predictions. These capabilities enhance production planning by optimizing resource allocation, reducing setup time, and minimizing production downtime. Additionally, intelligent control systems powered by AI enable real-time adjustments in response to changing conditions, leading to improved system flexibility, agility, and responsiveness. Due to a number of strong arguments, the combination of Flexible Manufacturing Systems (FMS) with Artificial Intelligence (AI) is of great research significance. The research significance of combining AI with Flexible Manufacturing Systems lies in the potential to significantly enhance operational efficiency, adaptability, and decision-making capabilities in manufacturing. This integration enables manufacturers to optimize resource utilization, mitigate downtime, and proactively manage maintenance, ultimately leading to improved productivity, cost savings, and competitiveness. By addressing the challenges and exploring the opportunities offered by AI in FMS, researchers can contribute to the advancement and transformation of the manufacturing industry. Due to the abundance of possibilities offered on the global market, conflicting situations can develop while choosing a certain motorcycle. There may be many alternatives to the initial choice or there may not always be a fixed amount of possibilities available. The possibility of not having an acceptable option for the criterion exists as well. “Multiple Criteria Decision Making” is a technique designed for the optimization of problems with an “infinite or finite number of choices” and the MCDM technique. “WSM method” is used to optimize the process in this paper. In artificial intelligence with flexible manufacturing system evaluated six criteria and got the values. in that values .FMS 1 has got the first rank, FMS 2 got the second rank,FMS 3 got the third rank and FMS 4 got the last rank.In conclusion, the integration of AI with Flexible Manufacturing Systems offers numerous opportunities for enhanced operational efficiency, productivity, and adaptability.
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"在柔性制造系统中利用人工智能的力量:提高效率、适应性和竞争力"
人工智能(AI)技术与柔性制造系统(FMS)的融合是当代制造业中一种前景广阔的模式。柔性制造系统的特点是能够适应动态的生产需求,而人工智能则为其提供了完美的盟友,能够在数据分析、决策和流程优化方面提供先进的能力。本摘要概述了人工智能与 FMS 之间的协同关系,并强调了两者融合的潜在优势和挑战。首先,本摘要探讨了人工智能在 FMS 中的作用,重点关注三个关键领域:计划与调度、智能控制和预测性维护。FMS 配备了机器学习和深度学习等人工智能技术,可快速分析海量数据、发现趋势并做出精确预测。这些功能通过优化资源配置、缩短设置时间和减少生产停机时间来加强生产规划。此外,由人工智能驱动的智能控制系统可根据不断变化的条件进行实时调整,从而提高系统的灵活性、敏捷性和响应能力。由于一系列强有力的论据,柔性制造系统(FMS)与人工智能(AI)的结合具有重要的研究意义。将人工智能与柔性制造系统相结合的研究意义在于,它有可能显著提高制造业的运营效率、适应性和决策能力。这种整合使制造商能够优化资源利用、减少停机时间并主动管理维护,最终提高生产率、节约成本并增强竞争力。通过应对 FMS 中人工智能带来的挑战和探索其带来的机遇,研究人员可以为制造业的进步和转型做出贡献。由于全球市场提供了大量可能性,在选择某种摩托车时可能会出现相互冲突的情况。除了最初的选择之外,可能还有许多其他选择,也可能并不总是有固定数量的可能性可供选择。也有可能没有一个可接受的标准选项。"多重标准决策 "是一种专门用于优化 "无限或有限选择 "问题的技术,也是 MCDM 技术。本文采用 "WSM 方法 "来优化流程。总之,人工智能与柔性制造系统的整合为提高运营效率、生产力和适应性提供了大量机会。
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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