回顾智能制造中机器学习的策略、挑战和伦理影响

Yassmin Seid Ahmed , Abbas S. Milani
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引用次数: 0

摘要

制造组织不断需要创新生产策略,并推进其机器以适应不断变化的业务目标。机器学习和数据挖掘是快速、智能地解决各种复杂制造问题的基本技术。本文回顾了最近来自多个部门的研究,这些研究利用机器学习来开发智能制造过程,同时强调了部分被忽视的关键挑战和领域。在过去的二十年里,学者们已经开发了许多基于人工智能的算法和方法来改善制造过程的输出,其中调度,监控,质量和故障检测是主要关注的领域。本文将智能制造问题分为聚类、分类和回归任务,并讨论了与每个类别相关的基本性能指标。此外,该研究通过讨论工业机器学习实施中的数据隐私、透明度和公平性等重要考虑因素来解决伦理问题。最后,报告强调,许多用户仍然担心是否遵守全球数据保护立法,以及是否需要建立对自主决策系统的信任。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review of strategies, challenges, and ethical implications of machine learning in smart manufacturing
Manufacturing organizations continuously need to innovative production strategies and advance their machinery to adapt to evolving business objectives. Machine learning and data mining are now essential techniques for solving various complex manufacturing problems promptly and intelligently. This article reviews recent research from multiple sectors that have employed machine learning to develop intelligent manufacturing processes, while highlighting key challenges and areas that have been partly overlooked. Over the last two decades, scholars have developed numerous AI-based algorithms and approaches to improve manufacturing processes outputs, with scheduling, monitoring, quality, and fault detection being among the main focus areas. The review categorizes smart manufacturing problems into clustering, classification, and regression tasks, and discusses the underlying performance metrics associated with each category. Additionally, the study tackles ethical issues by discussing such important considerations as data privacy, transparency, and fairness in industrial machine-learning implementations. Finally, it emphasizes that many users remain concerned about compliance with global data protection legislations and the need to build trust in autonomous decision-making systems.
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