人工智能在制造业中的应用综述

Siby Jose Plathottam, Arin Rzonca, Rishi Lakhnori, Chukwunwike O. Iloeje
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引用次数: 1

摘要

人工智能(AI)和机器学习(ML)可以提高制造效率、生产率和可持续性。然而,在制造业中使用人工智能也带来了一些挑战,包括数据采集和管理、人力资源、基础设施以及安全风险、信任和实施挑战等问题。例如,获得训练人工智能模型所需的数据对于罕见事件来说可能很困难,对于需要标记的大型数据集来说则成本高昂。人工智能模型在集成到工业控制系统中时也会带来安全风险。此外,由于缺乏信任或对其工作原理的理解,一些行业参与者可能会对使用人工智能犹豫不决。尽管存在这些挑战,但人工智能仍有潜力在制造业中发挥巨大作用,特别是在预测性维护、质量保证和流程优化等应用中。在决定是否以及如何在制造中使用人工智能时,考虑每个制造场景的具体需求和能力是很重要的。本综述确定了与制造业相关的人工智能/机器学习的当前发展、挑战和未来方向,旨在提高对可用于解决制造业问题的人工智能/机器学习技术的理解,为优先考虑和选择适当的人工智能/机器学习技术提供决策支持,并确定进一步研究可以为行业带来转型回报的领域。早期的经验表明,人工智能/机器学习可以在制造业中具有显着的成本和效率优势,特别是当与从制造系统中捕获大量数据的能力相结合时。
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 artificial intelligence applications in manufacturing operations

A review of artificial intelligence applications in manufacturing operations

Artificial intelligence (AI) and machine learning (ML) can improve manufacturing efficiency, productivity, and sustainability. However, using AI in manufacturing also presents several challenges, including issues with data acquisition and management, human resources, infrastructure, as well as security risks, trust, and implementation challenges. For example, getting the data needed to train AI models can be difficult for rare events or costly for large datasets that need labeling. AI models can also pose security risks when integrated into industrial control systems. In addition, some industry players may be hesitant to use AI due to a lack of trust or understanding of how it works. Despite these challenges, AI has the potential to be extremely helpful in manufacturing, particularly in applications such as predictive maintenance, quality assurance, and process optimization. It is important to consider the specific needs and capabilities of each manufacturing scenario when deciding whether and how to use AI in manufacturing. This review identifies current developments, challenges, and future directions in AI/ML relevant to manufacturing, with the goal of improving understanding of AI/ML technologies available for solving manufacturing problems, providing decision-support for prioritizing and selecting appropriate AI/ML technologies, and identifying areas where further research can yield transformational returns for the industry. Early experience suggests that AI/ML can have significant cost and efficiency benefits in manufacturing, especially when combined with the ability to capture enormous amounts of data from manufacturing systems.

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