Applications and Societal Implications of Artificial Intelligence in Manufacturing: A Systematic Review
John P. Nelson, Justin B. Biddle, Philip Shapira

TL;DR
This systematic review examines AI applications in manufacturing, analyzing their societal implications, potential benefits, risks, and the importance of stakeholder awareness for sustainable integration.
Contribution
It provides a comprehensive typology of manufacturing AI applications and discusses societal impacts, emphasizing stakeholder roles and historical context.
Findings
Optimistic outlook on AI's impact on firms
Debate over adverse societal effects
Importance of stakeholder awareness
Abstract
This paper undertakes a systematic review of relevant extant literature to consider the potential societal implications of the growth of AI in manufacturing. We analyze the extensive range of AI applications in this domain, such as interfirm logistics coordination, firm procurement management, predictive maintenance, and shop-floor monitoring and control of processes, machinery, and workers. Additionally, we explore the uncertain societal implications of industrial AI, including its impact on the workforce, job upskilling and deskilling, cybersecurity vulnerability, and environmental consequences. After building a typology of AI applications in manufacturing, we highlight the diverse possibilities for AI's implementation at different scales and application types. We discuss the importance of considering AI's implications both for individual firms and for society at large, encompassing…
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Taxonomy
TopicsDigital Transformation in Industry
