Leveraging Edge Computing and Differential Privacy to Securely Enable Industrial Cloud Collaboration Along the Value Chain

Alexander Giehl, Michael P. Heinl, Maximilian Busch
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Abstract

Big data continues to grow in the manufacturing domain due to increasing interconnectivity on the shop floor in the course of the fourth industrial revolution. The optimization of machines based on either real-time or historical machine data provides benefits to both machine producers and operators. In order to be able to make use of these opportunities, it is necessary to access the machine data, which can include sensitive information such as intellectual property. Employing the use case of machine tools, this paper presents a solution enabling industrial data sharing and cloud collaboration while protecting sensitive information. It employs the edge computing paradigm to apply differential privacy to machine data in order to protect sensitive information and simultaneously allow machine producers to perform the necessary calculations and analyses using this data.
利用边缘计算和差分隐私,在价值链上安全地实现工业云协作
在第四次工业革命的过程中,由于车间的互联性不断增强,大数据在制造业领域继续增长。基于实时或历史机器数据的机器优化为机器制造商和运营商提供了好处。为了能够利用这些机会,有必要访问机器数据,其中可能包括敏感信息,如知识产权。本文以机床为例,提出了一种在保护敏感信息的同时实现工业数据共享和云协作的解决方案。它采用边缘计算范式将差异隐私应用于机器数据,以保护敏感信息,同时允许机器制造商使用这些数据执行必要的计算和分析。
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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