A Modular Federated Learning Architecture for Integration of AI-enhanced Assistance in Industrial Maintenance - A novel architecture for enhancing industrial maintenance management systems in the automotive and semiconductor industry.

Linus Kohl, Fazel Ansari, W. Sihn
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引用次数: 1

Abstract

Artificial Intelligence (AI) plays an increasingly important role for the implementation and failure-free operation of Cyber-Physical Production Systems (CPPS). Recent market studies show that investment in AI-enhanced maintenance is increasing as one of the most important use cases of Industry 4.0. AI systems enable the improvement of various Key Performance Indicators (KPI), ultimately leading to a reduction in costs and optimizing plant management in smart factories. At the same time, manufacturing enterprises in diverse sectors have very high expectations from any kind of AI solution comparing to conventional solutions. Today manufacturing enterprises use only a quarter of their data and therefore leave an enormous, untapped potential. The use of Text Mining (TM) realizes the untapped value of existing unstructured or semi-structured textual data. This paper presents a transferable and scalable architecture for a cognitive maintenance system of a human-centered assistance system that enables holistic sensing of the environment by using physical and virtual sensors. By focusing on generalizability, scalability, adaptability, reliability, and user acceptance, a novel architecture for cognitive maintenance system is proposed. The so called ARCHIE, Architecture for a Cognitive Maintenance System, addresses common challenges in the application of AI systems in the industrial environment. Human-centered cognitive systems aim to automate manufacturing processes and assist workers in their cognitive tasks. This can be achieved by using the untapped potential of combining unstructured and structured data in order to extract hidden knowledge. ARCHIE aims at realizing an AI-enhanced approach for a human-centered assistance system. ARCHIE incorporates physical and virtual sensors that capture machine states, parameters, human knowledge, and skills to optimize relevant KPIs. This includes a reduction in documentation time, Mean Time Between Failures (MTBF) and Mean Failure Detection Time (MFDT), as well as an increase in uptime, leading ultimately to an improved Overall Equipment Efficiency (OEE). These improvements are enabled by the combined use of AI in the form of TM, Federated Learning and Knowledge Graphs. In the presented use-case from the automotive industry, a reduction in MFDT below 60min by 97.3% and an increase in OEE by 5.3% was achieved. In the Semiconductor industry, the partial application of ARCHIE allows the querying of competence distributions based on a given maintenance task, enabling automated allocation of maintenance technicians and trend analyses. Generalizability, scalability, adaptability, reliability, and user acceptance were also evaluated in the use cases presented.
模块化联邦学习架构,用于集成人工智能增强的工业维护协助——一种用于增强汽车和半导体行业工业维护管理系统的新型架构。
人工智能(AI)在网络物理生产系统(CPPS)的实施和无故障运行中发挥着越来越重要的作用。最近的市场研究表明,作为工业4.0最重要的用例之一,对人工智能增强维护的投资正在增加。人工智能系统能够改善各种关键绩效指标(KPI),最终降低成本并优化智能工厂的工厂管理。与此同时,与传统解决方案相比,不同行业的制造企业对任何一种人工智能解决方案都有很高的期望。今天,制造企业只使用了四分之一的数据,因此留下了巨大的、未开发的潜力。文本挖掘(TM)的使用实现了现有非结构化或半结构化文本数据的未开发价值。本文提出了一种可转移和可扩展的架构,用于以人为中心的辅助系统的认知维护系统,该系统通过使用物理和虚拟传感器来实现对环境的整体感知。从通用性、可扩展性、适应性、可靠性和用户接受度等方面出发,提出了一种新的认知维护系统架构。所谓的ARCHIE,即认知维护系统架构,解决了人工智能系统在工业环境中应用中的常见挑战。以人为中心的认知系统旨在使制造过程自动化,并协助工人完成认知任务。这可以通过结合非结构化和结构化数据的未开发潜力来实现,以便提取隐藏的知识。ARCHIE旨在实现以人为中心的援助系统的人工智能增强方法。ARCHIE集成了物理和虚拟传感器,可以捕获机器状态、参数、人类知识和技能,以优化相关kpi。这包括减少记录时间、平均故障间隔时间(MTBF)和平均故障检测时间(MFDT),以及增加正常运行时间,最终提高整体设备效率(OEE)。这些改进是通过以TM、联邦学习和知识图的形式结合使用人工智能来实现的。在汽车行业的使用案例中,60分钟以下的MFDT减少了97.3%,OEE增加了5.3%。在半导体行业,ARCHIE的部分应用允许基于给定的维护任务查询能力分布,从而实现维护技术人员的自动分配和趋势分析。在给出的用例中,还评估了通用性、可伸缩性、适应性、可靠性和用户接受度。
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