Concept of a Voice-Enabled Digital Assistant for Predictive Maintenance in Manufacturing

Stefan Wellsandta, Z. Rusák, Santiago Ruiz Arenas, D. Aschenbrenner, K. Hribernik, K. Thoben
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引用次数: 10

Abstract

Voice-enabled assistants, such as Alexa and Google Assistant, are among the fastest-growing information technology applications. Their technological foundation matured over the last years and reached a point where new application areas in challenging business environments become a certainty. Maintenance in manufacturing is one of these areas. This paper presents expectations, requirements, and a concept for a voice-enabled digital intelligent assistant that supports maintenance activities. We identified process monitoring, task execution, reporting, problem-solving, and maintenance planning as the key functional modules for an assistant. Realizing them depends on basic, utility, and maintenance functions. Our discussion states that all fundamental technologies and tools to realize an assistant for maintenance exist, but they have constraints. For instance, Speech-to-Text mechanisms lack transparent and performant solutions, and natural language understanding must rely on small datasets, which is challenging. We argue that continuous improvement and systematic evaluation of an assistant prototype is important to create high-quality training data. Trial-and-error is common because some technologies still mature, and conversation designers lack design patterns for the maintenance domain. Challenges for system adoption include providing an outstanding user experience, handling factory-specific jargon, and the limited availability of easy-to-use data exchange interfaces for machines and business applications. We conclude that further efforts on interoperability, technology stack management, AI-focused change management, and education programs are necessary. Furthermore, the accountability of AI systems is a cost factor for the assistant’s service providers and the client companies in manufacturing – AI insurance services, human-in-the-loop functions, user training, and professional education are actions to address this issue.
用于制造业预测性维护的语音数字助理的概念
语音助手,如Alexa和Google Assistant,是增长最快的信息技术应用之一。他们的技术基础在过去几年中逐渐成熟,并达到了在具有挑战性的商业环境中确定新的应用领域的程度。制造业中的维护就是其中一个领域。本文提出了支持维护活动的语音数字智能助手的期望、需求和概念。我们将过程监控、任务执行、报告、问题解决和维护计划确定为助手的关键功能模块。实现它们取决于基本功能、实用功能和维护功能。我们的讨论表明,实现维护助手的所有基本技术和工具都是存在的,但是它们有限制。例如,语音到文本机制缺乏透明和高性能的解决方案,自然语言理解必须依赖于小数据集,这是具有挑战性的。我们认为,对助理原型进行持续改进和系统评估对于创建高质量的训练数据非常重要。试错是很常见的,因为一些技术仍然很成熟,并且会话设计者缺乏维护领域的设计模式。采用系统面临的挑战包括提供出色的用户体验、处理特定于工厂的术语,以及机器和业务应用程序易于使用的数据交换接口的有限可用性。我们的结论是,在互操作性、技术堆栈管理、以人工智能为中心的变革管理和教育计划方面的进一步努力是必要的。此外,人工智能系统的问责制对于助理服务提供商和制造业客户公司来说是一个成本因素——人工智能保险服务、人在环功能、用户培训和专业教育是解决这一问题的行动。
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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