AD4ML: Axiomatic Design to Specify Machine Learning Solutions for Manufacturing

Alejandro Gabriel Villanueva Zacarias, Rachaa Ghabri, P. Reimann
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引用次数: 2

Abstract

Machine learning is increasingly adopted in manufacturing use cases, e.g., for fault detection in a production line. Each new use case requires developing its own machine learning (ML) solution. A ML solution integrates different software components to read, process, and analyze all use case data, as well as to finally generate the output that domain experts need for their decision-making. The process to design a system specification for a ML solution is not straight-forward. It entails two types of complexity: (1) The technical complexity of selecting combinations of ML algorithms and software components that suit a use case; (2) the organizational complexity of integrating different requirements from a multidisciplinary team of, e.g., domain experts, data scientists, and IT specialists. In this paper, we propose several adaptations to Axiomatic Design in order to design ML solution specifications that handle these complexities. We call this Axiomatic Design for Machine Learning (AD4ML). We apply AD4ML to specify a ML solution for a fault detection use case and discuss to what extent our approach conquers the above-mentioned complexities. We also discuss how AD4ML facilitates the agile design of ML solutions.
AD4ML:为制造业指定机器学习解决方案的公理设计
机器学习越来越多地应用于制造用例中,例如用于生产线中的故障检测。每个新的用例都需要开发自己的机器学习(ML)解决方案。ML解决方案集成了不同的软件组件来读取、处理和分析所有用例数据,并最终生成领域专家决策所需的输出。为ML解决方案设计系统规范的过程并不是直截了当的。它包含两种类型的复杂性:(1)选择适合用例的ML算法和软件组件组合的技术复杂性;(2)整合来自多学科团队(如领域专家、数据科学家和IT专家)的不同需求的组织复杂性。在本文中,我们提出了对公理设计的一些调整,以便设计处理这些复杂性的ML解决方案规范。我们称之为机器学习公理设计(AD4ML)。我们应用AD4ML为故障检测用例指定ML解决方案,并讨论我们的方法在多大程度上克服了上述复杂性。我们还讨论了AD4ML如何促进ML解决方案的敏捷设计。
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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