Intelligent Industrial Process Control Based on Fuzzy Logic and Machine Learning

H. Zermane, Rached Kasmi
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引用次数: 3

Abstract

Manufacturing automation is a double-edged sword, on one hand, it increases productivity of production system, cost reduction, reliability, etc. However, on the other hand it increases the complexity of the system. This has led to the need of efficient solutions such as artificial techniques. Data and experiences are extracted from experts that usually rely on common sense when they solve problems. They also use vague and ambiguous terms. However, knowledge engineer would have difficulties providing a computer with the same level of understanding. To resolve this situation, this article proposed fuzzy logic to know how the authors can represent expert knowledge that uses fuzzy terms in supervising complex industrial processes as a first step. As a second step, adopting one of the powerful techniques of machine learning, which is Support Vector Machine (SVM), the authors want to classify data to determine state of the supervision system and learn how to supervise the process preserving habitual linguistic used by operators.
基于模糊逻辑和机器学习的智能工业过程控制
制造业自动化是一把双刃剑,一方面提高了生产系统的生产率,降低了成本,提高了可靠性等。然而,另一方面,它增加了系统的复杂性。这导致需要有效的解决方案,如人工技术。数据和经验是从专家那里提取出来的,而专家在解决问题时通常依靠常识。他们还使用模糊和模棱两可的术语。然而,知识工程师将难以提供具有相同理解水平的计算机。为了解决这种情况,本文首先提出模糊逻辑,以了解作者如何在监督复杂工业过程中使用模糊术语来表示专家知识。第二步,采用机器学习的强大技术之一支持向量机(SVM),对数据进行分类以确定监督系统的状态,并学习如何在保持操作员使用习惯语言的情况下监督过程。
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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