Prediction of Steel Plate Fault Classification Using CART Fuzzy Logic and ANFIS Models

M. Akpinar, M. F. Adak
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Abstract

Some systems correct faulty production to reduce the cost and increase the performance of steel plates. The first element of quality production is to identify and classify defects. However, when the error classification is not done well, the cost of correcting the error increases. This study proposes a classification and regression tree (CART) based fuzzy model to determine which fault class the faulty steel plates fall into. The second model used in the study is the adaptive neuro-fuzzy interface system (ANFIS). In both approaches, error classes were determined using fuzzy logic. In the two models created, it was observed that when the information of the detected faulty steel plate was entered, it was unsuccessful in determining which class this fault belonged to. Although it suggests a quick solution for detecting the error class, it has been seen that these approaches are not appropriate to use because they do not offer the right solution.
基于CART模糊逻辑和ANFIS模型的钢板故障分类预测
一些系统纠正错误的生产,以降低成本,提高钢板的性能。质量生产的第一个要素是识别和分类缺陷。然而,当错误分类做得不好时,纠正错误的成本就会增加。本文提出了一种基于分类回归树(CART)的模糊模型来确定故障钢板属于哪一类故障。研究中使用的第二个模型是自适应神经模糊接口系统(ANFIS)。在这两种方法中,错误类别都是使用模糊逻辑确定的。在创建的两个模型中,观察到当输入检测到的故障钢板的信息时,无法确定该故障属于哪一类。尽管它建议了一种检测错误类的快速解决方案,但已经看到这些方法不适合使用,因为它们不提供正确的解决方案。
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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