多类工业数据的预测

J. Platoš, P. Krömer
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引用次数: 2

摘要

工业工厂使用许多不同的传感器来监测和控制过程。这些传感器产生大量的数据。这些数据将用于提高各工厂的半成品和成品的质量。在本文中,我们描述了使用三种不同的方法SVM,模糊规则和贝叶斯分类处理从钢铁厂获得的两个不同的数据集。此外,通过与实际数据的对比,描述了每种方法存在的问题。所使用的每种方法都以不同的算法工作,并且不是基于相同的理论。他们的比较很好地回顾了这些方法的实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Multi-class Industrial Data
Industrial plants use many different sensors for processes monitoring and controlling. These sensors generate huge amount of data. These data should be used for improving of the quality of semi and final products in each factory. In this paper, we describe processing of two different datasets acquired from a steel-mill factory using three different methods SVM, Fuzzy Rules and Bayesian classification. Moreover, we describe problems of each method with confrontation with real data. Each of the method used works in different algorithm and is not based on the same theory. Their comparison gives a nice review of the real application of these methods.
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