Application of data mining on fault detection and prediction in Boiler of power plant using artificial neural network

E. Rakhshani, Iman Sariri, K. Rouzbehi
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引用次数: 19

Abstract

This paper tries to present a new applied method on detection and prediction of faults for the boiler's burner system of power plant with using data mining and artificial neural network. Boiler/Steam turbine is important equipments in the industry, especially in the electric power industry. Because of the complexity of burner management systems and particularity of its running environment, the fault rate of boiler's burner system is high. So the fault prediction is a difficult problem. The proposed approach includes data mining, data preprocessing i.e. data reduction, data clustering; learning and prediction by artificial neural networks. Boiler/turbine units constitute a critical component of a co-generation system. The operative parameters in boiler's burner system are measured and are characterized to obtain a set of descriptors. These sets are analyzed by data mining approach. Next, these preprocessed data are used as input data of two neural networks which detect and predict the faults in a boiler of power plant. Multiplayer back propagation neural network with four hidden layers, as one of the steps in data mining process is studied. The knowledge extracted by this data mining algorithm is an important component of an intelligent alarm system. Furthermore, using this method is more valuable for the further study.
基于人工神经网络的数据挖掘在电厂锅炉故障检测与预测中的应用
本文试图提出一种应用数据挖掘和人工神经网络技术对电厂锅炉燃烧器系统进行故障检测和预测的新方法。锅炉/汽轮机是工业特别是电力工业的重要设备。由于燃烧器管理系统的复杂性和运行环境的特殊性,锅炉燃烧器系统的故障率较高。因此,故障预测是一个难题。提出的方法包括数据挖掘,数据预处理,即数据约简,数据聚类;人工神经网络的学习与预测。锅炉/汽轮机组是热电联产系统的重要组成部分。对锅炉燃烧器系统的运行参数进行了测量和表征,得到了一组描述符。利用数据挖掘方法对这些数据集进行分析。然后,将这些预处理后的数据作为神经网络的输入数据,用于电厂锅炉故障检测和预测。研究了四隐层多层反向传播神经网络作为数据挖掘过程中的一个步骤。该数据挖掘算法所提取的知识是智能报警系统的重要组成部分。此外,该方法对进一步的研究更有价值。
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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