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首页> 外文期刊>Journal of Energy Engineering >Machine Learning-Based Fault Detection and Diagnosis of Organic Rankine Cycle System for Waste-Heat Recovery
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Machine Learning-Based Fault Detection and Diagnosis of Organic Rankine Cycle System for Waste-Heat Recovery

机译:基于机器学习的故障检测与储存热恢复有机朗肯循环系统的诊断

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摘要

Utilizing the organic Rankine cycle (ORC) for waste heat recovery is an important energy conversion method. Some faults may occur in the ORC in actual operation, but few studies have focused on the fault detection and diagnosis of the whole ORC system. Fault detection detects whether a fault occurs in the system and fault diagnosis diagnoses where the fault is. This paper investigated a fault detection and diagnosis scheme of the ORC system for waste heat recovery based on machine learning. First, a thermodynamic ORC model was established. Three kinds of faults (expander fault, pump fault, and heat exchanger fault) and three kinds of algorithms [logistic regression, softmax regression, and support vector machines (SVMs)] were described. The data of four major important faults (fouling fault of the evaporator and of the condenser, looseness of the mechanical moving parts in the expander, and blocking of the pump) were generated from the thermodynamic ORC model and used to train the fault detection and diagnosis schemes. To evaluate the accuracy of the fault detection and diagnosis schemes, a set of experimental data was employed to test the schemes. The accuracy scores of fault detection using logistic regression and support vector machines were 77.42% and 96.77%, respectively. The accuracy scores of fault diagnosis using softmax regression and SVM were 91.78% and 94.52%, respectively. The test times of fault diagnosis using softmax regression and SVM were 0.0099 and 0.0085 s, respectively. The results demonstrated that machine learning-based fault detection and diagnosis schemes for the ORC have high accuracy and immediacy. Therefore, the proposed schemes are promising tools for fault detection and diagnosis of the ORC system for waste heat recovery.
机译:利用用于废热回收的有机朗肯循环(ORC)是一种重要的能量转换方法。在实际操作中,ORC中可能发生一些故障,但很少有研究专注于整体兽人系统的故障检测和诊断。故障检测检测系统中发生故障是否发生故障诊断故障的诊断。本文研究了基于机器学习的废热回收兽人系统的故障检测和诊断方案。首先,建立了热力学兽人模型。描述了三种故障(扩展器故障,泵故障和热交换器故障)和三种算法[Logistic回归,Softmax回归和支持向量机(SVM)]。从热力学兽人模型产生四个主要重要断层(蒸发器的污垢故障以及冷凝器的污水,以及膨胀机中的机械运动部件的松动,并堵塞泵),并用于训练故障检测和诊断方案。为了评估故障检测和诊断方案的准确性,采用一组实验数据来测试这些方案。使用Logistic回归和支持向量机的故障检测的精度分数分别为77.42%和96.77%。使用Softmax回归和SVM的故障诊断的准确度分别为91.78%和94.52%。使用Softmax回归和SVM的故障诊断的测试时间分别为0.0099和0.0085秒。结果表明,兽人的基于机器的学习故障检测和诊断方案具有高精度和即时性。因此,该方案是用于废热回收的兽人系统的故障检测和诊断的有希望的工具。

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