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A Hierarchical Deep Domain Adaptation Approach for Fault Diagnosis of Power Plant Thermal System

机译:电厂热力系统故障诊断的分层深度域自适应方法

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摘要

Fault diagnosis of a thermal system under varying operating conditions is of great importance for the safe and reliable operation of a power plant involved in peak shaving. However, it is a difficult task due to the lack of sufficient labeled data under some operating conditions. In practical applications, the model built on the labeled data under one operating condition will be extended to such operating conditions. Data distribution discrepancy can be triggered by variation of operating conditions and may degenerate the performance of the model. Considering the fact that data distributions are different but related under different operating conditions, this paper proposes a hierarchical deep domain adaptation (HDDA) approach to transfer a classifier trained on labeled data under one loading condition to identify faults with unlabeled data under another loading condition. In HDDA, a hierarchical structure is developed to reveal the effective information for final diagnosis by layer wisely capturing representative features. HDDA learns domain-invariant and discriminative features with the hierarchical structure by reducing distribution discrepancy and preserving discriminative information hidden in raw process data. For practical applications, the Taguchi method is used to obtain the optimized model parameters. Experimental results and comprehensive comparison analysis demonstrate its superiority.
机译:在变化的运行条件下对热力系统进行故障诊断对于涉及调峰的发电厂的安全可靠运行至关重要。但是,由于在某些操作条件下缺少足够的标记数据,因此这是一项艰巨的任务。在实际应用中,将在一种操作条件下基于标记数据建立的模型扩展到这种操作条件。数据分布差异可能会因运行条件的变化而触发,并可能使模型的性能下降。考虑到数据分布不同但在不同的操作条件下相关的事实,本文提出了一种层次化的深域自适应(HDDA)方法,该方法可以转移在一个加载条件下对标记数据进行训练的分类器,以在另一加载条件下识别未标记数据的故障。在HDDA中,通过分层明智地捕获代表特征,开发了一种层次结构来显示有效信息,以进行最终诊断。 HDDA通过减少分布差异并保留原始过程数据中隐藏的区分性信息来学习具有层次结构的领域不变性和区分性功能。对于实际应用,使用Taguchi方法获得优化的模型参数。实验结果和综合比较分析证明了它的优越性。

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