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基于固体氧化物燃料电池的发电站故障诊断策略

Fault Diagnosis Strategies for SOFC-Based Power Generation Plants.

作者信息

Costamagna Paola, De Giorgi Andrea, Gotelli Alberto, Magistri Loredana, Moser Gabriele, Sciaccaluga Emanuele, Trucco Andrea

机构信息

Department of Civil, Chemical and Environmental Engineering (DICCA), University of Genoa, Genova 16145, Italy.

Department of Electrical, Electronic, Telecommunications Engineering, and Naval Architecture (DITEN), University of Genoa, Genova 16145, Italy.

出版信息

Sensors (Basel). 2016 Aug 22;16(8):1336. doi: 10.3390/s16081336.

Abstract

The success of distributed power generation by plants based on solid oxide fuel cells (SOFCs) is hindered by reliability problems that can be mitigated through an effective fault detection and isolation (FDI) system. However, the numerous operating conditions under which such plants can operate and the random size of the possible faults make identifying damaged plant components starting from the physical variables measured in the plant very difficult. In this context, we assess two classical FDI strategies (model-based with fault signature matrix and data-driven with statistical classification) and the combination of them. For this assessment, a quantitative model of the SOFC-based plant, which is able to simulate regular and faulty conditions, is used. Moreover, a hybrid approach based on the random forest (RF) classification method is introduced to address the discrimination of regular and faulty situations due to its practical advantages. Working with a common dataset, the FDI performances obtained using the aforementioned strategies, with different sets of monitored variables, are observed and compared. We conclude that the hybrid FDI strategy, realized by combining a model-based scheme with a statistical classifier, outperforms the other strategies. In addition, the inclusion of two physical variables that should be measured inside the SOFCs can significantly improve the FDI performance, despite the actual difficulty in performing such measurements.

摘要

基于固体氧化物燃料电池(SOFC)的发电厂分布式发电的成功受到可靠性问题的阻碍,而有效的故障检测与隔离(FDI)系统可以缓解这些问题。然而,此类发电厂可能运行的众多工况以及可能故障的随机规模,使得从电厂测量的物理变量出发识别受损的电厂部件变得非常困难。在此背景下,我们评估了两种经典的FDI策略(基于故障特征矩阵的模型驱动策略和基于统计分类的数据驱动策略)以及它们的组合。为了进行此评估,使用了一个基于SOFC的电厂定量模型,该模型能够模拟正常和故障工况。此外,引入了一种基于随机森林(RF)分类方法的混合方法,因其实际优势来解决正常和故障情况的判别问题。使用一个公共数据集,观察并比较了使用上述策略、不同监测变量集所获得的FDI性能。我们得出结论,将基于模型的方案与统计分类器相结合实现的混合FDI策略优于其他策略。此外,尽管实际进行此类测量存在困难,但纳入两个应在SOFC内部测量的物理变量可以显著提高FDI性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6440/5017500/74c7d2d405ff/sensors-16-01336-g001.jpg

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