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Heat Exchanger Fouling Diagnosis for an Aircraft Air-Conditioning System

机译:用于飞机空调系统的热交换器污垢诊断

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This paper addresses the issue of fault diagnosis in the heat exchanger of an aircraft Air Conditioning System (ACS). The heat exchanger cools the air by transferring the heat to the ram-air. Due to a variety of biological, mechanical and chemical reasons, the heat exchanger may experience fouling conditions that reduces the efficiency and could considerably affect the functionality of the ACS. Since, the access to the heat exchanger is limited and time consuming, it is preferable to implement an early fault diagnosis technique that would facilitate Condition Based Maintenance (CBM). The main contribution of the paper is pre-flight fault assessment of the heat exchanger using a combined model-based and data-driven approach of fault diagnosis. A Simulink model of the ACS, that has been designed and validated by an industry partner, has been used for generation of sensor data for various fouling conditions. A total of nine different fouling levels are simulated including the nominal condition. Subsequently, the output temperature data of the heat exchanger is analyzed using the Principal Component Analysis (PCA) method for feature extraction. The Support Vector Machine (SVM) and the k-Nearest Neighbor (k-NN) methods are used for data classification into different faulty conditions. The results are evaluated by cross-validation and presented in terms of the confusion matrix, Correct Classification Rate (CCR), sensitivity, and specificity.
机译:本文介绍了飞机空调系统(ACS)的热交换器中的故障诊断问题。热交换器通过将热量传递到RAM空气来冷却空气。由于各种生物,机械和化学原因,热交换器可能会经历污垢条件,这降低了效率,并且可以大大影响ACS的功能。由于,对热交换器的进入是有限且耗时的,因此优选实现早期故障诊断技术,其将促进基于条件的维护(CBM)。本文的主要贡献是使用基于模型和数据驱动的故障诊断方法的热交换器的飞行前的故障评估。由行业合作伙伴设计和验证的ACS的Simulink模型已被用于生成各种污垢条件的传感器数据。模拟了总共九个不同的污垢水平,包括标称条件。随后,使用用于特征提取的主成分分析(PCA)方法来分析热交换器的输出温度数据。支持向量机(SVM)和K最近邻(K-NN)方法用于数据分类为不同的故障条件。结果通过交叉验证评估,并以混淆矩阵,正确的分类率(CCR),敏感性和特异性呈现。

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