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An efficient online wkNN diagnostic strategy for variable refrigerant flow system based on coupled feature selection method

机译:基于耦合特征选择方法的可变制冷剂流量系统在线wkNN在线诊断策略

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The refrigerant leakage would occur in a multi-split variable refrigerant flow (VRF) system after years of operation, thus contributing to the inefficient operation and even increased energy consumption. Diagnosing the refrigerant charge amount (RCA) malfunction in time is of great necessity to ensure the normal operation of VRF system and avoid superfluous energy waste. This paper proposes an efficient online weighted k-Nearest-Neighbor model (wkNN) strategy to diagnose the RCA malfunction of the VRF system, which is based on the coupled feature selection method. The minimal-redundancy-maximal-relevance (mRMR) algorithm is first applied to derive the subset of features that have the maximum correlation with the target category and the minimum redundancy among each other. The ReliefF algorithm is utilized to rank variables in descending order. Final variables importance is ascertained on the basis of the average weighs of importance of variables and contributions of variables to the model's classification error rate. Correlation analysis (CA) is implemented to verify the rationality of the selected variables. Finally, a subset of six variables is served as the input variables to establish three kinds of models. Results indicate that the coupled feature selection method outperforms the single feature selection method, and the proposed wkNN model based on the coupled feature selection method is superior to the other two models and achieves desirable diagnostic performance on both experimental and practical data. (C) 2018 Elsevier B.V. All rights reserved.
机译:多年运行后,制冷剂泄漏会在多路可变制冷剂流量(VRF)系统中发生,从而导致运行效率低下甚至能耗增加。及时诊断制冷剂充注量(RCA)故障对于确保VRF系统的正常运行并避免多余的能源浪费非常必要。基于耦合特征选择方法,提出一种有效的在线加权k最近邻模型(wkNN)策略来诊断VRF系统的RCA故障。首先应用最小冗余最大相关性(mRMR)算法,以得出与目标类别具有最大相关性且彼此之间具有最小冗余的特征子集。 ReliefF算法用于按降序对变量进行排名。最终变量的重要性是根据变量的重要性的平均权重和变量对模型分类错误率的贡献确定的。进行相关分析(CA)以验证所选变量的合理性。最后,六个变量的子集用作建立三种模型的输入变量。结果表明,耦合特征选择方法优于单一特征选择方法,基于耦合特征选择方法的wkNN模型优于其他两种模型,在实验和实际数据上均具有令人满意的诊断性能。 (C)2018 Elsevier B.V.保留所有权利。

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