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Subsystem level fault diagnosis of a building's air-handling unit using general regression neural networks

机译:使用通用回归神经网络对建筑物的空气处理单元进行子系统级故障诊断

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This paper describes a scheme for on-line fault detection and diagnosis (FDD) at the subsystem level in an Air-Handling Unit (AHU). The approach consists of process estimation, residual generation, and fault detection and diagnosis. Residuals are generated using general regression neural-network (GRNN) models. The GRNN is a regression technique and uses a memory-based feed forward network to produce estimates of continuous variables. The main advantage of a GRNN is that no mathematical model is needed to estimate the system. Also, the inherent parallel structure of the GRNN algorithm makes it attractive for real-time fault detection and diagnosis. Several abrupt and performance degradation faults were considered. Because performance degradations are difficult to introduce artificially in real or experimental systems, simulation data are used to evaluate the method. The simulation results show that the GRNN models are accurate and reliable estimators of highly non-linear and complex AHU processes, and demonstrate the effectiveness of the proposed method for detecting and diagnosing faults in an AHU.
机译:本文介绍了一种空气处理单元(AHU)中子系统级别的在线故障检测和诊断(FDD)方案。该方法包括过程估计,残差生成以及故障检测和诊断。使用通用回归神经网络(GRNN)模型生成残差。 GRNN是一种回归技术,它使用基于内存的前馈网络来生成连续变量的估计值。 GRNN的主要优点是不需要数学模型即可估算系统。而且,GRNN算法固有的并行结构使其对实时故障检测和诊断具有吸引力。考虑了几个突然的和性能下降的故障。由于性能下降很难在真实或实验系统中人为引入,因此使用仿真数据评估该方法。仿真结果表明,GRNN模型是高度非线性和复杂AHU过程的准确可靠的估计器,并证明了所提出的方法在AHU中进行故障检测和诊断的有效性。

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