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首页> 外文期刊>ASCE-ASME Journal of Risk and Uncertainty in Engineering Systems, Part B. Mechanical Engineering >An Information Fusion Model Based on Dempster–Shafer Evidence Theory for Equipment Diagnosis
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An Information Fusion Model Based on Dempster–Shafer Evidence Theory for Equipment Diagnosis

机译:基于DEMPSTER-SHAFER证据理论的设备诊断信息融合模型

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摘要

An abnormal operating effect can be caused by different faults, and a fault can cause different abnormal effects. An information fusion model, with hybrid-type fusion frame, is built in this paper, so as to solve this problem. This model consists of data layer, feature layer and decision layer, based on an improved Dempster–Shafer (D-S) evidence algorithm. After the data preprocessing based on event reasoning in data layer and feature layer, the information will be fused based on the new algorithm in decision layer. Application of this information fusion model in fault diagnosis is beneficial in two aspects, diagnostic applicability and diagnostic accuracy. Additionally, this model can overcome the uncertainty of information and equipment to increase diagnostic accuracy. Two case studies are implemented by this information fusion model to evaluate it. In the first case, fault probabilities calculated by different methods are adopted as inputs to diagnose a fault, which is quite different to be detected based on the information from a single analytical system. The second case is about sensor fault diagnosis. Fault signals are planted into the measured parameters for the diagnostic system, to test the ability to consider the uncertainty of measured parameters. The case study result shows that the model can identify the fault more effectively and accurately. Meanwhile, it has good expansibility, which may be used in more fields.
机译:异常操作效果可能是由不同的故障引起的,并且故障会导致不同的异常效果。本文建立了一种带混合型融合框的信息融合模型,以解决这个问题。该模型由数据层,特征层和决策层基于改进的Dempster-Shafer(D-S)证据算法组成。在基于数据层和特征层中的事件推理的数据预处理之后,该信息将基于决策层的新算法融合。这种信息融合模型在故障诊断中有利于两个方面,诊断适用性和诊断准确性。此外,该模型可以克服信息和设备的不确定性,以提高诊断准确性。这两个信息融合模型实施了两种案例研究以评估它。在第一种情况下,采用不同方法计算的故障概率作为诊断故障的输入来诊断故障,这与来自单个分析系统的信息有完全不同。第二种情况是传感器故障诊断。将故障信号种植到诊断系统的测量参数中,以测试考虑测量参数不确定性的能力。案例研究结果表明,该模型可以更有效地识别故障。同时,它具有良好的可扩展性,可用于更多领域。

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