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An Information Fusion Fault Diagnosis Method Based on Dimensionless Indicators With Static Discounting Factor and KNN

机译:基于带静态折现因子和KNN的无量纲指标的信息融合故障诊断方法

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摘要

For petrochemical rotating machinery and equipment, the reliability of the diagnostic evidence is affected by uncertain factors, causing conflicts between evidence provided by the various information sources, and thus affecting the validity of the fault diagnosis. This paper presents an information fusion fault diagnosis method that is based on a static discounting factor and combines -nearest neighbors (KNNs) with dimensionless indicators. The method uses evidence reasoning to process the uncertainty and accuracy of the information through the KNN algorithm and dimensionless indicators to turn petrochemical machinery sensor input signals into the reliability of structure framework, according to the static discount factor, after correction evidence and evidence theory formula was used to fusion and, based on the fusion result, the fault type diagnosis decision-making. Experimental results show that the method can effectively reduce the influence of unreliable factors on the fusion results, thus allowing more accurate decision making.
机译:对于石化旋转机械设备,诊断证据的可靠性受不确定因素的影响,导致各种信息源提供的证据之间存在冲突,从而影响故障诊断的有效性。本文提出了一种基于静态折现因子的信息融合故障诊断方法,该方法将近邻(KNN)与无量纲指标结合在一起。该方法利用证据推理通过KNN算法和无量纲指标处理信息的不确定度和准确性,根据静态折现因子,经过校正证据和证据理论公式,将石化机械传感器输入信号转换为结构框架的可靠性。用于融合,并基于融合结果进行故障类型诊断决策。实验结果表明,该方法可以有效减少不可靠因素对融合结果的影响,从而使决策更加准确。

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