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Sintering fan faults diagnosis based on wavelet packet analysis and fuzzy recognition

机译:基于小波包分析和模糊识别的烧结风机故障诊断

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According to the nine fault signal collected from 4th sintering fan in Shaogang Steel Group, energy analysis of the reconstructed signal by wavelet packet analysis was used. Extract feature vectors and a typical fault table that reflect running of fan. The results of analysis indicate that detecting signal with db10 wavelet six layers wavelet packet decomposition can obtain fan fault vector, applying the feature vector composition method and fuzzy recognition can diagnose the fan faults; 6-layer high-frequency decomposition can reflect the nature of the fan failure and 0.5, 0ne∼five frequency multiplication composition was in 1∼7 frequency range, it provides comprehensive information for fan fault diagnosis. The actual diagnosis result shows that using the feature vector typical characteristic fault, imbalance fault reaches to 0.951 through the fuzzy pattern recognition, showing that there exists fan''s imbalance fault and this analysis method is more accurate fault diagnosis.
机译:根据韶钢集团公司第4烧结风机收集到的9个故障信号,利用小波包分析对重构信号进行能量分析。提取反映风扇运行情况的特征向量和典型故障表。分析结果表明,采用db10小波六层小波包分解检测信号可以获得风扇故障向量,应用特征向量合成方法和模糊识别可以诊断风扇故障。 6层高频分解能反映出风扇故障的性质,在1〜7个频率范围内有0.5、0ne〜5倍频成分,为风扇故障诊断提供了全面的信息。实际诊断结果表明,利用特征向量典型特征故障,通过模糊模式识别,使不平衡故障达到0.951,表明存在风机的不平衡故障,这种分析方法更加准确。

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