Multi Sources Information Fusion Based on Bayesian Network Method to Improve the Fault Prediction of Centrifugal Compressor

Karim Nessaib, A. Lakehal
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引用次数: 2

Abstract

Abstract The centrifugal compressor is an important machine in the oil and gas industry, so the fault prediction of these machines is widely discussed in the literature. Several techniques can and should be used in fault prediction of centrifugal compressors: vibration analysis, non-destructive testing techniques, operating parameters, and other techniques. But in particular cases, these tools are inefficient for making a decision regarding the combined fault diagnosis and prediction. This paper presents a contribution to fault prediction in centrifugal compressor utilizing multi-source information fusion by a Bayesian network. The data fusion does not come from the same source, but rather from vibration analysis, oil analysis, and operating parameters. In addition, the accuracy and ability of fault prediction can be improved compared with the use of data obtained from vibration analysis only or oil analysis. The proposed method accuracy is validated on a BCL 406 type centrifugal compressor. Furthermore, the obtained results showed the effectiveness of the multi-source information fusion by Bayesian network approach gives more accuracy to decision-making in fault prediction and the developed method has an effect in predicting the combined faults.
基于贝叶斯网络的多源信息融合改进离心压缩机故障预测
离心式压缩机是石油天然气工业中的重要设备,其故障预测问题在文献中得到了广泛的讨论。在离心式压缩机的故障预测中,可以而且应该采用几种技术:振动分析、无损检测技术、运行参数和其他技术。但是在特定的情况下,这些工具对于结合故障诊断和预测做出决策是低效的。利用贝叶斯网络的多源信息融合对离心压缩机故障预测做出了贡献。数据融合不是来自同一来源,而是来自振动分析、油分析和操作参数。此外,与仅使用振动分析或油液分析数据相比,故障预测的准确性和能力都得到了提高。在bcl406型离心压缩机上验证了该方法的精度。研究结果表明,贝叶斯网络多源信息融合的有效性提高了故障预测决策的准确性,对组合故障的预测具有较好的效果。
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