Yuan Xu, Kaiduo Cong, Yang Zhang, Qunxiong Zhu, Yanlin He
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引用次数: 0
摘要
在现代工业过程中,与单一故障相比,多故障问题具有更高的耦合性和复杂性,因此建立有效的多故障识别模型对于保证过程安全具有重要意义。本文提出了一种基于重构主成分分析(RPCA)算法和支持向量机集成(SVME)分类器的多故障识别模型。首先,从原始高维数据空间中获取主成分信息;其次,为了解决局部特征信息的丢失问题,通过逆映射矩阵重构特征空间的局部结构误差,并对误差进行对齐,得到重构的坐标。第三,基于One vs. One (OvO)集成策略,构建了支持向量机多故障识别分类器。最后,为了验证RPCA-SVME模型的性能,在Circle数据集和田纳西伊士曼过程(Tennessee Eastman process, TEP)上进行了仿真实验。对比结果表明,该方法能够保证较高的诊断准确率和宏观F1分数。
Research and Application of a Novel RPCA-SVME based Multiple Faults Recognition
In the modern industrial process, the likelihood of the occurrence of multiple faults is higher than that of a single fault Comparing with single faults, the multi-faults problem has higher coupling and complexity, thus it is quite important to establish an effective multi-faults recognition model to ensure process safety. In this paper, a multi-fault recognition model based on reconstructed principal component analysis (RPCA) algorithm and support vector machine ensemble (SVME) classifier is proposed to satisfy the needs. First, obtain the principal component information from the original high-dimensional data space. Second, to solve the loss of local feature information, reconstruct the local structural error of the feature space through the inverse mapping matrix, and then align the error to obtain the reconstructed coordinates. Third, based on the One vs. One (OvO) ensemble strategy, an SVME classifier is constructed for multiple faults recognition. Finally, to verify the performance of the proposed RPCA-SVME model, the simulation experiments are made on a Circle dataset and the Tennessee Eastman process (TEP). The comparison results show that the proposed method can guarantee higher diagnostic accuracy and macro F1 score.