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Dynamic process fault detection based on D-SVDD

机译:基于D-SVDD的动态过程故障检测

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There are dynamic and non-linear characteristics in industrial processes. These features make the faults difficult to be detected. To improve the situation, the dynamic support vector domain description (D-SVDD) is proposed. This method is based on dynamic expanding matrix and the support vector domain description (SVDD). Compared with the traditional support vector domain description method, the new method takes the sequence correlation between variables into account. So it is more suitable for dynamic process data than traditional method. And it builds a more accurate model. First of all, the appropriate number of dynamic steps are chosen and the dynamic augmented matrices are constructed. Then the dynamic augmented matrices are used to calculate the boundary of the minimum hypersphere by means of SVDD. In this way, the distribution range of the data is described. In the end, the monitoring statistics of new samples are calculated. And the monitoring statistics are compared with the control limit obtained in the previous step to determine whether there are faults or not. The proposed method is applied to the Tennessee Eastman Process. The results show that the fault detection effect of D-SVDD has been significantly improved.
机译:在工业过程中具有动态和非线性特征。这些功能使故障很难被检测到。为了改善这种情况,提出了动态支持向量域描述(D-SVDD)。该方法基于动态扩展矩阵和支持向量域描述(SVDD)。与传统的支持向量域描述方法相比,新方法考虑了变量之间的序列相关性。因此,与传统方法相比,它更适合于动态过程数据。并且它建立了一个更准确的模型。首先,选择适当数量的动态步长并构建动态增强矩阵。然后使用动态增强矩阵通过SVDD计算最小超球面的边界。这样,描述了数据的分布范围。最后,计算出新样本的监测统计数据。然后将监视统计信息与上一步获得的控制极限进行比较,以确定是否存在故障。所提出的方法被应用于田纳西州伊士曼过程。结果表明,D-SVDD的故障检测效果得到了明显提高。

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