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Contaminant monitoring for industrial emission-diffusion process based on non-negative tensor factorization

机译:基于非负张量分解的工业发射扩散过程污染物监测

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This paper considers the contaminant emission diffusion monitoring problem by applying the tensor approach for the industrial-environmental protection. The emission contaminant concentration is used from an embedded sensor for computation of features and monitoring of contaminant diffusion. A reduced feature subset, which is optimal in both estimation and clustering least squares errors, is then selected using a new dominant feature monitoring algorithm to reduce the signal processing and number of sensors required. The matrix based subspace method can't capture the spatiotemporal characteristics effectively. The tensor space method is proposed to be used to monitor the contaminant concentration in environmental protection area. In order to fit the multiple invariance of the measurement output tensor data processing for contaminant emission diffusion monitoring, the non-negative tensor factorization model is proposed to analyze the tensor data, which stems from uniqueness of low-rank decomposition of higher-order tensor. By using the non-negative tensor factorization, the estimated latent contaminant concentration data structure combing with the covariance-based algorithm are given to derive the metric of contaminant concentration in the environmental protection area. Contaminant concentration is then measured using non-negative tensor factorization with observable data based on the reduced features. A simulation example is provided to test the effectiveness and advantages of proposed method using tensor method with only the dominant features measurement.
机译:本文考虑了污染物排放扩散监测问题,通过应用张量方法进行工业环境保护。发射污染浓度用于嵌入式传感器,用于计算特征和监测污染物扩散。然后,使用新的主导特征监控算法选择估计和聚类最小二乘误差在估计和聚类最小二乘误差中最佳的特征子集,以减少所需的信号处理和传感器的数量。基于矩阵的子空间方法无法有效地捕获时空特性。提出张量空间方法用于监测环境保护区域中的污染物浓度。为了符合用于污染发射扩散监测的测量输出张量数据处理的多重不变性,提出了非负张量分解模型来分析张量数据,其源于高阶张量的低秩分解的唯一性。通过使用非负张量分解,给予与基于协方差的算法梳理的估计的潜在污染物浓度数据结构来得出环境保护区域中的污染物浓度的度量​​。然后使用基于降低的特征的可观察数据使用非负张量分解测量污染物浓度。提供了一种模拟示例以测试使用张量方法的提出方法的有效性和优点,仅具有主导特征测量。

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