Data mining from process monitoring of typical polluting enterprise

被引:0
作者
Wenya Zhao
Peili Zhang
Da Chen
Hao Wang
Binghua Gu
Jue Zhang
机构
[1] Taizhou Pollution Control Technology Center Co. LTD,
[2] Taizhou ,undefined
[3] Key Laboratory of the Eco-Environmental Big Data of Taizhou,undefined
[4] Taizhou ,undefined
来源
Environmental Monitoring and Assessment | 2023年 / 195卷
关键词
Polluting enterprise; Process monitoring; Data mining; Variable importance measures; Artificial neural network;
D O I
暂无
中图分类号
学科分类号
摘要
With the increasing volume of environmental monitoring data, extracting valuable insights from multivariate time series sensor data can facilitate comprehensive information utilization and support informed decision-making in environmental management. However, there is a dearth of comprehensive research on multivariate data analysis for process monitoring in typical polluting enterprises. In this study, an artificial neural network model based on back-propagation algorithm (BP-ANN) was developed to predict the wastewater and exhaust gas emissions using IoT data obtained from process monitoring of a typical polluting enterprise located in Taizhou, Zhejiang Province, China. The results indicate that the model constructed has a high predictive coefficient of determination (R2) with values of 0.8510, 0.9565, 0.9561, 0.9677, and 0.9061 for chemical oxygen demand (COD), potential of hydrogen (pH), electrical conductivity (EC), flue gas emission (FGE), and non-methane hydrocarbon concentration (NMHC) respectively. For the first time, the variable importance measure (VIM)–assisted BP-ANN was employed to investigate the internal and external correlations between wastewater and exhaust gas treatment, thereby enhancing the interpretability of mapping features in the BP-ANN model. The predicted errors for pH and FGE have been demonstrated to fall within the range of − 0.62 ~ 0.30 and − 0.21 ~ 0.15 m3/s, respectively, with average relative errors of 1.05% and 9.60%, which is advantageous in detecting anomalous data and forecasting pollution indicator values. Our approach successfully addresses the challenge of segregating data analysis for wastewater disposal and exhaust gas disposal in the process monitoring of polluting enterprises, while also unearthing potential variables that significantly contribute to the BP-ANN model, thereby facilitating the selection and extraction of characteristic variables.
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