基于电力数据深度学习的企业污染排放监测系统

Lin Zhao, H. Wang, Zhen-Yu Zhang, Shu-Ming Feng, W. Gu, Xu Shi, Jialiang Miao
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引用次数: 0

摘要

污染企业的现状是数量多、分布广。传统的监督手段只有定期检查和公开报告,难以实现有效的监督。基于现有智能电表硬件,结合物联网技术、卷积递归神经网络、长短期记忆等技术,构建基于电力数据的污染企业自动监控系统。系统可根据负载特性自动识别不同类型的设备。通过对企业污染物生产设备和污染物处理设备的运行情况进行对比分析,可以及时发现企业的违法排污行为。实验验证表明,该模型的整体识别均方误差仅为0.5,模型的准确率高于RNN模型和LSTM模型。该系统能够准确、及时地发现违规行为,填补了环保部门对企业的监管漏洞。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enterprise Pollution Emission Monitoring System Based on Deep Learning of Power Data
The current situation of polluting enterprises is that they are numerous and widely distributed. The traditional supervision means only have regular inspection and public reporting, which is difficult to achieve effective monitoring. Based on the existing hardware of intelligent electricity meters, combined with Internet of things technology, Convolution Recurrent Neural Network, Long Short-Term Memory and other technologies, we build an automatic monitoring system for pollution enterprises based on power data. The system can automatically identify different types of equipment according to the load characteristics. By comparing and analyzing the operation of the enterprise’s pollutant production equipment and pollutant treatment equipment, it can detect the illegal sewage discharge behavior of enterprises in time. The experimental verification shows that the overall recognition mean square error of the model is only 0.5, and the accuracy of the model is higher than that of RNN model and LSTM model. The system can accurately and timely detect violations, filling the regulatory loopholes of the Environmental supervision department for enterprises.
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