基于卷积LSTM网络的大规模WSN空气质量预测

Karisma Trinanda Putra, Prayitno, E. F. Cahyadi, Ardia Suttyawati Mamonto, S. S. Berutu, S. Muharom
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引用次数: 2

摘要

PM2.5是一种超轻的微颗粒颗粒,是威胁公众健康的危险空气污染。测量空气污染的实时无线传感器网络(WSN)是提高公众对PM2.5暴露长期影响的认识的一种解决方案。然而,在大规模基于wsn的空气污染监测系统中,原始PM2.5数据集中存在大量噪声和低浓度期,这可能导致因果关系预测不可靠。本文研究了无线传感器网络的传感器采集优化问题,利用ConvLSTM网络重构和预测时空PM浓度数据。该预测模型是将卷积网络与长短期记忆网络相结合建立的。数据集来自台湾各地已经安装的空气质量无线传感器网络。利用过去48小时的记录,预测下一个小时的PM2.5浓度。采用均方根误差(RMSE)评价预测精度。结果表明,ConvLSTM网络的性能优于LSTM网络和回归分析,RMSE分别为1.31、2.59和16.34。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Air Quality Using Massive-Scale WSN Based on Convolutional LSTM Network
PM2.5 is ultra-light micro-grained particles and dangerous air pollution that threatens public health. A real-time wireless sensor network (WSN) that measure air pollution is a solution to increase public awareness about the long-term impact of PM2.5 exposure. However, in a massive-scale WSN-based air pollution monitoring system, there are numerous noisy and low-concentration periods in the raw PM2.5 dataset, which may lead to unreliable causality predictions. This paper addresses the problem of optimizing sensor acquisition of a wireless sensor network to reconstruct and predict spatiotemporal PM concentrations data using ConvLSTM network. This prediction model is built by combining convolution network and long short-term memory network. The dataset is gathered from air quality WSN s that are already installed across Taiwan. Using the last 48-hour records, the next hour PM2.5 concentration is predicted. RMSE is used to evaluate the prediction accuracy. The results reveal that the ConvLSTM network achieves better performance than those using the LSTM network and regression analysis with RMSE of 1.31, 2.59, and 16.34, respectively.
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