Long Short-Term Memory Deep Neural Network Model for PM2.5 Forecasting in the Bangkok Urban Area

Kankamon Thaweephol, Nuwee Wiwatwattana
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引用次数: 9

Abstract

Accurately forecasting fine particulate matter of less than a 2.5 micrometer diameter (PM2.5) concentration levels is important to better manage the air pollution situation and to give advance warnings to residents and officials. In this paper, a Long Short-Term Memory (LSTM) deep neural network model and a Seasonal AutoRegressive Integrated Moving Average with eXogenous regressor (SARIMAX) were trained on air quality and meteorological time series data at the Chokchai metropolitan police station area in Bangkok from 2017 to 2018. After figuring out the best configuration of both algorithms, the performance of the LSTM model to predict PM2.5 concentrations for 24 hours was evaluated and compared against the SARIMAX model. Our experiments indicated that LSTM had a better prediction accuracy as indicated by the RMSE and MAE values for each of the time steps. LSTM could forecast one hour ahead at a very low RMSE of 3.11 micrograms per cubic meter on average, and a MAE of 2.36 micrograms per cubic meter on average, while SARIMAX errors were more than doubled. When the time steps were farther apart, the number of errors were higher for both models.
曼谷市区PM2.5预测的长短期记忆深度神经网络模型
准确预测直径小于2.5微米的细颗粒物(PM2.5)浓度水平对于更好地管理空气污染状况以及提前向居民和官员发出警告非常重要。本文采用长短期记忆(LSTM)深度神经网络模型和带有外生回归因子的季节性自回归综合移动平均(SARIMAX)模型,对2017 - 2018年曼谷Chokchai大都会派出所空气质量和气象时间序列数据进行了训练。在确定了两种算法的最佳配置后,对LSTM模型预测24小时PM2.5浓度的性能进行了评估,并与SARIMAX模型进行了比较。我们的实验表明,LSTM在每个时间步长的RMSE和MAE值都具有更好的预测精度。LSTM可以提前一小时预测,平均RMSE为3.11微克/立方米,MAE为2.36微克/立方米,而SARIMAX误差增加了一倍多。时间步距越远,两种模型的误差数越高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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