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Novel Convolution and LSTM Model for Forecasting PM2.5 Concentration

机译:预测PM2.5浓度的新型卷积和LSTM模型

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Higher levels of PM2.5 concentration are becoming the leading cause of hazy days in China. However, studies have shown that the variations of PM2.5 involve complicated physical and chemical processes, which make their accurate predictions challenging. Meanwhile, the forecast results from numerical models frequently deviate from observation values. The deep learning method is a good substitute for the prediction of mass time series data in the field of meteorology. In the present study, a framework for PM2.5 concentration prediction is presented based on a three-dimensional convolutional neural network (3DCNN) and long short term memory neural network (LSTM). Using preprocessing, correlation analysis, feature extraction, and transformation, spatiotemporal sequence data was generated. In the spatiotemporal feature extraction phase, 3DCNN was used to extract high-level spatial features, and LSTM was used to extract temporal features. In the prediction phase, full connect (FC) was used to combine spatial and temporal features. To examine the efficacy of the proposed model, the PM2.5 concentration data, meteorological observation data, and grid dataset collected at ten observation stations in the Beijing Meteorological Bureau (BMB) were used. After the performance evaluation was compared with several methods including this proposed model, support vector machine (SVM), and the existing PM2.5 forecast system in BMB, root mean square errors (RMSE) and mean absolute errors (MAE) were chosen as evaluation indicators. The experimental results showed that the proposed model performed the best, the minimum MAE value was 3.24μg/m~3, and the minimum RMSE value was 13.56μg/m~3 over the ten stations. In addition, the proposed model overcame the underestimation produced by the existing PM2.5 forecast system in BMB and demonstrated superior performance for different time lengths over a 24-hour period. The results also confirmed the effectiveness of the deep learning method in the prediction of PM2.5 concentration.
机译:更高水平的PM2.5浓度正成为中国朦胧日的主要原因。然而,研究表明,PM2.5的变化涉及复杂的物理和化学过程,这使得其准确的预测具有挑战性。同时,来自数值模型的预测结果经常偏离观察值。深度学习方法是在气象领域预测质量时间序列数据的良好替代品。在本研究中,基于三维卷积神经网络(3DCNN)和长短期存储器神经网络(LSTM)呈现PM2.5浓度预测的框架。使用预处理,相关性分析,特征提取和转换,产生了时尚序列数据。在时空特征提取阶段,3DCNN用于提取高级空间特征,LSTM用于提取时间特征。在预测阶段,全连接(FC)用于结合空间和时间特征。为了检查所提出的模型的功效,使用PM2.5浓度数据,气象观察数据和在北京气象局(BMB)的十个观测站收集的气象观测数据和网格数据集。在将性能评估进行比较之后,与包括这一提出的模型,支持向量机(SVM)和BMB中的现有PM2.5预测系统的方法进行比较,选择均值平方误差(RMSE)和平均绝对误差(MAE)作为评估指标。实验结果表明,所提出的模型表现最佳,最小MAE值为3.24μg/ m〜3,最小RMSE值为13.56μg/ m〜3。此外,所提出的模型克服了BMB中现有PM2.5预测系统产生的低估,并在24小时内显示出不同时间长度的优越性。结果还证实了深度学习方法在预测PM2.5浓度中的有效性。

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