基于深度学习算法的细颗粒物(PM2.5)预测性能比较与分析

Kim, Young-hee, K. Chang
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引用次数: 1

摘要

本研究开发了一种基于深度学习算法GAN模型的细颗粒物(PM2.5)人工智能预测系统。实验数据与时间序列轴所产生的温度、湿度、风速、大气压的变化以及空气中SO2、CO、O3、NO2、PM10等污染物的浓度密切相关。由于数据的特点,由于当前时刻的浓度会受到前一时刻浓度的影响,所以采用了递归监督学习的预测模型。为了对现有模型、CNN和LSTM的精度进行对比分析,对观测值与预测值之间的差异进行了分析和可视化。性能分析结果表明,与LSTM相比,该GAN在RMSE、MAPE和IOA评价项上分别提高了15.8%、10.9%和5.5%。
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Comparison and analysis of prediction performance of fine particulate matter(PM2.5) based on deep learning algorithm
This study develops an artificial intelligence prediction system for Fine particulate Matter(PM2.5) based on the deep learning algorithm GAN model. The experimental data are closely related to the changes in temperature, humidity, wind speed, and atmospheric pressure generated by the time series axis and the concentration of air pollutants such as SO2, CO, O3, NO2, and PM10. Due to the characteristics of the data, since the concentration at the current time is affected by the concentration at the previous time, a predictive model for recursive supervised learning was applied. For comparative analysis of the accuracy of the existing models, CNN and LSTM, the difference between observation value and prediction value was analyzed and visualized. As a result of performance analysis, it was confirmed that the proposed GAN improved to 15.8%, 10.9%, and 5.5% in the evaluation items RMSE, MAPE, and IOA compared to LSTM, respectively.
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