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PM2.5 Forecasting Using LSTM Sequence to Sequence Model in Taichung City

机译:基于LSTM序列的台中市PM2.5预测模型

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Accuracy and speed are crucial in the machine learning forecasting. Specifically, when encountering high variance segments like sequence forecasting case. For example, air quality data has various time-series variables such as temperature, CO, rainfall, wind speed, 03, S02, and many more. To predict such as the PM2.5 which based on various parameters needs state of the art methods on a combination of forecasting models and machine learning methods. The Long Short Term Memory Networks (LSTM) autoencoders are capable of handling with a sequence of input. In this case, the predictive modeling problems involving sequence to sequence prediction problems called seq2seq network. In this paper, a sequence forecasting model is proposed for the air quality in Taichung City Taiwan, that is consist of five areas, Xitun, Chungming, Fengyuan, Dali, and Shalu. Statistic correlation analysis was implemented to find better accuracy and speed. A comparison of before and after using statistic correlation analysis in the LSTM seq2seq modeling is provided to examine the accuracy, speed, and variance score.
机译:准确性和速度对于机器学习预测至关重要。具体来说,当遇到高方差段时,例如序列预测的情况。例如,空气质量数据具有各种时间序列变量,例如温度,CO,降雨量,风速,03,SO 2等。要基于各种参数进行预测(例如PM2.5),需要结合预测模型和机器学习方法的最新技术。长短期存储网络(LSTM)自动编码器能够处理一系列输入。在这种情况下,涉及序列到序列的预测问题的预测建模问题称为seq2seq网络。本文提出了台中市空气质量的序列预测模型,该模型由西屯,崇明,丰原,大理和沙鹿五个地区组成。进行统计相关分析以发现更好的准确性和速度。提供了在LSTM seq2seq建模中使用统计相关性分析之前和之后的比较,以检查准确性,速度和方差得分。

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