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PM10 Density Forecast Model Using Long Short Term Memory

机译:PM10密度预测模型使用长短短期内存

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This paper suggests a PM10 forecast model using Long Short Term Memory (LSTM). Data used for the study are collected from Seoul, Korea for the period of January 2005 up to March 2016. As the collected data has a lot of noise, the moving average technique is used to preprocess data for smoothing. Time series data of PM10 was converted into 30-day sequence data to use it as the input data for LSTM. LSTM learns through the sliding window process where sequence data moves to the space adjacent to it. The linear regression and recurrent neural network models are compared to evaluate the performance of LSTM. From the result, the suggested model showed a 500% improvement over linear regression and 100% over the recurrent neural network for its performance level.
机译:本文建议使用长短期内存(LSTM)的PM10预测模型。该研究的数据来自韩国首尔,2005年1月至2016年3月。随着收集的数据具有大量噪声,移动平均技术用于预处理数据进行平滑。 PM10的时间序列数据被转换为30天的序列数据,以将其用作LSTM的输入数据。 LSTM通过滑动窗口过程学习,其中序列数据移动到与其相邻的空间。将线性回归和复发性神经网络模型进行比较,以评估LSTM的性能。从结果,建议的模型显示出线性回归500%的改善,并在经常性神经网络中获得100%的性能水平。

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