IEEE Access (Jan 2024)

Fine-Tuning of Predictive Models CNN-LSTM and CONV-LSTM for Nowcasting PM<sub>2.5</sub> Level

  • Tafia Hasna Putri,
  • Rezzy Eko Caraka,
  • Toni Toharudin,
  • Yunho Kim,
  • Rung-Ching Chen,
  • Prana Ugiana Gio,
  • Anjar Dimara Sakti,
  • Resa Septiani Pontoh,
  • Indah Reski Pratiwi,
  • Farid Azhar Lutfi Nugraha,
  • Thalita Safa Azzahra,
  • Jessica Jesslyn Cerelia,
  • Gumgum Darmawan,
  • Defi Yusti Faidah,
  • Bens Pardamean

DOI
https://doi.org/10.1109/ACCESS.2024.3368034
Journal volume & issue
Vol. 12
pp. 28988 – 29003

Abstract

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Particulate matter forecasting is fundamental for early warning and controlling air pollution, especially PM2.5. The increase in this level of concentration will lead to a negative impact on public health. This study develops a hybrid model of CNN-LSTM and CONV-LSTM by combining a convolutional neural network (CNN) with an LSTM network to forecast PM2.5 concentration for the next few hours in Kemayoran DKI Jakarta, which is known as a busy area. We discovered the advantages of CNN in effectively extracting features and LSTM in learning long-term historical data from PM2.5 concentration time series data. The predictive model of CNN-LSTM is carried out in a different architecture where the CNN process is carried out first to become the input of LSTM. For CONV-LSTM, it is carried out in one architecture where the multiplication in the LSTM architecture is coupled with the convolution process. This research will explain how the method of developing hybrid CNN-LSTM and CONV-LSTM in predicting PM2.5 concentrations. Based on metric evaluation, the two models are compared to find the best model. Both predictive models produce MAPE values that fall into the good enough category with values < 20%. Results were obtained for CONV-LSTM with MAE worth 6.52, RMSE 8.55, and MAPE 16.39%. As a result, the CONV-LSTM model performs better than CNN-LSTM in nowcasting PM2.5.

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