HYBRIDIZATION MODEL FOR AIR POLLUTION PREDICTION USING TIME SERIES DATA

RONI YUNIS and ANDRI and DJONI (2024) HYBRIDIZATION MODEL FOR AIR POLLUTION PREDICTION USING TIME SERIES DATA. COGITO SMART JOURNAL, 10 (1). pp. 422-435. ISSN 2477-8079

Full text not available from this repository.

Abstract

In recent years, data science analysis, particularly time series predictions, has been widely employed across various industrial sectors. However, time series data presents high complexity, especially in seasonal patterns such as monthly, daily, or hourly fluctuations. Irregular fluctuations and external factors increasingly challenge accurate predictions. Therefore, this research proposes a hybrid approach combining SVR-SARIMA, SVR-Prophet, LSTM-SARIMA, and LSTM-Prophet to enhance time series prediction accuracy. This study followed the OSEMN methodology approach: gathering data, cleaning data, exploring data, developing models, and interpreting crucial aspects of problem-solving. Seasonal effect predictions indicated a rise in SO2and NO2during dry and rainy seasons until the next two years (average daily increments of 0.0831 μg/m3 for SO2and 0.0516 μg/m3 for NO2). Estimates suggest a decrease in the order of three particles. The evaluation showed that the SVR model performed better compared to the other three models (RMSE 7.765, MAE 5.477, and MAPE 0.261). The best-performing hybrid model was LSTM-Prophet (99.74% accuracy) with RMSE 12.319, MAE 12.057, and MAPE 0.259 values.

Item Type: Article
Divisions: Lembaga Penelitian dan Pengabdian kepada Masyarakat (LPPM) > Artikel > Fakultas Informatika
Depositing User: Anwar Fauzi Ritonga
Date Deposited: 27 Jul 2024 02:55
Last Modified: 27 Jul 2024 02:55
URI: https://repository.mikroskil.ac.id/id/eprint/3504

Actions (login required)

View Item
View Item