Air quality forecasting in DKI Jakarta using artificial neural network

Anggraini, Asfilia Nova, Ummah, Nisa Kholifatul, Fatmasari, Yessy and Holle, Khadijah Fahmi Hayati (2022) Air quality forecasting in DKI Jakarta using artificial neural network. Matics : Jurnal Ilmu Komputer dan Teknologi Informasi, 14 (1). pp. 1-5. ISSN 1978-161X(p); 2477-2550(e)

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The increase in the use of motorized vehicles increases air pollution conditions, especially in big cities such as the capital city of Indonesia, Jakarta. The pollution that pollutes this city contains various kinds of chemical particles that are harmful to living things when they enter the body. several efforts to reduce this pollution have been carried out, one of which is by identifying the pollutants contained in the air. This study uses data obtained from monitoring stations to predict the content of pollutants in the air at some time in the future. the method used is data mining forecasting with a neural network model. by using rapid miner obtained several graphic descriptions of pollutant conditions in Jakarta that go up and down. pollutant levels of SO2, CO, PM10, and NO2 all increased in the November-December period, and at the same time period, ozone was at its lowest point. Results from the Prediction of air quality using an Artificial Neural Network with 5 parameters, shown on this pollutant PM10 had an RMSE of 9,477; SO2 had an RMSE of 5,474; CO had an RMSE of 8,392; O3 had an RMSE of 18,250; NO2 had an RMSE 5,171. Can be concluded that the RMSE value of O3 is higher than the others and the lowest value of NO2.

Item Type: Journal Article
Keywords: air quality; air pollutant; forecasting; neural network
Subjects: 08 INFORMATION AND COMPUTING SCIENCES > 0801 Artificial Intelligence and Image Processing
Divisions: Faculty of Technology > Department of Informatics Engineering
Depositing User: Khadijah Fahmi Hayati Holle
Date Deposited: 25 Jul 2022 08:21


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