Text
IMPLEMENTASI PERBANDINGAN ALGORITMA K-NEAREST NEIGHBOR DAN ALGORITMA SUPPORT VECTOR MACHINES DALAM MENENTUKAN PREDIKSI KUALITAS UDARA
Air pollution is a very big problem for every country, both developed and developing countries. The amount of pollution in the dense population causes an increase in the level of air pollution due to pollutant gases. There are five main parameters that become the standard for gases that cause air pollution in the form of Carbon Monoxide (CO), Nitrogen Dioxide (NO2), Sulfur Dioxide (SO2), Ozone (O3), and Particulate Materials (PM-2,5). This parameter is expressed as a standard index of air pollution or called the ISPU. This research was conducted to predict the level of air quality with parameters CO, NO2, SO2, O3, and PM-2,5 by implementing the K-Nearest Neighbor algorithm and the Support Vector Machines algorithm to make comparisons in calculating the level of accuracy of the prediction results with actual data on testing data. A total of 120 data records in the form of air pollution quality index data in New York City in April 2014-2017 were taken from the United States Environmental Protection Agency (EPA) for use in the training and testing process. The K-Nearest Neighbor algorithm and the Support Vector Machines algorithm are given input for the parameter values of CO, NO2, SO2, O3, and PM-2,5, and the air quality index on the same day). Testing was carried out using Pycharm 2019.3.3 software. The results of the tests conducted show that the K-Nearest Neighbor Algorithm produces an average level of accuracy between the predicted value and actual data based on the ISPU value output of 89.26%, while the Support Vector Machines Algorithm produces an average accuracy rate between the predicted value and actual data based on the output of the ISPU value is 93.16%.
Inventory Code | Barcode | Call Number | Location | Status |
---|---|---|---|---|
2007000853 | T40798 | T407982020 | Central Library (REFERENCES) | Available but not for loan - Not for Loan |
No other version available