Ozone Level Prediction with Machine Learning Algorithms
Keywords:
Machine Learning Algorithms, Ozone Level, Risk Prediction, Proposed Model, K-Fold ValidationAbstract
The ozone level in the atmosphere not only affects the quality of life of all living things and but also causes deaths. Ozone is a gas that allows it to be put into the radiation value coming from the sun rays. Therefore, when the ozone level exceeds a certain threshold, the risk situation increases. Machine learning algorithms have the ability to make inferences from these data in situations that they have not encountered before, if sufficient data is obtained about the problem to be applied. In this study, a hybrid machine learning algorithm is proposed, and ozone level estimation is aimed to prevent this before there is a risk. The proposed hybrid model results in two stages. In the first stage, clustering is made with the method of genetic algorithms and the cluster result is transmitted as an introduction to the XGBoost classifier method. To show that the proposed model is applicable, support vector machines, random forest, multi-layered neural networks and XGBoost methods, which are among the frequently used machine learning methods, have been applied to the same problem. After the 10-fold validation applied, the proposed model reached the most successful accuracy rate with 94%.
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The manuscript with title and authors is being submitted for publication in Journal of Aeronautics and Space Technologies. This article or a major portion of it was not published, not accepted and not submitted for publication elsewhere. If accepted for publication, I hereby grant the unlimited and all copyright privileges to Journal of Aeronautics and Space Technologies.
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