Please use this identifier to cite or link to this item: http://ir.lib.seu.ac.lk/handle/123456789/7597
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dc.contributor.authorKarlavi, M. M.-
dc.contributor.authorChatrabgoun, O.-
dc.date.accessioned2025-06-02T04:13:09Z-
dc.date.available2025-06-02T04:13:09Z-
dc.date.issued2024-11-06-
dc.identifier.citationConference Proceedings of 13th Annual Science Research Session – 2024 on “"Empowering Innovations for Sustainable Development Through Scientific Research" on November 6th 2024. Faculty of Applied Sciences, South Eastern University of Sri Lanka, Sammanthurai.. pp. 60.en_US
dc.identifier.isbn978-955-627-029-7-
dc.identifier.urihttp://ir.lib.seu.ac.lk/handle/123456789/7597-
dc.description.abstractAir pollution, especially nitrogen dioxide (NO₂), poses significant risks to public health and environmental quality. Traditional statistical models for predicting NO₂ levels often fail to capture the complex, nonlinear relationships in environmental data and typically do not provide uncertainty estimates. This study addresses these shortcomings by utilizing advanced machine learning techniques, specifically Gaussian Process Regression (GPR), to enhance the accuracy and reliability of NO₂ predictions. Using a comprehensive dataset of hourly averaged responses from chemical sensors in an urban area in Italy, we developed and evaluated GPR models with various kernels, including polynomial-like, rational quadratic, and combined kernels. These models were compared with traditional regression models, such as Lasso and Ridge regression. The results showed that GPR models, particularly those with optimized polynomial-like and rational quadratic kernels, significantly outperformed the traditional models. The polynomial-like kernel GPR model achieved a Mean Squared Error (MSE) of 0.034 and an R-squared (R²) value of 0.959. Similarly, the rational quadratic kernel GPR model achieved an MSE of 0.035 and an R² of 0.959. In contrast, Lasso and Ridge regression models had higher MSEs and lower R² values. Additionally, the GPR models provided valuable uncertainty estimates, enhancing prediction reliability. This study demonstrates the effectiveness of GPR models in environmental monitoring and underscores the importance of kernel optimization in improving model performance, suggesting substantial potential for GPR in air quality prediction and environmental management.en_US
dc.language.isoen_USen_US
dc.publisherFaculty of Applied Sciences, South Eastern University of Sri Lanka, Sammanthurai.en_US
dc.subjectAir Quality Predictionen_US
dc.subjectGaussian Process Regression (GPR)en_US
dc.subjectLasso Regressionen_US
dc.subjectPredictive Modelingen_US
dc.subjectRidge Regression.en_US
dc.titleBayesian optimization in Gaussian process regression for accurate air quality prediction.en_US
dc.typeArticleen_US
Appears in Collections:13th Annual Science Research Session

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