Title |
Performance Evaluation of Support Vector Regression Machine Models in Water Level Forecasting |
Authors |
Velasco, Lemuel Clark; Estose, Alyssa Jenn; Opon, Melcris; Tabanao, Emily; Apdian, Floremie |
Publication date |
2024/1/1 |
Journal |
Procedia Computer Science |
Volume |
234 |
Pages |
436-447 |
Publisher |
Elsevier |
Abstract |
Understanding and predicting water level rise is crucial for effective water resource management, flood control, disaster risk reduction, and adaptation to climate change. This study utilize the use of Support Vector Regression Machine (SVRM) models in predicting the water level of Mandulog River in the Philippines. To evaluate its predictive capability, two data architectures, various kernels, and parameters were examined to find the optimal configuration. Multiple kernels were compared for accurate pattern discovery, and parameter selection was performed to enhance predictive accuracy. The SVRM models achieved the lowest Mean Average Percentage Error (MAPE) of 2.186%, Root-Mean Squared Error (RMSE) of 0.00601 during the dry season, and MAPE of 2.226% and RMSE of 0.00602 during the rainy season. Both models were deemed suitable for watershed level forecasting. |
Index terms / Keywords |
Performance Analysis; Support Vector Machines; Support Vector Regression Machine; Watershed Level Forecasting; Water Level Forecasting |
DOI |
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