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Temperature and precipitation projection in the lower Mahanadi Basin through machine learning methods

    Deepak Kumar Raj Affiliation
    ; Gopikrishnan T. Affiliation

Abstract

This study examined climate change dynamics in the lower Mahanadi River basin by integrating observed and climate model data. Historical precipitation and temperature data (1979–2020) from the India Meteorological Department (IMD) and monthly climate model data from the CORDEX-SMHI-MIROC model via the Earth System Grid Federation (ESGF) are utilized. Four machine learning models (Fbprophet, Holt-Winters, LSTM RNN, and SARIMAX) are applied to forecast precipitation, Tmax, and Tmin, and are compared across different representative concentration pathway (RCP 2.6, 4.5, and 8.5) scenarios. Diverse trajectories emerge, highlighting potential shifts in precipitation and temperature dynamics over near, mid, and far-term intervals. Fbprophet and SARIMAX are identified as superior models through performance evaluation metrics (R2, RMSE, r, P-bias, and NSE). Spatial analysis using ArcGIS and IDW interpolation reveals spatial variations in climate projections, aiding in visualizing future climate trends within the Mahanadi Basin. This study acknowledges limitations such as historical data uncertainties, socio-economic indicators, and unpredictable RCP trajectories, introducing a novel method to integrate machine learning with climate model data for assessing reliability. It also explores anticipated shifts in monthly precipitation and temperature patterns, providing insights into future climate variations.

Keyword : climate model, machine learning, precipitation, temperature, Mahanadi Basin

How to Cite
Raj, D. K., & T., G. (2024). Temperature and precipitation projection in the lower Mahanadi Basin through machine learning methods. Journal of Environmental Engineering and Landscape Management, 32(4), 270–282. https://doi.org/10.3846/jeelm.2024.22352
Published in Issue
Oct 30, 2024
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This work is licensed under a Creative Commons Attribution 4.0 International License.

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