Improving Weather Forecasting in Remote Regions Through Machine Learning
2025
Kaushlendra Yadav | Saket Malviya | Arvind Kumar Tiwari
The accuracy of weather forecasting hinges crucially on the availability of comprehensive historical weather data. In remote regions face the challenge of sparse data collection, impacting the accuracy of meteorological predictions. This study delves into the data scarcity issue and its repercussions on weather forecasting in these regions. By evaluating the Meteorological Data Supply Portal of the India Meteorological Department and various climatic classifications, this paper gain insights into the present state of weather data accessibility and identify the regions with substantial gaps. This study investigates the extent to which Machine Learning Techniques can compensate for these deficiencies. By leveraging advanced machine learning and deep learning techniques on available data from well-documented regions, this paper propose a framework for generating reliable weather forecasts for remote territories. This paper not only highlights the current landscape of meteorological data availability in remote areas but also examines the potential of ML to democratize weather forecasting, thereby enabling better-preparedness for adverse weather conditions in these underserved regions. The hypothesis of this paper contends that with sufficient training on diverse datasets, ML can provide a significant predictive advantage, serving as a testament to the ingenuity of modern computational methods in confronting real-world challenges. Here, the deep learning model achieves a notable accuracy of 83%, showcasing a substantial improvement over traditional rule-based system. The integration of ML not only enhanced predictive accuracy but also demonstrated a nuanced understanding of complex weather dynamics through data-driven insights.
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