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Rainfall Prediction

Dr A R JayaSudha, Kathiravan M

Abstract


Predicting rainfall is essential because intense rainfall can cause a wide variety of natural catastrophes. People will be able to take preventative measures as a result of the projection, and it is important that the prediction is accurate. There are two different kinds of weather forecasting: short-term weather forecasting and long-term weather forecasting. The accuracy of our results can largely be determined through projection, particularly short-term prediction. Building a model capable of predicting long-term rainfall is the primary obstacle to overcome. Due to the fact that it is intimately connected to both the economy and the human lifespan, the projection of intense precipitation may present a significant challenge for the earth science department.


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References


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