Rainfall Prediction Using Machine Learning

Publications

Rainfall Prediction Using Machine Learning

Author : Dr Shaik Rafi

Year : 2024

Publisher : Institute of Electrical and Electronics Engineers Inc.

Source Title : Proceedings of 2024 2nd International Conference on Recent Trends in Microelectronics, Automation, Computing, and Communications Systems: Exploration and Blend of Emerging Technologies for Future Innovation, ICMACC 2024

Document Type :

Abstract

The title is ‘Rainfall Prediction Using Machine Learning’. The initiative’s dataset is written in Python and stored in Microsoft Excel. A wide range of machine learning algorithms are used to discover which strategy generates the best accurate predictions. In many sections of the country, rainfall forecasting is critical for avoiding major natural disasters. This forecast was created using a variety of machine learning approaches, including catboost, xgboost, decision tree, random forest, logistic regression, neural network, and light gbm. It incorporates several components. The Weather Dataset was utilized. The primary goal of the research is to evaluate a variety of algorithms and determine which one performs best. Farmers may greatly profit from growing the appropriate crops based on the amount of water they require.