RainFall Prediction System for Mumbai

Authors

  • Aditya Nikhade
  • Rahul Khetale

Keywords:

Accuracy, Forecasting, Machine Learning Algorithms, Rainfall, random forest classifier

Abstract

These days, climate change is accelerating due to global warming, which has a major influence on humanity. Sea levels are rising, the atmosphere and ocean are warming, and there are more floods and droughts as a result. Uneven rainfall or precipitation is one of the main effects of it. Today, most of the important global authorities are taking into consideration the laborious problem of precipitation forecasting. One climatic factor that has an impact on the many human activities is precipitation. like manufacturing, production, and tourism in the agricultural sector. Rainfall becomes extremely problematic as a result, necessitating more accurate forecasts. Accurate rainfall forecasting is crucial for all of these reasons. There are several ways to forecast it, but the one that is chosen for the objective of this assignment is to analyze and compile rainfall data from the past 12 months, gathered over a period of 5 years. The goal is to utilize this data to forecast rainfall for the following day. To achieve this, the project aims to optimize the results by employing a random forest classifier as a machine learning model for predicting rainfall.

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Additional Files

Published

30-05-2023

How to Cite

Aditya Nikhade, & Rahul Khetale. (2023). RainFall Prediction System for Mumbai. Vidhyayana - An International Multidisciplinary Peer-Reviewed E-Journal - ISSN 2454-8596, 8(si7), 240–246. Retrieved from http://j.vidhyayanaejournal.org/index.php/journal/article/view/822