Machine Learning Based Rainfall Analysis
DOI:
https://doi.org/10.32628/CSEIT217462Keywords:
Conventual Neural Network, Multiple Linear Regression, Neural networks, K-means, Naive BayesAbstract
Rainfall is one of the most vital components of agriculture and also predicting it is the most challenging task. In general, weather and rainfall are highly non-linear and complex phenomena, which require progressive computer modeling and simulation for their precise prediction. Numerous and diverse machine learning models are used to predict the rainfall which are Multiple Linear Regression, Neural networks, K-means, Naive Bayes and more. This paper proposes a rainfall prediction model using Conventual Neural Network (CNN) for Indian dataset. The input data is having multiple meteorological parameters and to predict the rainfall in more precise. The Mean Square Error (MSE), accuracy, correlation are the parameters used to validate the proposed model. From the results, the proposed machine learning model provides better results than the other algorithms in the literature.
References
- Kumar Abhishek, Abhay Kumar, Rajeev Ranjan, Sarthak Kumar,” A Rainfall Prediction Model using Artificial Neural Network”, 2012 IEEE Control and System Graduate Research Colloquium (ICSGRC 2012), pp. 82-87, 2012
- Xianggen Gan, Lihong Chen, Dongbao Yang, Guang Liu, “The Research Of Rainfall Prediction Models Based On Matlab Neural Network”, Proceedings of IEEE CCIS2011, pp. 45- 48.
- Mr. Sunil Navadia, Mr. Pintukumar Yadav, Mr. Jobin Thomas, Ms. Shakila Shaikh, “Weather Prediction: A novel approach for measuring and analyzing weather data”, International conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud) (I-SMAC 2017), pp. 414 - 417
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