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2020 | OriginalPaper | Chapter

Prediction and Analysis of Sun Shower Using Machine Learning

Authors : Nadeem Sarwar, Junaid Nasir, Syed Zeeshan Hussain Shah, Alishba Ahsan, Sameer Malik, Sarousha Nasir, M. Zafar Iqbal, Asma Irshad

Published in: Intelligent Technologies and Applications

Publisher: Springer Singapore

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Abstract

Climate is the absolute most occasions that influence the human life in each measurement, running from nourishment to fly while then again it is the most tragic wonders. In this manner, expectation of climate wonders is of significant enthusiasm for human culture to keep away from or limit the devastation of climate risks. Climate forecast is unpredictable because of clamor and missing qualities dataset. Various endeavors were made to make climate forecast as precise as would be prudent, yet at the same time the complexities of commotion are influencing exactness. In this paper, the five-year rainfall record of weather is used for predicting the rainfall by calculating the performance and accuracy through 10 cross-fold validation technique. Its initial step is gathering, isolating, sorting, and detachment of datasets dependent on future vectors. Arrangement strategy has numerous calculations, some of them are Support Vector Machine (SVM), Naïve Bayes, Random Forest, and Decision Tree. Prior to the execution of each strategy, the model is made and afterward preparing of dataset has been made on that model. Learning the calculation created model must be fit for both the information dataset and estimate the records of class name. Various classifiers, for example, Linear SVM, Ensemble, Decision tree has been utilized and their precision and time broke down on the dataset. At last, all the calculation and results have been determined and analyzed in the terms of accuracy and execution time.

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Metadata
Title
Prediction and Analysis of Sun Shower Using Machine Learning
Authors
Nadeem Sarwar
Junaid Nasir
Syed Zeeshan Hussain Shah
Alishba Ahsan
Sameer Malik
Sarousha Nasir
M. Zafar Iqbal
Asma Irshad
Copyright Year
2020
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-15-5232-8_16

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