Back to Search Start Over

Comparative Evaluation of Weather Forecasting using Machine Learning Models

Authors :
Rahman, Md Saydur
Tumpa, Farhana Akter
Islam, Md Shazid
Arabi, Abul Al
Hossain, Md Sanzid Bin
Haque, Md Saad Ul
Publication Year :
2024

Abstract

Gaining a deeper understanding of weather and being able to predict its future conduct have always been considered important endeavors for the growth of our society. This research paper explores the advancements in understanding and predicting nature's behavior, particularly in the context of weather forecasting, through the application of machine learning algorithms. By leveraging the power of machine learning, data mining, and data analysis techniques, significant progress has been made in this field. This study focuses on analyzing the contributions of various machine learning algorithms in predicting precipitation and temperature patterns using a 20-year dataset from a single weather station in Dhaka city. Algorithms such as Gradient Boosting, AdaBoosting, Artificial Neural Network, Stacking Random Forest, Stacking Neural Network, and Stacking KNN are evaluated and compared based on their performance metrics, including Confusion matrix measurements. The findings highlight remarkable achievements and provide valuable insights into their performances and features correlation.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.01206
Document Type :
Working Paper