Climate Change Analysis Using Machine Learning
Journal: International Journal of Science and Research (IJSR) (Vol.9, No. 8)Publication Date: 2020-08-05
Authors : Himanshu Vishwakarma;
Page : 973-977
Keywords : Climate Change; Machine Learning; Greenhouse Gases; global warming;
Abstract
Long term global warming prediction has major importance in various sectors like climate related studies, agricultural, energy, medical and many more. This paper evaluates the performance of several Machine Learning algorithm (Linear Regression, Support Vector Regression (SVR), lasso, ElasticNet) in problem of annual global warming prediction, from previous measured values. The first challenge dwells on creating a reliable, efficient statistical reliable data model on large data set and accurately capture relationship between average annual temperature and potential factors such as concentration of carbon dioxide, methane, nitrous oxide, Sulphur hexafluoride. The data is predicted and forecasted by linear regression because it is obtaining the highest accuracy for greenhouse gases and temperature among all the technologies which can be used. It was also found that CO2 is the plays the role of major contributor temperature change, followed by CH4, then by N20, then by SF6. After seeing the analysed and predicted data of the greenhouse gases and temperature, the global warming can be reduced comparatively within few years. The reduction of global temperature can help the whole world because not only human but also different animals are suffering from the global temperature.
Other Latest Articles
- Relationship between Corporate Sustainability, Employee Commitment, Local Community Participation, and Performance of Tourist Businesses: The Case in Vietnam South Central Coast
- Management of Urinary Incontinence and Alvi Incontinence in the COVID-19 Pandemic Era
- Case Report: Bilateral Total Knee Replacement in Severe Knee Osteoarthritis
- A Study on Menstrual Hygiene Awareness and Related Myths in Reproductive Age Group Women at Govt. Maternity Hospital, Tirupati
- Correlation and Path Coefficient Analysis in Some Varieties of Phaseolus (Phaseolus vulgaris L.)
Last modified: 2021-06-28 17:10:27