
A Comprehensive Study of Analysis of Climate Change Patterns Using R Software
Pragati Kumari*
Dept. of Fisheries Science, Kerala University of Fisheries and Ocean Studies, Kochi, Kerala (682 506), India
DOI: NIL
Keywords: Climate change, Data analysis, R programming, Visualization
Abstract
Currently, globally, climate change has far-reaching effects. Understanding the climate change patterns and trends that contribute to its development involves the analysis of climatic data. This study introduces a thorough method for utilizing the R programming language to analyse trends related to climate change. R offers a framework for data analysis and visualization that is versatile and powerful which makes it a perfect tool for analysing complicated climate-related data. The study covers several analytic issues, such as statistical modelling, data preparation and visualization methods. The objective of this paper is to highlight the informative guide for using R to analyse patterns.
Downloads
not found
Reference
Blois, J.L., Williams, J.W., Fitzpatrick, M.C., Jackson, S.T., Ferrier, S., 2013. Space can substitute for time in predicting climate-change effects on biodiversity. Proceedings of the National Academy of Sciences 110(23), 9374-9379. DOI: https://doi.org/10.1073/pnas.1220228110.
Hanel, M., Kožín, R., Heřmanovský, M., Roub, R., 2017. An R package for assessment of statistical downscaling methods for hydrological climate change impact studies. Environmental Modelling & Software 95, 22-28. DOI: https://doi.org/10.1016/j.envsoft.2017.03.036.
Hamlet, A.F., Elsner, M.M., Mauger, G.S., Lee, S.Y., Tohver, I., Norheim, R.A., 2013. An overview of the Columbia Basin Climate Change Scenarios Project: Approach, methods and summary of key results. Atmosphere-Ocean 51(4), 392-415. DOI: https://doi.org/10.1080/07055900.2013.819555.
Shelia, V., Hansen, J., Sharda, V., Porter, C., Aggarwal, P., Wilkerson, C.J., Hoogenboom, G., 2019. A multi-scale and multi-model gridded framework for forecasting crop production, risk analysis, and climate change impact studies. Environmental Modelling & Software 115, 144-154. DOI: https://doi.org/10.1016/j.envsoft.2019.02.006.
Villoria, N.B., Elliott, J., Müller, C., Shin, J., Zhao, L., Song, C., 2016. Rapid aggregation of global gridded crop model outputs to facilitate cross-disciplinary analysis of climate change impacts in agriculture. Environmental Modelling & Software 75, 193-201. DOI: https://doi.org/10.1016/j.envsoft.2015.10.016.