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Advisor(s)
Abstract(s)
Energy challenges are crucial issues to achieve Sustainable Development and its goals. Energy availability and affordability are pillars for ending poverty, giving access to commodities as well as water, etc. Modern lives rely on appliances and gadgets based on electric energy being its price a key issue making it worth to analyze and promote simple models able to predict electric energy prices to support in decision-making processes and in management. This work studied the correlation of electricity price with variables such as the electricity mix , GDP, energy productivity, electricity consumption per capita, fossil fuel reserves, and diesel price, using Spearman correlation. To the significant correlations found it was then applied the Kruskal-Wallis test and the variables that presented statistically significant differences were then considered to model electricity price based on these macro variables. Our findings revealed that the best models were a logarithmic and a linear model of energy productivity to predict electricity price. In the validation process, these models presented an average deviation of 10.3% and 11.7%, respectively, which is reasonable considering the simplicity of the models developed.
Description
Keywords
Electricity price Energy Regression models Sustainable Development Goals
Citation
Martins, Florinda F. and Felgueiras, Carlos and Caetano, Nídia S., Macro Modelling of Electricity Price Towards SDG7 (September 2021). Available at SSRN: https://ssrn.com/abstract=4007109 or http://dx.doi.org/10.2139/ssrn.4007109
Publisher
Elsevier