2018
DOI: 10.1108/ijesm-10-2017-0011
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Unveiling the factors affecting final electricity consumption: does the regional component matter?

Abstract: Purpose The purpose of this paper is to explore the developments in final electricity consumption, estimate the portions of changes that can be attributed to national, sectoral or regional factors, and to investigate determinants of the regional component (RC) in Croatia at the subnational level in the period 2001-2013. Design/methodology/approach In the first stage, the dynamic shift-share method is used to decompose final electricity consumption, and then, in the second stage, the panel population-averaged… Show more

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Cited by 5 publications
(2 citation statements)
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“…In the mobility sector, these generated data sets are large enough, usually dynamic, unstructured, in different varieties, thus difficult for traditional database infrastructures to store, manage and process such data (Badii et al, 2017). This results in the increasing need for efficient and practical big data analytics tools to process the data by converting, analyzing and using the data toward realizing beneficial information to improve mobility services (Al-Jaroodi and Mohamed, 2018;Borozan and Pekanov Starcevic, 2018). Similarly, data from transport companies, public administrations and municipalities can be coarsely gathered as open data, which are data that can be used freely by anyone (Badii et al, 2017).…”
Section: Big Data For Electric Mobility As a Service In Smart Citiesmentioning
confidence: 99%
“…In the mobility sector, these generated data sets are large enough, usually dynamic, unstructured, in different varieties, thus difficult for traditional database infrastructures to store, manage and process such data (Badii et al, 2017). This results in the increasing need for efficient and practical big data analytics tools to process the data by converting, analyzing and using the data toward realizing beneficial information to improve mobility services (Al-Jaroodi and Mohamed, 2018;Borozan and Pekanov Starcevic, 2018). Similarly, data from transport companies, public administrations and municipalities can be coarsely gathered as open data, which are data that can be used freely by anyone (Badii et al, 2017).…”
Section: Big Data For Electric Mobility As a Service In Smart Citiesmentioning
confidence: 99%
“…Even in countries where the residential customers do not have access to an open energy market (e.g., in Brazil, although changes are under discussion) (Ministério de Minas e Energia, 2017), there is also growing concern about the quality of service provided and consumer satisfaction. However, it is hard to find a cause-and-effect relationship between service quality, customer satisfaction, energy consumption, regional components (Borozan and Starcebic, 2018) and the financial performance of companies operating in these markets. It is necessary a broader view of performance in a more economical than financial perspective, i.e.…”
Section: Introductionmentioning
confidence: 99%