Explaining and predicting annual electricity demand of enterprises – a case study from Switzerland

Abstract In an attempt to channel sales activities, companies often focus on ‘high value targets’ that offer attractive prospective returns. In liberalized electricity markets, commercial customers with high electricity demand constitute such high value targets. The problem when acquiring new custom...

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Main Authors: Carlo Stingl, Konstantin Hopf, Thorsten Staake
Format: Article
Language:English
Published: SpringerOpen 2018-10-01
Series:Energy Informatics
Subjects:
Online Access:http://link.springer.com/article/10.1186/s42162-018-0028-0
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spelling doaj-df87df8499d048d486218a8eb0ff021c2020-11-25T02:45:11ZengSpringerOpenEnergy Informatics2520-89422018-10-011S114916610.1186/s42162-018-0028-0Explaining and predicting annual electricity demand of enterprises – a case study from SwitzerlandCarlo Stingl0Konstantin Hopf1Thorsten Staake2Information Systems and Energy Efficient Systems Group, University of BambergInformation Systems and Energy Efficient Systems Group, University of BambergInformation Systems and Energy Efficient Systems Group, University of BambergAbstract In an attempt to channel sales activities, companies often focus on ‘high value targets’ that offer attractive prospective returns. In liberalized electricity markets, commercial customers with high electricity demand constitute such high value targets. The problem when acquiring new customers, however, is that the electricity consumption is not known to the sales organization in advance. This hinders the possibility to prioritize sales targets and thus increases the acquisition cost, reduces the competitiveness within the market and ultimately leads to higher cost for electricity customers. In this study, we investigate the annual electricity consumption of enterprises by means of a dataset with 1810 company addresses in a typical town in Switzerland. We use the industry branch of the enterprises together with open big data (geographic information, online-content, social media data and governmental statistical data) to explain and predict the electricity consumption of such. Our linear regression analysis shows that information on the economic branches of the enterprises, basal area of buildings, number of opening hours and social media data can explain up to 19% of variance in electricity consumption. Economic trends (e.g., in labor market and turnover statistics) reflect changes in the electricity consumption in the investigated years 2010–2014 for several economic branches. We show, that the electricity consumption can be predicted better than a random predictor, however with a high uncertainty. Nevertheless, the open data sources can be used to identify a relevant group of companies with high consumption (more than 100,000kWh per year) with good accuracy.http://link.springer.com/article/10.1186/s42162-018-0028-0Enterprise electricity consumptionOpen big dataLoad predictionRandom forestEconomic developmentHigh consumption customers
collection DOAJ
language English
format Article
sources DOAJ
author Carlo Stingl
Konstantin Hopf
Thorsten Staake
spellingShingle Carlo Stingl
Konstantin Hopf
Thorsten Staake
Explaining and predicting annual electricity demand of enterprises – a case study from Switzerland
Energy Informatics
Enterprise electricity consumption
Open big data
Load prediction
Random forest
Economic development
High consumption customers
author_facet Carlo Stingl
Konstantin Hopf
Thorsten Staake
author_sort Carlo Stingl
title Explaining and predicting annual electricity demand of enterprises – a case study from Switzerland
title_short Explaining and predicting annual electricity demand of enterprises – a case study from Switzerland
title_full Explaining and predicting annual electricity demand of enterprises – a case study from Switzerland
title_fullStr Explaining and predicting annual electricity demand of enterprises – a case study from Switzerland
title_full_unstemmed Explaining and predicting annual electricity demand of enterprises – a case study from Switzerland
title_sort explaining and predicting annual electricity demand of enterprises – a case study from switzerland
publisher SpringerOpen
series Energy Informatics
issn 2520-8942
publishDate 2018-10-01
description Abstract In an attempt to channel sales activities, companies often focus on ‘high value targets’ that offer attractive prospective returns. In liberalized electricity markets, commercial customers with high electricity demand constitute such high value targets. The problem when acquiring new customers, however, is that the electricity consumption is not known to the sales organization in advance. This hinders the possibility to prioritize sales targets and thus increases the acquisition cost, reduces the competitiveness within the market and ultimately leads to higher cost for electricity customers. In this study, we investigate the annual electricity consumption of enterprises by means of a dataset with 1810 company addresses in a typical town in Switzerland. We use the industry branch of the enterprises together with open big data (geographic information, online-content, social media data and governmental statistical data) to explain and predict the electricity consumption of such. Our linear regression analysis shows that information on the economic branches of the enterprises, basal area of buildings, number of opening hours and social media data can explain up to 19% of variance in electricity consumption. Economic trends (e.g., in labor market and turnover statistics) reflect changes in the electricity consumption in the investigated years 2010–2014 for several economic branches. We show, that the electricity consumption can be predicted better than a random predictor, however with a high uncertainty. Nevertheless, the open data sources can be used to identify a relevant group of companies with high consumption (more than 100,000kWh per year) with good accuracy.
topic Enterprise electricity consumption
Open big data
Load prediction
Random forest
Economic development
High consumption customers
url http://link.springer.com/article/10.1186/s42162-018-0028-0
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