1. Monthly Electricity Demand Patterns and Their Relationship With the Economic Sector and Geographic Location
- Author
-
Carlos León, Antonio Garcia-Delgado, J. Luque, and Enrique Personal
- Subjects
General Computer Science ,020209 energy ,media_common.quotation_subject ,Supply chain ,02 engineering and technology ,010501 environmental sciences ,01 natural sciences ,pattern analysis ,0202 electrical engineering, electronic engineering, information engineering ,General Materials Science ,Energy market ,Quality (business) ,Electrical and Electronic Engineering ,Location ,0105 earth and related environmental sciences ,media_common ,Consumption (economics) ,data engineering ,big data applications ,Energy demand ,business.industry ,Economic sector ,General Engineering ,Environmental economics ,TK1-9971 ,customer profiling ,statistical learning ,Electricity ,Electrical engineering. Electronics. Nuclear engineering ,business ,Automatic meter reading - Abstract
In a highly competitive and liberalized energy market, where the retail of electricity is open to many potential companies, it is essential to have tools that help make decisions and guide the design of marketing strategies. In this sense, it is essential for retailers to know the behavior of their customers to correctly define their commercial strategies. One of the most commonly used methods for this is the characterization of their consumption profiles. Fortunately, for regulatory reasons, in some countries, the monthly electricity demand of each customer is openly available to any competitor. This paper explores whether this information, especially the economic sector and geographic location of a client, is useful for determining the client’s demand profile. Specifically, data on electricity demand in Spain from more than 27 million users and for a period of 3 years are analyzed. For this purpose, the electricity consumption of every client is grouped by month and normalized. The resulting demand profiles are later clustered according to different criteria. The main finding of the research is that the combined information on economic activity and location definitely enables prediction of the demand profile. Additionally, profile quality metrics are defined and obtained for the entire dataset. The resulting profiles have a mean dispersion of 10% and a confidence interval of ±17%. To clarify the use of these metrics, several examples are detailed, showing how this profile information can be used to improve the marketing decision-making process for electricity retailers. more...
- Published
- 2021