Analysis and Prediction of Energy Consumption Data, Using Data Mining Software

This paper explores the ability of prediction in electricity consumption using data mining techniques and emphasizes the integration of weather conditions and previous consumption trends. The data were obtained from the Public Electricity Company of Kavala Greece, and the study employs data preposse...

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Bibliographic Details
Main Authors: KAZOLIS Dimitrios, FANTIDIS Jacob, FOTAKIS Christos Dionyshs, TRAMANTZAS Kostantinos, TSIANTOS Vassilios
Format: Article
Language:English
Published: Editura Universităţii din Oradea 2025-05-01
Series:Journal of Electrical and Electronics Engineering
Subjects:
Online Access:https://electroinf.uoradea.ro/images/articles/CERCETARE/Reviste/JEEE/JEEE_V18_N1_MAY_2025/06%20paper%202501061%20KAZOLIS.pdf
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Summary:This paper explores the ability of prediction in electricity consumption using data mining techniques and emphasizes the integration of weather conditions and previous consumption trends. The data were obtained from the Public Electricity Company of Kavala Greece, and the study employs data prepossessing techniques to extract pertinent features. For this task, RapidMiner's algorithms were utilized to model intricate relationships between electricity usage, environmental fluctuations, and general consumption behavior. The innovative part of this effort lies in selection and configuration of data with which the algorithm will be feeded. For this purpose, different types of data where used for example temperature, humidity, day and time, rain, season, etc, and moreover, procedures such as Normalization and Factor Analysis, were implemented. All the above are always shaped according to the way that each time, the specific problem has to be defined, so that, the use of results aims to support correct and complete decision making.
ISSN:1844-6035
2067-2128