Predicting and Analysis Electrical Energy Consumption by Using Data Mining Algorithms

Authors

  • Mohamed Abdulhameed Mohamed Electrical and Computer Engineering, Altinbaş University
  • Asst.Prof.Dr. Sefer Kurnaz Electrical and Computer Engineering, Altinbaş University

Keywords:

prediction, electricity consumption, smart meter, classification, clustering, intelligent system, data mining, electric usage.

Abstract

In this paper, This study accumulates and presents pertinent data in a variety of formats for the purpose of classifying power consumption by activity. It has been fascinating to determine how to graphically depict each stage and classify electrical data in a way that satisfies all requirements. This facilitates the detection of issues and anomalies and simplifies the process of comparing electricity consumption. In the coming decades, electricity will continue to gain prominence as a primary energy source. Smart circuits and smart meters offer numerous benefits to both the utility and the customer. This study combined classification (specifically five algorithms) and clustering theory, with energy consumption per hour (%) functioning as the common framework, in order to classify electricity use based on the similarities of electrical load profiles. After classifying everyone, we will be able to offer each subset advice on how to save money and energy. Consequently, individuals will be more aware of their electricity consumption and motivated to take steps to reduce it. A post-clustering and classification study that uses Weka for analysis and result generation employs an iterative technique based on computational classification calculation to identify anomalies and reallocate them to more acceptable classes. When compared, Decision Tree, Support Vector Machine, Naive Bayes, Random Forest, and Hybrid are the five classification techniques that yield identical results. Categorizing power consumption permits a deeper understanding of the relationship between human behavior and electricity consumption. It improves the quality of the energy conservation consulting service and the customer experience by providing timely, relevant advice based on the unique characteristics of each individual consumer.

References

Ardakanian, O. et al., 2014. Workshop Proceedings of the EDBT/ICDT 2014 Joint Conference on CEUR-WS.org.

Armaroli, N. & Balzani, V., 2011. Towards an electricity-powered world. Energy Environmental Science, pp. 4, 3193-3222.

Beckel, C., Sadamori, L. & Santini, S., 2012. Towards automatic classification of private households using electricity consumption data. Embedded Sensing Systems for Energy-Efficiency in Buildings: Proceedings of the Fourth ACM Workshop, (BuildSys '12), pp. pp.169-176.

BloomEnergy, 2015. Fuel Cell: Distributed Generation. [Online] Available at: http://www.bloomenergy.com/fuel-cell/distributed-generation/

A. Ben-Hur and J. Weston, "A User’s Guide to Support Vector Machines," in Methods in molecular biology, 2010, pp. 223-239

Chicco , G. & Ilie, I., 2009. Support vector clustering of electrical load pattern data. IEEE Trans. Power Syst, 24(3), pp. 1619-28.

E. Goel and E. Abhilasha, "Random Forest: A Review," International Journal of Advanced Research in Computer Science and Software Engineering, vol. 7, no. 1, pp. 251-257, 2007.

Chicco , G. et al., 2005. Emergent electricity customer classification. IEE Proc Gener Transm Distrib, 152(2), pp. 164-72.

Chicco , G. et al., 2004. Load pattern-based classification of electricity customers. IEEE Trans. Power Syst, 19(2), pp. 1232-9.

J. Kelly and W. Knottenbelt, "Neural NILM: Deep Neural Networks," in Proceedings of the 2nd ACM International Conference on Embedded Systems for Energy-Efficient Built Environments, 2015.

K. C. ARMEL, A. GUPTA, G. SHRIMALI and A. ALBERT, "Is disaggregation the holy grail of energy efficiency? The case of electricity," Energy Policy, vol. 52, p. 213–234, 2013.

Downloads

Published

2023-07-11

How to Cite

Mohamed Abdulhameed Mohamed, & Asst.Prof.Dr. Sefer Kurnaz. (2023). Predicting and Analysis Electrical Energy Consumption by Using Data Mining Algorithms. International Journal of Scientific Trends, 2(7), 109–123. Retrieved from https://scientifictrends.org/index.php/ijst/article/view/116

Issue

Section

Articles