Energy Consumption Management of Residential Appliances Based on Load Signatures Decomposition

Journal Title: Engineering and Technology Journal - Year 2024, Vol 9, Issue 06

Abstract

Nowadays, energy consumption management techniques in the residential side have gained significant importance due to their considerable influence on the control of power flow in distribution networks and especially the possibility of managing a huge part of domestic electrical demand during peak-load hours. Since the customer’s data are recorded in an aggregated form, therefore, in order to apply control approaches, it is necessary to use load pattern evaluation techniques (load signature). These methods capable to decomposition effective features that help control approaches to implement with more accuracy. In this article, features of residential loads have been extracted by using the signature of the aggregated consumer’s demand. Then these features have been evaluated by methods such as logistic regression, k-nearest neighborhood, and decision tree. By assessing the results, it was determined that among the extracted features, the first two features (consumed power and injected harmonics) covered more than 89% of the variance of the entire set, and with the help of using the principal component analysis method, it was determined that by reducing the number of features to 2, a considerable amount of computation is reduced and only about 4% of the accuracy is reduced. Also, the convolutional neural network approach was used to estimate the type of load, and by identifying controllable loads and applying remote home energy management methods, it was found that by increasing participation up to 80%, more than 41% of peak-load consumption could be shifted to off-peak hours.

Authors and Affiliations

Elias H. Ait Aissa , Abbas UĞURENVER,

Keywords

Related Articles

Quaternion-Type Representation for Measuring the Rennet Coagulation Time of Milk by Color Image Sequences Processing

The determination of the rennet coagulation time of milk by image sequences processing was performed using a computer vision system (CVS), consisting of a computer coupled with a transmitted light microscope equipped wit...

DECONSTRUCTING WIDE-AREA NETWORKS USING TOW

Steganographers agree that lossless communication is an interesting new topic in the field of networking, and electrical engineers concur. In this paper, we confirm the evaluation of link-level acknowledgements, which em...

Synergistic Evaluation of Computer Network Security Using Attack Graphs and Security Event Processing

This study presents an intricate evaluation framework for enhancing computer network security through converging attack graph analysis and security event processing (SEP). The researchers construct a comprehensive method...

TREATMENT OF INDUSTRIAL WASTE IN DIYALA COMPANY

It had been evaluating the possibility of using solid metal waste to a subsidiary of the Ministry of Industry and Minerals companies, noting that the results of the tests of models for improving the fine structure and th...

Study on Hydrochemical Characteristics of Ordovician Limestone in Jiaozuo Mining Area

In order to understand the source of groundwater inrush and its hydrogeochemical evolution path truly, determine the evolution characteristics and development trend of water cycle, and effectively solve the problem of wa...

Download PDF file
  • EP ID EP737842
  • DOI 10.47191/etj/v9i06.10
  • Views 11
  • Downloads 0

How To Cite

Elias H. Ait Aissa, Abbas UĞURENVER, (2024). Energy Consumption Management of Residential Appliances Based on Load Signatures Decomposition. Engineering and Technology Journal, 9(06), -. https://europub.co.uk/articles/-A-737842