<?xml version="1.0" encoding="UTF-8"?><!DOCTYPE ArticleSet PUBLIC "-//NLM//DTD PubMed 2.7//EN" "https://dtd.nlm.nih.gov/ncbi/pubmed/in/PubMed.dtd">
<ArticleSet>
		<Article>
		<Journal>
			<PublisherName>Majlesi Journal of Electrical Engineering</PublisherName>
			<JournalTitle>Hybrid Techniques for Short Term Load Forecasting</JournalTitle>
			<Issn></Issn>
			<Volume>Volume 17 (2023)</Volume>
			<Issue>Issue 1, March 2023</Issue>
			<PubDate PubStatus="epublish">
                <Year>2024</Year>
                <Month>02</Month>
                <Day>03</Day>
			</PubDate>
		</Journal>
		<ArticleTitle>Hybrid Techniques for Short Term Load Forecasting</ArticleTitle>
		<VernacularTitle></VernacularTitle>
		<FirstPage></FirstPage>
		<LastPage></LastPage>
		<ELocationID EIdType="doi">10.30486/mjee.2023.1970200.0</ELocationID>
		<Language>EN</Language>
		<AuthorList>
            			<Author>
                				<FirstName>Saroj</FirstName>
				<LastName>Panda</LastName>
				<Affiliation>Veer Surendra Sai Univetsity of Technology, Burla, India</Affiliation>
				<Identifier Source="ORCID"></Identifier>
			</Author>
            			<Author>
                				<FirstName>Papia</FirstName>
				<LastName>Ray</LastName>
				<Affiliation>Veer Surendra Sai Univetsity of Technology, Burla, India</Affiliation>
				<Identifier Source="ORCID"></Identifier>
			</Author>
            			<Author>
                				<FirstName>Surender</FirstName>
				<LastName>Salkuti</LastName>
				<Affiliation>Woosong University, Daejon, Republic of Korea</Affiliation>
				<Identifier Source="ORCID"></Identifier>
			</Author>
            		</AuthorList>
		<PublicationType>Journal Article</PublicationType>
		<History>
			<PubDate PubStatus="received">
				<Year>2024</Year>
				<Month>02</Month>
				<Day>03</Day>
			</PubDate>
		</History>
		<Abstract>Short Term Load Forecasting (STLF) is the projection of system load demands for the next day or week. Because of its openness in modeling, simplicity of implementation, and improved performance, the ANN-based STLF model has gained traction. The neural model consists of weights whose optimal values are determined using various optimization approaches. This paper uses an Artificial Neural Network (ANN) trained using multiple hybrid techniques (HT) such as Back Propagation (BP), Cuckoo Search  (CS) model, and Bat algorithm (BA) for load forecasting. Here, a thorough examination of the various strategies is taken to determine their scope and ability to produce results using different models in different settings. The simulation results show that the BA-BP model has less predicting error than other techniques. However, the Back Propagation model based on the Cuckoo Search method produces less inaccuracy, which is acceptable.</Abstract>
		<ObjectList>
            			<Object Type="keyword">
				<Param Name="value">Artificial Neural Network</Param>
			</Object>
						<Object Type="keyword">
				<Param Name="value">Short Term Load Forecasting</Param>
			</Object>
						<Object Type="keyword">
				<Param Name="value">Hybrid Techniques</Param>
			</Object>
						<Object Type="keyword">
				<Param Name="value">Back Propagation</Param>
			</Object>
						<Object Type="keyword">
				<Param Name="value">Cuckoo Search. Bat algorithm</Param>
			</Object>
					</ObjectList>
	</Article>
	</ArticleSet>
