2001
DOI: 10.1002/er.766
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Neural networks in forecasting electrical energy consumption: univariate and multivariate approaches

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Cited by 49 publications
(33 citation statements)
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“…They found that the number of customers, the price of electricity and the number of tourists correlated with the annual electricity consumption. Nasr et al [21] studied ELEC in Lebanon and found that it depended on degree days and total imports. Flores et al [22] and Ozturk and Ceylon [23] studied the annual electricity consumption in industrial sector.…”
Section: Modeling Of Electricity Consumption and A Hypothetical Modelmentioning
confidence: 98%
“…They found that the number of customers, the price of electricity and the number of tourists correlated with the annual electricity consumption. Nasr et al [21] studied ELEC in Lebanon and found that it depended on degree days and total imports. Flores et al [22] and Ozturk and Ceylon [23] studied the annual electricity consumption in industrial sector.…”
Section: Modeling Of Electricity Consumption and A Hypothetical Modelmentioning
confidence: 98%
“…In addition, to show the potential of the proposed model, a performance comparison in terms of the estimation capability and the learning speed was made between the proposed model and conventional feedforward ANN model with BP. Because it is a well‐known universal estimator, the results from ANN can be considered as a rather standard benchmark . ANN architecture used in this study was illustrated in Figure .…”
Section: Resultsmentioning
confidence: 99%
“…Charbaji (2001) developed a multivariate statistical model to classify commercial banks in Lebanon into cohesive categories based on their financial ratios. Nasr et al (2002) presented an artificial neural network approach to electric energy consumption forecasting in Lebanon. Sbayti et al (2002) investigated the effect of roadway network aggregation levels on modeling of traffic‐induced emission inventories in Beirut.…”
Section: Literature Surveymentioning
confidence: 99%