dc.contributorUniversidade Estadual Paulista (Unesp)
dc.date.accessioned2014-05-27T11:26:03Z
dc.date.available2014-05-27T11:26:03Z
dc.date.created2014-05-27T11:26:03Z
dc.date.issued2011-10-05
dc.identifier2011 IEEE PES Trondheim PowerTech: The Power of Technology for a Sustainable Society, POWERTECH 2011.
dc.identifierhttp://hdl.handle.net/11449/72742
dc.identifier10.1109/PTC.2011.6019432
dc.identifier2-s2.0-80053370497
dc.identifier7166279400544764
dc.description.abstractMultinodal load forecasting deals with the loads of several interest nodes in an electrical network system, which is also known as bus load forecasting. To perform this demand, it is necessary a technique that is precise, trustable and has a short-time processing. This paper proposes two methodologies based on general regression neural networks for short-term multinodal load forecasting. The first individually forecast the local loads and the second forecast the global load and individually forecast the load participation factors to estimate the local loads. To design the forecasters it wasn't necessary the previous study of the local loads. Tests were made using a New Zealand distribution subsystem and the results obtained are compatible with the ones founded in the specialized literature. © 2011 IEEE.
dc.languageeng
dc.relation2011 IEEE PES Trondheim PowerTech: The Power of Technology for a Sustainable Society, POWERTECH 2011
dc.rightsAcesso aberto
dc.sourceScopus
dc.subjectBus Load Forecasting
dc.subjectGeneral Regression Neural Network
dc.subjectShort-Term Load Forecasting
dc.subjectDistribution systems
dc.subjectElectrical networks
dc.subjectGeneral regression neural network
dc.subjectGlobal loads
dc.subjectLoad forecasting
dc.subjectLoad participation
dc.subjectLocal loads
dc.subjectNew zealand
dc.subjectForecasting
dc.subjectIntelligent systems
dc.subjectNeural networks
dc.subjectRegression analysis
dc.subjectSustainable development
dc.subjectElectric load forecasting
dc.titleShort-term multinodal load forecasting in distribution systems using general regression neural networks
dc.typeActas de congresos


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