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Stochastic load modelling for electric energy distribution applications. (English) Zbl 0823.90078

Summary: The problem of electric load modelling for low aggregation levels is addressed. The objective is to obtain good “demand” and “response” behaviour models of any group of loads in an electric energy distribution system for any of the functional applications that are being considered in the framework of the Distribution Management Systems, aimed to improve the energy efficiency, reliability and quality of the system. A brief critical revision of the methodologies used for that purpose is in the paper, and the advantages of using approaches where physical knowledge about the load characteristics is used, are stated and demonstrated.

MSC:

90B90 Case-oriented studies in operations research
Full Text: DOI

References:

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