SHORT-TERM LOAD FORECAST IN ACTIVE DISTRIBUTION NETWORKS

Authors

  • Slađana Turudić Autor

DOI:

https://doi.org/10.24867/20BE28Turudic

Keywords:

Electricity consumption forecast, machine learning, optimization, active distribution network

Abstract

In addition to consumers, the distribution system is experiencing the biggest changes brought by the modernization of the electric power system. For electrical distribution network to function properly, it is necessary to predict the electricity consumption as precisely as possible. Short-term predictions in energy flow can greatly reduce the number of overloads, increase delivery scalability and reduce grid outages.

References

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[6] K. Clement-Nyns, E. Haesen and J. Driesen, "The Impact of Charging Plug-In Hybrid Electric Vehicles on a Residential Distribution Grid," in IEEE Transactions on Power Systems, vol. 25, no. 1, pp. 371-380, February 2010.

Published

2022-11-06

Issue

Section

Electrotechnical and Computer Engineering