DocumentCode :
3301123
Title :
Smart grid distribution prediction and control using computational intelligence
Author :
Chandler, Shawn A. ; Hughes, Joshua G.
Author_Institution :
Dept. of Smart Grid Technol., Portland Gen. Electr., Portland, OR, USA
fYear :
2013
fDate :
1-2 Aug. 2013
Firstpage :
86
Lastpage :
89
Abstract :
Smart-grid systems (SGS) may comprise distributed generation, automated demand response, mega-watt scale batteries, and a variety of other utility energy resources and programs. Their physical characteristics and operating flexibility within the distribution grid introduce new challenges to solving the power economic dispatch (PED) problem. Good operation of an SGS requires efficient use of available assets over both the short and long-term. Ideally resources will be scheduled and dispatched to equal loads (demand) in an optimal way, i.e., at the lowest cost, taking into account the differing operating constraints of assets and the changing conditions of the system and its environment. An experimental intelligent controller has been developed as part of the Pacific Northwest Smart Grid Demonstration (PNWSGD) project to address SGS demand-dependent non-linear cost functions, microgrid reliability zone constraints, and dynamic availability states. The controller is embedded within an existing utility control system that provides real time, historical, and forecast data used to predict energy demand for the next 72 hours and to create a near-optimal dispatch schedule for the next 24 hours. Both demand forecasts and schedules are updated every 5 minutes. The modularity of the controller architecture allows for a variety of load forecast and dispatch optimization tools and methods to be used; the current version uses computational intelligence, specifically neural networks. Its generality and versatility provides guidance for development of intelligent controllers adaptable and scalable to a variety of SGS applications.
Keywords :
distributed power generation; intelligent control; load forecasting; neural nets; power distribution control; power engineering computing; power generation dispatch; secondary cells; PNWSGD project; Pacific Northwest Smart Grid Demonstration project; SGS; automated demand response; computational intelligence; demand forecasts; dispatch optimization; distributed generation; energy demand; intelligent controller; load forecast; mega-watt scale batteries; microgrid reliability zone constraints; neural networks; power economic dispatch; smart grid distribution control; smart grid distribution prediction; smart grid systems; utility energy resources; Computational intelligence; Control systems; Load forecasting; Microgrids; Real-time systems; Schedules; Smart grids; Smart grid; computational intelligence; machine-learning; neural networks; power economic dispatch; transactive control;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Technologies for Sustainability (SusTech), 2013 1st IEEE Conference on
Conference_Location :
Portland, OR
Type :
conf
DOI :
10.1109/SusTech.2013.6617302
Filename :
6617302
Link To Document :
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