Renewable energy prosumers clustering towards target aggregated prosumption profiles based on recursive predictions

This paper introduces a decision making framework for aggregating Microgrids and/or other small energy producers and consumers (i.e. prosumers) into groups, whose purpose is to participate in liberalized electricity markets as single entities. The aggregator is able to offer aggregated Renewable Energy Source (RES) units to the wholesale market, in ways that are more efficient than individual prosumers acting alone. We first present the proposed framework and information flow among the involved market entities. We then focus on the problem of finding the set of prosumers whose aggregate prosumption profile can best fit a given target pattern requested by a market actor. We propose a linear autoregressive forecasting algorithm and a genetic clustering algorithm, which can easily adapt to the requirements set by the various use cases. Numerical results show that the aggregator can produce clusters in real time improving the average deviation from the target pattern by up to 50%.

[1]  Mario A. Rios,et al.  Demand forecasting associated with electric vehicle penetration on distribution systems , 2015, 2015 IEEE Eindhoven PowerTech.

[2]  Jan Kleissl,et al.  Energy dispatch schedule optimization for demand charge reduction using a photovoltaic-battery storage system with solar forecasting , 2014 .

[3]  Emmanouel A. Varvarigos,et al.  A virtual microgrid platform for the efficient orchestration of multiple energy prosumers , 2015, Panhellenic Conference on Informatics.

[4]  M Meyer SCIENTIFIC INSTITUTIONS MINUS SCIENCE. , 1914, Science.

[5]  Emmanouel Varvarigos,et al.  Demonstration of the smart energy neighbourhood management system in the VIMSEN project , 2015, 2015 IEEE Eindhoven PowerTech.

[6]  P. Asmus Microgrids, Virtual Power Plants and Our Distributed Energy Future , 2010 .

[7]  Stefano Squartini,et al.  Multi-apartment residential microgrid with electrical and thermal storage devices: Experimental analysis and simulation of energy management strategies , 2015 .

[8]  Emmanouel Varvarigos,et al.  Prosumer clustering into virtual microgrids for cost reduction in renewable energy trading markets , 2016 .

[9]  Gregor Verbic,et al.  Aggregated Demand Response Modelling for Future Grid Scenarios , 2015, 1502.05480.

[10]  S. Martin,et al.  Demand-side management in smart grid operation considering electric vehicles load shifting and vehicle-to-grid support , 2015 .

[11]  Pablo Sanchis,et al.  Energy management strategy for a renewable-based residential microgrid with generation and demand forecasting , 2015 .

[12]  R. Inman,et al.  Solar forecasting methods for renewable energy integration , 2013 .

[13]  Mattia Marinelli,et al.  Testing of a Predictive Control Strategy for Balancing Renewable Sources in a Microgrid , 2014, IEEE Transactions on Sustainable Energy.

[14]  Petre Stoica,et al.  Introduction to spectral analysis , 1997 .