Resumen:
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Consulta en la Biblioteca ETSI Industriales (Riunet)
[EN] The integration of a high number of plug-in electric (PEV) vehicles could
lead to overloads in the systems assets and demand peaks if the charge of the
eet is left uncontrolled. However, with the use of smart-charging ...[+]
[EN] The integration of a high number of plug-in electric (PEV) vehicles could
lead to overloads in the systems assets and demand peaks if the charge of the
eet is left uncontrolled. However, with the use of smart-charging strategies
these problems could be avoided. In this work the development of a smartcharging
strategy is presented. The goal of each electric vehicle, modeled
as an agent, is to minimize the cost of energy purchase while satisfying the
energy requirements. To solve this problem, multi-agent system theory is
used in combination with market-based control. The vehicles are considered
as agents bidding on the market, optimizing their bidding to minimize
their costs. An aggregator agentacts as communication middleman between
the vehicles and the market. This way, a system with a high number of
agents competing for the resources is established. The resources are allocated
according to the demand-supply theory, and the equilibrium price of
the day-ahead market is used as a control signal. Moreover, a Q-learning
algorithm is used for the learning process of the vehicles, establishing their
optimal bidding strategy. In our case studies, we analyze this approach both
in a simple market clearing and an Optimal Flow setting. Moreover, we analyze
the e ect of uncertainties in driving patterns and non-PEV bids. The
results show that the use of this strategy leads to a lower energy costs for
the vehicles. The
eet charges mainly during the night hours, avoiding the
charge during demand peaks.
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