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Authors
Vale, Zita
Advisor(s)
Abstract(s)
Factors such as uncertainty associated to fuel
prices, energy demand and generation availability, are on the
basis of the agents major concerns in electricity markets. Facing
that reality, price forecasting has an increasing impact in agents’
activity. The success on bidding strategies or on price negotiation
for bilateral contracts is directly dependent on the accuracy of
the price forecast. However, taking decisions based only on a
single forecasted value is not a good practice in risk management.
The work presented in this paper makes use of artificial neural
networks to find the market price for a given period, with a
certain confidence level. Historical information was used to train
the neural networks and the number of neural networks used is
dependent of the number of clusters found on that data. K-Means
clustering method is used to find clusters. A study case with real
data is presented and discussed in detail.
Description
Keywords
Artificial neural networks Clustering Electricity markets Price forecasting Risk management Volatility
Citation
Publisher
Institute of Electrical and Electronics Engineers