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Publicações

Publicações por HumanISE

2016

Adaptive Portfolio Optimization for Multiple Electricity Markets Participation

Autores
Pinto, T; Morais, H; Sousa, TM; Sousa, T; Vale, Z; Praca, I; Faia, R; Pires, EJS;

Publicação
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS

Abstract
The increase of distributed energy resources, mainly based on renewable sources, requires new solutions that are able to deal with this type of resources' particular characteristics (namely, the renewable energy sources intermittent nature). The smart grid concept is increasing its consensus as the most suitable solution to facilitate the small players' participation in electric power negotiations while improving energy efficiency. The opportunity for players' participation in multiple energy negotiation environments (smart grid negotiation in addition to the already implemented market types, such as day-ahead spot markets, balancing markets, intraday negotiations, bilateral contracts, forward and futures negotiations, and among other) requires players to take suitable decisions on whether to, and how to participate in each market type. This paper proposes a portfolio optimization methodology, which provides the best investment profile for a market player, considering different market opportunities. The amount of power that each supported player should negotiate in each available market type in order to maximize its profits, considers the prices that are expected to be achieved in each market, in different contexts. The price forecasts are performed using artificial neural networks, providing a specific database with the expected prices in the different market types, at each time. This database is then used as input by an evolutionary particle swarm optimization process, which originates the most advantage participation portfolio for the market player. The proposed approach is tested and validated with simulations performed in multiagent simulator of competitive electricity markets, using real electricity markets data from the Iberian operator-MIBEL.

2016

Decision support for the strategic behaviour of electricity market players

Autores
Pinto, T;

Publicação

Abstract

2016

Support Vector Machines for decision support in electricity markets' strategic bidding

Autores
Pinto, T; Sousa, TM; Praça, I; Vale, ZA; Morais, H;

Publicação
Neurocomputing

Abstract

2016

Energy consumption forecasting based on Hybrid Neural Fuzzy Inference System

Autores
Jozi, A; Pinto, T; Praça, I; Silva, F; Teixeira, B; Vale, ZA;

Publicação
2016 IEEE Symposium Series on Computational Intelligence, SSCI 2016, Athens, Greece, December 6-9, 2016

Abstract

2016

Demonstration of ALBidS: Adaptive Learning Strategic Bidding System

Autores
Pinto, T; Vale, ZA; Praça, I; Santos, G;

Publicação
Advances in Practical Applications of Scalable Multi-agent Systems. The PAAMS Collection - 14th International Conference, PAAMS 2016, Sevilla, Spain, June 1-3, 2016, Proceedings

Abstract

2016

Network Operator Agent: Endowing MASCEM Simulator with Technical Validation

Autores
Freitas, A; Praça, I; Pinto, T; Sousa, T; Vale, ZA;

Publicação
Highlights of Practical Applications of Scalable Multi-Agent Systems. The PAAMS Collection - International Workshops of PAAMS 2016, Sevilla, Spain, June 1-3, 2016. Proceedings

Abstract

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