Six thinking hats: A novel metalearner for intelligent decision support in electricity markets

作者:

Highlights:

• Overview of the current status of electricity markets (EM) simulation.

• Study of the Six Thinking Hats (STH) conflict resolution technique.

• Adaptation of the STH model as a metalearner for decision support in EM.

• Evaluation of the proposed STH metalearner using realistic EM simulations.

• The proposed model achieves better outcomes than other decision support strategies.

摘要

The energy sector has suffered a significant restructuring that has increased the complexity in electricity market players' interactions. The complexity that these changes brought requires the creation of decision support tools to facilitate the study and understanding of these markets. The Multiagent Simulator of Competitive Electricity Markets (MASCEM) arose in this context, providing a simulation framework for deregulated electricity markets. The Adaptive Learning strategic Bidding System (ALBidS) is a multiagent system created to provide decision support to market negotiating players. Fully integrated with MASCEM, ALBidS considers several different strategic methodologies based on highly distinct approaches. Six Thinking Hats (STH) is a powerful technique used to look at decisions from different perspectives, forcing the thinker to move outside its usual way of thinking. This paper aims to complement the ALBidS strategies by combining them and taking advantage of their different perspectives through the use of the STH group decision technique. The combination of ALBidS' strategies is performed through the application of a genetic algorithm, resulting in an evolutionary learning approach.

论文关键词:Artificial intelligence,Decision support system,Electricity market,Genetic algorithm,Multiagent simulation,Machine learning

论文评审过程:Received 1 February 2014, Revised 27 July 2015, Accepted 27 July 2015, Available online 1 August 2015, Version of Record 15 August 2015.

论文官网地址:https://doi.org/10.1016/j.dss.2015.07.011