ACE (Agent-based Computational Economics) simulation method of electricity market by adopting cooperative particle swarm algorithm
A particle swarm algorithm and power market technology, applied in computing, data processing applications, instruments, etc., can solve difficult problems such as power market simulation
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[0027] The modeling of electricity market members requires agents to perform perception, analysis, reasoning and judgment as well as self-learning and self-adaptation according to the market operation, so as to formulate their own trading strategies and schemes. In this case, a power market ACE simulation method using the collaborative particle swarm algorithm is tested from the perspective of the agent process. The test organization is as follows: through the power market simulation modeling platform, the test scene of the Northeast regional power market is established, and the transaction type is selected as monthly concentration. Bidding transactions. In the test, 28 power plants participated in the monthly centralized bidding in the market, with a total capacity of 12.14 million MWh.
[0028] The process of co-evolution not only gives full play to the autonomous initiative of each agent, but also learns from each other and improves itself through cooperation or confrontatio...
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