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Portfolio Optimization for Electricity Market Participation with Particle Swarm

机译:粒子群算法在电力市场参与中的投资组合优化

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The liberalization of energy markets has imposed several modifications in the electricity market environment. The paradigm of monopoly market ceased to exist, and new models have been put into practice. The new models have increased the incentive on competitiveness, making market players struggle to achieve the best outcomes out of market participation. Producers aim at reaching the maximum profit on the sale of energy, while consumers try to minimize their spending on electrical energy. The proposed methodology considers the optimization of players' participation in multiple market opportunities. Reference prices that are expected in each market type at each moment are achieved through the application of neural networks. Using the forecasted prices, the proposed portfolio optimization method allocates the sale and purchase of electrical energy to different markets throughout the time, with the aim at achieving the most advantageous participation profile. A particle swarm approach is used to reduce the execution time while guaranteeing the minimum degradation of the results. Results of the swarm methodology are compared to those of a deterministic approach, using real data from the Iberian electricity market -- MIBEL.
机译:能源市场的自由化对电力市场环境进行了一些修改。垄断市场的范式已经不复存在,新的模式已经付诸实践。新模式增加了对竞争力的激励,使市场参与者难以从市场参与中获得最佳结果。生产者的目标是在能源销售中获得最大的利润,而消费者则试图将其在电能上的支出降至最低。所提出的方法考虑了参与者在多个市场机会中的参与的优化。通过神经网络的应用,可以在每个时刻在每种市场类型中预期的参考价格。使用预测价格,建议的资产组合优化方法始终将电能的买卖分配到不同的市场,目的是获得最有利的参与情况。使用粒子群方法来减少执行时间,同时保证结果的最小降级。使用来自伊比利亚电力市场MIBEL的真实数据,将群方法的结果与确定性方法的结果进行比较。

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