In real time electricity markets, the objective of generation companies while bidding is to maximize their profit. The strategies for learning optimal bidding have been formulated through game theoretical approaches and stochastic optimization problems. Similar studies in reactive power markets have not been reported so far because the network voltage operating conditions have an increased impact on reactive power markets than on active power markets. Contrary to active power markets, the bids of rivals are not directly related to fuel costs in reactive power markets. Hence, the assumption of a suitable probability distribution function is unrealistic, making the strategies adopted in active power markets unsuitable for learning optimal bids in reactive power market mechanisms. Therefore, a bidding strategy is to be learnt from market observations and experience in imperfect oligopolistic competition-based markets. In this paper, a pioneer work on learning optimal bidding strategies from observation and experience in a three-stage reactive power market is reported.
翻译:在实时电力市场中,发电公司在投标时的目标是最大限度地获得利润。通过游戏理论办法和随机优化问题制定了最佳投标学习战略。由于网络电压运行条件对被动的电力市场的影响比对活跃的电力市场的影响更大,因此迄今没有报告对被动的电力市场进行类似的研究。与活跃的电力市场相反,竞争对手的投标与被动的电力市场的燃料成本没有直接关系。因此,假定适当的概率分配功能是不现实的,使活跃的电力市场采用的战略不适合学习被动的电力市场机制的最佳投标。因此,要从市场观察和不完善的寡头垄断竞争市场的经验中学习出投标战略。在本文中,报告了从三阶段的被动的电力市场观察和经验中学习最佳投标战略的先驱工作。