需求侧预期成本最小化的日前竞价策略

Italo Atzeni, L. G. Ordóñez, G. Scutari, D. Palomar, J. Fonollosa
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引用次数: 28

摘要

智能电网的日前需求侧管理技术允许供方提前知道在即将到来的一天向需求方提供的能源量的估计。然而,纯粹的日前优化过程不能适应需求侧用户对预期能源消耗的潜在实时偏差,也不能适应可再生能源的随机性。本文提出了一种基于定价模型的日前竞价系统,该模型结合了:i)根据需求侧用户的日前竞价能源需求制定单位能源价格;ii)限制竞价能源负荷周围实时波动的惩罚系统。在这个提前一天的投标过程中,可能具有能源生产和存储能力的需求方用户对最小化他们的预期货币支出感兴趣。将得到的优化问题表述为一个非合作博弈,并采用合适的分布式算法进行求解。最后,在一个实际装置中对所提出的程序进行了测试。
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Day-ahead bidding strategies for demand-side expected cost minimization
Day-ahead DSM techniques in the smart grid allow the supply-side to know in advance an estimation of the amount of energy to be provided to the demand-side during the upcoming day. However, a pure day-ahead optimization process cannot accommodate potential real-time deviations from the expected energy consumption by the demand-side users, neither the randomness of their renewable sources. This paper proposes a day-ahead bidding system based on a pricing model that combines: i) a price per unit of energy depending on the day-ahead bid energy needs of the demand-side users, and ii) a penalty system that limits the real-time fluctuations around the bid energy loads. In this day-ahead bidding process, demand-side users, possibly having energy production and storage capabilities, are interested in minimizing their expected monetary expense. The resulting optimization problem is formulated as a noncooperative game and is solved by means of suitable distributed algorithms. Finally, the proposed procedure is tested in a realistic setup.
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