In electricity markets, retailers or brokers want to maximize profits by allocating tariff profiles to end consumers. One of the objectives of such demand response management is to incentivize the consumers to adjust their consumption so that the overall electricity procurement in the wholesale markets is minimized, e.g. it is desirable that consumers consume less during peak hours when cost of procurement for brokers from wholesale markets are high. We consider a greedy solution to maximize the overall profit for brokers by optimal tariff profile allocation. This in-turn requires forecasting electricity consumption for each user for all tariff profiles. This forecasting problem is challenging compared to standard forecasting problems due to following reasons: i. the number of possible combinations of hourly tariffs is high and retailers may not have considered all combinations in the past resulting in a biased set of tariff profiles tried in the past, ii. the profiles allocated in the past to each user is typically based on certain policy. These reasons violate the standard i.i.d. assumptions, as there is a need to evaluate new tariff profiles on existing customers and historical data is biased by the policies used in the past for tariff allocation. In this work, we consider several scenarios for forecasting and optimization under these conditions. We leverage the underlying structure of how consumers respond to variable tariff rates by comparing tariffs across hours and shifting loads, and propose suitable inductive biases in the design of deep neural network based architectures for forecasting under such scenarios. More specifically, we leverage attention mechanisms and permutation equivariant networks that allow desirable processing of tariff profiles to learn tariff representations that are insensitive to the biases in the data and still representative of the task.
翻译:在电力市场中,零售商或经纪人希望通过分配关税配置来使利润最大化,将关税配置用于最终消费者。这种需求响应管理的目标之一是鼓励消费者调整消费,以便最大限度地减少批发市场的总体电力采购量,例如,消费者在从批发市场采购经纪人的费用高昂的高峰时间消费较少,在批发市场采购经纪人的费用很高的情况下,消费者最好在高峰时间消费较少;我们考虑一种贪婪的解决办法,通过最佳的关税配置分配,使经纪人获得最大总利润;这反过来需要对所有关税配置预测用户的电力消费进行预测。与标准预测问题相比,这一预测问题具有挑战性,原因如下:即每小时关税的组合数量很高,零售商可能没有考虑过过去的所有组合,导致过去所试行的一套有偏差的关税配置,二。 过去分配给每个用户的费率配置通常以某些政策为依据。这些理由违反了标准,即d.假设,因为需要评估现有客户和历史数据的新的关税配置情况仍然受到过去用于关税配置的政策的偏差。在这项工作中,我们认为,在预测和优化的关税配置方面,在预测和优化的深度网络中,在预测中,在预测和优化方面有几种假设中,我们根据不同的关税结构中,在预测和调整中,在这种结构中,以适当的关税结构中,根据适当的汇率结构,我们根据不同的计算,在预测和调整,以适当的汇率结构,以适当的汇率结构,在预测和调整计算,我们根据不同的汇率结构,根据不同的汇率结构,以适当的费率结构,在计算。