In this paper, we propose a realistic multiple dynamic pricing approach to demand response in the retail market. First, an adaptive clustering-based customer segmentation framework is proposed to categorize customers into different groups to enable the effective identification of usage patterns. Second, customized demand models with important market constraints which capture the price-demand relationship explicitly, are developed for each group of customers to improve the model accuracy and enable meaningful pricing. Third, the multiple pricing based demand response is formulated as a profit maximization problem subject to realistic market constraints. The overall aim of the proposed scalable and practical method aims to achieve 'right' prices for 'right' customers so as to benefit various stakeholders in the system such as grid operators, customers and retailers. The proposed multiple pricing framework is evaluated via simulations based on real-world datasets.
翻译:在本文中,我们提出了现实的多种动态定价办法,以对零售市场的需求作出反应。首先,建议采用适应性的集群客户分割框架,将客户分为不同的组别,以便有效地确定使用模式。第二,为每组客户制定具有重要市场限制的定制需求模式,明确反映价格-需求关系,以提高模型的准确性,促成有意义的定价。第三,基于多重定价的需求回应是作为利润最大化问题拟订的,但需受现实的市场限制。提议的可扩展和实用方法的总目标是为“右”客户实现“右”价格,以便惠及系统中的各利益攸关方,如电网运营商、客户和零售商。拟议的多重定价框架是通过基于现实世界数据集的模拟来评估的。