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Modelling customer demand response to dynamic price signals using artificial intelligence

机译:使用人工智能对客户需求对动态价格信号的响应进行建模

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The marketing efforts in Eskom have shifted to a broader perspective, embracing such targets as load shape optimisation and energy efficiency. There have also been organisational shifts, including the introduction of key customer focus groups to improve customer services to key customers who are energy-intensive end users of electricity. One way of building good relationships is to ensure that an optimal range of product packages (tariff schemes) is on offer. Customised electricity pricing agreements are usually arranged between an electricity supply industry and its key customers. These special agreements will not only provide sufficient financial incentives for the key customers to participate in the utility's demand-side management (DSM) programs, but also provide the utility with sufficient revenue. However, the design of these customised pricing agreements can be suboptimal unless a well-formulated methodology is followed. Such a methodology is proposed in this paper, and a knowledge-based end user demand response modelling tool to assist in this design methodology is also be discussed. A case study is included for illustration purposes.
机译:Eskom的营销工作已转移到更广阔的视野,实现了负载形状优化和能源效率等目标。还发生了组织上的转变,包括引入了关键的客户焦点小组,以改善对能源密集型最终用​​户的关键客户的客户服务。建立良好关系的一种方法是确保提供最佳范围的产品组合(关税计划)。定制的电价协议通常在供电行业及其主要客户之间安排。这些特殊协议不仅将为关键客户提供充分的财务激励,使其参与公用事业的需求方管理(DSM)计划,而且还将为公用事业提供足够的收入。但是,除非遵循精心设计的方法,否则这些定制的定价协议的设计可能不是最佳的。本文提出了这种方法,并讨论了基于知识的最终用户需求响应建模工具以协助该设计方法。包括一个案例研究以用于说明目的。

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