There is an opportunity in modern power systems to explore the demand flexibility by incentivizing consumers with dynamic prices. In this paper, we quantify demand flexibility using an efficient tool called time-varying elasticity, whose value may change depending on the prices and decision dynamics. This tool is particularly useful for evaluating the demand response potential and system reliability. Recent empirical evidences have highlighted some abnormal features when studying demand flexibility, such as delayed responses and vanishing elasticities after price spikes. Existing methods fail to capture these complicated features because they heavily rely on some predefined (often over-simplified) regression expressions. Instead, this paper proposes a model-free methodology to automatically and accurately derive the optimal estimation pattern. We further develop a two-stage estimation process with Siamese long short-term memory (LSTM) networks. Here, a LSTM network encodes the price response, while the other network estimates the time-varying elasticities. In the case study, the proposed framework and models are validated to achieve higher overall estimation accuracy and better description for various abnormal features when compared with the state-of-the-art methods.
翻译:现代电力系统有机会探索需求灵活性,激励消费者使用动态价格。在本文中,我们使用称为时间变化弹性的有效工具来量化需求灵活性,其价值可能随价格和决策动态而变化。这一工具对评估需求反应潜力和系统可靠性特别有用。最近的经验证据在研究需求灵活性时突出了一些异常特征,如延迟反应和价格暴涨后丧失弹性。现有方法未能捕捉这些复杂特征,因为它们严重依赖某些预先界定的(往往过于简单化的)回归表达方式。相反,本文建议采用一种无模型的方法,自动和准确地得出最佳估算模式。我们进一步开发了两阶段估算过程,使用暹粒长期短期内存(LSTM)网络进行。这里,一个LSTM网络编码价格反应,而其他网络则估计时间变化弹性。在案例研究中,拟议的框架和模型得到验证,以便在与最新方法相比,对各种异常特征实现更高的总体估算准确性和更好的描述。