Supervised Learning based Demand Response Simulator with RTP and PTR in Context of Smart Grid

Ankita Sharma, Akash Saxena, B. Soni, Dheeraj Kumar Palwaliya
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Abstract

Demand Response (DR) program empowers the dynamic prices to actively optimize the consumption. This optimized consumption plays a vital role in resolving the complex operation and reliability issues in the electricity market. The human behaviour aspect of consumers explained by several models that have been reported in the literature. These models depend on the classical utility factor. The effect of price on the consumer’s decision in the field of energy efficiency and reduction of consumption based on behavioural characteristics are two important aspects of DR programs. In absence of such characteristics, results become non-viable. In this paper, the footprint of two time-based DR programs is explored on the peak reduction namely; Real Time Pricing (RTP) and Peak Time Rebate (PTR). Artificial Neural Network (ANN) based topologies for two DR programs are proposed. The proposed topologies employ variation in demand and price, subsequently for simulating an online DR simulator. Demand before and after the RTP and PTR were calculated and compared with four ANN based DR topologies namely; Radial Basis Function Neural Network-Demand Response (RBFN-DR), Feedforward Backprop-Demand Response (FFBP-DR), Layer Recurrent–Demand Response (LR-DR), and Generalized Regression-Demand Response (GR-DR). The proposed models are tested on hourly residential data of test smart grid. By assessing the results from test case, depicted that RBFN-DR proved its efficacy by giving better results for both price-based programs namely; RTP and PTR.
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基于监督学习的智能电网RTP和PTR需求响应模拟器
需求响应(DR)方案赋予动态价格以主动优化消费的能力。这种优化消纳对解决电力市场复杂的运行和可靠性问题具有重要作用。消费者的人类行为方面解释了几个模型,已在文献中报道。这些模型依赖于经典效用因子。价格对消费者能效决策的影响和基于行为特征的消费减少是DR计划的两个重要方面。如果没有这些特征,结果就变得不可行。本文研究了两种基于时间的DR方案在峰降方面的占用问题,即;实时定价(RTP)和高峰时间回扣(PTR)。提出了基于人工神经网络(ANN)的两种DR方案拓扑结构。所提出的拓扑结构采用需求和价格的变化,随后用于模拟在线DR模拟器。计算了RTP和PTR前后的需求,并与四种基于人工神经网络的DR拓扑进行了比较;径向基函数神经网络需求响应(RBFN-DR)、前馈反向需求响应(FFBP-DR)、层递归需求响应(LR-DR)和广义回归需求响应(GR-DR)。在实测智能电网的小时住宅数据上对所提出的模型进行了验证。通过评估测试案例的结果,描述了RBFN-DR通过为两个基于价格的计划提供更好的结果来证明其有效性,即;RTP和PTR。
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