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Two stage residential energy management under distribution locational marginal pricing

机译:分布区域边际定价下的两阶段住宅能源管理

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This paper proposes a new optimization model for Smart Home Management Systems (SHMS) in order to increase the profits of Load Serve Entities (LSEs) and customers from technical and financial points of view. In the recent decades, performing Demand Response (DR) is one of the most efficient ways to improve the performance of power distribution systems in terms of power loss, and investment costs. The LSEs can implements some strategies like offering incentives to customers to change their consumption pattern with the aim of reducing power loss, improving asset management and increasing the profits. On the other hand, the end users can participate in DR programs to decrease electricity bills and earn monetary incentives from LSEs proportionate to their contributions to the energy loss reduction. In this paper, Distribution Locational Marginal Price (DLMP) instead of time-based pricing mechanism is applied to bill the customers. In the proposed strategy, the energy bill of customers and power loss of the system are simultaneously decreased. For dealing with uncertainties, stochastic variables computation module is designed which generates several scenarios by Monte Carlo simulation at each hour. The operation of household resources and appliances are optimized through a Mixed Integer Linear Programming (MILP), which has a two-stage stochastic model. The results explicitly show benefits of the proposed stochastic model since it provides accuracy in scheduling and decreases the operation cost. Besides, the superiority of DLMP and the proposed method over existing pricing mechanism is demonstrated. (C) 2017 Elsevier B.V. All rights reserved.
机译:本文提出了一种新的智能家居管理系统(SHMS)优化模型,以便从技术和财务角度提高负载服务实体(LSE)和客户的利润。在最近的几十年中,执行需求响应(DR)是提高功率分配系统性能(包括功率损耗和投资成本)的最有效方法之一。 LSE可以实施一些策略,例如激励客户改变其消费模式,以减少电力损耗,改善资产管理并增加利润。另一方面,最终用户可以参加DR计划以减少电费并从LSE获得与他们对减少能源损耗的贡献成比例的金钱激励。本文采用分布位置边际价格(DLMP)代替基于时间的定价机制来向客户开票。在提出的策略中,同时减少了客户的电费和系统的功耗。为了处理不确定性,设计了随机变量计算模块,该模块每小时通过蒙特卡洛模拟生成多个场景。通过具有两个阶段的随机模型的混合整数线性规划(MILP),可以优化家庭资源和家用电器的运行。结果清楚地表明了所提出的随机模型的好处,因为它提供了调度的准确性并降低了运营成本。此外,还证明了DLMP和所提出的方法优于现有定价机制的优势。 (C)2017 Elsevier B.V.保留所有权利。

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