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An integrated smart home energy management model based on a pyramid taxonomy for residential houses with photovoltaic-battery systems

机译:基于金字塔分类的集成智能家庭能源管理模型,包括光伏电池系统的住宅

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摘要

Smart home energy management (SHEM) with residential photovoltaic (PV)-battery systems is a complicated issue with different facets. An integrated SHEM model covering the essential functions is missing. Meanwhile, residential PV-battery systems' optimal operations with renewable energy exchanges and imperfect forecasts are still open challenges. In this study, the research activities in SHEM are firstly organized by a pyramid with four functional layers: (i) Monitoring; (ii) Analyzing and forecasting; (iii) Scheduling; and (iv) Coordinating, which can serve as a standard pathway for developing SHEM. Second, guided by the pyramid taxonomy, an integrated SHEM model is developed for residential houses with PV-battery systems. Assuming a perfect Monitoring layer, we obtain the probabilistic load/PV forecasts and user preference vectors of shiftable appliances based on historical data. Then, we develop a two-stage stochastic programming model for optimal scheduling of single houses with a grid-connected PV-battery system, incorporating the probabilistic forecasts and user preference vectors. A retail electricity market with day-ahead (DA) and real-time (RT) markets is employed for leveraging imperfect forecasts. Finally, we design a distributed coordinating algorithm - Asynchronous Scheduling and Iterative Pricing for PV power-sharing among multiple prosumers based on the single-house scheduling model. Numerical simulations based on realistic loads and PV generation data validated the two-stage stochastic programming model's economic superiority and the distributed PV power-sharing approach compared with the rule-based dispatching and selfish scheduling strategies. We concluded that 1) the modeling of load/PV forecast uncertainties is valuable than averaging or ignoring them, 2) the two-stage stochastic programming model and the DA-RT retail electricity market are beneficial for utilizing imperfect forecasts, and 3) coordinating multiple prosumers could benefit each household by sharing PV and battery investments for revenue or trading with local small prosumers for cost reductions.
机译:智能家居能源管理(SHEM)与住宅光伏(PV) - 抛光系统是一个复杂的问题,具有不同的方面。缺少涵盖基本功能的集成剪贴模型。与此同时,住宅PV-电池系统的可再生能源交易和不完全预测的最佳运营仍然是挑战。在本研究中,首先由金字塔组织有四个功能层的金字塔:(i)监测; (ii)分析和预测; (iii)安排; (iv)协调,可以作为开发汉语的标准途径。其次,由金字塔分类为指导,为具有PV-电池系统的住宅开发了一个集成的夹具模型。假设一个完美的监控层,我们基于历史数据获得可移动设备的概率负载/光伏预测和用户偏好向量。然后,我们开发了一个两阶段随机编程模型,可用于使用网格连接的PV电池系统的单个房屋的最佳调度,包括概率预测和用户偏好向量。利用日前(DA)和实时(RT)市场的零售电力市场用于利用不完美预测。最后,我们设计了一种基于单屋调度模型的多重预测中的PV功率共享的分布式协调算法 - 异步调度和迭代定价。基于现实载荷和PV生成数据的数值模拟验证了与基于规则的调度和自私调度策略相比的两级随机编程模型的经济优势和分布式光伏发电方法。我们得出结论,1)负载/光伏预测不确定性的建模是比平均或忽略它们的价值,2)两阶段随机编程模型和DA-RT零售电力市场有利于不完美预测,3)协调多次制度可以通过分享PV和电池投资来利用每个家庭,以获得当地小型制度的收入或交易以进行成本降低。

著录项

  • 来源
    《Applied Energy》 |2021年第15期|117159.1-117159.21|共21页
  • 作者单位

    City Univ Hong Kong Dept Architecture & Civil Engn Hong Kong Peoples R China|City Univ Hong Kong Architecture & Civil Engn Res Ctr Shenzhen Res Inst Shenzhen Peoples R China;

    City Univ Hong Kong Dept Management Sci Hong Kong Peoples R China;

    Univ Hong Kong Dept Comp Sci Pokfulam Hong Kong Peoples R China;

    City Univ Hong Kong Dept Architecture & Civil Engn Hong Kong Peoples R China|City Univ Hong Kong Architecture & Civil Engn Res Ctr Shenzhen Res Inst Shenzhen Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    SHEM; Taxonomy; Probabilistic forecasting; User preference inference; Two-stage stochastic programming; Iterative pricing;

    机译:骑士;分类;概率预测;用户偏好推断;两阶段随机编程;迭代定价;

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