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Artificial-neural-network-based model predictive control to exploit energy flexibility in multi-energy systems comprising district cooling

机译:基于人工网络的模型预测控制利用区冷却多能量系统的能量灵活性

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摘要

District cooling systems (DCSs) belonging to multi-energy systems can be managed by model predictive controls (MPCs) designed to reduce the amount of electrical energy collected from the grid for backup cooling systems when there is a temporal mismatch between energy demand and availability. In this paper, a DCS recovering cold thermal energy from a liquid-to-compressed natural gas fuel station is used in an 8-user residential neighborhood to provide space cooling in summertime. In the residential neighborhood, there is a multi-energy system, including the DCS, photovoltaic panels, and backup systems based on variable-load air-to-water heat pumps. One user of the district was allowed to manage its energy demand with an MPC based on an artificial neural network (ANN). By integrating the ANN-based MPC routine in the building simulation environment and unlocking the energy flexibility of thermostatically controlled loads (TCLs) using variable setpoints, it was possible to reduce electrical energy consumption up to-71% with respect to a reference case with a rule-based control. This work highlights also the importance of the ANN training process for a proper representation of the TCL flexibility in the building model, which is not a trivial aspect to be taken into account in data driven models.(c) 2021 Elsevier Ltd. All rights reserved.
机译:可以通过模型预测控制(MPC)来管理属于多能量系统的地区冷却系统(DCSS),该模型预测控制(MPC)可以减少从电网收集的电能量,当能量需求和可用性之间存在时间不匹配时,备用冷却系统。在本文中,从液体到压缩的天然气燃料站中回收冷热能的DC用于8位用户住宅邻域,以便在夏季提供空间冷却。在住宅附近,存在多能量系统,包括基于可变负载空气到水热泵的DCS,光伏板和备用系统。该地区的一个用户被允许使用基于人工神经网络(ANN)的MPC管理其能源需求。通过在建筑物的模拟环境中的基于ANN-MPC例程积分和解锁使用可变设定点恒温控制的负载(TCLs)的能量的灵活性,这是可能的,对于降低电能消耗高达71%到参考情况下用基于规则的控制。保留这项工作亮点也是ANN训练过程的的TCL灵活性建筑模型中,这不是一个简单的方面来考虑驱动模型数据的适当表示的重要性。(C)2021爱思唯尔有限公司保留所有权利。

著录项

  • 来源
    《Energy》 |2021年第1期|119958.1-119958.14|共14页
  • 作者单位

    Univ Politecn Marche Dipartimento Ingn Ind & Sci Matemat Via Brecce Bianche 12 I-60131 Ancona Italy;

    Univ Politecn Marche Dipartimento Ingn Ind & Sci Matemat Via Brecce Bianche 12 I-60131 Ancona Italy;

    Univ Politecn Marche Dipartimento Ingn Ind & Sci Matemat Via Brecce Bianche 12 I-60131 Ancona Italy|CNR Ist Tecnol Costruz Viale Lombardia 49 I-20098 San Giuliano Milanese MI Italy;

    Univ Politecn Marche Dipartimento Ingn Ind & Sci Matemat Via Brecce Bianche 12 I-60131 Ancona Italy|Katholieke Univ Leuven Dept Mech Engn B-3000 Leuven Belgium;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Liquefied natural gas; Artificial neural network; District cooling; Energy flexibility; Predictive control;

    机译:液化天然气;人工神经网络;区冷却;能量灵活性;预测控制;

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