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首页> 外文期刊>Journal of building performance simulation >A model predictive control optimization environment for real-time commercial building application
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A model predictive control optimization environment for real-time commercial building application

机译:实时商业建筑应用的模型预测控制优化环境

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摘要

A model predictive control (MPC) environment is described. The environment integrates Matlab and EnergyPlus with a modified particle swarm optimizer to predict optimal building control strategies. A supporting framework is described which couples the environment to a building automation system, allowing real-time optimization considering operator overrides and updated weather forecasts. Challenges unique to integration with EnergyPlus for real-time optimization are discussed. Application of the environment is demonstrated in two simulation cases. First, the environment is used to determine hourly cooling set points minimizing daily energy cost for EnergyPlus's Benchmark Large Office building. Results suggest 5% cost savings during the study period. Second, the environment is used to determine hourly supply water temperature and circulator availability that minimize daily energy consumption for a small office building having a thermally activated building system (TABS). Compared to the base case, energy savings up to 54% are reported, with often improved occupant comfort.
机译:描述了模型预测控制(MPC)环境。该环境将Matlab和EnergyPlus与改进的粒子群优化器集成在一起,以预测最佳的建筑物控制策略。描述了一个支持框架,该框架将环境耦合到楼宇自动化系统,从而允许在考虑操作员超越和更新天气预报的情况下进行实时优化。讨论了与EnergyPlus集成以进行实时优化所面临的独特挑战。在两个模拟案例中演示了环境的应用。首先,环境用于确定每小时的制冷设定点,从而最大程度地减少EnergyPlus基准大型办公大楼的每日能源成本。结果表明在研究期间可节省5%的成本。其次,该环境用于确定每小时的供水温度和循环器的可用性,从而使具有热激活建筑系统(TABS)的小型办公楼的日常能耗降至最低。与基本情况相比,据报道可节省多达54%的能源,并且通常改善了乘员的舒适度。

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