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Automating occupant-building interaction via smart zoning of thermostatic loads: A switched self-tuning approach

机译:通过对恒温负荷进行智能分区来自动进行人与建筑物的交互:一种切换式自整定方法

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Load management actions in large buildings are pre-programmed by field engineers/users in the form of if-then else rules for the set point of the thermostat. This fixed set of actions prevents smart zoning, i.e. to dynamically regulate the set points in every room at different levels according to geometry, orientation and interaction among rooms caused by occupancy patterns. In this work we frame the problem of load management with smart zoning into a multiple-mode feedback-based optimal control problem: multiple-mode refers to embedding multiple behaviors (triggered by building-occupant dynamic interaction) into the optimization problem; feedback-based refers to adopting a Hamilton-Jacobi-Bellman framework, with closed-loop control strategies using information stemming from building and weather states. The framework is solved by parameterizing the candidate control strategies and by searching for the optimal strategy in an adaptive self-tuning way. To demonstrate the proposed approach, we employ an EnergyPlus model of an actual office building in Crete, Greece. Extensive tests show that the proposed solution is able to provide, dynamically and autonomously, dedicated set points levels in every room in such a way to optimize the whole building performance (exploitation of renewable energy sources with improved thermal comfort). As compared to pre-programmed (non-optimal) strategies, we show that smart zoning makes it is possible to save more than 15% energy consumption, with 25% increased thermal comfort. As compared to optimized strategies in which smart zoning is not implemented, smart zoning leads to additional 4% reduced energy and 8% improved comfort, demonstrating improved occupant-building interaction. Such improvements are motivated by the fact that the approach exploits the building dynamics as learned from feedback data. Moreover, the closed-loop feature of the approach makes it robust to variable weather conditions and occupancy schedules.
机译:大型建筑中的负载管理操作由现场工程师/用户以if-then else恒温器设定点规则的形式预先编程。该固定的动作集阻止了智能分区,即根据占用模式导致的房间之间的几何形状,方向和交互作用,在不同级别动态调节每个房间中的设定点。在这项工作中,我们将基于智能分区的负载管理问题框架化为基于多模式反馈的最优控制问题:多模式是指将多种行为(由建筑人员动态交互触发)嵌入到优化问题中;基于反馈的是指采用Hamilton-Jacobi-Bellman框架,并使用来自建筑物和天气状态的信息进行闭环控制。通过参数化候选控制策略并以自适应自调整方式搜索最佳策略来解决该框架。为了演示建议的方法,我们使用了希腊克里特岛实际办公楼的EnergyPlus模型。大量测试表明,所提出的解决方案能够动态地,自主地在每个房间内提供专用的设定点水平,从而优化整个建筑物的性能(开发可改善热舒适性的可再生能源)。与预编程(非最佳)策略相比,我们显示,智能分区可以节省超过15%的能耗,并增加25%的热舒适度。与未实施智能分区的优化策略相比,智能分区可进一步减少4%的能耗和8%的舒适度,从而改善了乘员与建筑物之间的互动。这种改进是受以下事实激励的:该方法利用了从反馈数据中学到的建筑动力学。此外,该方法的闭环功能使其对于变化的天气条件和占用计划具有鲁棒性。

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