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Model-based predictive control of an ice storage device in a building cooling system

机译:建筑物冷却系统中储冰装置的基于模型的预测控制

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This paper describes an approach to the formulation of a model-based predictive control (MPC) algorithm for the cooling plant of a building under a time-dependent electricity price profile. The mechanical system includes a three-stage chiller and an ice bank used for thermal energy storage (TES). Cooling can be provided to the indoor space either by directly using the chiller or by discharging the ice bank when electricity prices are high. The chiller is also used to charge the ice bank at night. By applying system identification techniques, a simplified linear thermal model for the building was derived from a detailed building simulation previously developed in EnergyPlus. The use of a simplified linear model - along with weather and internal gains forecasts - allows to readily calculate the required cooling power for a given temperature setpoint trajectory. By making use of simple parametric models for the chiller and the ice bank, an optimization algorithm is applied to decide on the optimal combination of chiller and ice bank cooling power contributions at discrete hourly intervals over the prediction horizon. The length of the prediction horizon alternates between 24 and 30 h in order to coincide with the beginning or end of charge/discharge periods. The formulation of the optimization problem is considerably facilitated by using cooling power as the main working variable and then writing the equations accordingly. The proposed MPC strategy is compared with two rule-based control strategies: a modified storage-priority algorithm (similar to the one currently used in the case study building) and a chiller-priority algorithm. With the considered pricing structure and mechanical system, the MPC algorithm results in typical savings of about 5-20% with respect to the modified storage-priority strategy and about 20-30% with respect to the chiller-priority strategy.
机译:本文介绍了一种方法,该方法用于制定基于模型的预测控制(MPC)算法,该算法用于基于时间的电价曲线下的建筑物的制冷设备。机械系统包括一个三级冷却器和一个用于储热(TES)的储冰盒。可以通过直接使用冷却器或在电价高时将储冰盒排空来为室内空间提供制冷。晚上还使用冷水机为储冰盒充水。通过应用系统识别技术,从以前在EnergyPlus中开发的详细建筑物仿真中得出了建筑物的简化线性热模型。使用简化的线性模型以及天气和内部增益预测,可以轻松计算给定温度设定点轨迹所需的冷却功率。通过使用用于冷却器和储冰盒的简单参数模型,应用优化算法来确定在预测范围内以离散的小时间隔进行冷却器和储冰盒冷却功率贡献的最佳组合。预测范围的长度在24到30 h之间交替变化,以便与充电/放电周期的开始或结束一致。通过将冷却功率用作主要工作变量,然后相应地编写方程,可以极大地促进优化问题的制定。将提出的MPC策略与两种基于规则的控制策略进行比较:一种改进的存储优先级算法(类似于案例研究大楼中当前使用的存储优先级算法)和一种冷却器优先级算法。在考虑了价格结构和机械系统的情况下,MPC算法相对于修改后的存储优先级策略,通常可节省约5-20%,而对于冷水机组优先级策略,则可节省约20-30%。

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