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Development of model predictive control method using ANN and metaheuristics (Part 6) Estimation of prediction and control horizon on optimal control in model predictive control

机译:使用Ann和Metaheuristics(第6部分)预测控制方法的模型预测控制方法的研制在模型预测控制中的最优控制中的预测与控制地平线估算

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In this study, the effectiveness of a model predictive control (MPC) strategy for an office building subject to occupancy disturbance and time-varying electricity pricing was investigated. The energy system of the building included air-cooled chiller, stratified thermal energy storage (TES), and pumps. The operation of the chiller and TES was optimized by manipulating the pump mass flow rate. An artificial neural network and metaheuristics algorithm were employed for prediction and optimization, respectively. Prior to the MPC implementation, different condition of prediction and control horizon was estimated. As a result, the room temperature was well managed in the prediction horizon of 24 h and control horizon of either 30 min or 1 h. In conclusion, MPC saved the total operation cost approximately 3.48% and 7.99% when the control horizon was set as 1 h and 30 min, respectively, compared to the conventional rule-based control (RBC) strategy.
机译:在这项研究中,研究了对占用障碍和时变电定价的办公楼模型预测控制(MPC)策略的有效性。建筑物的能量系统包括空气冷却冷却器,分层热能存储(TES)和泵。通过操纵泵质量流量来优化冷却器和TES的操作。采用人工神经网络和半导体算法进行预测和优化。在MPC实施之前,估计了预测和控制地平线的不同条件。结果,在24小时的预测视野中,室温得到很好的管理,并控制30分钟或1小时的控制范围。总之,与传统的规则的控制(RBC)策略相比,MPC节省了总运营成本约为3.48%和7.99%,分别设定为1小时和30分钟。

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