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Development and implementation of control-oriented models for terminal heating and cooling units

机译:终端加热和冷却单元的面向控制模型的开发和实施

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Two control-oriented models that can predict the temperature of a perimeter office space were developed by using the data gathered from light intensity, motion and temperature sensors, and terminal heating and cooling units. One model had five unknown parameters while the second had ten unknown parameters and an immeasurable state. The models' parameters were estimated in recursion by employing the Extended Kalman Filter. The appropriateness of the models to the dataset was analyzed through a residual analysis, and the predictive accuracy of the models was contrasted. Both models could make offline predictions over a two day horizon at less than 0.75 degrees C mean absolute error. It was concluded that the one-state model was able to mimic the temperature response of small perimeter office spaces parsimoniously. The one-state model was implemented inside four building controllers serving eight private office spaces. In tandem with Gunay et al. [1]'s occupancy-learning algorithm, the one-state model was employed to determine optimal start and stop times for the temperature setback periods. Results of this implementation indicated that the duration of the weekday temperature setback periods could be increased more than 50% for both heating and cooling in contrast to the default control scheme. Energy Plus simulation results suggest that this accounts for about 30% reduction in heating and 13% reduction in cooling loads without affecting the indoor air temperature during occupied periods. (C) 2016 Elsevier B.V. All rights reserved.
机译:通过使用从光强度,运动和温度传感器以及终端加热和冷却单元收集的数据,开发了两个可以预测周边办公空间温度的面向控制的模型。一个模型具有五个未知参数,而第二个模型具有十个未知参数和不可估量的状态。通过使用扩展卡尔曼滤波器递归估计模型的参数。通过残差分析分析了模型对数据集的适用性,并对比了模型的预测准确性。两种模型都可以在小于0.75摄氏度的平均绝对误差范围内进行为期两天的离线预测。结论是,一种状态模型能够同时模仿小型外围办公空间的温度响应。一种状态模型是在为八个私人办公室空间提供服务的四个建筑控制器中实现的。与Gunay等人串联。 [1]的占用学习算法,采用单状态模型来确定温度下降时期的最佳开始和停止时间。该实施的结果表明,与默认控制方案相比,对于加热和冷却,工作日温度挫折期的持续时间可以增加超过50%。 Energy Plus仿真结果表明,这可在占用期间不影响室内空气温度的情况下,将热量减少约30%,将制冷负荷减少13%。 (C)2016 Elsevier B.V.保留所有权利。

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