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Application of artificial neural networks for optimized AHU discharge air temperature set-point and minimized cooling energy in VAV system

机译:人工神经网络优化AHU放电空气温度设定点的应用,最大限度地减少了VAV系统的冷却能

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摘要

Chillers and boilers based air handling unit (AHU) system is one of the most widely used heating and cooling systems in office buildings in Korea. However, in most conventional forced-air systems, the guidelines for the AHU discharge air temperature (DAT) are not fully established and thus AHU DAT are constantly fixed to a particular set-point, regardless of dynamic changes of operating variables. In this circumstance, this study aimed at developing a control algorithm that can operate a conventional VAV system with optimal set-points for the AHU DAT. Three-story office building was modeled using co-simulation technique between EnergyPlus and Matlab via BCVTB (Building Controls Virtual Test Bed). In addition, artificial neural network (ANN) model, which was designed to predict the cooling energy consumption for the upcoming next time-step, was embedded into the control algorithm using neural network toolbox within Matlab. By comparing the predicted energy for the different set-points of the AHU DAT, the control algorithm can determine the most energy-effective AHU DAT set-point to minimize the cooling energy. The results showed that the prediction accuracy between simulated and predicted outcomes turned out to have a low coefficient of variation root mean square error (CvRMSE) value of approximately 24%. In addition, the predictive control algorithm was able to significantly reduce cooling energy consumption by approximately 10%, compared to a conventional control strategy of fixing AHU DAT to 14 degrees C. These findings suggest that the ANN model and the control algorithm showed energy saving potential for various types of forced air systems by taking dynamic operating conditions into account in each time-step.
机译:基于冷却器和基于锅炉的空气处理单元(AHU)系统是韩国办公楼中最广泛使用的加热和冷却系统之一。然而,在大多数传统的强制空气系统中,无论操作变量的动态变化如何,AHU放电空气温度(DAT)的准则都没有完全建立,因此AHU DAT不断地固定到特定的设定点。在这种情况下,本研究旨在开发一种控制算法,该控制算法可以操作具有用于AHU DAT的最佳设定点的传统VAV系统。通过BCVTB(建筑物控制虚拟测试床)使用EnergyPlus和Matlab之间的共模技术进行建模三层办公楼。此外,设计用于预测即将到来的下一个时间步骤的冷却能量消耗的人工神经网络(ANN)模型将在MATLAB中的神经网络工具箱嵌入到控制算法中。通过比较AHU DAT的不同设定点的预测能量,控制算法可以确定最能有效的AHU DAT设定点,以最小化冷却能量。结果表明,模拟和预测结果之间的预测准确性原来具有低的变异系数根均线误差(CVRMSE)值约为24%。此外,与将AHU DAT到14摄氏度的传统控制策略相比,预测控制算法能够显着降低冷却能量消耗大约10%。这些发现表明ANN模型和控制算法显示了节能潜力对于各种类型的强制空气系统,通过在每次步骤中考虑动态操作条件。

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