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Experiment study of machine-learning-based approximate model predictive control for energy-efficient building control

机译:基于机器学习的近似模型预测控制对节能建筑控制的实验研究

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The adoption of model predictive control (MPC) for building automation and control applications is challenged by the high hardware and software requirements to solve its optimization problem. This study proposes an approximate MPC that mimics the dynamic behaviours of MPC using the recurrent neural network with a structure of nonlinear autoregressive network with exogenous inputs. The approximate MPC is developed by learning from the measured operation data of buildings controlled by MPC, therefore it can produce MPC-like control for buildings without needing to solve the optimization problem, significantly reducing the computation load as compared to MPC. The proposed approximate MPC is implemented in two testbeds, an office and a lecture theatre, to control the air-conditioning systems. The control performance of the approximate MPC is compared to MPC as well as the original reactive control of the two testbeds. The approximate MPC retained most of the energy and thermal comfort performance of MPC in both testbeds. For the office, the MPC and approximate MPC reduced 58.5% and 51.6% of cooling energy consumption, respectively, as compared to the original control. For the lecture theatre, the MPC and approximate MPC reduced 36.7% and 36.2% of cooling energy consumption, respectively, as compared to the original control. Meanwhile, both approximate MPC and MPC significantly improved indoor thermal comfort in the two testbeds as compared to their original control. Despite having minor degradation in control performance the approximate MPC was more than 100 times faster than MPC in generating optimal control commands in each time step.
机译:用于建立自动化和控制应用的模型预测控制(MPC)采用高硬件和软件要求挑战,以解决其优化问题。本研究提出了一种近似MPC,其利用具有外源输入的非线性自回归网络结构模拟MPC的动态行为。近似MPC是通过从MPC控制的建筑物的测量运行数据学习而开发的,因此可以产生用于建筑物的MPC控制,而无需解决优化问题,显着降低与MPC相比的计算负载。所提出的近似MPC在两个测试台,办公室和讲座剧院中实施,以控制空调系统。将近似MPC的控制性能与MPC进行比较,以及两个测试平台的原始反应控制。近似MPC保留了两种测试平铺的MPC的大部分能量和热舒适性能。与原始控制相比,对于办公室,MPC和近似MPC分别减少了58.5%和51.6%的冷却能耗。对于讲座剧院,与原始控制相比,MPC和近似MPC分别减少了36.7%和36.2%的冷却能耗。同时,与原来的控制相比,近似MPC和MPC显着提高了两台测试台中的室内热舒适度。尽管控制性能下降较小,但近似MPC在每次步骤中产生最佳控制命令时比MPC快100倍。

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