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Artificial neural network (ANN) based model predictive control (MPC) and optimization of HVAC systems: A state of the art review and case study of a residential HVAC system

机译:基于人工神经网络(ANN)的模型预测控制(MPC)和HVAC系统的优化:住宅HVAC系统的最新技术回顾和案例研究

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In this paper, a comprehensive review of the artificial neural network (ANN) based model predictive control (MPC) system design is carried out followed by a case study in which ANN models of a residential house located in Ontario, Canada are developed and calibrated with the data measured from site. A new algorithm called best network after multiple iterations (BNMI) is introduced to help in determining the appropriate ANN architecture. The prediction performance of the developed models using BNMI algorithm was significantly better (between 6% and 59% better goodness of fit for various models) when compared to a previous study carried out by the authors which used the default single iteration ANN training algorithm of MATLAB (R). The ANN models were further used to design the supervisory MPC for the residential HVAC system. The MPC generated the dynamic temperature set-point profiles of the zone air and buffer tank water which resulted in the operating cost reduction of the equipment without violating the thermal comfort constraints. When compared to the fixed set-point (FSP), MPC was able to save operating cost between 6% and 73% depending on the season. (C) 2017 Elsevier B.V. All rights reserved.
机译:在本文中,对基于人工神经网络(ANN)的模型预测控制(MPC)系统设计进行了全面回顾,然后进行了案例研究,开发了位于加拿大安大略省的住宅的ANN模型并对其进行了校准。从站点测得的数据。引入了一种称为“多次迭代后最佳网络”(BNMI)的新算法,以帮助确定适当的ANN体系结构。与作者先前使用MATLAB的默认单迭代ANN训练算法进行的研究相比,使用BNMI算法开发的模型的预测性能明显更好(对各种模型的拟合度更好,介于6%和59%之间)。 (R)。人工神经网络模型进一步用于设计住宅HVAC系统的监控MPC。 MPC生成区域空气和缓冲罐水的动态温度设定值曲线,从而在不违反热舒适性约束的情况下降低了设备的运营成本。与固定设定点(FSP)相比,MPC可以根据季节节省6%至73%的运营成本。 (C)2017 Elsevier B.V.保留所有权利。

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