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Artificial Intelligence for Advanced Building Control: Energy and GHG Savings from a Case Study

机译:高级建筑控制的人工智能:案例研究中的能源和温室气体节省

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Model-based Predictive Control (MPC) is a promising advanced control strategy for the improvement of building operation. MPC uses a model of the building along with weather forecasts to optimize control strategies, such as indoor air temperature set-points, thermal storage charging and discharging cycles, etc. An obstacle to the adoption of MPC is the modelling step: developing a dedicated control-oriented model is a time-consuming process, requiring technical expertise and a large amount of information about the building and its operation. To overcome these issues, this paper proposes a new approach for the development of MPC strategies based on Artificial Intelligence (AI) techniques, aiming to map correlations among commonly available operation variables and to develop models suitable for predictive control. The proposed approach was applied in an institutional building in Varennes, QC, with the aim of reducing the natural gas consumption during the heating season. Early results show a remarkable effectiveness of the proposed approach, with a reduction of natural gas and building heating consumption of 23.9% and 6.3%, respectively.
机译:基于模型的预测控制(MPC)是一个有前途的建筑工程改进的先进控制策略。 MPC使用建筑物的模型以及天气预报来优化控制策略,例如室内空气温度设定点,热存储充电和放电循环等。采用MPC的障碍是建模步骤:开发专用控制 - 客户的模型是一种耗时的过程,需要技术专长和有关建筑物的大量信息及其操作。为了克服这些问题,本文提出了一种新的基于人工智能(AI)技术的MPC策略的新方法,旨在映射常用操作变量之间的相关性,并开发适合于预测控制的模型。该拟议的方法是在QC QC的一个机构建筑中应用,目的是降低加热季节期间的天然气消耗。早期结果表明,拟议的方法具有显着的效果,减少了天然气,分别建造了23.9%和6.3%的加热消耗。

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