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Model predictive control with adaptive machine-learning-based model for building energy efficiency and comfort optimization

机译:基于自适应机器学习的模型模型预测控制,用于建筑能效和舒适优化

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A model predictive control system with adaptive machine-learning-based building models for building automation and control applications is proposed. The system features an adaptive machine-learning-based building dynamics modelling scheme that updates the building model regularly using online building operation data through a dynamic artificial neural network with a nonlinear autoregressive exogenous structure. The system also employs a multi-objective function that could optimize both energy efficiency and indoor thermal comfort, two often contradicting demands. The proposed model predictive control system is implemented to control the air-conditioning and mechanical ventilation systems in two single-zone testbeds, an office and a lecture theatre, located in Singapore for experimental evaluation of its control performance. The model predictive control system is compared against the original reactive control system (thermostat in the office and building management system in the lecture theatre) in each testbed. The model predictive control system reduces 58.5% cooling thermal energy consumption in the office and 36.7% cooling electricity consumption in the lecture theatre, as compared to their respective original control. Meanwhile, the indoor thermal comfort in both testbeds is also greatly improved by the model predictive control system. Developing a model predictive control system using machine-learning-based building dynamics models could largely cut down the model construction time to days as compared to its counterpart using physics-based models, which usually take months to construct. However, the machine-learning-based modelling approach could be challenged by lack of building operational data necessary for model training in case of model predictive control development before the building has become operational.
机译:提出了一种模型预测控制系统,具有自适应机器学习的建筑模型,用于建立自动化和控制应用。该系统具有基于自适应的机器学习的构建动态建模方案,其定期通过动态人工神经网络通过具有非线性自回归的外源结构的动态人工神经网络来更新建筑模型。该系统还采用多目标函数,可以优化能源效率和室内热舒适性,两种经常矛盾的需求。所提出的模型预测控制系统被实施为控制位于新加坡的两个单区域试验台,办公室和讲座剧院中的空调和机械通风系统,用于试验其控制性能。将模型预测控制系统与原始无功控制系统(在办公室中的恒温器和讲座剧院中的恒温器)进行比较。与其各自的原始控制相比,模型预测控制系统在办公室中的58.5%冷却热能消耗和讲座剧院的36.7%的冷却电力消耗。同时,模型预测控制系统也大大改善了两种试验台的室内热舒适度。使用基于机器学习的建筑物动力学模型开发模型预测控制系统可能会在使用基于物理的模型的情况下,与其对应的模型相比,可以在很大程度上降低模型施工时间,这通常需要数月的构造。然而,基于机器学习的建模方法可能是由于在建筑物的模型预测控制开发之前缺乏模型训练所需的建筑运营数据而受到挑战。

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