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Forecasting office indoor CO_2 concentration using machine learning with a one-year dataset

机译:使用一年数据集的机器学习预测办公室室内CO_2浓度

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Modern buildings are expected to fulfill energy efficiency regulations while providing a healthy and comfortable living environment for their occupants. Demand-controlled heating, ventilation, and air conditioning can improve energy efficiency and well-being, especially if changes in indoor environmental factors can be forecast reliably enough. As a first step, this study afforded a baseline for CO2 forecasting evaluation by providing for the public use a comprehensive dataset covering a full year. Secondly, we studied the applicability of four machine learning methods, Ridge regression, Decision Tree, Random Forest, and Multilayer Perceptron, for modeling the future concentration of CO2 in indoors. We evaluated their prediction accuracy within different forecasting and history window time frames and the impact of multiple sensor modalities. All models performed better than the baseline method of predicting the last observed value, and the Decision Tree was found to be almost as accurate as the computationally heavier Random Forest model. When the future forecasting window was longer than a minute, the optimal sensor modalities included occupant activity data from passive infrared sensors in addition to CO2 concentration. Our findings suggest that machine learning can be applied in multimodal time-series data to find a simple, accurate, and resource-efficient forecasting model for proactive control of indoor environments.
机译:预计现代建筑将履行能源效率规定,同时为其居住者提供健康舒适的生活环境。需求控制的加热,通风和空调可以提高能量效率和福祉,特别是如果可以可靠地预测室内环境因素的变化。作为第一步,本研究提供了CO2预测评估的基线,通过提供公众使用全年的综合数据集。其次,我们研究了四种机器学习方法,山脊回归,决策树,随机林和多层情人的适用性,以建模在室内的未来CO2集中。我们在不同的预测和历史窗口时间框架内评估了它们的预测精度以及多个传感器模式的影响。所有模型都比预测最后一个观察到的值的基线方法更好,并且发现决策树几乎与计算较重随机森林模型一样准确。当未来的预测窗口超过一分钟时,最佳传感器模式除了CO2浓度之外还包括来自被动红外传感器的乘员活动数据。我们的研究结果表明,机器学习可以应用于多模式时间序列数据,以寻找简单,准确,资源有效的室内环境的主动控制的预测模型。

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