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Leveraging machine learning approaches to estimate the impact of thermostat setpoints on individual household gas consumption

机译:利用机器学习方法来估算恒温器设定点对个体煤气消耗的影响

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Given the world’s current climate change challenge and residential gas consumption being a major end-use of energy, people more than ever need to minimize their household’s energy footprint. Personalised, actionable advice can give people tips on which actions they can take to reduce residential energy usage, such as lowering the thermostat temperature. For this advice to be relevant it is important to understand the quantitative impact of thermostat setpoints on daily gas usage for each individual household. In this article, this impact is estimated by comparing three machine learning approaches.Linear regression, deep learning and gradient boosting machine are applied to a multi-dimensional time series dataset for 300 Dutch households. The three approaches are compared based on three metrics: root mean square error (RMSE), explainability and scalability. The results of the best model (gradient boosting machine) are explained using a technique called SHapley Additive exPlanations (SHAP). This interpretation method can quantify the contribution of all inputs, among which thermostat setpoints, to the daily gas usage prediction of the model for different individual households.This article adds to the current state of the art by focusing on the impact of influenceable thermostat setpoints, as opposed to less actionable factors such as house size, insulation status of the house and weather. By applying SHAP, the personal impact and differences between individual households are estimated, in contrast to only learning trends. Moreover, a machine learning model, trained on a representative dataset, is applicable at scale to other households for estimating a personal, quantified impact of setpoint choices.
机译:鉴于世界目前的气候变化挑战和住宅气体消耗是能源的主要终端用,人们比以往任何时候都需要尽量减少家庭的能源足迹。个性化的,可操作的建议可以给人们提示他们可以采取的行动减少住宅能源使用,例如降低恒温器温度。对于这种建议来说,致力于了解恒温器设定点对每个家庭家庭日常气体使用的定量影响非常重要。在本文中,通过比较三种机器学习方法来估算这种影响。线性回归,深度学习和梯度升压机应用于300卢比家庭的多维时间序列数据集。基于三个度量比较三种方法:螺根均方误差(RMSE),解释性和可扩展性。使用称为Shppley添加剂解释(Shaf)的技术来解释最佳模型(梯度升压机)的结果。这种解释方法可以量化所有输入的贡献,其中包括不同个人家庭模型的日常气体使用预测的所有输入。本文通过专注于受影响的恒温器设定点的影响来增加本领域的当前状态,而不是较少的可操作因素,如房子规模,房屋的绝缘地位和天气。通过涂抹形状,估计各个家庭之间的个人影响和差异,与学习趋势相比。此外,在代表数据集上培训的机器学习模型适用于其他家庭,用于估算设定值选择的个人量化影响。

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