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Data-driven simulation for energy consumption estimation in a smart home

机译:数据驱动的模拟,用于智能家居中的能耗估算

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Simulation and data-driven models are both tools that can play an important role in reducing the energy consumption of buildings and homes. However, sophisticated control schemes and models are only as good as the data collected by sensors and provided to them. Low-quality or faulty sensor that provide inaccurate data can lead to inefficient buildings. In this paper, we investigate the relationship between sensor quality and the prediction of energy consumption. We first construct a simulation of appliance energy consumption in a smart home and then assess the predictive ability of several data-driven models while varying the quality and function of the simulated sensors. The simulation was constructed using a smart home data set collected by other researchers. We find that the predictive ability is only decreased when noise is added to the appliance energy random variable. We conclude that low-quality sensors that do not monitor the environment as accurately as the devices used in the original study could be used for humidity and temperature without significantly reducing the predictive ability of the data-driven models. The method and findings have implications for how to conduct cost-benefit analyses of IoT device requirements.
机译:模拟和数据驱动模型都是可以在减少建筑物和房屋能耗中发挥重要作用的工具。但是,复杂的控制方案和模型仅与传感器收集并提供给他们的数据一样好。提供不准确数据的低质量或故障传感器可能导致建筑效率低下。在本文中,我们研究了传感器质量与能耗预测之间的关系。我们首先在智能家居中构建家用电器能耗的模拟,然后评估几种数据驱动模型的预测能力,同时改变模拟传感器的质量和功能。该模拟是使用其他研究人员收集的智能家居数据集构建的。我们发现,只有将噪声添加到设备能量随机变量中时,预测能力才会降低。我们得出的结论是,对于湿度和温度,可以使用湿度传感器,而不用像原始研究中使用的设备那样准确地监视环境,而不会显着降低数据驱动模型的预测能力。该方法和发现对如何进行物联网设备要求的成本效益分析具有影响。

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