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Deep Learning Models for Time Series Forecasting of Indoor Temperature and Energy Consumption in a Cold Room

机译:冷藏室室内温度和能耗的时间序列预测的深度学习模型

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We propose to study the dynamic behavior of indoor temperature and energy consumption in a cold room during demand response periods. Demand response is a method that consists in smoothing demand over time, seeking to reduce or even stop consumption during periods of high demand in order to shift it to periods of lower demand. Such a system can therefore be tackled as the study of a time-series, where each behavioral parameter is a time-varying parameter. Four deep neural network architectures derived from the LSTM architecture were studied, adapted and compared. Their validation was carried out using experimental data collected in a cold room in order to assess their performance in predicting demand response.
机译:我们建议研究需求响应期间室内温度和冷室能耗的动态行为。需求响应是一种随时间推移平滑需求的方法,它试图在需求量高的时期减少甚至停止消耗,以将其转移到需求量低的时期。因此,可以将这种系统作为对时间序列的研究来解决,其中每个行为参数都是随时间变化的参数。研究,调整和比较了从LSTM架构派生的四种深度神经网络架构。他们的验证是使用在冷藏室中收集的实验数据进行的,以评估其在预测需求响应方面的表现。

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