Using hourly energy consumption data recorded by smart meters, retailers can estimate the day-ahead energy consumption of their customer portfolio. Deep neural networks are especially suited for this task as a huge amount of historical consumption data is available from smart meter recordings to be used for model training. Probabilistic layers further enable the estimation of the uncertainty of the consumption forecasts. Here, we propose a method to calculate hourly day-ahead energy consumption forecasts which include an estimation of the aleatoric uncertainty. To consider the statistical properties of energy consumption values, the aleatoric uncertainty is modeled using lognormal distributions whose parameters are calculated by deep neural networks. As a result, predictions of the hourly day-ahead energy consumption of single customers are represented by random variables drawn from lognormal distributions obtained as output from the neural network. We further demonstrate, how these random variables corresponding to single customers can be aggregated to probabilistic forecasts of customer portfolios of arbitrary composition.
翻译:利用智能仪表记录的每小时能源消耗数据,零售商可以估计其客户组合的日头能源消耗量。深神经网络特别适合这一任务,因为从用于示范培训的智能仪记录中可以获取大量历史消费数据。概率层还有助于估计消费预测的不确定性。这里,我们提出了一个计算每小时日头能源消耗预测的方法,其中包括对单体能源消耗不确定性的估计。为了考虑能源消费值的统计特性,利用由深神经网络计算参数的逻辑正常分布模型来模拟通缩不确定性。因此,单体客户的时头能源消耗预测由从神经网络产出的日志正常分布中随机得出的变量来表示。我们进一步证明,如何将这些与单体客户相对应的随机变量归为任意构成的客户组合的概率预测。