Recurrent neural networks (RNNs) with rich feature vectors of past values can provide accurate point forecasts for series that exhibit complex serial dependence. We propose two approaches to constructing deep time series probabilistic models based on a variant of RNN called an echo state network (ESN). The first is where the output layer of the ESN has stochastic disturbances and a shrinkage prior for additional regularization. The second approach employs the implicit copula of an ESN with Gaussian disturbances, which is a deep copula process on the feature space. Combining this copula with a non-parametrically estimated marginal distribution produces a deep distributional time series model. The resulting probabilistic forecasts are deep functions of the feature vector and also marginally calibrated. In both approaches, Bayesian Markov chain Monte Carlo methods are used to estimate the models and compute forecasts. The proposed models are suitable for the complex task of forecasting intraday electricity prices. Using data from the Australian National Electricity Market, we show that our deep time series models provide accurate short term probabilistic price forecasts, with the copula model dominating. Moreover, the models provide a flexible framework for incorporating probabilistic forecasts of electricity demand as additional features, which increases upper tail forecast accuracy from the copula model significantly.
翻译:常规神经网络(RNN)具有丰富的过去值特性矢量的经常神经网络(RNN)能够为显示复杂序列依赖性的系列提供准确的点数预测。我们建议了两种方法,根据RNN的变体,即回声状态网络(ESN)来构建深时间序列概率模型。第一种方法是,ENN的输出层存在随机扰动,在进一步规范之前会缩小。第二种方法是,使用带有高斯扰动的ESN和高斯扰动的隐含相交点,这是在特征空间上的深相交点过程。将这一相交结合与非对称估计的边际分布产生一个深度的时间序列模型。由此产生的概率预测是特征矢量矢量矢量的深功能,也是略微校准的。在这两种方法中,Bayesian Markov 链 Monte Carlo 的输出层方法都用来估计模型和编算预测模型。拟议模型适合于预测内部电价的复杂任务。我们利用澳大利亚国家电力市场的数据,显示我们深时序模型提供了准确的短期概率稳定价格预测,并用相模模型进行精确的分布序列模型。此外,从高电压预测中提供弹性的预测,从高压预测。