Machine and statistical learning algorithms can be reliably automated and applied at scale. Therefore, they can constitute a considerable asset for designing practical forecasting systems, such as those related to urban water demand. Quantile regression algorithms are statistical and machine learning algorithms that can provide probabilistic forecasts in a straightforward way, and have not been applied so far for urban water demand forecasting. In this work, we aim to fill this gap by automating and extensively comparing several quantile-regression-based practical systems for probabilistic one-day ahead urban water demand forecasting. For designing the practical systems, we use five individual algorithms (i.e., the quantile regression, linear boosting, generalized random forest, gradient boosting machine and quantile regression neural network algorithms), their mean combiner and their median combiner. The comparison is conducted by exploiting a large urban water flow dataset, as well as several types of hydrometeorological time series (which are considered as exogenous predictor variables in the forecasting setting). The results mostly favour the practical systems designed using the linear boosting algorithm, probably due to the presence of trends in the urban water flow time series. The forecasts of the mean and median combiners are also found to be skilful in general terms.
翻译:计算机回归算法是统计和机器学习算法,能够以直截了当的方式提供概率预测,而且迄今为止尚未用于城市水需求预测。在这项工作中,我们的目标是通过自动化和广泛比较几个基于微量回归基础的实用系统来填补这一差距,以便在预测城市水需求预测之前提前一天进行概率预测。在设计实用系统时,我们使用五个单个算法(例如,微量回归法、线性推进法、一般随机森林、梯度加速机和四分回归神经网络算法)、其平均组合法和中位组合法。比较方法是利用大型城市水流数据集以及若干类型的水文气象时间序列(在预测环境中被视为外源预测变量)来填补这一差距。结果大多有利于使用线性推进算法设计的实际系统,这可能是由于存在城市水流趋势的中位值和中位值。预测也是由于在城市水流中测得的中位值。