论文标题

拉索的概率多步预测预测短期水需求

Probabilistic Multi-Step-Ahead Short-Term Water Demand Forecasting with Lasso

论文作者

Kley-Holsteg, Jens, Ziel, Florian

论文摘要

水需求对于运营控制和决策是非常重要的变量。因此,准确的预测的发展是一个宝贵的研究领域,以进一步提高水电的效率。介绍了概率的多步预测,引入了时间序列模型,以捕获典型的自动回归,日历和季节性效应,以说明时间变化的方差,并量化水需求过程的不确定性和路径依赖性。为了处理水需求过程的高复杂性,应用了高维特征空间,该空间可通过自动收缩和选择操作员(Lasso)有效调整。它允许获得准确,简单的可解释和快速计算的预测模型,该模型非常适合实时应用。完整的概率预测框架不仅允许模拟平均值和边际特性,还允许在预测范围内的小时之间的相关结构。对于从业者而言,完全概率的多步骤预报具有相当大的相关性,因为它们提供了有关预期的聚合或累积水需求的其他信息,以便可以就水存储容量保证在一定时间内保证供应的概率发表声明。这些信息允许更好地控制存储能力,并更好地确保泵的平稳运行。为了适当评估所考虑模型的预测性能,引入了能量评分(ES)作为严格正确的多维评估标准。该方法应用于德国水供应商的小时用水需求数据。

Water demand is a highly important variable for operational control and decision making. Hence, the development of accurate forecasts is a valuable field of research to further improve the efficiency of water utilities. Focusing on probabilistic multi-step-ahead forecasting, a time series model is introduced, to capture typical autoregressive, calendar and seasonal effects, to account for time-varying variance, and to quantify the uncertainty and path-dependency of the water demand process. To deal with the high complexity of the water demand process a high-dimensional feature space is applied, which is efficiently tuned by an automatic shrinkage and selection operator (lasso). It allows to obtain an accurate, simple interpretable and fast computable forecasting model, which is well suited for real-time applications. The complete probabilistic forecasting framework allows not only for simulating the mean and the marginal properties, but also the correlation structure between hours within the forecasting horizon. For practitioners, complete probabilistic multi-step-ahead forecasts are of considerable relevance as they provide additional information about the expected aggregated or cumulative water demand, so that a statement can be made about the probability with which a water storage capacity can guarantee the supply over a certain period of time. This information allows to better control storage capacities and to better ensure the smooth operation of pumps. To appropriately evaluate the forecasting performance of the considered models, the energy score (ES) as a strictly proper multidimensional evaluation criterion, is introduced. The methodology is applied to the hourly water demand data of a German water supplier.

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