Scalable and Interpretable Forecasting of Hydrological Time Series Based on Variational Gaussian Processes

Water Pub Date : 2024-07-15 DOI:10.3390/w16142006
J. D. Pastrana-Cortés, J. Gil-Gonzalez, A. Álvarez-Meza, D. Cárdenas-Peña, Á. Orozco-Gutiérrez
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Abstract

Accurate streamflow forecasting is crucial for effectively managing water resources, particularly in countries like Colombia, where hydroelectric power generation significantly contributes to the national energy grid. Although highly interpretable, traditional deterministic, physically-driven models often suffer from complexity and require extensive parameterization. Data-driven models like Linear Autoregressive (LAR) and Long Short-Term Memory (LSTM) networks offer simplicity and performance but cannot quantify uncertainty. This work introduces Sparse Variational Gaussian Processes (SVGPs) for forecasting streamflow contributions. The proposed SVGP model reduces computational complexity compared to traditional Gaussian Processes, making it highly scalable for large datasets. The methodology employs optimal hyperparameters and shared inducing points to capture short-term and long-term relationships among reservoirs. Training, validation, and analysis of the proposed approach consider the streamflow dataset from 23 geographically dispersed reservoirs recorded during twelve years in Colombia. Performance assessment reveals that the proposal outperforms baseline Linear Autoregressive (LAR) and Long Short-Term Memory (LSTM) models in three key aspects: adaptability to changing dynamics, provision of informative confidence intervals through Bayesian inference, and enhanced forecasting accuracy. Therefore, the SVGP-based forecasting methodology offers a scalable and interpretable solution for multi-output streamflow forecasting, thereby contributing to more effective water resource management and hydroelectric planning.
基于变异高斯过程的可扩展、可解释的水文时间序列预测
准确的流量预测对有效管理水资源至关重要,尤其是在哥伦比亚这样的国家,水力发电对国家能源网的贡献很大。传统的确定性物理驱动模型虽然具有很高的可解释性,但往往存在复杂性和需要大量参数化的问题。线性自回归(LAR)和长短期记忆(LSTM)网络等数据驱动模型具有简洁性和性能,但无法量化不确定性。这项工作引入了稀疏变异高斯过程(SVGPs),用于预测流量贡献。与传统的高斯过程相比,所提出的 SVGP 模型降低了计算复杂度,使其在大型数据集上具有很强的可扩展性。该方法采用最优超参数和共享诱导点来捕捉水库之间的短期和长期关系。建议方法的训练、验证和分析考虑了哥伦比亚十二年间记录的 23 个地理位置分散的水库的流量数据集。性能评估显示,该方法在三个关键方面优于线性自回归(LAR)和长短期记忆(LSTM)模型:对动态变化的适应性、通过贝叶斯推理提供信息丰富的置信区间以及更高的预测精度。因此,基于 SVGP 的预报方法为多输出流量预报提供了可扩展、可解释的解决方案,从而有助于更有效地进行水资源管理和水电规划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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