论文标题
审查机器学习概念和解决概率水文后处理和预测中挑战的方法
A review of machine learning concepts and methods for addressing challenges in probabilistic hydrological post-processing and forecasting
论文作者
论文摘要
如今,包括水文学在内的各种应用领域,概率预测正在受到越来越多的关注。几种机器学习概念和方法与应对正式化和优化概率预测实现的主要挑战,以及在这些实现中确定最有用的挑战的同样重要挑战。尽管如此,目前从上面的基本努力中有效利用这些概念和方法的研究,以实践为导向的评论,目前从概率的水文预测文献中缺少了这些评论。尽管在同一文献中从机器学习中受益的研究工作中有明显的加剧,但这种缺席仍然存在。尽管最近出现了实质性的进展,尤其是在概率的水文后加工领域,但传统上为水文学家提供了概率的水文预测实施,但它仍然存在。在此,我们旨在填补这一特定空白。在我们的综述中,我们强调了可以导致有效普及的关键思想和信息,因为这样的重点可以支持成功的未来实施和进一步的科学发展。在相同的前瞻性方向上,我们确定了开放的研究问题,并提出了将来要探索的想法。
Probabilistic forecasting is receiving growing attention nowadays in a variety of applied fields, including hydrology. Several machine learning concepts and methods are notably relevant towards addressing the major challenges of formalizing and optimizing probabilistic forecasting implementations, as well as the equally important challenge of identifying the most useful ones among these implementations. Nonetheless, practically-oriented reviews focusing on such concepts and methods, and on how these can be effectively exploited in the above-outlined essential endeavour, are currently missing from the probabilistic hydrological forecasting literature. This absence holds despite the pronounced intensification in the research efforts for benefitting from machine learning in this same literature. It also holds despite the substantial relevant progress that has recently emerged, especially in the field of probabilistic hydrological post-processing, which traditionally provides the hydrologists with probabilistic hydrological forecasting implementations. Herein, we aim to fill this specific gap. In our review, we emphasize key ideas and information that can lead to effective popularizations, as such an emphasis can support successful future implementations and further scientific developments. In the same forward-looking direction, we identify open research questions and propose ideas to be explored in the future.