水文物联网:潜力与挑战

Andrea Zanella, S. Zubelzu, M. Bennis, Martina Capuzzo, P. Tarolli
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引用次数: 2

摘要

水资源的管理对我们社会和经济的可持续发展一直很重要。近年来,气候变化进一步增加了这一需求,气候变化的其他影响之一是导致了极端事件的增加,如长期干旱、严重风暴、飓风等。因此,迫切和关键的是开发新的和更复杂的工具和方法来观察和可能预测基本的水过程。物联网和机器学习可以为这一目标做出重大贡献,这需要弥合水文学家、数据科学家和通信工程师之间仍然存在的差距。本文旨在通过向工程师介绍水文学的挑战,并回顾文献中针对这些挑战提出的现有解决方案,帮助填补这一空白。用一些经验数据集的结果来说明主要概念,并用一些实际例子来证实理论讨论。最后,讨论了有待解决的问题和未来研究的可能途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Internet of Things for Hydrology: Potential and Challenges
The management of water resources has always been important for the sustainability of our society and economy. This need has been further increased by climate change in recent years that, among other effects, has led to an increase in extreme events, such as prolonged droughts, severe storms, hurricanes, and so on. It is therefore urgent and critical to develop new and more sophisticated tools and methodologies to observe and possibly predict fundamental water processes. Internet of Things and machine learning can provide a significant contribution to this end, which requires bridging the gap that still exists between the communities of hydrologists, data scientists, and communications engineers. This article aims to help fill such a gap by introducing engineers to the challenges of hydrology, and reviewing existing solutions proposed in the literature to such challenges. Some results obtained from empirical data sets are used to illustrate the main concepts and corroborate the theoretical discussion with some practical examples. Finally, open problems and possible avenues for future research are discussed.
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