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Nature上发表了一项来自Google Research团队的重要研究成果:他们开发的人工智能模型可以提前7天预测河流洪水。这一发现对于全球洪水预警系统来说,具有重大的意义。

该研究由Grey Nearing及其同事领导,他们利用了现有的5680个测量仪进行模型训练,成功地预测了未测量流域在7天预测期内的日径流。这一成果不仅令人振奋,更让人感到惊叹的是,他们的模型在同日预测准确率上与当前全球领先的短期和长期洪水预测软件——全球洪水预警系统(GloFAS)相当,甚至在某些情况下表现得更为出色。

这一研究成果已经以“Global prediction of extreme floods in ungauged watersheds”为题,发表在权威科学期刊Nature上。这一论文的发表,标志着人工智能在洪水预测领域的应用迈出了重要的一步。

这一研究的成功,不仅展示了人工智能在处理复杂问题上的强大能力,也为全球洪水预警系统提供了新的思路和方法。在未来,我们可以期待更多的人工智能技术应用在自然灾害的预测和预警上,以保护人民的生命财产安全。

总的来说,Google Research团队的研究成果是一项具有里程碑意义的工作,它不仅提高了我们对洪水预测的能力,也为人工智能在环境保护和自然灾害预警领域的应用提供了新的可能性。

英语如下:

Certainly, here is the translation of the provided Chinese news information into English using Markdown format:

“`markdown
# Google AI Model Predicts Floods Accurately 7 Days in Advance, Outperforming Current Systems

Keywords: AI Flood Prediction, Nature Publication, Grey Nearing

## News Content

A significant research achievement from the Google Research team has been published in Nature: they have developed an artificial intelligence model that can predict river floods up to 7 days in advance. This discovery holds great significance for global flood warning systems.

Led by Grey Nearing and his colleagues, the study utilized 5680 existing measurement devices for model training, successfully predicting the daily river runoff in unmeasured basins for a 7-day forecast period. The accomplishment is not only exciting but also remarkable when considering that their model achieved equivalent accuracy in the same-day prediction as the current globally leading short-term and long-term flood forecast software—the Global Flood Awareness System (GloFAS)—and sometimes even performed better.

This research has been published in the authoritative scientific journal Nature under the title “Global prediction of extreme floods in ungauged watersheds,” marking an important step in the application of artificial intelligence in flood prediction.

The success of this study not only showcases the powerful capabilities of artificial intelligence in addressing complex issues but also offers new insights and methods for global flood warning systems. In the future, we can anticipate more applications of artificial intelligence in the prediction and early warning of natural disasters, thereby protecting the safety and property of people.

In summary, the work of the Google Research team is a milestone that not only enhances our ability to predict floods but also opens up new possibilities for the application of artificial intelligence in environmental protection and natural disaster warning.
“`

This translation captures the essence of the original Chinese text and presents it in a clear, readable English markdown format.

【来源】https://mp.weixin.qq.com/s/GoOPqLtdYvPv3_no7GJUJQ

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