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首页> 外文期刊>Bulletin of the American Meteorological Society >Leveraging Modern Artificial Intelligence for Remote Sensing and NWP: Benefits and Challenges
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Leveraging Modern Artificial Intelligence for Remote Sensing and NWP: Benefits and Challenges

机译:利用现代人工智能遥感,NWP:福利和挑战

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摘要

Artificial intelligence (AI) techniques have had significant recent successes in multiple fields. These fields and the fields of satellite remote sensing and NWP share the same fundamental underlying needs, including signal and image processing, quality control mechanisms, pattern recognition, data fusion, forward and inverse problems, and prediction. Thus, modern AI in general and machine learning (ML) in particular can be positively disruptive and transformational change agents in the fields of satellite remote sensing and NWP by augmenting, and in some cases replacing, elements of the traditional remote sensing, assimilation, and modeling tools. And change is needed to meet the increasing challenges of Big Data, advanced models and applications, and user demands. Future developments, for example, SmallSats and the Internet of Things, will continue the explosion of new environmental data. ML models are highly efficient and in some cases more accurate because of their flexibility to accommodate nonlinearity and/or non-Gaussianity. With that efficiency, ML can help to address the demands put on environmental products for higher accuracy, for higher resolution-spatial, temporal, and vertical, for enhanced conventional medium-range forecasts, for outlooks and predictions on subseasonal to seasonal time scales, and for improvements in the process of issuing advisories and warnings. Using examples from satellite remote sensing and NWP, it is illustrated how ML can accelerate the pace of improvement in environmental data exploitation and weather prediction-first, by complementing existing systems, and second, where appropriate, as an alternative to some components of the NWP processing chain from observations to forecasts.
机译:人工智能(AI)技术在多个领域具有重要的成功。这些字段和卫星遥感和NWP的字段共享相同的基础潜在需求,包括信号和图像处理,质量控制机制,模式识别,数据融合,向前和逆问题以及预测。因此,一般和机器学习(ML)的现代AI尤其可以通过增强卫星遥感和NWP领域具有积极的破坏性和变革改变剂,并且在一些情况下更换,传统遥感,同化的元素和建模工具。需要更改,以满足大数据,高级模型和应用程序以及用户需求的越来越多的挑战。未来的发展,例如,小型物和物联网,将继续爆炸新的环境数据。 ML型号具有高效,在某些情况下,由于它们的灵活性来适应非线性和/或非高斯的灵活性更准确。通过这种效率,ML可以帮助解决环境产品的需求,以获得更高的准确性,用于更高的分辨率 - 空间,时间和垂直,用于增强的传统中范围预测,用于对季节性时间尺度的临时暂时性的前景和预测,以及有关发布咨询和警告过程的改进。使用卫星遥感和NWP的示例,示出了ML如何通过补充现有系统,并在适当的情况下,作为NWP的某些组件的替代品处理链从观察到预测。

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