数字化背景下环境气象业务转型调研及发展思路
Research and Development Thinking of Environmental Meteorology Service Transformation under Digital Background
DOI: 10.12677/AEP.2023.132017, PDF,    科研立项经费支持
作者: 王媛媛, 郭 锐, 马小会:京津冀环境气象预报预警中心,北京;北京市气象台,北京
关键词: 数字化环境气象业务转型Digitization Environmental Meteorology Transformation
摘要: 随着人工智能技术在气象预报领域应用的不断深入,环境气象业务也在发生变化。为了推动环境气象预报业务向数字化、智能化转变,本文对国内外气象部门数字化业务现状进行调研分析,对环境气象数字化转型发展进行了思考,从而强化预报服务人员在雾、沙尘等低能见度天气预报、服务及关键技术研发中发挥核心作用,进一步推动环境气象高质量发展。
Abstract: With the application of artificial intelligence technology in the field of weather forecasting, the en-vironmental meteorology service is also changing. In order to promote the transformation of en-vironment weather forecast to digital and accurate automatic intelligence, this paper investigates and analyzes the status quo of digital operation of meteorological departments at home and abroad, and considers the digital transformation and development of environmental meteorology, so as to strengthen the core role of personnel research in the forecasting service and key technologies of fog, dust and other low-visibility weather to further promote the high-quality development of environ-mental meteorology.
文章引用:王媛媛, 郭锐, 马小会. 数字化背景下环境气象业务转型调研及发展思路[J]. 环境保护前沿, 2023, 13(2): 135-140. https://doi.org/10.12677/AEP.2023.132017

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