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Machine Learning of Weather Forecasting Rules from Large Meteorological Data Bases 被引量:1

Machine Learning of Weather Forecasting Rules from Large Meteorological Data Bases
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摘要 Discovery of useful forecasting rules from observational weather data is an outstanding interesting topic.The traditional methods of acquiring forecasting knowledge are manual analysis and investigation performed by human scientists.This paper presents the experimental results of an automatic machine learning system which derives forecasting rules from real observational data.We tested the system on the two large real data sets from the areas of centra! China and Victoria of Australia.The experimental results show that the forecasting rules discovered by the system are very competitive to human experts.The forecasting accuracy rates are 86.4% and 78% of the two data sets respectively Discovery of useful forecasting rules from observational weather data is an outstanding interesting topic.The traditional methods of acquiring forecasting knowledge are manual analysis and investigation performed by human scientists.This paper presents the experimental results of an automatic machine learning system which derives forecasting rules from real observational data.We tested the system on the two large real data sets from the areas of centra! China and Victoria of Australia.The experimental results show that the forecasting rules discovered by the system are very competitive to human experts.The forecasting accuracy rates are 86.4% and 78% of the two data sets respectively
出处 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 1996年第4期471-488,共18页 大气科学进展(英文版)
关键词 Weather forecasting Machine learning Machine discovery Meteorological expert system Meteorological knowledge processing Automatic forecasting Weather forecasting,Machine learning, Machine discovery, Meteorological expert system, Meteorological knowledge processing,Automatic forecasting
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