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基于时序数据挖掘的澜沧江流域气象预报系统(英文) 被引量:3

A weather forecast system of lancang river valley based on time sequence data mining
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摘要 在对澜沧江流域多年气象数据分析研究的基础上 ,依据气象数据的时序特性 ,结合数据挖掘中比例规则挖掘技术 ,实现了一个基于时序数据挖掘的气象预报系统 .该系统对澜沧江流域近 40年气象数据进行预测实验 ,结果表明 :基于数据挖掘的气象预报系统的研究是对气象预报新路的有益探索 .此外 。 By study and analysis of many years' weather data in Lancang river valley,using ratio rule in data mining and time sequential characteristics of weather data, it was developed a weather forecast system based on data mining of time series data.Experiments with this system are conducted to forecast the area weather in the past 40 years.The results demonstrate that using data mining in weather forecast is effective and worth further research and experiment.The system also provides a built-in graphical user interface for visual display of results.
出处 《云南大学学报(自然科学版)》 CAS CSCD 2004年第6期479-485,491,共8页 Journal of Yunnan University(Natural Sciences Edition)
基金 ThisresearchissupportedbyNaturalScienceFoundationofYunnanProvince(2 0 0 2F0 0 1 3M )
关键词 时序数据 数据挖掘 系统 用户界面 挖掘技术 气象数据 可视化 气象预报 澜沧江流域 展示 data mining ratio rules time sequence(time series analysis) weather forecast
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参考文献9

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