干旱气象
榦旱氣象
간한기상
GANSU METEOROLOGY
2012年
1期
130-135
,共6页
数据挖掘%精细化温度预报%BP神经网络%预测模型
數據挖掘%精細化溫度預報%BP神經網絡%預測模型
수거알굴%정세화온도예보%BP신경망락%예측모형
data mining%refined temperature forecast%BP neural networks%forecast model
简要介绍了精细化天气预报和气象数据挖掘应用的现状,在对BP神经网络预测方法详细分析的基础上,研究了基于时间序列数据挖掘实现精细化温度预报的方法。该方法基于时序分析技术,建立起适合于BP神经网络的输入样本模型,通过反复学习从温度时序中建立预测模型,将其用于未来24 h的精细化温度预报。同时,对BP神经网络算法和步骤做了简要介绍,针对原有的BP算法存在的不足,做了一些改进。最后,通过对预测挖掘系统的设计和在Matlab6.5仿真平台上的试验,建立了温度预报模型,以兰州市观测站数据为时间序列研究对象,对精细化温度预报进行了仿真实现。对基于时序的数据挖掘理论的应用和开发精细化温度预报方法做了有益的探索。
簡要介紹瞭精細化天氣預報和氣象數據挖掘應用的現狀,在對BP神經網絡預測方法詳細分析的基礎上,研究瞭基于時間序列數據挖掘實現精細化溫度預報的方法。該方法基于時序分析技術,建立起適閤于BP神經網絡的輸入樣本模型,通過反複學習從溫度時序中建立預測模型,將其用于未來24 h的精細化溫度預報。同時,對BP神經網絡算法和步驟做瞭簡要介紹,針對原有的BP算法存在的不足,做瞭一些改進。最後,通過對預測挖掘繫統的設計和在Matlab6.5倣真平檯上的試驗,建立瞭溫度預報模型,以蘭州市觀測站數據為時間序列研究對象,對精細化溫度預報進行瞭倣真實現。對基于時序的數據挖掘理論的應用和開髮精細化溫度預報方法做瞭有益的探索。
간요개소료정세화천기예보화기상수거알굴응용적현상,재대BP신경망락예측방법상세분석적기출상,연구료기우시간서렬수거알굴실현정세화온도예보적방법。해방법기우시서분석기술,건립기괄합우BP신경망락적수입양본모형,통과반복학습종온도시서중건립예측모형,장기용우미래24 h적정세화온도예보。동시,대BP신경망락산법화보취주료간요개소,침대원유적BP산법존재적불족,주료일사개진。최후,통과대예측알굴계통적설계화재Matlab6.5방진평태상적시험,건립료온도예보모형,이란주시관측참수거위시간서렬연구대상,대정세화온도예보진행료방진실현。대기우시서적수거알굴이론적응용화개발정세화온도예보방법주료유익적탐색。
The paper introduces the domestic and international current situation about the development of refined weather forecast and data mining application.On the basis of detailed analysis of BP neural network forecasting method,this paper researches a data mining method based on time series analysis technology which can be used on refined temperature forecast.This method can build an input sample pattern which is suit for the BP neural networks of data mining and finally establish a predictive model by studying temperature time series again and again,which used for the next 24 hours refined temperature forecast.At the same time,a brief introduction of the algorithm and steps of the BP neural network is given out in the paper,and some further improvement is made aiming at the deficiency of the original BP algorithm.Finally,through design data mining system and test on the Matlab6.5 simulation platform,the temperature forecast model was established.This study had done some helpful exploration on application of data mining theory based on time series analysis technology and developed method of refined weather forecast.