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›› 2012, Vol. 35 ›› Issue (1): 67-72.

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High temperature prediction modeling of neural network using the optimal subset

LI Lingping1,2,SHANG Kezheng3,QIAN Li2   

  1. 1 Key Laboratory of Arid Climatic Change and Reducing Disaster of Gansu Province,Key Open Laboratory of Arid Change and Disaster Reduction of CMA, Institute of Arid Meteorology,China Meteorological Administration, Lanzhou 730020,Gansu,China; 2 Wuwei City Meteorological Bureau of  Gansu Province, Wuwei 733000,Gansu,China;3 College of Atmospheric Sciences, Lanzhou University,Lanzhou 730000,Gansu,China
  • Received:2011-08-19 Revised:2011-10-24 Online:2012-01-25
  • Contact: LI Lingping E-mail:wwqxjllp@163.com

Abstract: The changes in synoptic process are characterized by the obvious nonlinear variation features, while the method of neural network is provided with strong abilities of disposing the nonlinear problems. ≥35 ℃ extreme high temperature over northwest arid region of China is severe weather in summer, it can cause difficult drinking water of man and domestic animal, aggravate drought, and has adverse influence on agriculture, industry and man’s health. Based on the daily data of ECMWF grid field at 20∶00-20∶00 from June to September during 2003-2007, the coverage is between 90-110°E and 35-45°N, grid is 2.5°×2.5°, height level is from 850 hPa to 500 hPa, the methods including difference, weather diagnosis and factors combination were used in this paper. Factors are selected by model output products which are closely related to temperatures or variations of low atmospheric condition, considering the continuity of the temperature changes, the factors were initially elected according to the press criterion. Optimal subset, stepwise regression and BP neural cell network method are attempted to form statistic forecast model for ≥35 ℃ extreme high temperature over the east of Hexi Corridor in Gansu province. Every month has its independent forecast equation. The result shows that factors selected by optimal subset method have better fitting, prediction ability and stability, whose calculated amount are so small that are easy to integrate in operational system, the selected factors are focused on near middle and low atmosphere which are T and T-Td at 850 hPa, relative humidity at 700 hPa. Meantime, forecasted factor was dealt with nonlinearly which can reflect the nonlinear relations between itself and other model output factors. The forecast system was verified by historical data during 2003-2007, its regional ≥35 ℃ high temperature fitting percent was 81.0% within 24 hours, and the forecast accuracy rate was 77.0% within 24 hours from July to September in 2008. The constructed model of the optimum subset’s high temperature forecast has been used in the actual forecast since summer of 2008,and is found to have the better fitting and high prediction accuracy. Thus, it provides a new train of thought and method for the research of the neural network prediction on the disastrous weather forecast.

Key words: optimal subset regression, neural network, extreme high temperature forecast

CLC Number: 

  • TP183