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基于Logistic回归模型的呼伦贝尔草原火险预测研究
  • 期刊名称:安全与环境学报
  • 时间:0
  • 页码:173-177
  • 语言:中文
  • 分类:X43[环境科学与工程—灾害防治]
  • 作者机构:[1]东北师范大学城市与环境科学学院,东北师范大学自然灾害研究所,长春130024
  • 相关基金:国家自然科学基金项目(40871236);“十一五”国家科技支撑重大项目(20088AJ08814);“十一在”国家科技支撑计划项目(2007BAC29804);“十一五”国家科技支撑计划重点项目(2006BAD16804-2-2);公益性行业(农业)科研专项(200903041)
  • 相关项目:基于多源信息融合的草原火灾风险评价体系构建及其在应急管理中的应用研究
中文摘要:

目前国内外还没有对不同火险条件下草原火险时空发生概率的研究,而这方面研究对草原火灾管理对策和防火救助应急预案的制定具有重要意义。根据呼伦贝尔草原火灾统计月报表和相关气象、社会经济资料,利用Logistic回归模型建立草原火险预测模型,对草原火险进行了空间上的预测。结果表明,日平均风速、日降水量对草原火险影响较大;以2005年所有火灾案例对草原火险预测模型进行检验,研究表明,该预测方法具有较高的可靠性,可为火灾管理和减灾决策的制定提供指导。

英文摘要:

The present paper wants to introduce our research of the prairie fire hazard prediction based on the logistic regression simulation. As is known, prairie fire has been one of the fatal natural disasters that may influence the development of stockbroeding and the hasbandry industry in China. However, there has not been enough research on the probability of prairie fire hazards and ways on how to reduce or avoid their occurrence either at hmne or abroad. On the other hand, so far as we know, there do exist lots of mathematical simulations that are likely to be available for such disaster prediction studies, such as the gray prediction model, the BP neural network model, the Bayes prediction model and multi-linear regression model, etc. though gray prediction model and BP neural network model are mainly used in time series prediction, whose range of dependent vari- ables in multiple linear regression model is ( - ∞ , + ∞ ). In our research, we have taken the dependent variable as dichotomous vari- able, believing that such binary logistic regression models are fit for the prairie fire hazard research. In choosing such variables, We found that it is the human activities rather than those of natural fire that lead to such fires in accordance with the historical registration data in Hu- lunbeier an such fires. Therefore, we have chosen Hulunbeier grass- land as a case study and the variable of population as our variable. In doing so, the key factors that affect the prairie fire hazard can be modeled by the logistic regression that employs daily grassland fire disaster statistics, related meteorological and economic data, and dai- ly grassland fire hazard predicted. The results of our method show that the prairie fire hazard is highly affected by the average daily pre- cipitation and average daily wind speed. The probability of grassland fire has been very high though the average monthly relative humidity and the average monthly precipitation is very low. The prediction of such fire hazards in May 1st, 2005 pr

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