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首页> 外文期刊>International Journal of Wildland Fire >Prediction of daily lightning- and human-caused fires in British Columbia.
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Prediction of daily lightning- and human-caused fires in British Columbia.

机译:预测不列颠哥伦比亚省每天发生的雷击和人为火灾。

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摘要

Daily records of the location and timing of human- and lightning-caused fires in British Columbia from 1981 to 2000 were used to estimate the probability of fire occurrence within 950 20x20-km spatial units (~950 000 km2) using a binary logistic regression modelling framework. Explanatory variables included lightning strikes, forest cover, surface weather observations, atmospheric stability indices and fuel moisture codes of the Canadian Fire Weather Index System. Because the influence of the explanatory variables in the models varied from year to year, model coefficients were estimated for each year. The arithmetic mean of the model coefficients was used for making daily predictions in a future year. A confidence interval around the mean or a quantile was derived from the ensemble of 20 model predictions. A leave-1-year-out cross-validation procedure was used to assess model performance for random years. The daily number of lightning-caused fires was reasonably well predicted at the provincial level (R=0.83) and slightly less well predicted for a smaller (75 000 km2) administrative region. The daily number of human-caused fires was less well predicted at both the provincial (R=0.55) and the regional level. The ability to estimate confidence intervals from the ensemble of model predictions is an advantage of the year-specific approach.
机译:通过对1981年至2000年不列颠哥伦比亚省人为和闪电引起的火灾的位置和时间的每日记录,来估算在950个20x20 km空间单位(〜950 000 km 2 )使用二进制逻辑回归建模框架。解释性变量包括雷击,森林覆盖,地面天气观测,大气稳定性指数和加拿大火灾天气指数系统的燃料湿度代码。由于模型中解释变量的影响每年都在变化,因此每年都要估算模型系数。模型系数的算术平均值用于进行未来一年的每日预测。均值或分位数附近的置信区间是从20个模型预测的集合中得出的。使用离开1年的交叉验证程序来评估随机年份的模型性能。在省一级( R = 0.83)合理预测了每天由雷击引起的火灾,而较小规模(7.5万km 2 )的行政管理部门对每天发生的雷击事件的预测则稍差一些地区。在省级( R = 0.55)和地区级,每天由人引起的大火的预测都不太准确。从特定模型的预测中估计置信区间的能力是特定年份方法的优势。

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