Zhang Yunlin, Tian Lingling
School of Biological Sciences, Guizhou Education University, Guiyang, Asian, China.
PeerJ. 2021 Sep 30;9:e12206. doi: 10.7717/peerj.12206. eCollection 2021.
Forest fire risk predictions are based on the most conservation daily predictions, and the lowest litter moisture content of each day is often used to predict the day's fire risk. Yunnan Province is the area with the most frequent and serious forest fires in China, but there is almost no research on the dynamic changes and model predictions of the litter moisture content in this area. Therefore, to reduce the occurrence of forest fires and improve the accuracy of forest fire risk predictions, it is necessary to understand these dynamic changes and establish an appropriate prediction model for the typical litter moisture content in Yunnan Province.
During the fire prevention period, daily dynamic changes in the litter moisture content are obtained by monitoring the daily step size, and the relationships between the litter moisture content and meteorological elements are analyzed. In this study, the meteorological element regression method, moisture code method and direction estimation method are selected to establish litter moisture content prediction models, and the applicability of each model is analyzed.
We found that dynamic changes in the litter moisture content have obvious lags compared with meteorological elements, and the litter moisture content is mainly related to the air temperature, relative humidity and wind speed. With an increase in the sampling interval of meteorological elements, the significances of these correlations first increase and then decrease. The moisture content value obtained by directly using the moisture code method in the Fire Weather Index (FWI) significantly different from the measured value, so this method is not applicable. The mean absolute error (MAE) and mean relative error (MRE) values obtained with the meteorological element regression method are 2.97% and 14.06%, those from the moisture code method are 3.27% and 14.07%, and those from the direct estimation method are 2.82% and 12.76%, respectively.
The direct estimation method has the lowest error and the strongest extrapolation ability; this method can meet the needs of daily fire forecasting. Therefore, it is feasible to use the direct estimation method to predict litter moisture contents in Yunnan Province.
森林火灾风险预测基于最保守的每日预测,且常利用每日最低凋落物含水量来预测当日火灾风险。云南省是中国森林火灾发生最为频繁且严重的地区,但该地区凋落物含水量的动态变化及模型预测方面几乎没有研究。因此,为减少森林火灾的发生并提高森林火灾风险预测的准确性,有必要了解这些动态变化并为云南省典型的凋落物含水量建立合适的预测模型。
在防火期内,通过监测每日步长获取凋落物含水量的每日动态变化,并分析凋落物含水量与气象要素之间的关系。本研究选取气象要素回归法、湿度码法和直接估算法建立凋落物含水量预测模型,并分析各模型的适用性。
我们发现,凋落物含水量的动态变化与气象要素相比具有明显的滞后性,且凋落物含水量主要与气温、相对湿度和风速有关。随着气象要素采样间隔的增加,这些相关性的显著性先增大后减小。在森林火险天气指数(FWI)中直接使用湿度码法得到的含水量值与实测值有显著差异,因此该方法不适用。气象要素回归法得到的平均绝对误差(MAE)和平均相对误差(MRE)值分别为2.97%和14.06%,湿度码法得到的分别为3.27%和14.07%,直接估算法得到的分别为2.82%和12.76%。
直接估算法误差最低且外推能力最强;该方法能够满足日常火灾预报的需求。因此,使用直接估算法预测云南省的凋落物含水量是可行的。