[Characteristics and influence factors of rainfall redistribution in eight typical plantations in the loess area in West Shanxi, China].

Q3 Environmental Science
Xu Hu, Zhao-Qi Fu, Biao Wang, Qin-Rui Tian, Yan-Ling Ge, Feng Lin, Ya-Jie Gao, Zhi-Qiang Zhang, Li-Xin Chen
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引用次数: 0

Abstract

Aiming for clarifying the potential distribution characteristics of canopy rainfall partitioning of the loess area, we explored the process of rainfall partitioning across eight typical forest stands (Pinus tabuliformis forest, Robinia pseudoacacia forest, Platycladus orientalis forest, mixed forest of Robinia pseudoacacia-Pinus tabuliformis, mixed forest of Platycladus orientalis-Robinia pseudoacacia, Quercus wutaishanica forest, Populus davidiana forest, mixed forest of Quercus wutaishanica-Populus davidiana), and used boosted regression trees (BRT) to quantify the relative influences of stand structures and meteorological environment factors. We established multiple regression relationships according to the most influential factors extracted by BRT, and applied to the dataset of mining to verify the performance of the BRT-derived predictive model. The results showed that the percentages of throughfall (TF), stemflow (SF), and canopy interception (Ic) in total precipitation were 24.5%-95.1%, 0-13.6%, and 0.7%-55.7% among eight typical forest stands, respectively. For the individual rainfall threshold of TF, coniferous forest (3.06±1.21 mm) was significantly higher than broad-leaved forest (1.97±0.52 mm), but there was no significant difference between coniferous forest and broad-leaved mixed forest (3.01±0.98 mm). There was no significant difference in the individual rainfall threshold of SF among different composition stands. BRT analysis showed that stand structure factors accounted for a relatively small proportion for TF and SF, respectively. By contrast, stand structure factors dominated the Ic. Rainfall was the most important factor in determining TF and SF. Tree height was the most important factor in determining Ic, followed by rainfall, canopy area, diameter at breast height, and stand density. Compared with the general linear function and the power function, the prediction effect of BRT prediction model constructed here on TF and SF had been further improved, and the prediction of canopy interception still needed to explore. In conclusion, the BRT model could better quantitatively evaluate the effects of stand structure and meteorological environmental factors on rainfall partitioning components, and the performance of the BRT predictive model could satisfy and lay the foundation for the optimization strategy for stand configuration.

[中国山西黄土地区 8 个典型种植园的降雨再分配特征及影响因素]。
为了明确黄土地区树冠降水分区的潜在分布特征,我们对 8 个典型林分(刺松林、刺槐林、东方刺槐林、东方刺槐-刺槐混交林、五台山栎林、大叶黄杨林、五台山栎-刺槐混交林)的降水分区过程进行了探讨、我们还利用增强回归树(BRT)量化了林分结构和气象环境因子的相对影响。我们根据 BRT 提取的最有影响因素建立了多元回归关系,并将其应用于采矿数据集,以验证 BRT 衍生的预测模型的性能。结果表明,在八个典型林分中,通流(TF)、茎流(SF)和冠层截流(Ic)占总降水量的百分比分别为 24.5%-95.1%、0-13.6% 和 0.7%-55.7%。针叶林(3.06±1.21 mm)显著高于阔叶林(1.97±0.52 mm),但针叶林与阔叶混交林(3.01±0.98 mm)无显著差异。不同成分林分的 SF 降水阈值无明显差异。BRT 分析表明,林分结构因子对 TF 和 SF 的影响相对较小。相比之下,林分结构因子在 Ic 中占主导地位。降雨量是决定 TF 和 SF 的最重要因素。树高是决定 Ic 的最重要因素,其次是降雨量、冠层面积、胸径和林分密度。与一般线性函数和幂函数相比,本文构建的BRT预测模型对TF和SF的预测效果有了进一步提高,而对冠层截流的预测效果仍需进一步探索。总之,BRT 模型能更好地定量评价林分结构和气象环境因子对降雨分区成分的影响,BRT 预测模型的性能能满足林分配置优化策略的要求并为其奠定基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
应用生态学报
应用生态学报 Environmental Science-Ecology
CiteScore
2.50
自引率
0.00%
发文量
11393
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