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[松栎混交林自然更新的模拟与不确定性分析。]

[Simulation and uncertainty analysis of natural regeneration for pine-oak forests.].

作者信息

Wang Bin, Tian Xiang-Lin, Liao Zi-Yan, Wang Zhi-Tao, Geng Sheng-Lian, Cao Tian-Jian

机构信息

College of Forestry, Northwest A&F University, Yangling 712100, Shaanxi, China.

Laborary of Ecological Optimization of Simulation, Yanling 712100, Shaanxi, China.

出版信息

Ying Yong Sheng Tai Xue Bao. 2020 Dec;31(12):4004-4016. doi: 10.13287/j.1001-9332.202012.018.

Abstract

The complexity and uncertainty of forest regeneration is crucial for predicting forest ecosystem dynamics. A natural regeneration model of pine-oak forests in Qinling Mountains was constructed with competition, climate and topography factors using Bayesian statistics and global sensitivity analysis (GSA). The alternative models were based on Poisson, negative binomial (NB), zero-inflated Poisson (ZIP), and zero-inflated negative binomial (ZINB) models. According to the uncertainty of model parameter transfer, the analysis results were quantified, and the dominant factors of small probability events affecting forest regeneration were explained. The results showed that the ZINB model was the best one in the simulation of and var. . Stand basal area, light interception, slope location and minimum temperature during growing season were the most critical factors affecting natural regeneration of , while stand basal area, cosine of aspect interacted with the natural logarithm of elevation, annual mean temperature, and precipitation of the warmest quarter were the most critical factors for var. . The contributions of various factors to the predictive uncertainty were: competition factor (25%) < climate factor (29%) < topography factor (46%) for the simulation of regeneration, and climate factor (12%) < competition factor (24%) < topography factor (64%) for the simulation of var. regeneration. The natural regeneration quantity of was positively correlated with mean annual temperature and minimum precipitation during growing season, and negatively correlated with the mean temperature in the driest quarter. The natural regeneration quantity of var. was positively correlated with mean annual temperature, minimum precipitation during growing season, precipitation of the warmest quarter, and negatively correlated with mean temperature of the driest quarter. The ZINB model based on Bayesian methods could effectively quantify the major factors driving forest regeneration and interpret the uncertainty propagated from parameters, which was useful for predicting forest regeneration.

摘要

森林更新的复杂性和不确定性对于预测森林生态系统动态至关重要。利用贝叶斯统计和全局敏感性分析(GSA),构建了包含竞争、气候和地形因素的秦岭松栎林自然更新模型。备选模型基于泊松、负二项式(NB)、零膨胀泊松(ZIP)和零膨胀负二项式(ZINB)模型。根据模型参数传递的不确定性对分析结果进行量化,并解释了影响森林更新的小概率事件的主导因素。结果表明,ZINB模型在模拟锐齿栎和辽东栎变种时是最佳模型。林分断面积、光照截获、坡位和生长季最低温度是影响锐齿栎自然更新的最关键因素,而林分断面积、坡向余弦与海拔自然对数、年平均温度和最暖季降水量的交互作用是辽东栎变种自然更新的最关键因素。各因素对预测不确定性的贡献为:模拟锐齿栎更新时,竞争因素(25%)<气候因素(29%)<地形因素(46%);模拟辽东栎变种更新时,气候因素(12%)<竞争因素(24%)<地形因素(64%)。锐齿栎的自然更新量与年平均温度和生长季最低降水量呈正相关,与最干季平均温度呈负相关。辽东栎变种的自然更新量与年平均温度、生长季最低降水量、最暖季降水量呈正相关,与最干季平均温度呈负相关。基于贝叶斯方法的ZINB模型能够有效量化驱动森林更新的主要因素,并解释参数传播的不确定性,这对预测森林更新具有重要意义。

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