Additive modeling systems to simultaneously predict aboveground biomass and carbon for Litsea glutinosa of agroforestry model in tropical highlands

IF 0.8 4区 农林科学 Q3 FORESTRY Forest Systems Pub Date : 2023-03-01 DOI:10.5424/fs/2023321-19780
Bao Huy, N. Q. Khiem, N. Q. Truong, K. Poudel, H. Temesgen
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Abstract

Aim of study: To develop and cross-validate simultaneous modeling systems for estimating components and total tree aboveground biomass and carbon of Litsea glutinosa in an agroforestry model with cassava. Area of study: In the Central Highlands of Vietnam, the agroforestry model widely planted on fallow land of ethnic minorities is a mixture of 65% L. glutinosa in combination with 35% cassava (Manihot esculenta). Material and methods: Twenty-two 300-m2 circular sample plots were located, representing the range of tree age, plantation density, and a 6- 7 year rotation cycle. In each sample plot, one selected tree with a diameter at breast height equal to the plot quadratic mean diameter was destructively sampled. The relationships among tree aboveground biomass and carbon (AGB/AGC) and their components with dendrometric variables diameter, height, age, and crown area were examined using factor analysis. To fit systems of equations for AGB/AGC and their components, we compared two methods: weighted nonlinear least-squares (WNLS) and weighted nonlinear seemingly unrelated regression (WNSUR). Main results: The results of the leave-one-out cross-validation showed that the simultaneous WNSUR approach to modeling systems of four tree components, total biomass, and carbon provided better results than independent WNLS models. Research highlights: The simultaneous WNSUR modeling system provided improved and reliable estimates of tree components, total biomass, and carbon for L. glutinosa in an agroforestry model with cassava compared to independently fitted WNLS models.
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热带高原农林复合模式下同时预测胶荔枝地上生物量和碳的加性建模系统
研究目的:建立并交叉验证以木薯为基础的农林业模型中山核桃成分、地上总生物量和碳的同步建模系统。研究区域:在越南中部高地,在少数民族休耕土地上广泛种植的农林业模式是65% L. glutinosa与35%木薯(Manihot esculenta)的混合物。材料和方法:选取22个300平方米的圆形样地,代表树龄、人工林密度和6- 7年轮作周期的范围。在每个样地中,选取一棵胸高处直径等于样地二次平均直径的树进行破坏性采样。利用因子分析方法,研究了树木地上生物量和碳(AGB/AGC)及其组分与树形学变量直径、高度、树龄和树冠面积的关系。为了拟合AGB/AGC及其分量的方程组,比较了加权非线性最小二乘(WNLS)和加权非线性似不相关回归(WNSUR)两种方法。主要结果:留一交叉验证结果表明,同时采用WNSUR方法对四种树木组分、总生物量和碳进行建模的结果优于独立的WNLS模型。研究重点:与独立拟合的WNLS模型相比,同步WNSUR模型系统提供了木薯农林业模型中L. glutinosa树木成分、总生物量和碳的改进和可靠估计。
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来源期刊
Forest Systems
Forest Systems FORESTRY-
CiteScore
1.40
自引率
14.30%
发文量
30
审稿时长
6-12 weeks
期刊介绍: Forest Systems is an international peer-reviewed journal. The main aim of Forest Systems is to integrate multidisciplinary research with forest management in complex systems with different social and ecological background
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