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Predictive models for biomass and carbon stocks estimation in Grewia optiva on degraded lands in western Himalaya

机译:喜马拉雅山西部退化土地上黄G的生物量和碳储量估算的预测模型

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Grewia optiva Drummond is one of important agroforestry tree species grown by the farmers in the lower and mid-hills of western Himalaya. Different models viz., monomolicular, logistic, gompetz, allometric, rechards, chapman and linear were fitted to the relationship between total biomass and diameter at breast height (DBH) as independent variable. The adjusted R-2 values were more than 0.924 for all the seven models implying that all models are apparently equally efficient. Out of the six non-linear models, allometric model (Y = a x DBH (b) ) fulfils the validation criterion to the best possible extent and is thus considered as best performing. Biomass in different tree components was fitted to allometric models using DBH as explanatory variable, the adjusted R-2 for fitted functions varied from 0.872 to 0.965 for different biomass components. The t values for all the components were found non-significant (p > 0.05), thereby indicating that model is valid. Using the developed model, the estimated total biomass varied from 6.62 Mg ha(-1) in 4 year to 46.64 Mg ha(-1) in 23 year old plantation. MAI in biomass varied from 1.66-2.05 Mg ha(-1) yr(-1). The total biomass carbon stocks varied from 1.99 Mg ha(-1) in 4 year to 15.27 Mg ha(-1) in 23 year old plantation. Rate of carbon sequestration varied from 0.63-0.81 Mg ha(-1) yr(-1). Carbon storage in the soil up to 30 cm soil depth varied from 25.4 to 33.6 Mg ha(-1).
机译:Optimum Drummond是喜马拉雅山西部中低山区的农民种植的重要农林树种之一。将不同的模型,即单分子模型,logistic模型,gompetz模型,异速测量模型,rechards模型,chapman模型和线性模型拟合为总生物量与乳房高度(DBH)直径之间的关系作为自变量。对于所有七个模型,调整后的R-2值均大于0.924,这表明所有模型显然具有同等效率。在六个非线性模型中,异形模型(Y = a x DBH(b))尽可能满足验证标准,因此被认为是性能最好的模型。使用DBH作为解释变量,将不同树种中的生物量拟合到异速异度模型中,拟合函数的调整后R-2对于不同生物量组分从0.872到0.965不等。发现所有成分的t值均不显着(p> 0.05),从而表明该模型有效。使用开发的模型,估计的总生物量从4年的6.62 Mg ha(-1)到23年的人工林中的46.64 Mg ha(-1)不等。生物量中的MAI从1.66-2.05 Mg ha(-1)yr(-1)变化。总生物量碳储量从4年的1.99 Mg ha(-1)到23年的人工林中的15.27 Mg ha(-1)不等。固碳速率从0.63-0.81 Mg ha(-1)yr(-1)不等。在土壤深达30 cm的土壤中碳的存储量从25.4到33.6 Mg ha(-1)不等。

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