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The evaluation of different forest structural indices to predict the stand aboveground biomass of even-aged Scotch pine (Pinus sylvestris L.) forests in Kunduz, Northern Turkey

机译:评估不同森林结构指标以预测土耳其北部昆都士平均年龄的樟子松林(Pinus sylvestris L.)林地上生物量

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摘要

We assessed the effect of stand structural diversity, including the Shannon, improved Shannon, Simpson, McIntosh, Margelef, and Berger-Parker indices, on stand aboveground biomass (AGB) and developed statistical prediction models for the stand AGB values, including stand structural diversity indices and some stand attributes. The AGB prediction model, including only stand attributes, accounted for 85 % of the total variance inAGB (R-2) with anAkaike's information criterion (AIC) of 807.2407, Bayesian information criterion (BIC) of 809.5397, Schwarz Bayesian criterion (SBC) of 818.0426, and root mean square error (RMSE) of 38.529 Mg. After inclusion of the stand structural diversity into the model structure, considerable improvement was observed in statistical accuracy, including 97.5 % of the total variance in AGB, with an AIC of 614.1819, BIC of 617.1242, SBC of 633.0853, and RMSE of 15.8153 Mg. The predictive fitting results indicate that some indices describing the stand structural diversity can be employed as significant independent variables to predict the AGB production of the Scotch pine stand. Further, including the stand diversity indices in the AGB prediction model with the stand attributes provided important predictive contributions in estimating the total variance in AGB.
机译:我们评估了包括香农,改良香农,辛普森,麦金托什,玛格莱夫和伯杰-帕克指数在内的林分结构多样性对林分地上生物量(AGB)的影响,并开发了林分AGB值的统计预测模型,包括林分结构多样性索引和一些林分属性。 AGB预测模型(仅包含林分属性)占AGB(R-2)中总方差的85%,其中anAkaike信息标准(AIC)为807.2407,贝叶斯信息标准(BIC)为809.5397,Schwarz Bayesian准则(SBC) 818.0426,均方根误差(RMSE)为38.529 Mg。将林分结构多样性纳入模型结构后,观察到的统计准确性有显着提高,包括AGB总变异的97.5%,AIC为614.1819,BIC为617.1242,SBC为633.0853,RMSE为15.8153 Mg。预测拟合结果表明,一些描述林分结构多样性的指标可以用作重要的独立变量,以预测苏格兰松林分的AGB产量。此外,将林分多样性指数包括在具有林分属性的AGB预测模型中,为估计AGB的总方差提供了重要的预测贡献。

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