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Development of growth models for spruce based on mixed-effects models

机译:基于混合效应模型的云杉增长模型的开发

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The study of growth model is a basic research in forest growth and yield modeling. Most of growth models were developed using ordinary regression method. It is assumed that the observations were independent and obey Gauss distribution. Those models reflect the average growth across different plots, but neglect the correlation and variance between individuals and plots. However, mixed-effects models which include both fixed and random parameters could solve the problem very well. Our objective is to develop growth models for main tree species spruce in Changbai Mountains by using mixed-effects models. 14 clear cutting plots were investigated in Changbai Mountain area, China. Data of 619 individual trees including age, height, diameter, and volume were used in this study to calibrate the growth models. Richards model and its mixed-effects model were used to develop growth models by using PROC NLIN and PROC NLMIXED in SAS. Decision coefficient (R~2), root mean square error (RMSE), and mean absolute difference (MAD) were used to evaluate the accuracy of the two models. Compared with the basic model, the R~2 of the mixed-effects model which included random-effect parameter increased 37%-82%, RMSE and MAD decreased 12%-30% and 13-28%, respectively. In conclusion, the mixed-effects model was suitable to calibrate growth models.
机译:生长模型的研究是森林生长和产量建模的基础研究。大多数增长模型采用普通回归法开发。假设观察结果是独立的并且遵守高斯分布。这些模型反映了不同地块的平均增长,但忽略了个人和地块之间的相关性和差异。然而,包括固定和随机参数的混合效果模型可以很好地解决问题。我们的目标是通过使用混合效果模型开发长白山云杉的主要树种云杉的增长模型。 14中国长白山地区调查了明确的切割地块。在本研究中使用包括年龄,高度,直径和体积的619棵单树的数据以校准生长模型。 Richards Model及其混合效果模型用于通过使用SAS中的PROC NLIN和PROC NLMIXED开发增长模型。决策系数(R〜2),根均方误差(RMSE),以及平均绝对差(MAD)来评估两种模型的准确性。与基本模型相比,包括随机效应参数的混合效应模型的R〜2增加了37%-82%,RMSE和MAD分别下降12%-30%和13-28%。总之,混合效应模型适用于校准生长模型。

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