Methods based on k-nearest neighbor regression in the prediction of basal area diameter distribution

被引:112
|
作者
Maltamo, M
Kangas, A
机构
[1] Univ Joensuu, Fac Forestry, FIN-80100 Joensuu, Finland
[2] Finnish Forest Res Inst, Kannus Res Stn, FIN-69101 Kannus, Finland
关键词
D O I
10.1139/cjfr-28-8-1107
中图分类号
S7 [林业];
学科分类号
0829 ; 0907 ;
摘要
In the Finnish compartmentwise inventory systems, growing stock is described with means and sums of tree characteristics, such as mean height and basal area, by tree species. In the calculations, growing stock is described in a treewise manner using a diameter distribution predicted from stand variables. The treewise description is needed for several reasons, e.g., for predicting log volumes or stand growth and for analyzing the forest structure. In this study, methods for predicting the basal area diameter distribution based on the k-nearest neighbor (k-nn) regression are compared with methods based on parametric distributions. In the k-nn method, the predicted values for interesting variables are obtained as weighted averages of the values of neighboring observations. Using k-nn based methods, the basal area diameter distribution of a stand is predicted with a weighted average of the distributions of k-nearest neighbors. The methods tested in this study include weighted averages of (i) Weibull distributions of k-nearest neighbors, (ii) distributions of k-nearest neighbors smoothed with the kernel method, and (iii) empirical distributions of the k-nearest neighbors. These methods are compared for the accuracy of stand volume estimation, stand structure description, and stand growth prediction. Methods based on the k-nn regression proved to give a more accurate description of the stand than the parametric methods.
引用
收藏
页码:1107 / 1115
页数:9
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