4.7 Article

Effects of Plot Size on Airborne LiDAR-Derived Metrics and Predicted Model Performances of Subtropical Planted Forest Attributes

Journal

FORESTS
Volume 13, Issue 12, Pages -

Publisher

MDPI
DOI: 10.3390/f13122124

Keywords

forest inventory; airborne LiDAR; rectangular plot; accuracy; spatial averaging

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This study investigates the impact of field plot size on the performance of estimation models for forest inventory attributes in subtropical forests. The results show that a plot size of at least 600 m(2) is necessary to achieve accurate estimations in a large-scale subtropical planted forest inventory using airborne LiDAR.
Investigating the impact of field plot size on the performance of estimation models for forest inventory attributes could help optimize the technical schemes for an operational airborne LiDAR-assisted forest resource inventory. However, few studies on the topic have focused on subtropical forests. In this study, 104 rectangular plots of 900 m(2) (subdivided into nine quadrats with an area of 10 x 10 m) in subtropical planted forests (Chinese fir, pine, eucalyptus, and broad-leaved forest, 2-56 years old) were used to establish four datasets with six different plot sizes (100, 200, 300, 400, 600, and 900 m(2)) by combining quadrats. The differences in the LiDAR-derived metrics and forest attributes between plots of different sizes were statistically analyzed. Based on the multivariate power models with stable structures, the differences in estimation accuracies of the stand volume (VOL) and basal area (BA) using plot data of different sizes were compared. The results indicated that: (1) the mean differences in LiDAR-derived metrics of the plots of different sizes in all forest types were small, and most of them had no statistically significant differences (alpha = 0.05) between the plots of different sizes and the 900 m(2) plots; however, the standard deviation of the difference increased rapidly with decreasing plot size; (2) except for the maximal tree height of the plots, the other forest attributes, including the mean tree height, diameter at breast height, BA, and VOL of all forest types, showed no statistically significant differences between the plots of different sizes and the 900 m(2) plots; and (3) with increasing plot size, the accuracies of VOL and BA estimations improved markedly, and the effects of plot size on the estimation accuracies of the different forest attributes and different forest types were essentially the same. Spatial averaging resulted in the variations in the independent variables (LiDAR variables) and dependent variables (forest attributes) decreasing gradually with the increasing plot size, which was the main reason for the model's accuracy improving. In applying airborne LiDAR to a large-scale subtropical planted forest inventory, the plot size should be at least 600 m(2) for all forest types.

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