| Literature DB >> 27330548 |
Shaun R Levick1, Dominik Hessenmöller2, E-Detlef Schulze1.
Abstract
BACKGROUND: Monitoring and managing carbon stocks in forested ecosystems requires accurate and repeatable quantification of the spatial distribution of wood volume at landscape to regional scales. Grid-based forest inventory networks have provided valuable records of forest structure and dynamics at individual plot scales, but in isolation they may not represent the carbon dynamics of heterogeneous landscapes encompassing diverse land-management strategies and site conditions. Airborne LiDAR has greatly enhanced forest structural characterisation and, in conjunction with field-based inventories, it provides avenues for monitoring carbon over broader spatial scales. Here we aim to enhance the integration of airborne LiDAR surveying with field-based inventories by exploring the effect of inventory plot size and number on the relationship between field-estimated and LiDAR-predicted wood volume in deciduous broad-leafed forest in central Germany.Entities:
Keywords: Broad-leafed; Carbon; Forest; Inventory; LiDAR; Temperate; Wood volume
Year: 2016 PMID: 27330548 PMCID: PMC4887538 DOI: 10.1186/s13021-016-0048-7
Source DB: PubMed Journal: Carbon Balance Manag ISSN: 1750-0680
Fig. 1Aerial overview of study region in central Germany with LiDAR survey areas shown in red (a). Large overlap between flight lines and low flying altitude enabled high-resolution characterisation of forest canopy structure in both rasterised (b) and 3D point cloud (c) space
List of canopy structural metrics derived from airborne LiDAR
| Canopy structural metric | Abbreviations |
|---|---|
| Total number of returns | totRET |
| Count of returns by return number | ret1, ret2, ret3, ret4, ret5, ret6, ret7, ret8, ret9 |
| Minimum | minCH |
| Maximum | maxCH |
| Mean | MCH |
| Median | medCH |
| Mode | modCH |
| Standard deviation | stdev |
| Variance | var |
| Coefficient of variation | CV |
| Interquartile distance | intD |
| Skewness | skew |
| Kurtosis | kurt |
| Average absolute deviation | AAD |
| Median of the deviations from the overall median | MADmed |
| Median of the deviations from the overall mode | MADmod |
| L-moments (L1, L2, L3, L4) | L1, L2, L3, L4 |
| L-moment skewness | Lskew |
| L-moment kurtosis | Kurt |
| Percentile values (5th–95th) | q1, q5, q10, q20, q25, q30, q40, q50, q60, q70, q75, q80, q90, q95, q99 |
| Canopy relief ratio | CRR |
| Quadratic mean | CQM |
| Cubic mean | CCM |
| Canopy cover | cov |
| Canopy density | dens |
| Strata counts | s2, s4, s6, s8, s10, s12, s14, s16, s18, s20, s22, s24, s26, s28, s30, s32, s34, s36, s38, s40 |
Fig. 2Relationship between field-estimated wood volume and LiDAR derived mean canopy height (MCH) at 1 ha (a) and 0.05 ha (b) plot scales
Fig. 3Validation of LiDAR-predicted wood volume against field-estimated wood volume at 1 ha (a) and 0.05 ha (b) plot scales
Fig. 4Pattern of LiDAR-predicted versus field-estimated wood volume model residuals (0.05 ha plots) in relation to terrain slope
Fig. 5Landscape scale extrapolation of wood volume from the 1 ha model (a) and the 0.05 ha model (b). Black lines indicated forest management unit boundaries
Fig. 6Relationship between total wood volume predictions from the 1 and 0.05 ha models on a per management unit basis
Fig. 7The influence of sample size (number of plots) on the proportion of variation in wood volume explained by LiDAR metrics—coefficient of determination (a) and root mean square error (b)—at the 1 ha plot scale
Fig. 8The influence of sample size (number of plots) on the proportion of variation in wood volume explained by LiDAR metrics—coefficient of determination (a) and root mean square error (b)—at the 0.05 ha plot scale