2020
DOI: 10.3390/rs12152380
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Carbon Stocks and Fluxes in Kenyan Forests and Wooded Grasslands Derived from Earth Observation and Model-Data Fusion

Abstract: The characterization of carbon stocks and dynamics at the national level is critical for countries engaging in climate change mitigation and adaptation strategies. However, several tropical countries, including Kenya, lack the essential information typically provided by a complete national forest inventory. Here we present the most detailed and rigorous national-scale assessment of aboveground woody biomass carbon stocks and dynamics for Kenya to date. A non-parametric random forest algorithm was trained to re… Show more

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Cited by 12 publications
(11 citation statements)
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“…To account for the uncertainty associated with our estimate of peat thickness distribution, we ran a k-fold analysis as in 50 , splitting the data into 1,000 folds, and therefore generating 1,000 predictions of peat thickness per pixel. We took the median, 5th and 95th percentiles of the 1,000 predictions to represent our best estimate (Fig.…”
Section: Model Of Peat Thickness Distributionmentioning
confidence: 99%
“…To account for the uncertainty associated with our estimate of peat thickness distribution, we ran a k-fold analysis as in 50 , splitting the data into 1,000 folds, and therefore generating 1,000 predictions of peat thickness per pixel. We took the median, 5th and 95th percentiles of the 1,000 predictions to represent our best estimate (Fig.…”
Section: Model Of Peat Thickness Distributionmentioning
confidence: 99%
“…These were the normalised difference vegetation index (NDVI), normalised burn ratio (NBR), normalised difference moisture index (NDMI), and the soil adjusted vegetation index (SAVI). These indices have previously been used in similar studies [21,23,[71][72][73]].…”
Section: Optical Datamentioning
confidence: 99%
“…These EO datasets were resampled, co-registered, and stacked at 30-m spatial resolutions ( Figure 2). We used the LiDAR AGB pixels (N = 2,973) as training and test samples in a regression version of the random forest (RF) algorithm [76] in the Google Earth Engine [77], which was implemented within a k-fold cross-validation framework [73]. The following variables were used as predictors in the model: γ 0 HV ; γ 0 HH ; RFDI; CpR from the PALSAR-2 data; and blue, green, red, near infrared, and shortwave infrared bands, as well as NDVI, NBR, NBR2, NDMI, and SAVI from the Landsat 8 data.…”
Section: Modelling Frameworkmentioning
confidence: 99%
“…Models were in both cases fit using field data located outside the study areas. Landsat, space-borne lidar (GLAS), various map products, and a small number of sample plots were used to map and estimate the total tree biomass in Kenya (Rodríguez-Veiga et al 2020).…”
Section: Introductionmentioning
confidence: 99%