Remote sensing–based forest aboveground biomass (AGB) estimation has been extensively explored in the past three decades, but how to effectively combine different sensor data and modeling algorithms is still poorly understood. This research conducted a comparative analysis of different datasets (e.g., Landsat Thematic Mapper (TM), ALOS PALSAR L-band data, and their combinations) and modeling algorithms (e.g., artificial neural network (ANN), support vector regression (SVR), Random Forest (RF), k-nearest neighbor (kNN), and linear regression (LR)) for AGB estimation in a subtropical region under non-stratification and stratification of forest types. The results show the following: (1) Landsat TM imagery provides more accurate AGB estimates (root mean squared error (RMSE) values in 27.7–29.3 Mg/ha) than ALOS PALSAR (RMSE values in 30.3–33.7 Mg/ha). The combination of TM and PALSAR data has similar performance for ANN and SVR, worse performance for RF and KNN, and slightly improved performance for LR. (2) Overestimation for small AGB values and underestimation for large AGB values are major problems when using the optical (e.g., Landsat) or radar (e.g., ALOS PALSAR) data. (3) LR is still an important tool for AGB modeling, especially for the AGB range of 40–120 Mg/ha. Machine learning algorithms have limited effects on improving AGB estimation overall, but ANN can improve AGB modeling when AGB values are greater than 120 Mg/ha. (4) Forest type and AGB range are important factors that influence AGB modeling performance. (5) Stratification based on forest types improved AGB estimation, especially when AGB was greater than 160 Mg/ha, using the LR approach. This research provides new insight for remote sensing-based AGB modeling for the subtropical forest ecosystem through a comprehensive analysis of different source data, modeling algorithms, and forest types. It is critical to develop an optimal AGB modeling procedure, including the collection of a sufficient number of sample plots, extraction of suitable variables and modeling algorithms, and evaluation of the AGB estimates.
Comparative Analysis of Modeling Algorithms for Forest Aboveground Biomass Estimation in a Subtropical Region
Yukun Gao,D. Lu,Guiying Li,Guangxing Wang,Qi Chen,Lijuan Liu,Dengqiu Li
Published 2018 in Remote Sensing
ABSTRACT
PUBLICATION RECORD
- Publication year
2018
- Venue
Remote Sensing
- Publication date
2018-04-18
- Fields of study
Computer Science, Environmental Science
- Identifiers
- External record
- Source metadata
Semantic Scholar
CITATION MAP
EXTRACTION MAP
CLAIMS
- Landsat Thematic Mapper imagery produced more accurate forest aboveground biomass estimates than ALOS PALSAR, and combining TM with PALSAR changed performance by algorithm, helping linear regression more than artificial neural network or support vector regression.박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewAK (4715169a40) reviewB (s683577b42) reviewKiller Whale (322360f1c1) review
CONCEPTS
- alos palsar
The ALOS L-band radar data source used as one of the remote-sensing inputs.
Aliases: PALSAR
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewAK (4715169a40) reviewB (s683577b42) reviewKiller Whale (322360f1c1) review - artificial neural network
A nonlinear machine-learning regression model used to map remote-sensing variables to biomass.
Aliases: ANN
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewAK (4715169a40) reviewB (s683577b42) reviewKiller Whale (322360f1c1) review - forest aboveground biomass estimation
Remote-sensing-based prediction of the mass of living vegetation above the ground in subtropical forest plots.
Aliases: AGB estimation, aboveground biomass estimation, AGB modeling
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewAK (4715169a40) reviewB (s683577b42) reviewKiller Whale (322360f1c1) review - forest-type stratification
A modeling setup that separates samples by forest type before fitting biomass models.
Aliases: stratification based on forest types, forest type stratification
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewAK (4715169a40) reviewB (s683577b42) reviewKiller Whale (322360f1c1) review - landsat thematic mapper
The Landsat optical multispectral sensor data source used as one of the remote-sensing inputs.
Aliases: Landsat TM, TM
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewAK (4715169a40) reviewB (s683577b42) reviewKiller Whale (322360f1c1) review - linear regression
A linear predictive model used as a baseline biomass estimation method.
Aliases: LR
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewAK (4715169a40) reviewB (s683577b42) reviewKiller Whale (322360f1c1) review - support vector regression
A margin-based regression algorithm used to predict biomass from remote-sensing variables.
Aliases: SVR
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewAK (4715169a40) reviewB (s683577b42) reviewKiller Whale (322360f1c1) review
REFERENCES
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