4.7 Article

The Use of Remotely Sensed Data and Polish NFI Plots for Prediction of Growing Stock Volume Using Different Predictive Methods

期刊

REMOTE SENSING
卷 12, 期 20, 页码 -

出版社

MDPI
DOI: 10.3390/rs12203331

关键词

airborne laser scanning; deep learning; Landsat; national forest inventory; stand volume

资金

  1. project REMBIOFOR
  2. project I-MAESTRO
  3. National Centre for Research and Development in Poland under the programme BIOSTRATEG [BIOSTRATEG1/267755/4/NCBR/2015]
  4. ForestValue ERA-NET
  5. National Science Centre, Poland
  6. French Ministry of Agriculture, Agrifood and Forestry
  7. French Ministry of Higher Education, Research and Innovation
  8. German Federal Ministry of Food and Agriculture (BMEL) via the Agency for Renewable Resources (FNR)
  9. Slovenian Ministry of Education, Science and Sport (MIZS)
  10. European Union's Horizon 2020 research and innovation programme [773324]

向作者/读者索取更多资源

Forest growing stock volume (GSV) is an important parameter in the context of forest resource management. National Forest Inventories (NFIs) are routinely used to estimate forest parameters, including GSV, for national or international reporting. Remotely sensed data are increasingly used as a source of auxiliary information for NFI data to improve the spatial precision of forest parameter estimates. In this study, we combine data from the NFI in Poland with satellite images of Landsat 7 and 3D point clouds collected with airborne laser scanning (ALS) technology to develop predictive models of GSV. We applied an area-based approach using 13,323 sample plots measured within the second cycle of the NFI in Poland (2010-2014) with poor positional accuracy from several to 15 m. Four different predictive approaches were evaluated: multiple linear regression, k-Nearest Neighbours, Random Forest and Deep Learning fully connected neural network. For each of these predictive methods, three sets of predictors were tested: ALS-derived, Landsat-derived and a combination of both. The developed models were validated at the stand level using field measurements from 360 reference forest stands. The best accuracy (RMSE% = 24.2%) and lowest systematic error (bias% = -2.2%) were obtained with a deep learning approach when both ALS- and Landsat-derived predictors were used. However, the differences between the evaluated predictive approaches were marginal when using the same set of predictor variables. Only a slight increase in model performance was observed when adding the Landsat-derived predictors to the ALS-derived ones. The obtained results showed that GSV can be predicted at the stand level with relatively low bias and reasonable accuracy for coniferous species, even using field sample plots with poor positional accuracy for model development. Our findings are especially important in the context of GSV prediction in areas where NFI data are available but the collection of accurate positions of field plots is not possible or justified because of economic reasons.

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