Litcius/Paper detail

Comparison of Machine and Deep Learning Methods to Estimate Shrub Willow Biomass from UAS Imagery

Haifa Tamiminia, Bahram Salehi, Masoud Mahdianpari, Colin M. Beier, Daniel J. Klimkowski, Timothy A. Volk

2021Canadian Journal of Remote Sensing25 citationsDOI

Abstract

Shrub willow is considered an important dedicated energy crop in temperate climates for the production of bioenergy, biofuels, and bio-based products. A methodology to rapidly and accurately estimate above-ground biomass (AGB) is essential for understanding potential biomass supply, identifying potential growth limitations, and making management decisions. The main objective of this study was to investigate different statistical, machine learning, and deep learning models to estimate shrub willow AGB at a site in Camillus, NY using multi-spectral unmanned aerial system (UAS) imagery. The efficiency of the convolutional neural network (CNN) deep learning algorithm was compared to the well-known methods including linear regression, decision tree (DT), random forest (RF), and support vector regression (SVR). The RF model estimated the AGB with the root mean square error (RMSE) of 1.73 Mg/ha and R2 of 0.95, and outperformed other methods. The next most effective method was CNN with the RMSE of 2.69 Mg/ha and R2 of 0.89. Feature importance analysis indicated that normalized difference vegetation index (NDVI), ratio vegetation index (RVI), and difference vegetation index (DVI) had the greatest contribution to AGB estimation. This study compared shrub willow AGB estimation models using UAS imagery which will streamline bioenergy/biofuel development compared to the existing methods.

Topics & Concepts

Normalized Difference Vegetation IndexWillowShrubRandom forestVegetation (pathology)Biomass (ecology)Mean squared errorSupport vector machineEnvironmental scienceSatellite imageryBioenergyRemote sensingMathematicsArtificial intelligenceStatisticsComputer scienceGeographyLeaf area indexEcologyBiofuelMedicineBiologyPathologyRemote Sensing and LiDAR ApplicationsBioenergy crop production and managementRemote Sensing in Agriculture