Literature DB >> 33618314

Predicting carbon and water vapor fluxes using machine learning and novel feature ranking algorithms.

Xia Cui1, Thomas Goff2, Song Cui3, Dorothy Menefee4, Qiang Wu5, Nithya Rajan4, Shyam Nair6, Nate Phillips3, Forbes Walker7.   

Abstract

Gap-filling eddy covariance flux data using quantitative approaches has increased over the past decade. Numerous methods have been proposed previously, including look-up table approaches, parametric methods, process-based models, and machine learning. Particularly, the REddyProc package from the Max Planck Institute for Biogeochemistry and ONEFlux package from AmeriFlux have been widely used in many studies. However, there is no consensus regarding the optimal model and feature selection method that could be used for predicting different flux targets (Net Ecosystem Exchange, NEE; or Evapotranspiration -ET), due to the limited systematic comparative research based on the identical site-data. Here, we compared NEE and ET gap-filling/prediction performance of the least-square-based linear model, artificial neural network, random forest (RF), and support vector machine (SVM) using data obtained from four major row-crop and forage agroecosystems located in the subtropical or the climate-transition zones in the US. Additionally, we tested the impacts of different training-testing data partitioning settings, including a 10-fold time-series sequential (10FTS), a 10-fold cross validation (CV) routine with single data point (10FCV), daily (10FCVD), weekly (10FCVW) and monthly (10FCVM) gap length, and a 7/14-day flanking window (FW) approach; and implemented a novel Sliced Inverse Regression-based Recursive Feature Elimination algorithm (SIRRFE). We benchmarked the model performance against REddyProc and ONEFlux-produced results. Our results indicated that accurate NEE and ET prediction models could be systematically constructed using SVM/RF and only a few top informative features. The gap-filling performance of ONEFlux is generally satisfactory (R2 = 0.39-0.71), but results from REddyProc could be very limited or even unreliable in many cases (R2 = 0.01-0.67). Overall, SIRRFE-refined SVM models yielded excellent results for predicting NEE (R2 = 0.46-0.92) and ET (R2 = 0.74-0.91). Finally, the performance of various models was greatly affected by the types of ecosystem, predicting targets, and training algorithms; but was insensitive towards training-testing partitioning. Our research provided more insights into constructing novel gap-filling models and understanding the underlying drivers affecting boundary layer carbon/water fluxes on an ecosystem level.
Copyright © 2021 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Eddy covariance; Feature ranking; Machine learning; Remote sensing; Support vector machine

Year:  2021        PMID: 33618314     DOI: 10.1016/j.scitotenv.2021.145130

Source DB:  PubMed          Journal:  Sci Total Environ        ISSN: 0048-9697            Impact factor:   7.963


  1 in total

1.  Feature Sequencing Method of Industrial Control Data Set Based on Multidimensional Evaluation Parameters.

Authors:  Xue-Jun Liu; Xiang-Min Kong; Xiao-Ni Zhang; Hai-Ying Luan; Yong Yan; Yun Sha; Kai-Li Li; Xue-Ying Cao; Jian-Ping Chen
Journal:  Comput Intell Neurosci       Date:  2022-04-28
  1 in total

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