Abstract

Land use land cover (LULC) changes frequently in ecotones due to the large climate and soil gradients, and complex landscape composition and configuration. Accurate mapping of LULC changes in ecotones is of great importance for assessment of ecosystem functions/services and policy-decision support. Decadal or sub-decadal mapping of LULC provides scenarios for modeling biogeochemical processes and their feedbacks to climate, and evaluating effectiveness of land-use policies, e.g. forest conversion. However, it remains a great challenge to produce reliable LULC maps in moderate resolution and to evaluate their uncertainties over large areas with complex landscapes. In this study we developed a robust LULC classification system using multiple classifiers based on MODIS (Moderate Resolution Imaging Spectroradiometer) data and posterior data fusion. Not only does the system create LULC maps with high statistical accuracy, but also it provides pixel-level uncertainties that are essential for subsequent analyses and applications. We applied the classification system to the Agro-pasture transition band in northern China (APTBNC) to detect the decadal changes in LULC during 2003–2013 and evaluated the effectiveness of the implementation of major Key Forestry Programs (KFPs). In our study, the random forest (RF), support vector machine (SVM), and weighted k-nearest neighbors (WKNN) classifiers outperformed the artificial neural networks (ANN) and naive Bayes (NB) in terms of high classification accuracy and low sensitivity to training sample size. The Bayesian-average data fusion based on the results of RF, SVM, and WKNN achieved the 87.5% Kappa statistics, higher than any individual classifiers and the majority-vote integration. The pixel-level uncertainty map agreed with the traditional accuracy assessment. However, it conveys spatial variation of uncertainty. Specifically, it pinpoints the southwestern area of APTBNC has higher uncertainty than other part of the region, and the open shrubland is likely to be misclassified to the bare ground in some locations. Forests, closed shrublands, and grasslands in APTBNC expanded by 23%, 50%, and 9%, respectively, during 2003–2013. The expansion of these land cover types is compensated with the shrinkages in croplands (20%), bare ground (15%), and open shrublands (30%). The significant decline in agricultural lands is primarily attributed to the KFPs implemented in the end of last century and the nationwide urbanization in recent decade. The increased coverage of grass and woody plants would largely reduce soil erosion, improve mitigation of climate change, and enhance carbon sequestration in this region.

Highlights

  • Complex human-nature interactions altered global environments [1,2]

  • The objectives of this study are: a) to develop a robust strategy to produce reliable land use and land cover (LULC) maps for ecotones such as Agro-pasture transition band in northern China (APTBNC) based on multiple classifiers and posterior data fusion; b) to provide pixel-level uncertainty to assess spatial variations in classification accuracy; and c) to detect the land use and land cover change (LULCC) in 2003–2013 and evaluate the effectiveness of the land use policies implemented in APTBNC

  • The overall accuracies and Kappa statistics clearly showed that random forest (RF), support vector machine (SVM), and weighted k-nearest neighbors (WKNN) outperformed artificial neural networks (ANN) and naive Bayes (NB) for any of the three input datasets (Table 1)

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Summary

Introduction

Complex human-nature interactions altered global environments [1,2] Among these interactions, land use and land cover (LULC) changes significantly [3,4,5], which has important implications on global hydrological and biogeochemical cycles, biodiversity, ecosystem services, and disturbance regimes [6,7,8,9,10]. Prompt and reliable mapping of LULC [11,12,13,14] is essential in the continuous monitoring of land use and land cover change (LULCC) through time, such as forest transition and urban sprawl [4,15,16] It provides time series of LULC scenarios for subsequent modeling of biogeochemical and hydrological processes [17,18,19], assessment of ecosystem services [7,9,20,21], and simulation of LULCC feedbacks to regional climate [22]. Various classifiers, such as random forest (RF), support vector machine (SVM), and weighted k-nearest neighbors (WKNN), have been applied to detect LULCC across scales from local to globe for various themes, such us urbanization, agricultural abandonment, and forest conversion [15,23,24,25,26]

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