Abstract

Estimating the carbon (C), nitrogen (N), and phosphorus (P) contents of a large-span grassland transect is essential for evaluating ecosystem functioning and monitoring biogeochemical cycles. However, the field measurements are scattered, such that they cannot indicate the continuous gradient change in the grassland transect. Although remote sensing methods have been applied for the estimation of nutrient elements at the local scale in recent years, few studies have considered the effective estimation of C, N, and P contents over large-span grassland transects with complex environment including a variety of grassland types (i.e., meadow, typical grassland, and desert grassland). In this paper, an information enhancement algorithm (involving spectral enhancement, regional enhancement, and feature enhancement) is used to extract the weak information related to C, N, and P. First, the spectral simulation algorithm is used to enhance the spectral information of Sentinel-2 imagery. Then, the enhanced spectra and meteorological data are fused to express regional characteristics and the fractional differential (FD) algorithm is used to extract sensitive spectral features related to C, N, and P, in order to construct a partial least-squares regression (PLSR) model. Finally, the C, N, and P contents are estimated over a West–East grassland transect in Inner Mongolia, China. The results demonstrate that: (i) the contents of C, N, and P in large-span transects can be effectively estimated through use of the information enhancement method involving spectral enhancement, regional feature enhancement, and information enhancement, for which the estimation accuracies (R2) were 0.88, 0.78, and 0.85, respectively. Compared with the estimation results of raw Sentinel-2 imagery, the RMSE was reduced by 3.42 g/m2, 0.14 g/m2, and 13.73 mg/m2, respectively; and (ii) the continuous change trend and spatial distribution characteristics of C, N, and P contents in the west–east transect of the Inner Mongolia Plateau were obtained, which showed decreasing trends in C, N, and P contents from east to west and the characteristics of meadow > typical grassland > desert grassland. Thus, the information enhancement algorithm can help to improve estimates of C, N, and P contents when considering large-span grassland transects.

Highlights

  • IntroductionQuantitative analysis of C, N, and P contents plays an important role in exploring the interactions between soil and vegetation, as well as soil organic matter storage [3]

  • This paper is mainly divided into three parts: (i) The sensitive features related to C, N, and P are extracted by spectral enhancement, regional characteristic enhancement, and information enhancement methods; (ii) an elemental content estimation model for the Inner Mongolia transect is constructed using a partial least-squares regression model; and (iii) we evaluate the estimation accuracy, draw the spatial distribution map, and analyze the changing trend of C, N, and P over the whole transect

  • There is a certain correlation between the distribution of C, N, and P contents in grassland ecosystems and vegetation types at the unit scale, which indicates that the reasonable distribution of sampling points in the estimation model is helpful in improving the estimation accuracy of nutrient elements

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Summary

Introduction

Quantitative analysis of C, N, and P contents plays an important role in exploring the interactions between soil and vegetation, as well as soil organic matter storage [3]. 50% of the dry matter content [4], and provides energy for basic ecosystem biogeochemical process [2]. N and P are the basic nutrients for plant growth, and play a key role in leaf growth, photosynthesis, energy storage, and transmission [5,6]. The C:N ratio can reflect the growth rate and nutrient utilization efficiency of vegetation [7], while the N:P ratio can characterize the uptake of N and P nutrients by plants and reflects the nutrient limitation information of primary productivity [8]. As plant growth and the contents of

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