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Estimating and Monitoring Land Surface Phenology in Rangelands: A Review of Progress and Challenges

Trylee Nyasha Matongera, Onisimo Mutanga, Mbulisi Sibanda, John Odindi

2021Remote Sensing42 citationsDOIOpen Access PDF

Abstract

Land surface phenology (LSP) has been extensively explored from global archives of satellite observations to track and monitor the seasonality of rangeland ecosystems in response to climate change. Long term monitoring of LSP provides large potential for the evaluation of interactions and feedbacks between climate and vegetation. With a special focus on the rangeland ecosystems, the paper reviews the progress, challenges and emerging opportunities in LSP while identifying possible gaps that could be explored in future. Specifically, the paper traces the evolution of satellite sensors and interrogates their properties as well as the associated indices and algorithms in estimating and monitoring LSP in productive rangelands. Findings from the literature revealed that the spectral characteristics of the early satellite sensors such as Landsat, AVHRR and MODIS played a critical role in the development of spectral vegetation indices that have been widely used in LSP applications. The normalized difference vegetation index (NDVI) pioneered LSP investigations, and most other spectral vegetation indices were primarily developed to address the weaknesses and shortcomings of the NDVI. New indices continue to be developed based on recent sensors such as Sentinel-2 that are characterized by unique spectral signatures and fine spatial resolutions, and their successful usage is catalyzed with the development of cutting-edge algorithms for modeling the LSP profiles. In this regard, the paper has documented several LSP algorithms that are designed to provide data smoothing, gap filling and LSP metrics retrieval methods in a single environment. In the future, the development of machine learning algorithms that can effectively model and characterize the phenological cycles of vegetation would help to unlock the value of LSP information in the rangeland monitoring and management process. Precisely, deep learning presents an opportunity to further develop robust software packages such as the decomposition and analysis of time series (DATimeS) with the abundance of data processing tools and techniques that can be used to better characterize the phenological cycles of vegetation in rangeland ecosystems.

Topics & Concepts

RangelandNormalized Difference Vegetation IndexEnvironmental scienceVegetation (pathology)Remote sensingSatelliteSmoothingEarth observationComputer sciencePhenologyClimate changeEnvironmental resource managementGeographyEcologyAgroforestryAerospace engineeringBiologyComputer visionPathologyEngineeringMedicineRemote Sensing in AgricultureSpecies Distribution and Climate ChangeRemote Sensing and LiDAR Applications
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