Analysis of fluctuations in vegetation dynamic over Africa using satellite data of solar-induced chlorophyll fluorescence DOI Creative Commons

Jeanine Umuhoza,

Guli Jiapaer,

Yu Tao

и другие.

Ecological Indicators, Год журнала: 2022, Номер 146, С. 109846 - 109846

Опубликована: Дек. 30, 2022

In Africa, vegetation is important for the protection of species habitats, maintaining local livelihoods, and existence wildlife. A comprehensive evaluation dynamics using solar-induced fluorescence (SIF) needed to acquire information understand current situation how ecosystems react human activities climate change, as well conservation planning. The research's purpose was detect in Africa from 2000 2017 global, OCO-2-based SIF (GOSIF) various datasets, analyze factors influencing changes. main findings revealed that: (1) patterns this study showed that forests experienced more expansions than croplands, grasslands, shrubland, sparse vegetation, based on Land Use Cover Change (LUCC) per type. (2) According SIF, decreasing area accounts 29.4% total region while expanding 70.6%. (3) Hurst exponent summary exhibited majority studied variations are consistent accounted 79.7%. (4) Based residual, we discovered climatic might be responsible greening trend grassland. (5) Boosted Regression Trees (BRT) during period, Vapor pressure deficit (VPD) temperature had a greater impact other factors. Our can aid development appropriate management concepts or strategies help restoration Africa.

Язык: Английский

Estimation of vegetation traits with kernel NDVI DOI Creative Commons

Qiang Wang,

Álvaro Moreno‐Martínez, Jordi Muñoz-Marı́

и другие.

ISPRS Journal of Photogrammetry and Remote Sensing, Год журнала: 2022, Номер 195, С. 408 - 417

Опубликована: Дек. 27, 2022

Vegetation indices computed from spectral signatures are vastly used for monitoring the terrestrial biosphere. Indices convenient proxies canopy structure, and leaf pigment content, consequently to estimate photosynthetic activity of vegetation. Owing its simplicity, celebrated Normalized Difference Index (NDVI) has been as a proxy greenness structure. Unfortunately, NDVI can only capture linear relationships near infrared (NIR) - red difference with parameter interest. To account higher-order relations between channels, kernel (kNDVI) was proposed in (Camps-Valls et al., 2021). In this work, we give useful prescriptions proper use show good performance wider set applications. We discuss characteristics index like boundedness, low error propagation. Furthermore, empirical evidence estimating in-situ vegetation parameters (leaf area (LAI), gross primary productivity (GPP), leaf, chlorophyll green total LAI fraction absorbed photosynthetically active radiation (fAPAR)) well estimation latent heat at flux tower level. confirm generally (correlation coefficient kNDVI content is 0.919 0.933 maize over two sites, correlation carotenoid, 0.816, 0.520 0.579 three forest sites) highlight convenience ecosystems. foster adoption new family index, provide source code 6 programming languages efficient implementations Google Earth Engine (GEE) platform https://github.com/IPL-UV/kNDVI.

Язык: Английский

Процитировано

111

Exceptional heat and atmospheric dryness amplified losses of primary production during the 2020 U.S. Southwest hot drought DOI Creative Commons
Matthew P. Dannenberg, Dong Yan, Mallory L. Barnes

и другие.

Global Change Biology, Год журнала: 2022, Номер 28(16), С. 4794 - 4806

Опубликована: Апрель 22, 2022

Earth's ecosystems are increasingly threatened by "hot drought," which occurs when hot air temperatures coincide with precipitation deficits, intensifying the hydrological, physiological, and ecological effects of drought enhancing evaporative losses soil moisture (SM) increasing plant stress due to higher vapor pressure deficit (VPD). Drought-induced reductions in gross primary production (GPP) exert a major influence on terrestrial carbon sink, but extent hotter atmospherically drier conditions will amplify deficits cycle remains largely unknown. During summer autumn 2020, U.S. Southwest experienced one most intense droughts record, record-low record-high temperature VPD across region. Here, we use this natural experiment evaluate GPP further decompose those negative anomalies into their constituent meteorological hydrological drivers. We found 122 Tg C (>25%) reduction below 2015-2019 mean, far lowest regional over Soil Moisture Active Passive satellite record. Roughly half estimated loss was attributable low SM (likely combination warming-enhanced depletion), record-breaking amplified GPP, contributing roughly 40% anomaly. Both very likely continue next century, leading more frequent substantially drought-induced reductions.

Язык: Английский

Процитировано

96

From remotely‐sensed solar‐induced chlorophyll fluorescence to ecosystem structure, function, and service: Part II—Harnessing data DOI
Ying Sun, Jiaming Wen, Lianhong Gu

и другие.

Global Change Biology, Год журнала: 2023, Номер 29(11), С. 2893 - 2925

Опубликована: Фев. 18, 2023

Abstract Although our observing capabilities of solar‐induced chlorophyll fluorescence (SIF) have been growing rapidly, the quality and consistency SIF datasets are still in an active stage research development. As a result, there considerable inconsistencies among diverse at all scales widespread applications them led to contradictory findings. The present review is second two companion reviews, data oriented. It aims (1) synthesize variety, scale, uncertainty existing datasets, (2) sector ecology, agriculture, hydrology, climate, socioeconomics, (3) clarify how such inconsistency superimposed with theoretical complexities laid out (Sun et al., 2023) may impact process interpretation various contribute inconsistent We emphasize that accurate functional relationships between other ecological indicators contingent upon complete understanding uncertainty. Biases uncertainties observations can significantly confound their respond environmental variations. Built syntheses, we summarize gaps current observations. Further, offer perspectives on innovations needed help improve informing ecosystem structure, function, service under climate change, including enhancing in‐situ capability especially “data desert” regions, improving cross‐instrument standardization network coordination, advancing by fully harnessing theory data.

Язык: Английский

Процитировано

45

Satellite remote sensing of vegetation phenology: Progress, challenges, and opportunities DOI
Zheng Gong, Wenyan Ge, Jiaqi Guo

и другие.

ISPRS Journal of Photogrammetry and Remote Sensing, Год журнала: 2024, Номер 217, С. 149 - 164

Опубликована: Авг. 29, 2024

Язык: Английский

Процитировано

33

Proximal remote sensing: an essential tool for bridging the gap between high‐resolution ecosystem monitoring and global ecology DOI Creative Commons
Zoe Pierrat, Troy S. Magney, Will P. Richardson

и другие.

New Phytologist, Год журнала: 2025, Номер unknown

Опубликована: Янв. 23, 2025

Summary A new proliferation of optical instruments that can be attached to towers over or within ecosystems, ‘proximal’ remote sensing, enables a comprehensive characterization terrestrial ecosystem structure, function, and fluxes energy, water, carbon. Proximal sensing bridge the gap between individual plants, site‐level eddy‐covariance fluxes, airborne spaceborne by providing continuous data at high‐spatiotemporal resolution. Here, we review recent advances in proximal for improving our mechanistic understanding plant processes, model development, validation current upcoming satellite missions. We provide best practices availability metadata sensing: spectral reflectance, solar‐induced fluorescence, thermal infrared radiation, microwave backscatter, LiDAR. Our paper outlines steps necessary making these streams more widespread, accessible, interoperable, information‐rich, enabling us address key ecological questions unanswerable from space‐based observations alone and, ultimately, demonstrate feasibility technologies critical local global ecology.

Язык: Английский

Процитировано

5

Spatiotemporal Dynamics and Response of Land Surface Temperature and Kernel Normalized Difference Vegetation Index in Yangtze River Economic Belt, China: Multi-Method Analysis DOI Creative Commons

Hongjia Zhu,

Ao Wang, Pengtao Wang

и другие.

Land, Год журнала: 2025, Номер 14(3), С. 598 - 598

Опубликована: Март 12, 2025

As global climate change intensifies, its impact on the ecological environment is becoming increasingly pronounced. Among these, land surface temperature (LST) and vegetation cover status, as key indicators, have garnered widespread attention. This study analyzes spatiotemporal dynamics of LST Kernel Normalized Difference Vegetation Index (KNDVI) in 11 provinces along Yangtze River their response to based MODIS Terra satellite data from 2000 2020. The linear regression showed a significant KNDVI increase 0.003/year (p < 0.05) rise 0.065 °C/year 0.01). Principal Component Analysis (PCA) explained 74.5% variance, highlighting dominant influence urbanization. K-means clustering identified three regional patterns, with Shanghai forming distinct group due low variability. Generalized Additive Model (GAM) analysis revealed nonlinear LST–KNDVI relationship, most evident Hunan, where cooling effects weakened beyond threshold 0.25. Despite 0.07 increase, high-temperature areas Chongqing Jiangsu expanded by over 2500 km2, indicating limited mitigation. reveals complex interaction between KNDVI, which may provide scientific basis for development management adaptation strategies.

Язык: Английский

Процитировано

3

Spatio-Temporal Variation and Climatic Driving Factors of Vegetation Coverage in the Yellow River Basin from 2001 to 2020 Based on kNDVI DOI Open Access

Xuejuan Feng,

Jia Tian,

Yingxuan Wang

и другие.

Forests, Год журнала: 2023, Номер 14(3), С. 620 - 620

Опубликована: Март 20, 2023

The Yellow River Basin (YRB) is a fundamental ecological barrier in China and one of the regions where environment relatively fragile. Studying spatio-temporal variations vegetation coverage YRB their driving factors through long-time-series dataset great significance to eco-environmental construction sustainable development YRB. In this study, we sought characterize variation its climatic from 2001 2020 by constructing new kernel normalized difference index (kNDVI) based on MOD13 A1 V6 data Google Earth Engine (GEE) platform. Using Theil–Sen median trend analysis, Mann–Kendall test, Hurst exponent, investigated characteristics future trends coverage. were obtained via partial correlation analysis complex associations between kNDVI both temperature precipitation. results reveal following: spatial distribution pattern showed that was high southeast low northwest. Vegetation fluctuated 2020, with main significant increasing growth at rate 0.0995/5a. response strong YRB, stronger precipitation than temperature. Additionally, found be non-climatic factors, which mainly distributed Henan, southern Shaanxi, Shanxi, western Inner Mongolia, Ningxia, eastern Gansu. areas driven northern Shandong, Qinghai, Gansu, northeastern Sichuan. Our findings have implications for ecosystem restoration

Язык: Английский

Процитировано

29

Deep Learning for Multi-Source Data-Driven Crop Yield Prediction in Northeast China DOI Creative Commons
Jian Lü, Jian Li,

Hongkun Fu

и другие.

Agriculture, Год журнала: 2024, Номер 14(6), С. 794 - 794

Опубликована: Май 22, 2024

The accurate prediction of crop yields is crucial for enhancing agricultural efficiency and ensuring food security. This study assesses the performance CNN-LSTM-Attention model in predicting maize, rice, soybeans Northeast China compares its effectiveness with traditional models such as RF, XGBoost, CNN. Utilizing multi-source data from 2014 to 2020, which include vegetation indices, environmental variables, photosynthetically active parameters, our research examines model’s capacity capture essential spatial temporal variations. integrates Convolutional Neural Networks, Long Short-Term Memory, an attention mechanism effectively process complex datasets manage non-linear relationships within data. Notably, explores potential using kNDVI multiple crops, highlighting effectiveness. Our findings demonstrate that advanced deep-learning significantly enhance yield accuracy over methods. We advocate incorporation sophisticated technologies practices, can substantially improve production strategies.

Язык: Английский

Процитировано

18

Dryland evapotranspiration from remote sensing solar-induced chlorophyll fluorescence: Constraining an optimal stomatal model within a two-source energy balance model DOI
Jingyi Bu, Guojing Gan, Jiahao Chen

и другие.

Remote Sensing of Environment, Год журнала: 2024, Номер 303, С. 113999 - 113999

Опубликована: Янв. 26, 2024

Язык: Английский

Процитировано

12

Response of Vegetation Productivity to Greening and Drought in the Loess Plateau Based on VIs and SIF DOI Creative Commons

Xiao Hou,

Bo Zhang, Jie Chen

и другие.

Forests, Год журнала: 2024, Номер 15(2), С. 339 - 339

Опубликована: Фев. 9, 2024

In the context of global warming, frequent occurrence drought has become one main reasons affecting loss gross primary productivity (GPP) terrestrial ecosystems. Under influence human activities, vegetation greening trend Loess Plateau increased significantly. Therefore, it is great significance to study response GPP in under trend. Here, we comprehensively assessed ability indices (VIs) and solar-induced chlorophyll fluorescence (SIF) capture changes at different seasonal scales during drought. Specifically, utilized three indices: normalized difference index (NDVI), near-infrared reflectance (NIRV), kernel NDVI (kNDVI), determined period 2001 based on standardized precipitation evapotranspiration (SPEI) soil moisture (SSMI). Moreover, anomalies VIs SIF relationship with were compared. The results showed that both able as well normal years. Overall, captured better due water heat stress compared VIs. Across time scales, strongest (meanR2 = 0.85), followed by NIRV 0.84), 0.76), kNDVI 0.74), suggesting more sensitive physiological vegetation. Notably, performed best sparse 0.85). drought, less productive land classes; superior use class increased. addition, correlated 0.50) than other anomalies. future, efforts integrate respective strengths SIF, NIRV, will improve our understanding changes.

Язык: Английский

Процитировано

11