scholarly journals Water stress detection using radar

2017 ◽  
Author(s):  
Tim van Emmerik

Vegetation is a crucial part of the water and carbon cycle. Through photosynthesis carbon is assimilated for biomass production, and oxygen is released into the atmosphere. During this process, water is transpired through the stomata, and is redistributed in the plant. Transpired water is refilled by uptake of water from the root zone in the subsurface. Transpiration by vegetation accounts for most of the total evaporation from land on a global scale. In some ecosystems, such as tropical rainforests, transpiration even makes up more than 70% of total evaporation. Periods of low water availability, water stress, leads to irreversible damage to plants, and can eventually lead to plant death. To prevent this, various mechanisms are activated by the vegetation to survive. Transpiration is reduced as a result of vegetation water stress, which can affect the water and carbon cycle on local, regional, and even global scales. Additionally, water stress in crops is one of the major reasons for harvest losses, threatening food security. However, many effects of vegetation water stress on crops and tropical forests remains poorly understood.New satellite observations provide opportunities for better detection and understanding of vegetation water stress. Recent research suggests that radar remote sensing might yield valuable insights into vegetation water content. Radar backscatter is sensitive to vegetation because of direct backscatter from the canopy, and through two-way attenuation of the signal as it travels through the vegetation layer. The degree of interaction of radar waves with the vegetation is mainly a function of the vegetation dielectric constant, which is in turn primarily influenced by vegetation water content. Over the last years, various studies have reported links between anomalies in radar backscatter and vegetation water stress. This has led to the hypothesis that radar backscatter is sensitive to vegetation water stress. Additional field measurements of vegetation water content and dielectric constant, in combination with radar backscatter are necessary to test this hypothesis. This is what inspired this thesis. Based on a combination of field measurements using new sensors, models, and radar backscatter, this thesis focuses on understanding the effects of water stress on plant dynamics, identifying early signatures of vegetation water stress, and exploring the opportunities of early water stress detection using radar remote sensing. This thesis studies the effects of vegetation water stress across scales, from individual leaves to rainforests. A new method is presented that allows measurements of leaf dielectric properties on living plants. First, the method is tested on tomato plants in a controlled environment. By measuring tomato plants with and without water stress, it is demonstrated that there is a significant difference in the leaf dielectric properties of stressed and unstressed tomato plants. Second, this same method is used under field conditions. Using data sets of corn plants with and without water stress, it is demonstrated that water stress changes plant water content, resulting in significant changes of leaf dielectric properties. Using the field data from the stressed corn field, a modeling study was done to investigate the sensitivity of radar backscatter to water stress. Here, it is shown that total and leaf water content can change considerably during the day, leading to observable differences in radar backscatter.To study the effects of water stress in tropical rainforests, accelerometers were placed on trees in the Brazilian Amazon to measure tree sway. Tree sway depends on various tree properties, and this thesis demonstrates that the measured tree acceleration is sensitive to tree mass, intercepted rainfall, and tree-atmosphere interactions. Using five months of acceleration data from 19 trees, an effect of the transition from the wet to the dry season was found. This thesis hypothesizes that this was caused by water related changes in tree mass, or leaf fall in response to increased tree water deficit.Finally, coinciding field data on tree water content and tree water deficit, and radar backscatter, were used to demonstrate the sensitivity of radar backscatter to increased water stress. During the transition from wet to dry season, a strong drop was found in radar backscatter, which is explained by a rapid increase in measured tree water deficit.For years, the hypothesis that radar backscatter is sensitive to vegetation water stress has been discussed. Yet, a lack of observations withheld this hypothesis to be tested. This thesis uses field data of crops, and trees in tropical forests, and modeling approaches to finally demonstrate that vegetation water stress results in significant changes in plant water status, which lead to observable variations in radar backscatter.

2020 ◽  
Author(s):  
Paul Vermunt ◽  
Susan Steele-Dunne ◽  
Saeed Khabbazan ◽  
Jasmeet Judge ◽  
Leila Guerriero

<p>Radar observations of vegetated surfaces are highly affected by water in the soil and canopy. Consequently, radar has been used to monitor surface soil moisture for decades now. In addition, radar has been proven a useful tool for monitoring agricultural crop growth and development and forest fuel load estimation, as a result of the sensitivity of backscatter to vegetation water content (VWC). These current applications are based on satellite revisit periods of days to weeks. However, with future satellite constellations and geosynchronous radar missions, such as ESA’s Earth Explorer candidate mission HydroTerra, we will be able to monitor soil and vegetation multiple times per day. This opens up opportunities for new applications.</p><p>Examples could be (1) early detection of water stress in vegetation through anomalies in daily cycles of VWC, and (2) spatio-temporal estimations of rainfall interception, an important part of the water balance. However, currently, we lack the knowledge to physically understand sub-daily patterns in backscatter. Hence, the aim of our research is to understand the effect of water-related factors on sub-daily patterns of radar backscatter of a growing corn canopy.</p><p>Two intensive field campaigns were conducted in Florida (2018) and The Netherlands (2019). During both campaigns, soil moisture, external canopy water (dew, interception), soil water potential, and weather conditions were monitored every 15 minutes for the entire growing season. In addition, regular destructive sampling was performed to measure seasonal and sub-daily variations of vegetation water content. In Florida, hourly field scans were made with a truck-mounted polarimetric L-band scatterometer. In The Netherlands, these measurements were extended with X- and C-band frequencies.</p><p>Here, results will be presented from both campaigns. Different periods in the growing season will be highlighted. In particular, we will elaborate on the effects of variations in internal and external canopy water, and soil moisture on diurnal backscatter patterns.</p>


Author(s):  
Eric Ariel L. Salas

Although the water absorption feature (WAF) at 970 nm is not very well-defined, it may be used alongside other indices to estimate the canopy water content.  The individual performance of a number of existing vegetation water content (VWC) indices against the WAF is assessed using linear regression model.  We developed a new Combined Vegetation Water Index (CVWI) by merging indices to boost the weak absorption feature. CVWI showed a promise in assessing the vegetation water status derived from the 970 nm absorption wavelength.  CVWI was able to differentiate two groups of dataset when regressed against the absorption feature.  CVWI could be seen as an easy and robust method for vegetation water content studies using hyperspectral field data.


Author(s):  
A. Chakraborty ◽  
M. V. R. Sesha Sai

Advance Microwave Scanning Radiometer – Earth Observing System (AMSR-E) derived Vegetation Water Content (VWC) at predawn (01:30 LST, descending pass) and afternoon (13:30 LST; ascending pass) were used to assess crop water stress condition over the selected meteorological subdivisions of India. The temporal profile of Normalized Difference Vegetation Index (NDVI) was used to study the progression of crop growth. The Diurnal Difference Vegetation Water Content (ddVWC) was found to be sensitive to rainfall patterns (wet/dry spell) particularly in moderate to full crop cover condition (NDVI > 0.4). The ddVWC was found to be significantly (p = 0.05) correlated with the rainfall over the rainfed regions. The ddVWC was further characterized to represent different categories of crop water stress considering irrigated flooded rice crop as a benchmark. Inter year comparative analysis of temporal variations of the ddVWC revealed its capability to differentiate normal (2005) and sub-normal years (2008 and 2009) in term of intensity and persistence of crop water stress. Spatio-temporal patterns of ddVWC could capture regional progression of crop water stress at high temporal resolution in near real time.


Author(s):  
Colombo Roberto ◽  
Busetto Lorenzo ◽  
Meroni Michele ◽  
Rossini Micol ◽  
Panigada Cinzia

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