Crop Water Stress Detection Using Remote Sensing Techniques †
Abstract
:1. Introduction
2. Comparison of Crop Water Stress Detection Methods
3. Satellite-Based Crop Water Stress Detection
4. Crop Water Stress Detection Using Spectral Indices
5. Crop Water Stress Detection Using Multispectral Sensing Systems
6. Future Directions
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Methods | Description | Advantages | Disadvantages | References |
---|---|---|---|---|
Gravimetric Method | A straightforward technique that involves weighing a wet sample, drying it in an oven, reweighing it, and then estimating the amount of water loss as a percentage of the dry soil quantity | Highly precise and reliable technique with hardly any room for instrumental error, not affected by salinity or soil type | Time-consuming, dependent on mass measurements, destructive, and labor-intensive | [12,13] |
Time domain reflectometer (TDR) | An electromagnetic method based on the idea that water and other materials, such as soil, have different dielectric constants | Less time-consuming and damaging than gravimetric techniques, reduced labor expenses | Environmentally sensitive, expensive equipment, and calibration dependent on soil texture | [12,13] |
Neutron Probe method | Evaluates the soil’s volumetric water content | High accuracy, permits observations at various depths, rather simple | Time-consuming monitoring and expensive equipment licensing are required. | [14] |
Tensiometer method | Soil-water-potential-based | Cheap, affordable, easy to install, accurate, and for irrigation scheduling | Requires contact with soil and destructive | [14] |
Vegetation indices method by remote sensing (VIs) | Indicators of vegetation are used to illustrate its properties | The high temporal and spectral resolution, non-destructive | Precision decreases from leaf scale to canopy scale and image analysis is a difficult task | [15,16] |
Water Indices by remote sensing | Determines the reflectance in the SWIR and near-infrared range, which is used to indicate the water content of the canopy. Typical indices include WI, SRWI, NDWI, and MSI | Leaf water content may be measured without causing damage. Excellent direct signs of water stress | The difficulty of ascending to the canopy level | [17] |
Water balance indices | Monitors change in the chlorophyll fluorescence and water content of the leaves using the green and SWIR spectral bands. The calculated indices are WABI, WABI-1, and WABI-2 | Exhibited excellent performance at the leaf and canopy levels | It is necessary to use an expensive single-spectrum instrument. The penetrability of the SWIR band through heavy atmospheric layers is a problem | [17] |
RS-based ET estimation by Energy balance | The surface energy balance equation LE = Rn-G-H Latent Energy includes ET as a residual (LE), Rn = Net Sky Radiation, G = Ground to Air, H = Heat to Air | A single thermal band with the excellent resolution is sufficient and needed METRIC and SEBAL have good consistency and accuracy | It’s challenging to determine whether ET is possible. As ET cannot be directly measured, high-resolution thermal imaging is crucial. | [18] |
CWSI by infrared thermometer | The canopy temperature and its decrease with the ambient air temperature are used to calculate CWSI | Depends on the direct technique and VPD | Different baselines must be calculated for various crops; this takes time. To evaluate CWSI, many factors must be considered | [19] |
LST based CWSI | Utilizing LST and the hot-and-cold pixels approach to calculate CWSI | Using only remote sensing methods Work and time are non-intensive | Depending on this method to calculate LST, LST computation is laborious and varies | [20] |
Satellite | Applications | Advantages | Limitations | References |
---|---|---|---|---|
AMSR-E | High-efficiency passive microwave soil moisture analysis with drought | Data collection for daily soil moisture measurement with a 12.5 km precision | Just two files every day, one for the day and one for the night | [21] |
AMSR-2 | Analysis of soil-water-related parameters and global observation of soil moisture (from the soil surface to a few centimeters depth) | More than 99% correct in capturing data both during the day and at night/good resolution and accuracy of data collecting | Only functions in certain frequency ranges, including 6.925, 7.3, 10.65, 18.7, 23.8, 36.5, and 89.0 GHz | [22] |
NISAR | Global soil moisture maps with a time horizon of 6 to 12 days | Acquires soil moisture data in all weather conditions and with a precise resolution of 3–10 m | Product assessment in 12–24 h | [23] |
Tandem-L | Worldwide soil moisture | Provides extremely accurate measured data with millimeter-level accuracy and excellent resolution between 20 m and 4 km | A significant premium over conventional satellite systems | [24] |
Sentinel-1 | Dynamics observation | With a precision resolution of 5 to 20 m, field determination is less precise | Easy to create new systems, incorporating sensor structures and application development models | [25] |
SMAP | Analyzes the vegetation status and soil surface | High likelihood of mission failure with a 9 km precise resolution | SSM is captured by passive sensors for roughly 36 km | [26] |
Reflectance Indices | Formula | Plant Stress Indicators | References |
---|---|---|---|
Photochemical Reflectance Index (PRI) | Stomatal conductance and chlorophyll fluorescence | [27] | |
Normalized Photochemical Reflectance Index (NPRI) | Stomatal conductance and chlorophyll fluorescence | [28] | |
Normalized Difference Vegetation Index (NDVI) | Leaf water potential and stomatal conductance | [29] | |
Renormalized Difference Vegetation Index (RDVI) | Leaf water potential and stomatal conductance | [30] | |
Transformed Chlorophyll Absorption in Reflectance Index (TCARI) | Leaf water potential and stomatal conductance | [31] | |
Optimized Soil Adjusted Vegetation Index (OSAVI) | Leaf water potential and stomatal conductance | [31] | |
Normalized Difference Water Index (NDWI) | Leaf water potential | [32] | |
Simple Ratio Water Index (SRWI) | Leaf water potential | [33] | |
Water Index (WI) | Leaf water potential | [33] |
Multispectral Sensing Systems | Description | Advantages | References |
---|---|---|---|
UAV remote MS sensing system | AIRPHEN Multispectral Camera with a lens of 8 mm focal length, 1280 × 960 pixels, and spectral resolution 10 nm | High-resolution camera, precise CWS detection, low cost, cheap, effective, and available with RGB color bands | [34,35] |
Spaceborne MS sensing system | Landsat, Orb view, World view, IKONOS, Quick bird SPOT-5 | To figure out agricultural water stress, multispectral high-resolution data should be collected. This will give us entire crop water stress temporal features | [36,37] |
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Safdar, M.; Shahid, M.A.; Sarwar, A.; Rasul, F.; Majeed, M.D.; Sabir, R.M. Crop Water Stress Detection Using Remote Sensing Techniques. Environ. Sci. Proc. 2023, 25, 20. https://doi.org/10.3390/ECWS-7-14198
Safdar M, Shahid MA, Sarwar A, Rasul F, Majeed MD, Sabir RM. Crop Water Stress Detection Using Remote Sensing Techniques. Environmental Sciences Proceedings. 2023; 25(1):20. https://doi.org/10.3390/ECWS-7-14198
Chicago/Turabian StyleSafdar, Muhammad, Muhammad Adnan Shahid, Abid Sarwar, Fahd Rasul, Muhammad Danish Majeed, and Rehan Mehmood Sabir. 2023. "Crop Water Stress Detection Using Remote Sensing Techniques" Environmental Sciences Proceedings 25, no. 1: 20. https://doi.org/10.3390/ECWS-7-14198
APA StyleSafdar, M., Shahid, M. A., Sarwar, A., Rasul, F., Majeed, M. D., & Sabir, R. M. (2023). Crop Water Stress Detection Using Remote Sensing Techniques. Environmental Sciences Proceedings, 25(1), 20. https://doi.org/10.3390/ECWS-7-14198