190 research outputs found
Monitoring of Spatiotemporal Dynamics of Rabi Rice Fallows in South Asia Using Remote Sensing
Cereals and grain legumes are the most important part of human diet and nutrition. The expansion of grain legumes with improved productivity to cater the growing population’s nutritional security is of prime importance and need of the hour. Rice fallows are best niche areas with residual moisture to grow short-duration legumes, thereby achieving intensification. Identifying suitable areas for grain legumes and cereal grains is important in this region. In this context, the goal of this study was to map fallow lands followed by rainy season ( kharif ) rice cultivation or post-rainy ( rabi ) fallows in rice-growing environments between 2005 and 2015 using temporal moderate-resolution imaging spectroradiometer (MODIS) data applying spectral matching techniques. This study was conducted in South Asia where different rice ecosystems exist. MODIS 16 day normalized difference vegetation index (NDVI) at 250 m spatial resolution and season-wise-intensive ground survey data were used to map rice systems and the fallows thereafter ( rabi fallows) in South Asia. The rice maps were validated with independent ground survey data and compared with available subnational-level statistics. Overall accuracy and kappa coefficient estimated for rice classes were 81.5% and 0.79%, respectively, with ground survey data. The derived physical rice area and irrigated areas were highly correlated with the subnational statistics with R ^ 2 values of 94% at the district level for the years 2005–2006 and 2015–2016. Results clearly show that rice fallow areas increased from 2005 to 2015. The results show spatial distribution of rice fallows in South Asia, which are identified as target domains for sustainable intensification of short-duration grain legumes, fixing the soil nitrogen and increasing incomes of small-holder farmers
Dynamics and drivers of land use and land cover changes in Bangladesh
Bangladesh has undergone dramatic land use and land cover changes (LULCC) in recent years, but no quantitative analysis of
LULCC drivers at the national scale exists so far. Here, we quantified the drivers of major LULCC in combination with
biophysical and socioeconomic observations at the sub-district level. We used Landsat satellite data to interpret LULCC from
2000 to 2010 and employed a Global SurfaceWater Dataset to account for the influences of water seasonality. The results suggest
that major LULCC in Bangladesh occur between agricultural land and waterbodies and between forest and shrubland. Exclusion
of seasonal waterbodies can improve the accuracy of our LULCC results and driver analysis. Although the gross gain and loss of
agricultural land are large on the local scale, the net change (gross gain minus gross loss) at a country scale is almost negligible.
Climate dynamics and extreme events and changes in urban and rural households were driving the changes from forest to
shrubland in the southeast region. The conversion from agricultural land to standing waterbodies in the southwest region was
mainly driven by urban household dynamics, population growth, distance to cities and major roads, and precipitation dynamics.
This study, which is the first effort accounting for water seasonality and quantifying biophysical and socioeconomic drivers of
LULCC at the national scale, provides a perspective on overall LULCC and underlying drivers over a decadal time scale and
national spatial scale and can serve as a scientific basis for developing land policies in Bangladesh
Crop type identification and spatial mapping using Sentinel-2 satellite data with focus on field-level information
Accurate monitoring of croplands helps in making decisions (for
insurance claims, crop management and contingency plans) at
the macro-level, especially in drylands where variability in cropping
is very high owing to erratic weather conditions. Dryland
cereals and grain legumes are key to ensuring the food and nutritional
security of a large number of vulnerable populations living
in the drylands. Reliable information on area cultivated to such
crops forms part of the national accounting of food production
and supply in many Asian countries, many of which are employing
remote sensing tools to improve the accuracy of assessments
of cultivated areas. This paper assesses the capabilities and limitations
of mapping cultivated areas in the Rabi (winter) season and
corresponding cropping patterns in three districts characterized
by small-plot agriculture. The study used Sentinel-2 Normalized
Difference Vegetation Index (NDVI) 15-day time-series at 10m
resolution by employing a Spectral Matching Technique (SMT)
approach. The use of SMT is based on the well-studied relationship
between temporal NDVI signatures and crop phenology. The
rabi season in India, dominated by non-rainy days, is best suited
for the application of this method, as persistent cloud cover will
hamper the availability of images necessary to generate clearly
differentiating temporal signatures. Our study showed that the
temporal signatures of wheat, chickpea and mustard are easily
distinguishable, enabling an overall accuracy of 84%, with wheat
and mustard achieving 86% and 94% accuracies, respectively. The
most significant misclassifications were in irrigated areas for mustard
and wheat, in small-plot mustard fields covered by trees and
in fragmented chickpea areas. A comparison of district-wise
national crop statistics and those obtained from this study
revealed a correlation of 96%
Monitoring rice fallows in India using MODIS time series data
Cereals and grain legumes are the most important part of human diet and nutrition. The rural population of low income groups in dry land areas of India depends on these staples. Expansion of grain legumes with improved productivity to cater the growing population’s nutritional security is of prime importance and need of the hour. Rice-fallows are best niche areas with residual moisture to grow short duration legumes there by achieving intensification. Identifying suitable areas for grain legumes and cereal grains is important in this region. In this context, the goal of this study was to map fallow lands followed by rainy season (kharif) rice cultivation or post rainy (rabi) fallows in rice growing environments for 2000-01 and 2010-11 using temporal moderate-resolution imaging Spectroradiometer (MODIS) data applying Spectral matching techniques. This study was conducted in India where different rice eco-systems exist. MODIS 16days normalized difference vegetation index (NDVI) at 250m spatial resolution and season wise intensive ground survey data were used to map rice systems and the fallows thereafter (rabi-fallows) in India. The rice maps were validated with independent ground survey data and compared with available sub-national level statistics. Overall accuracy and kappa coefficient estimated for rice classes were 81.5% and 0.79 respectively with ground survey data. The derived physical rice area and irrigated areas were highly correlated with the sub-national statistics with R2 values of 84% at the district level for the year 2000-01 and 2010-11. Results clearly show that rice-fallows areas increased from 2000 when compared 2010. The results show spatial distribution of rice-fallows in India which are identified as target domains for sustainable intensification of short duration grain legumes, fixing the soil nitrogen and increasing incomes of small holder farmers
High resolution Sentinel-2 crop type mapping 2018-2019 A case study in Ahmednagar district
Ahmednagar is the largest district of Maharashtra in terms of area and population. It lies in the central part of the state of Maharashtra which is having common boundaries with seven adjoining Districts. The total geographical area of the district is 17.41 lakh ha. The net cropped area is 12,56,500 ha, out of which an area of 3,30,000 ha. (26.27 %) is under canal (84,000 ha) and well irrigation. About 9,26,500 ha. (73.73 %) area is rain fed. The area under Kharif crops is 4,60,000 ha. (36.6 per cent) while 7,58,000 ha (60.32 per cent) area is under Rabi crops. A multiple cropping system is followed on 1,10,500 ha area. A total of 8.73 per cent area of the district is under forest. The climate of the district is hot and dry, on whole extremely genial and is characterized by a hot summer and general dryness during major part of the year except during south-west monsoon season. Ahmednagar district receives average 566 mm. rainfall. The major rainfall received during month of June to September. The average temperature ranges between 9 0c (during Dec.) to 41 0C (during April and May). The soil types of the district are broadly divided into four categories namely coarse shallow soil; medium black soil; deep black soil and reddish soil occupying about 38, 41, 13 and 8 percent of the cultivated area respectively. In the first two categories, soil moisture is the predominant limiting factor affecting productivity of crops particularly under rainfed condition. Godavari and Bhima are the major rivers in the district. Godavari river flows through the northern border of Ahmednagar district. Major Kharif crops grown in the district are Cotton, Maize, Bajra, Sugarcane, and Soybean and during Rabi season are Jowar, Wheat, Soybean and Pulses
Agricultural cropland extent and areas of South Asia derived using Landsat satellite 30-m time-series big-data using random forest machine learning algorithms on the Google Earth Engine cloud
The South Asia (India, Pakistan, Bangladesh, Nepal, Sri Lanka and Bhutan) has a staggering 900 million
people (~43% of the population) who face food insecurity or severe food insecurity as per United
Nations, Food and Agriculture Organization’s (FAO) the Food Insecurity Experience Scale (FIES). The
existing coarse-resolution (≥250-m) cropland maps lack precision in geo-location of individual farms
and have low map accuracies. This also results in uncertainties in cropland areas calculated fromsuch
products. Thereby, the overarching goal of this study was to develop a high spatial resolution (30-m
or better) baseline cropland extent product of South Asia for the year 2015 using Landsat satellite
time-series big-data and machine learning algorithms (MLAs) on the Google Earth Engine (GEE) cloud
computing platform. To eliminate the impact of clouds, 10 time-composited Landsat bands (blue,
green, red, NIR, SWIR1, SWIR2, Thermal, EVI, NDVI, NDWI) were derived for each of the three timeperiods
over 12 months (monsoon: Days of the Year (DOY) 151–300; winter: DOY 301–365 plus 1–60;
and summer: DOY 61–150), taking the every 8-day data from Landsat-8 and 7 for the years
2013–2015, for a total of 30-bands plus global digital elevation model (GDEM) derived slope band.
This 31-band mega-file big data-cube was composed for each of the five agro-ecological zones
(AEZ’s) of South Asia and formed a baseline data for image classification and analysis. Knowledgebase
for the Random Forest (RF) MLAs were developed using spatially well spread-out reference
training data (N = 2179) in five AEZs. The classification was performed on GEE for each of the five AEZs
using well-established knowledge-base and RF MLAs on the cloud. Map accuracies were measured
using independent validation data (N = 1185). The survey showed that the South Asia cropland
product had a producer’s accuracy of 89.9% (errors of omissions of 10.1%), user’s accuracy of 95.3%
(errors of commission of 4.7%) and an overall accuracy of 88.7%. The National and sub-national
(districts) areas computed from this cropland extent product explained 80-96% variability when
compared with the National statistics of the South Asian Countries. The full-resolution imagery can be
viewed at full-resolution, by zooming-in to any location in South Asia or the world, atwww.croplands.
org and the cropland products of South Asia downloaded from The Land Processes Distributed Active
Archive Center (LP DAAC) of National Aeronautics and Space Administration (NASA) and the United
States Geological Survey (USGS): https://lpdaac.usgs.gov/products/gfsad30saafgircev001/
Mapping seasonal rice cropland extent and area in the high cropping intensity environment of Bangladesh using MODIS 500 m data for the year 2010
Rice is the most consumed staple food in the world and a key crop for food security. Much of the world’s rice is produced and consumed in Asia where cropping intensity is often greater than 100% (more than one crop per year), yet this intensity is not sufficiently represented in many land use products. Agricultural practices and investments vary by season due to the different challenges faced, such as drought, salinity, or flooding, and the different requirements such as varietal choice, water source, inputs, and crop establishment methods. Thus, spatial and temporal information on the seasonal extent of rice is an important input to decision making related to increased agricultural productivity and the sustainable use of limited natural resources. The goal of this study was to demonstrate that hyper temporal moderate-resolution imaging spectroradiometer (MODIS) data can be used to map the spatial distribution of the seasonal rice crop extent and area. The study was conducted in Bangladesh where rice can be cropped once, twice, or three times a year
Hyperspectral Remote Sensing for Terrestrial Applications
Remote sensing data are considered hyperspectral when the
data are gathered from numerous wavebands, contiguously
over an entire range of the spectrum (e.g., 400–2500 nm). Goetz
(1992) defines hyperspectral remote sensing as “The acquisition
of images in hundreds of registered, contiguous spectral bands
such that for each picture element of an image it is possible
to derive a complete reflectance spectrum.” However, Jensen
(2004) defines hyperspectral remote sensing as “The simultaneous
acquisition of images in many relatively narrow, contiguous
and/or non contiguous spectral bands throughout the
ultraviolet, visible, and infrared portions of the electromagnetic
spectrum.”..
Quantifying production losses due to drought and submergence of rainfed rice at the household level using remotely sensed MODIS data
Combining remotely sensed Moderate Resolution Imaging Spectroradiometer (MODIS) data with Bangladesh Household Income and Expenditure Survey (HIES) data, this study estimates losses in rainfed rice production at the household level. In particular, we estimated the rice areas affected by drought and submergence from remotely sensed MODIS data and rice production from Household Income and Expenditure Survey (HIES) data for 2000, 2005 and 2010. Applying two limit Tobit estimation method, this study demonstrated that both drought and submergence significantly affected rice production. Findings reveal that on average, a one percent increase in drought affected area at district level reduces Aman season rice production by approximately 1382 kilograms per household on average, annually. Similarly, a one percent increase in drought area reduces rainfed Aus season rice production by approximately 693 kilograms per household, on average, annually. Based on the findings the paper suggests disseminating and developing drought and submergence tolerant rice and also short duration rice varieties to minimize loss caused by drought and submergence in Aus and Aman rice seasons
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