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Featured researches published by N. K. Patel.


Journal of The Indian Society of Remote Sensing | 2007

Study of fractional vegetation cover using high spectral resolution data

N. K. Patel; R. K. Saxena; Ajay Shiwalkar

A field experiment was conducted to study the effect of vegetation cover on soil spectra and relationship of spectral indices with vegetation cover. Multi-date spectral measurements were carried out on twelve wheat fields. Five sets of measurements were taken during the growth period of wheat crop. Field reflectance data were collected in the range 350 to 1800 nm using ASD spectroradiometer. Analysis of data was done to select narrow spectral bands for estimation of ground cover. The ratio of reflectance from vegetation covered soil and reflectance from bare soil indicated that spectral reflectance at 670 and 710 nm are the most sensitive bands. Two bands in visible (670 and 560 nm), three bands in near infrared (710, 870 and 1100 nm) and three bands in middle infrared (1480, 1700 and 1800 nm) were found highly correlated with fractional cover. Vegetation indices developed using narrow band spectral data have been found to be better than those developed using broad- band data for estimation of ground cover.


Journal of remote sensing | 2009

Retrieval of land surface albedo and temperature using data from the Indian geostationary satellite: a case study for the winter months

Bimal K. Bhattacharya; K. Mallick; N. Padmanabhan; N. K. Patel; J. S. Parihar

The shortwave and longwave radiation budget at land surfaces is largely dependent on two fundamental quantities, the albedo and the land surface temperature (LST). A time series (November 2005 to March 2006) of daily data from the Indian geostationary satellite Kalpana‐1 Very High Resolution Radiometer (K1VHRR) sensor in the visible (VIS), water vapour (WV) and thermal infrared (TIR) bands from noontime (0900 GMT) observations were processed to retrieve these quantities in clear skies for five winter months. Cloud detection was carried out using bispectral threshold tests (in both VIS and TIR bands) in a dekadal time series. Surface albedo was retrieved using a simple atmospheric transmission model. K1VHRR albedo was compared with Moderate Resolution Imaging Spectroradiometer (MODIS) AQUA noontime albedo over different land targets (agriculture, forest, desert, scrub and snow) that showed minimum differences over agriculture and forest. The comparison of spatial albedo over different landscapes yielded a root mean square deviation (RMSD) of 0.021 in VHRR albedo (9% of MODIS albedo). A mono‐window algorithm was implemented with a single TIR band to retrieve the LST. Its accuracy was also verified over different land targets by comparison with aggregated MODIS AQUA LST. The maximum RMSD was obtained over agriculture. Spatial comparison of VHRR and AQUA LSTs over homogeneous and heterogeneous landscape cutouts revealed an overall RMSD of 2.3 K. An improvement in the retrieval accuracy is expected to be achieved with atmospheric products from the sounder and split thermal bands in the imager of future INSAT 3D missions.


Journal of The Indian Society of Remote Sensing | 1998

Wheat crop classification using multidate IRS LISS-I data

Sujay Dutta; N. K. Patel; T. T. Medhavy; Sk Srivastava; Naveen Mishra; Krp Singh

Multi temporal dat acquired at different growth stages increases the dimensionality information content and have advantage over single date data for crop classification. Attempt was made to select suitable single date and combination of multidate data for wheat crop classification in Nalanda district of Bihar state where pulses and other crops are also grown in rabi season. Amongst the single date data February data was found to be better for wheat classification in comparison to November. January, March and April data. Combination of first two principal components each derived from IRS LISS-I four band data acquired in January and February was found to be the best set. Wheat classification accuracy achieved was 94.54 percent.


International Journal of Pest Management | 2008

Modelling regional level spatial distribution of aphid (Lipaphis erysimi) growth in Indian mustard using satellite-based remote sensing data

Sujay Dutta; Bimal K. Bhattacharya; D. R. Rajak; C. Chattopadhyay; V. K. Dadhwal; N. K. Patel; J. S. Parihar; R. S. Verma

Abstract We developed a procedure for preparing a model for mapping spatially distributed zones of aphid pest (Lipaphis erysimi) outbreaks at a regional level. This study employed near-surface meteorological parameters derived from National Oceanic and Atmospheric Administration (NOAA) Television and Infra-Red Operational Satellites (TIROS) Operational Vertical Sounder (TOVS) data and field observations of disease infestation. The study area comprised three sites representing semi-arid and sub-humid regions of dominant Indian mustard (Brassica juncea L.)-growing regions of India. A model based on TOVS-derived cumulative surface air temperature and minimum specific humidity (SpH) was developed to estimate the date of ‘aphid onset’ (first appearance), date of peak infestation and location of severity with respect to aphid population density. Aphid population growth rate during the linear growth phase between aphid onset to peak was computed using SpH-weighted temperature and dates of sowing of the crop (crop age). Sowing dates of mustard crop, of northwest India, were obtained from spectral growth profiles derived from time series remote sensing (RS) products of the SPOT-4 VEGETATION sensor. Estimated dates of peak aphid infestation and peak population showed a strong match with the observed data. The location of peak aphid population density was depicted in each spatial grid of 25×25 km2 for parts of northwest India. The simulated aphid population build-up and date of peak population density was validated with observed data for an unknown site in the Sriganganager district, Rajasthan state, India. Comparison of predicted dates of attaining peak aphid population with observations showed a deviation of ±7 days. After validation, the regional level model was applied over a large area of a mustard-growing region for varying dates of sowing, surface air temperature and specific humidity, to show the spatial distribution of aphid growing severity zones (population density) and to predict dates of severe aphid infestation (peak population) at each grid level in the region.


Journal of The Indian Society of Remote Sensing | 2001

District wise yield models of rice in Bihar based on water requirement and meteorological data

Sujay Dutta; N. K. Patel; Sk Srivastava

Pre-harvest crop production forecast has been successfully provided by remote sensing technique. However, the probability to get cloud-free optical remote sensing data during kharif season is poor. Microwave data having the capability to penetrate cloud is used in the absence of cloud free optical remote sensing data. Yield models in broad band frequency range are in development stage. Meteorological yield models are developed and predicted yield is combined with area estimated by remote sensing data to provide rice production forecast. This paper describes the methodology adopted for improving the predictability of rice yield before harvest of the crop in Bihar province by taking into consideration meteorological parameters during its growth cycle upto October. Models developed using fortnightly meteorological data have been found to give reasonably fair indications of expected yield of rice in advance of harvest. The yield predictions have been made based on meteorological data and effective rainfall based on water requirement calculations representing a group of districts under similar agro-climatic zones, which could be further improved by incorporating meteorological data of individual districts within each group.


Journal of Physics: Conference Series | 2017

Preparation of W/CuCrZr mono-block test mock-up using vacuum brazing technique

K. Premjit Singh; Kedar Bhope; N. K. Patel; Prakash Mokaria

Development of the joining for W/CuCrZr mono-block PFC test mock-up is an interesting area in Fusion R&D. W/Cu bimetallic material has been prepared using OFHC Copper casting approach on the radial surface of W mono-block tile surface. The W/Cu bimetallic material has been joined with CuCrZr tube (heat sink) material with the vacuum brazing route. Vacuum brazing of W/Cu-CuCrZr has been performed @ 970°C for 10 min using NiCuMn-37 filler material under deep vacuum environment (10-6 mbar). Graphite fixture was used for OFHC Copper casting and vacuum brazing experiments. The joint integrity of W/Cu-CuCrZr mono-block mock-up of W/Cu and Cu-CuCrZr interface has been checked using ultrasonic immersion technique. The result of the experimental work is presented in the paper.


Journal of Hydrology | 2010

Regional clear sky evapotranspiration over agricultural land using remote sensing data from Indian geostationary meteorological satellite

Bimal K. Bhattacharya; Kaniska Mallick; N. K. Patel; J. S. Parihar


Journal of The Indian Society of Remote Sensing | 2006

Disease detection in mustard crop using eo-1 hyperion satellite data

Sauvic Dutta; Bimal K. Bhattacharya; D. R. Rajak; C. Chattopadhayay; N. K. Patel; J. S. Parihar


Journal of The Indian Society of Remote Sensing | 2012

Formulation of Time Series Vegetation Index from Indian Geostationary Satellite and Comparison with Global Product

Rahul Nigam; Bimal K. Bhattacharya; Keshav R. Gunjal; N. Padmanabhan; N. K. Patel


Journal of The Indian Society of Remote Sensing | 2013

Extracting Regional Pattern of Wheat Sowing Dates Using Multispectral and High Temporal Observations from Indian Geostationary Satellite

Swapnil Vyas; Rahul Nigam; N. K. Patel; Sushma Panigrahy

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Bimal K. Bhattacharya

Indian Space Research Organisation

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J. S. Parihar

Indian Space Research Organisation

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Sujay Dutta

Indian Space Research Organisation

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D. R. Rajak

Indian Space Research Organisation

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N. Padmanabhan

Indian Space Research Organisation

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Rahul Nigam

Indian Space Research Organisation

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C. Chattopadhyay

Indian Council of Agricultural Research

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Kaniska Mallick

Indian Space Research Organisation

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Keshav R. Gunjal

Indian Space Research Organisation

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R. S. Verma

Dr. B. R. Ambedkar University

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