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Dive into the research topics where Nachiketa Acharya is active.

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Featured researches published by Nachiketa Acharya.


Theoretical and Applied Climatology | 2012

Probabilistic prediction of Indian summer monsoon rainfall using global climate models

Makarand A. Kulkarni; Nachiketa Acharya; Sarat C. Kar; U. C. Mohanty; Michael K. Tippett; Andrew W. Robertson; Jing-Jia Luo; Toshio Yamagata

Probabilistic seasonal predictions of rainfall that incorporate proper uncertainties are essential for climate risk management. In this study, three different multi-model ensemble (MME) approaches are used to generate probabilistic seasonal hindcasts of the Indian summer monsoon rainfall based on a set of eight global climate models for the 1982–2009 period. The three MME approaches differ in their calculation of spread of the forecast distribution, treated as a Gaussian, while all three use the simple multi-model subdivision average to define the mean of the forecast distribution. The first two approaches use the within-ensemble spread and error residuals of ensemble mean hindcasts, respectively, to compute the variance of the forecast distribution. The third approach makes use of the correlation between the ensemble mean hindcasts and the observations to define the spread using a signal-to-noise ratio. Hindcasts are verified against high-resolution gridded rainfall data from India Meteorological Department in terms of meteorological subdivision spatial averages. The use of correlation for calculating the spread provides better skill than the other two methods in terms of rank probability skill score. In order to further improve the skill, an additional method has been used to generate multi-model probabilistic predictions based on simple averaging of tercile category probabilities from individual models. It is also noted that when such a method is used, skill of probabilistic forecasts is improved as compared with using the multi-model ensemble mean to define the mean of the forecast distribution and then probabilities are estimated. However, skill of the probabilistic predictions of the Indian monsoon rainfall is too low.


Acta Geophysica | 2012

A neurocomputing approach to predict monsoon rainfall in monthly scale using SST anomaly as a predictor

Nachiketa Acharya; Surajit Chattopadhyay; Makarand A. Kulkarni; U. C. Mohanty

A relationship between summer monsoon rainfall and sea surface temperature anomalies was investigated with the aim of predicting the monthly scale rainfall during the summer monsoon period over a section (80°–90°E, 14°–24°N) of eastern India that depends heavily upon the rainfall during the summer monsoon months for its agricultural practices. The association between area-averaged rainfall of June over the study zone and global sea surface temperature (SST) anomalies for the period 1982–2008 was examined and the variability of rainfall in monthly scale was calculated. With a view to significant variability in the rainfall in the monthly scale, it was decided to implement the artificial neural network (ANN) for forecasting the monthly scale rainfall using the SST anomalies as a predictor. Finally, the potential of ANN in this prediction has been assessed.


Theoretical and Applied Climatology | 2013

Monthly prediction of rainfall over India and its homogeneous zones during monsoon season: a supervised principal component regression approach on general circulation model products

Archana Nair; U. C. Mohanty; Nachiketa Acharya

A supervised principal component regression (SPCR) technique has been employed on general circulation model (GCM) products for developing a monthly scale deterministic forecast of summer monsoon rainfall (June–July–August–September) for different homogeneous zones and India as a whole. The time series of the monthly observed rainfall as the predictand variable has been used from India Meteorological Department gridded (1° × 1°) rainfall data. Lead 0 (forecast initialized in the same month) monthly products from GCMs are used as predictors. The sources of these GCMs are International Research Institute for Climate and Society, Columbia University, National Center for Environmental Prediction, and Japan Agency for Marine Earth Science and Technology. The performance of SPCR technique is judged against simple ensemble mean of GCMs (EM) and it is found that over almost all the zones the SPCR model gives better skill than EM in June, August, and September months of monsoon. The SPCR technique is able to capture the year to year observed rainfall variability in terms of sign as well as the magnitude. The independent forecasts of 2007 and 2008 are also analyzed for different monsoon months (Jun–Sep) in homogeneous zones and country. Here, 1982–2006 have been considered as development year or training period. Results of the study suggest that the SPCR model is able to catch the observational rainfall over India as a whole in June, August, and September in 2007 and June, July, and August in 2008.


Acta Geophysica | 2014

Comparative Evaluation of Performances of Two Versions of NCEP Climate Forecast System in Predicting Indian Summer Monsoon Rainfall

Nachiketa Acharya; Makarand A. Kulkarni; U. C. Mohanty; Ankita Singh

The operational prediction of climatic variables in monthly-to-seasonal scales has been issued by National Centers for Environmental Prediction (NCEP) through Climate Forecast System model (CFSv1) since 2004. After incorporating significant changes, a new version of this model (CFSv2) was released in 2011. The present study is based on the comparative evaluation of performances of CFSv2 and CFSv1 for the southwest monsoon season (June-July-August-September, JJAS) over India with May initial condition during 1982–2009. It was observed that CFSv2 has improved over CFSv1 in simulating the observed monsoon rainfall climatology and inter annual variability. The movement of the cell of Walker circulation in years of excessive and deficient rainfall is better captured in CFSv2, as well. The observed teleconnection pattern between ISMR-sea surface temperature (SST) is also better captured in CFSv2. The overall results suggest that the changes incorporated in CFSv1 through the development of CFSv2 have resulted in an improved prediction of ISMR.21


Pure and Applied Geophysics | 2013

On the Predictability of Northeast Monsoon Rainfall over South Peninsular India in General Circulation Models

Archana Nair; Nachiketa Acharya; Ankita Singh; U. C. Mohanty; T. C. Panda

In this study the predictability of northeast monsoon (Oct–Nov–Dec) rainfall over peninsular India by eight general circulation model (GCM) outputs was analyzed. These GCM outputs (forecasts for the whole season issued in September) were compared with high-resolution observed gridded rainfall data obtained from the India Meteorological Department for the period 1982–2010. Rainfall, interannual variability (IAV), correlation coefficients, and index of agreement were examined for the outputs of eight GCMs and compared with observation. It was found that the models are able to reproduce rainfall and IAV to different extents. The predictive power of GCMs was also judged by determining the signal-to-noise ratio and the external error variance; it was noted that the predictive power of the models was usually very low. To examine dominant modes of interannual variability, empirical orthogonal function (EOF) analysis was also conducted. EOF analysis of the models revealed they were capable of representing the observed precipitation variability to some extent. The teleconnection between the sea surface temperature (SST) and northeast monsoon rainfall was also investigated and results suggest that during OND the SST over the equatorial Indian Ocean, the Bay of Bengal, the central Pacific Ocean (over Nino3 region), and the north and south Atlantic Ocean enhances northeast monsoon rainfall. This observed phenomenon is only predicted by the CCM3v6 model.


Natural Hazards | 2013

Performance of general circulation models and their ensembles for the prediction of drought indices over India during summer monsoon

Nachiketa Acharya; Ankita Singh; U. C. Mohanty; Archana Nair; Surajit Chattopadhyay

The drought during the months of June to September (JJAS) results in significant deficiency in the annual rainfall and affects the hydrological planning, disaster management, and the agriculture sector of India. Advance information on drought characteristics over the space may help in risk assessment over the country. This issue motivated the present study which deals with the prediction of drought during JJAS through standardized precipitation index (SPI) using nine general circulation models (GCM) product. Among these GCMs, three are the atmospheric and six are atmosphere–ocean coupled models. The performance of these GCM’s predicted SPI is examined against the observed SPI for the time period of 1982–2010. After a rigorous analysis, it can be concluded that the skill of prediction by GCM is not satisfactory, whereas the ability of the coupled models is better than the atmospheric models. An attempt has been made to improve the accuracy of predicted SPI using two different multi-model ensemble (MME) schemes, viz., arithmetic mean and weighted mean using singular value decomposition-based multiple linear regressions (SVD-MLR) of GCMs. It is found that among these MME techniques, SVD-MLR-based MME has more skill as compared to simple MME as well as individual GCMs.


Theoretical and Applied Climatology | 2011

Performance of GCMs for seasonal prediction over India—a case study for 2009 monsoon

Nachiketa Acharya; Sarat C. Kar; U. C. Mohanty; Makarand A. Kulkarni; S. K. Dash


Climate Dynamics | 2014

Development of an artificial neural network based multi-model ensemble to estimate the northeast monsoon rainfall over south peninsular India: an application of extreme learning machine

Nachiketa Acharya; Nitin Anand Shrivastava; Bijaya Ketan Panigrahi; U. C. Mohanty


Meteorological Applications | 2013

On the bias correction of general circulation model output for Indian summer monsoon

Nachiketa Acharya; Surajit Chattopadhyay; U. C. Mohanty; S. K. Dash; Lokanath Sahoo


International Journal of Climatology | 2012

Skill of monthly rainfall forecasts over India using multi‐model ensemble schemes

Sarat C. Kar; Nachiketa Acharya; U. C. Mohanty; Makarand A. Kulkarni

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Makarand A. Kulkarni

Indian Institute of Technology Delhi

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Ankita Singh

Indian Institute of Technology Delhi

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Surajit Chattopadhyay

West Bengal University of Technology

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Sarat C. Kar

National Centre for Medium Range Weather Forecasting

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S. K. Dash

Indian Institute of Technology Delhi

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Archana Nair

Indian Institutes of Technology

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Bijaya Ketan Panigrahi

Indian Institute of Technology Delhi

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