भारतीय उष्णदेशीय मौसम विज्ञान संस्थान
Indian Institute of Tropical Meteorology
पृथ्वी विज्ञान मंत्रालय, भारत सरकार का एक स्वायत्त संस्थान An Autonomous Institute of the Ministry of Earth Sciences, Govt. of India
Extended Range Prediction
Objectives
To develop an extended range prediction system having reasonable skill beyond 2 weeks.
To carry out basic research in understanding complex interactions between different ocean-land-atmosphere processes to improve the predictability and forecast skills of coupled dynamical models.
To generate customised forecast products for sector-specific applications.
To develop post-processing techniques to improve the prediction of extreme weather events like cyclones, heat waves, cold waves and heavy rainfall events.
Application of AI/ML techniques to improve the extended range prediction skill up to 4 weeks.
About Us
The Extended range prediction (ERP) refers to the meteorological forecast beyond 10 days. It is the most difficult range of forecast as it lies between the short-range (where the effect of initial conditions dominate) and the long-range (where the boundary conditions dominate) and where the effect of initial conditions starts diminishing and the effect of boundary conditions have not started. However, this is an important time scale as it gives sufficient time for the disaster managers and various stakeholders in the agriculture, hydrology, power and energy sectors to their preparedness in averting adverse effects. Therefore, there is always a huge demand for accurate forecasts in this time scale.
Under the National Monsoon Mission (NMM) Project (Rao et al., 2019) of the Ministry of Earth Sciences (MoES), the Indian Institute of Tropical Meteorology (IITM) started ERP efforts in 2011 by adopting the Climate Forecast System (CFS) from the National Centre for Environmental Prediction (NCEP), USA. An ensemble prediction system (EPS) has been developed for the ERP by using an indigenous perturbation technique (Abhilash et al. 2013), which was later developed into a multi-model EPS. Several post-processing techniques have also been developed to improve the prediction skill of extreme weather events (Sahai et al., 2017; Ganesh et al., 2018, 2020). The EPS has remarkable skill in delivering an outlook on the intraseasonal fluctuations within the Indian summer monsoon, Madden-Julian Oscillation, heat/cold waves, cyclogenesis, and heavy rainfall events (Abhilash et al., 2013, 2014a,b,c, 2015a,b; Sahai et al., 2013, 2015a,b, 2017; Joseph et al., 2015a,b, 2016, 2019; Mandal et al. 2019; Dey et al., 2019; Ganesh et al., 2020), and this was adapted by India Meteorological Department (IMD) for operational purposes in 2016. Henceforth, these forecasts are used for generating the agricultural bulletins every week, which proved to be beneficial for farmers in increasing crop yield and choosing cost-effective crops (Chattopadyay et al. 2018). Health bulletins are also being generated by IMD using ERP guidance. An early warning system for the probabilistic prediction of vector-borne diseases has also been developed based on the ERP using AI/ML methods (Sahai et al. 2020).
In addition to these, efforts are now underway in generating a multi-physics multi-model ensemble for the improved prediction of the weather systems beyond 2 weeks (Sahai et al. 2021; Kaur et al. 2021). The experimental forecasts based on this new system are now available and updated every Thursday on a real-time basis at https://www.tropmet.res.in/erpas/.
In pursuit of achieving higher prediction skill for longer leads, the ERPAS group is working towards the development of a multi-physics ensemble forecast strategy.
The skill in a multi-physics framework depends on a compatible yet dispersive ensemble of various realizations of physical processes in the atmosphere. A competent set of physics pairs based on convection (simplified Arakawa Schubert and modified simplified Arakawa Schubert) and microphysics (Zao & Carr and Ferrier ) schemes is selected to formulate a physics-based ensemble. These physics combinations are analyzed for the spatial and temporal biases with a 15-year hindcast generated from the base model CFSv2. The through results from this work are published (Kaur, M., A.K. Sahai, R. Phani, S. Joseph, R. Mandal, A. Dey & R. Chattopadhyay Multi-physics schema for sub-seasonal prediction of Indian summer monsoon. Clim Dyn (2021). https://doi.org/10.1007/s00382-021-05926-2).
Further, the skill analysis was performed for the hindcast of the grand ensemble including the above-mentioned multi-physics ensemble in coupled CFSv2 and atmospheric GFS model. It has been found that the multi-physics multi-model ensemble performs better than the existing ERP system upto3 weeks for monsoon season. The skill is bettered by 2 days in capturing monsoon intraseasonal oscillations. Also, the improvement is extended up to subdivision levels and the predictability increment of 2-4 days is observed for many subdivisions. These results are reported as, “A.K. Sahai, Manpreet Kaur, Susmitha Joseph, A. Dey, R. Phani, R. Mandal, and R. Chattopadhyay. Multi-model Multi-Physics ensemble: A Futuristic way to Extended Range Prediction System. Frontiers in Climate, 2021 doi: 10.3389/fclim.2021.655919”
The efforts are further continuing to make the multi-physics ensemble more robust and enhance the skill of the system in the fourth week.
Project Highlight
Time line of development of IITM Extended Range Prediction System:
2011: Development of Ensemble Prediction System
2012: Bias Correction of CFS forecasted SST implemented
2013: High Resolution CFST382 implemented
2014: CFS based Grand EPS Implemented
2015: Forecast for winter and other seasons started
2016: Forecast for Heat Waves started, ERP System transferred to IMD
2017: Statistical Downscaling of ERP system for extreme event prediction
2020: Dynamical Downscaling of ERP system for extreme event prediciton
2021: Development of second generation ERP system (ERPv2) using a multi-physics framework
Development of customised forecast products for societal applications
Prediction of Monsoon Onset over Kerala (Joseph etal, 2014, JClim)
Prediction of Uttrakhand Heavy Rainfall (Joseph etal, 2014, ClimDyn)
Prediction of June extremes (Joseph etal., QJRMS, 2015)
Prediction of MJO (Sahai et al., 2016, IITM-RR; Dey et al. 2018, 2019, PaGeoph)
Prediction of Heat waves (Joseph et al. 2018, IITM-RR; Mandal et al. 2019, SciRep)
Prediction of Cyclogenesis (Ganesh et al., 2018, NatHaz, GRL; Ganesh et al., 2020, ESS; Ganesh et al., 2021, Mausam)
Statistical downscaling of ERP system for extreme event prediction (Sahai et al., 2017, ClimDyn)
Dynamical downscaling of ERP system for prediction of tropical cyclones (Kaur et al., 2020, ASL)
Application of ERP system for the development of a probabilistic early health warning system (Sahai et al., 2020, SciRep)
Application of ERP system in agricultural sector (Akhter et al., 2021, TAAC)
Recent Publications
Dey Avijit, Chattopadhyay R., Joseph S., Kaur M. , Mandal R., Phani R., Sahai A.K., Pattanaik D.R., The intraseasonal fluctuation of Indian summer monsoon rainfall and its relation with monsoon intraseasonal oscillation (MISO) and Madden Julian oscillation (MJO). , Theoretical and Applied Climatology, 148, April 2022, DOI:10.1007/s00704-022-03970-4, 819-831 (Impact Factor 3.179)
Karmakar N., Joseph S., Sahai A.K., Northward propagation of convection over Arabian Sea and Bay of Bengal: a perspective from vorticity equation, Climate Dynamics, Online, March 2022, DOI:10.1007/s00382-022-06248-7, 1-17 (Impact Factor 4.375)
Kaur M., Sahai A.K., Krishna R.P.M., Joseph S., Mandal R., Dey Avijit, Chattopadhyay R., Multi-physics schema for sub-seasonal prediction of Indian summer monsoon, Climate Dynamics, 58, February 2022, DOI:10.1007/s00382-021-05926-2, 669–690 (Impact Factor 4.375)
Joseph S., Sahai A.K., Shabu H., Chattopadhyay R., Kaur Manpreet, Recent changes in the spatio-temporal characteristics of monsoon intraseasonal oscillations, Theoretical and Applied Climatology, 147, January 2022, DOI:10.1007/s00704-021-03830-7, 251–264 (Impact Factor 3.179)
Lekshmi S., Chattopadhyay R., Kaur M., Joseph S., Phani R., Dey Avijit, Mandal R., Sahai A.K., Role of initial error growth in the extended range prediction skill of Madden-Julian Oscillation (MJO), Theoretical and Applied Climatology, 147, January 2022, DOI:10.1007/s00704-021-03818-3, 205–215 (Impact Factor 3.179)
Published Book Chapters
A.K. Sahai, Rajib Chattopadhyay, Susmitha Joseph, Phani M. Krishna, D.R. Pattanaik, S. Abhilash, Chapter 20 - Seamless Prediction of Monsoon Onset and Active/Break Phases, Editor(s): Andrew W. Robertson, Frederic Vitart, Sub-Seasonal to Seasonal Prediction, Elsevier,2019, Pages 421-438,ISBN 9780128117149, https://doi.org/10.1016/B978-0-12-811714-9.00020-6.
Vincent Moron, Rodrigo Bombardi, Harry Hendon, Andrew Marshall, Atul Kumar Sahai and Rajib Chattopadhyay, Monsoon Sub-seasonal Prediction in the Abstract volume of the book The Sixth WMO International Workshop on Monsoons (IWM-VI), 2019, Accepted in Full book pp. 140-147, Available at: https://www.wmo.int/pages/prog/arep/wwrp/new/documents/IWM6AbstractsVolume.pdf.
Chattopadhyay R., Chakraborty S., Sahai A.K. (2019) Impact of Climatic Stress on Groundwater Resources in the Coming Decades Over South Asia. In: Sikdar P. eds Groundwater Development and Management. Springer, Cham. https://doi.org/10.1007/978-3-319-75115-3_17.
Team
Project: Monsoon Mission
Project Directors: Dr. Suryachandra Rao, Scientist-G
Deputy Project Director: Dr (Mrs) Susmitha Joseph, Scientist - F
Sub-Project: Extended Range Prediction
Dr (Mrs) Susmitha Joseph Scientist-F & Deputy Project Director
Monsoon Variability and Prediction; Extreme Weather Events
susmitha@tropmet.res.in
Phone No - +91-(0)20-25904521 View profile
Dr. A.K. Sahai Consultant, Scientist-G (retired) & Ex Project Director
Monsoon prediction and variability
sahai@tropmet.res.in
Phone No - +91-(0)20-25904520
Dr. Rajib Chattopadhyay Scientist-E
Monsoon Seasonal Prediction
rajib@tropmet.res.in
Phone No - +91-(0)20-25904523 View profile
Dr. (Smt) A.A. Deo Scientist-E
Application of Ocean modeling, Upper Oceanic Process studies
aad@tropmet.res.in
Phone No - +91-(0)20-25904279 View profile
Shri N.K.Agarwal Scientist-E
Atmospheric Energetics in Wavenumber/Frequency Domain
nka@tropmet.res.in
Phone No - +91-(0)20-25904276 View profile
Dr. Sujata Mandke Scientist- D
Monsoon variability and Prediction
amin@tropmet.res.in
Phone No - +91-(0)20-25904508 View profile
Dr. Raju Mandal Scientist-D
Monsoon variability and predictability, extreme events and their impacts
raju.cat@tropmet.res.in
Phone No - +91-(0)20-25904511 View profile
Dr. Avijit Dey Scientist-D
Intra-seasonal variability of Indian summer monsoon
avijit.cat@tropmet.res.in
Phone No - +91-(0)20-25904546 View profile
Dr. Nagalakshmi Katru Scientist-B
Monsoon variability
nagalakshmi.k@tropmet.res.in
Phone No - +91-(0)20-25904918 View profile
Shri. D. W. Ganer Scientific Officer Gr. II
tsd@tropmet.res.in
Phone No - +91-(0)20-25904275
Dr. Phani Murali Krishna Scientist-E (Assoc. Scientist)
Atmospheric modelling, HPC Computing
rphani@tropmet.res.in
Phone No - +91-(0)20-25904310 View profile
Dr. Muhammed M Karadan Project Scientist II
mmkaradan@tropmet.res.in
Dr. Mahesh Kalshetti Project Scientist II
maheshkalshetti.jrf@tropmet.res.in
Ms Pratibha Gautam Research Fellow
pratibha.gautam@tropmet.res.in
Mr Shubham Waje Research Fellow
shubham.waje@tropmet.res.in
Mr. Anurag Chaudhary Research Fellow
anurag.chaudhary@tropmet.res.in
Past Group Members:
Dr. Abhilash S - Scientist, IITM, 2009-2016
Dr. Sandeep Pattnaik - Scientist, IITM, 2008-2012
Dr. Sharmila Sur - Ph.D. Student, IITM, 2009-2015
Dr. Nabanita Bora - Ph.D. Student, IITM, 2009-2015
Dr. Saranya Ganesh - Ph.D. Student, IITM, 2009-2015
Dr. Manpreet Kaur - Ph.D. Student/Project Scientist, IITM, 2016-2022
Dr. MM Nageswara Rao - Project Scientist, IITM, 2019-2020
Dr. Javed Akhter - Project Scientist, IITM, 2019-2020