Research

Earth, Atmosphere & Environment Sciences

Title :

MODES: Machine-learning for Ocean Data-assimilation, Estimation and Simulation

Area of research :

Earth, Atmosphere & Environment Sciences

Focus area :

Ocean science

Principal Investigator :

Dr. Deepak Narayanan Subramanium, IISC Bangalore, Karnataka, Karnataka, Karnataka

Timeline Start Year :

2020

Timeline End Year :

2025

Equipments :

Details

Executive Summary :

The coastal oceans and blue economy support livelihoods of tens of millions of people in India. By various estimates, the coastal ocean contributes to 1% of the overall GDP of the country and is growing. With such a high reliance on the coastal ecosystem, it is extremely important to monitor and predict the health of our oceans with an emphasis on the impact of human activities. Ocean forecasts can be utilized for informing sustainable decisions about human activities such as fishing, shipping, security and surveillance that affect the coastal oceans. In this context, the MoES has invested in high quality ocean observation systems over the past several years. Several ocean observation campaigns have also been undertaken giving us access to unprecedented high-quality data. However, the processes of interest are multiscale and the data available, even after all the best efforts, is but a sparse representation in space and time. As such, estimating the initial and boundary conditions, parameters and closure models for numerical ocean forecasting is laden with uncertainties. What is required now is to assimilate all the data collected over the last several years and those being collected in real-time to improve high-resolution synoptic forecasts of the ocean state. Moreover, a synergic blend of dynamical understanding with data is needed using mathematically sound statistical machine learning principles. Additionally, the utility of different observing systems must be established to finetune national observation plans. Towards this end, data-driven dynamics-based feature models must be developed. The data assimilation methods must respect the nonlinearity of the governing ocean primitive equations and the non-Gaussian, non- stationary statistical distributions of the multiscale ocean features. To do so, the focus must shift from estimating a covariance matrix from linearized or low-rank ensembles to new methods that accurately describe the uncertainties in a dynamical subspace and propagate those using accurate numerical schemes

Total Budget (INR):

54,46,720

Organizations involved