HomeTechnologyIndian scientists use machine learning to predict crustal movements in Tibetan Plateau

Indian scientists use machine learning to predict crustal movements in Tibetan Plateau

New Delhi, Aug 27 (IANS) A team of scientists at Wadia Institute of Himalayan Geology, an autonomous Institute under the Department of Science and Technology (DST), on Tuesday revealed machine learning (ML) techniques for modelling crustal deformations over the Tibetan Plateau.

The team noted that the techniques helped them forecast the velocity vectors of such movements and enhanced the characterisation of plate movements.

Typically, a dense network of Continuously Operating Reference Stations (CORS) is employed to continuously monitor crustal deformation. Campaign-mode GPS surveys are often used to densify the existing CORS network. However, these are not only expensive but also challenging due to logistical problems and regional geographical considerations.

The Wadia Institute scientists instead implemented ML techniques such as support vector machines, decision trees, and Gaussian process regression to accurately model crustal movement. In the study, the team analysed data from 1,271 permanent continuous and campaign-mode GPS stations located on the Tibetan plateau and its surrounding areas. They used data from 892 stations for model training and data from 379 stations for testing.

The results, published in the Journal of Asian Earth Sciences, demonstrate the “effectiveness of these ML techniques in forecasting velocity vectors — easting velocity and northing velocity — and enhancing the characterisation of plate movements”.

“The correlation between the predicted and actual velocity vectors was found to be highly satisfactory making these ML predictive models considerably reliable for estimating geodetic velocity vectors,” the team said.

Further, based on the data-driven trends from the existing trained models, the scientists fed the locations of arbitrary GPS sites and predicted the easting velocity and northing velocity at those locations. It showed similar patterns to those obtained from neighbouring GPS stations. The ML algorithm demonstrates a remarkable achievement in the field of geodetic studies in a cost-effective manner.

–IANS

rvt/vd

Go to Source

Disclaimer

The information contained in this website is for general information purposes only. The information is provided by TodayIndia.news and while we endeavour to keep the information up to date and correct, we make no representations or warranties of any kind, express or implied, about the completeness, accuracy, reliability, suitability or availability with respect to the website or the information, products, services, or related graphics contained on the website for any purpose. Any reliance you place on such information is therefore strictly at your own risk.

In no event will we be liable for any loss or damage including without limitation, indirect or consequential loss or damage, or any loss or damage whatsoever arising from loss of data or profits arising out of, or in connection with, the use of this website.

Through this website you are able to link to other websites which are not under the control of TodayIndia.news We have no control over the nature, content and availability of those sites. The inclusion of any links does not necessarily imply a recommendation or endorse the views expressed within them.

Every effort is made to keep the website up and running smoothly. However, TodayIndia.news takes no responsibility for, and will not be liable for, the website being temporarily unavailable due to technical issues beyond our control.

For any legal details or query please visit original source link given with news or click on Go to Source.

Our translation service aims to offer the most accurate translation possible and we rarely experience any issues with news post. However, as the translation is carried out by third part tool there is a possibility for error to cause the occasional inaccuracy. We therefore require you to accept this disclaimer before confirming any translation news with us.

If you are not willing to accept this disclaimer then we recommend reading news post in its original language.

RELATED ARTICLES
- Advertisment -

Most Popular