Leveraging Atomic Scale Modeling for Design and Discovery of Next-Generation Battery Materials, Virtual
Schrödinger is excited to be sponsoring the Battery Technology webinar taking place on March 29th at 1:00pm EDT. Join us for a presentation by Garvit Agarwal, Senior Scientist at Schrödinger, titled “Leveraging Atomic Scale Modeling for Design and Discovery of Next-Generation Battery Materials”.
Speaker: Garvit Agarwal, Senior Scientist
Date/Time: March 29th | 1:00pm EDT
Abstract:
Rechargeable Li-ion batteries (LIBs) are revolutionizing electric vehicles and portable devices, but improvements are needed in areas such as power density, safety, reliability, and lifetime. Reliable atomic scale modeling enables rapid initial evaluation of large chemical and material design space, accelerating the development cycle of next-generation battery technologies.
Attend this webinar to learn about an advanced digital chemistry platform for developing next-generation battery materials with improved properties. The presentation will include use of physics-based and machine learning techniques for understanding structure-property relationships of different battery components. It will also outline an automated active learning framework for the development of neural network force fields to predict critical bulk properties of high-performance liquid electrolytes used in advanced batteries.
Attend this webinar and learn:
- Predictive capabilities of physics-based modeling for battery materials
- How automated high-throughput simulation workflows enable rapid screening of new material candidates
- How advanced neural network force fields can be applied for accurate electrolyte property prediction