Grants and Contributions:

Title:
Robot Perception, Modelling and Manipulation of Fluids, Powders, and Granular Media for Self-Driving Labs
Agreement Number:
1022498
Agreement Value:
$203,500.00
Agreement Date:
Oct 24, 2024 - Mar 31, 2026
Description:
Automating the search through the chemical space of an estimated 10^20 to 10^60 drug-like molecules for a subset that have desired characteristics and features will be a major enabler for materials and drug discovery, chemical synthesis and medicine-by-design. However, research into fully autonomous chemistry labs that close the loop of i) optimal experiment design, ii) experiment execution (synthesis), and iii) observation and evaluation (characterization), are still in their infancy. A major challenge is that while today's robots have made significant strides in manipulating rigid objects, they lack the perceptual and dexterous capabilities needed to work directly with fluids and powders, which are omnipresent in chemistry labs. This is a critical research area as, in general, perceiving and manipulating fluids, powders and non-rigid materials is recognized as a longstanding challenge in the robotics community. Within the context of automated chemistry in human-centric labs, the main technical difficulties are the perception transparent and non-rigid materials, along with the lack of fast and accurate physical simulators for liquids, powders, and granular media. Existing physical simulators, for example, are either real-time or accurate, but not both, which makes planning and controlling the robots via visual feedback challenging and error prone. In this research, the project aims to develop machine learning methods to address the perceptions, modeling and simulation challenges associated with transparency, powders, liquids, and granular materials. The project seeks to then utilize these methods to develop learning-based control and perception methods that will enable general-purpose robot arms to manipulate non-rigid martials that commonly appear in chemistry labs. The experimental results will demonstrate fundamental chemistry operations such as pouring with different glassware and material types. The experiments will be carried out within Acceleration Consortium, University of Toronto, and NRC labs, showing reproducibility outside of a single lab. The research will complement the NRC PI’s existing AI4D projects on robotic chemists, which are focused on the transfer of lab items, but not pouring and material dynamics
Organization:
National Research Council Canada
Expected Results:

In the short term, anticipated outcomes will be strengthened collaborations across industry, academia, and government to support research excellence. In the medium term, anticipated outcomes will be the development of new and potentially disruptive technologies with collaborators. In the long term, find collaborative solutions to public policy challenges and create stronger innovation systems.

Location:
Toronto, Ontario, CA M5S 1S8
Reference Number:
172-2024-2025-Q3-1022498
Agreement Type:
Grant
Report Type:
Grants and Contributions
Recipient Business Number:
108162330
Recipient Type:
Academia
Recipient's Legal Name:
The Governing Council of the University of Toronto
Federal Riding Name:
University--Rosedale
Federal Riding Number:
35112
Program:
Collaborative Science, Technology and Innovation Program - Collaborative R&D Initiatives
Program Purpose:

Collaborate on multiparty research and development programs to catalyze transformative, high-risk, high-reward research with the potential for game-changing scientific discoveries and technological breakthroughs in priority areas.

NAICS Code:
541710