ICON Seminar in Autonomy: Prof. Shaoshuai Mou (Purdue AAE)

Event Date: September 16, 2022
Speaker: Prof. Shaoshuai Mou
Speaker Affiliation: Purdue University
Time: 2-2:30 pm
Location: HAMP 1252 (in-person)
Zoom: https://purdue-edu.zoom.us/j/99326083199?pwd=TjhqaE1TYkZ2RG1RMkt6S1JZbGk1UT09
Contact Name: Yu She
Contact Email: yushe@purdue.edu
Priority: No
School or Program: College of Engineering
College Calendar: Show
Title: A Tunable Control/Learning Framework for Autonomous Systems

Location: HAMP 1252 (in-person) and Zoom (online) https://purdue-edu.zoom.us/j/99326083199?pwd=TjhqaE1TYkZ2RG1RMkt6S1JZbGk1UT09

Agenda: 2:00pm-3:15pm (Seminar + Q&A); 3:15pm-4:00pm (Networking). Snacks and coffee will be provided.

A Tunable Control/Learning Framework for Autonomous Systems

Abstract

Modern society has been relying more and more on engineering advance of autonomous systems, ranging from individual systems (such as a robotic arm for manufacturing, a self-driving car, or an autonomous vehicle for planetary exploration) to cooperative systems (such as a human-robot team, swarms of drones, etc). In this talk we will present our most recent progress in developing a fundamental framework for learning and control in autonomous systems. The framework comes from a differentiation of Pontryagin’s Maximum Principle and is able to provide a unified solution to three classes of learning/control tasks, i.e. adaptive autonomy, inverse optimization, and system identification. We will also present applications of this framework into human-autonomy teaming, especially in enabling an autonomous system to take guidance from human operators, which is usually sparse and vague.

Bio

Dr. Shaoshuai Mou is an associate professor in the School of Aeronautics and Astronautics at Purdue University. He received a Ph.D. in Electrical Engineering at Yale University in 2014, worked as a postdoc researcher at MIT for a year, and then joined Purdue University as a tenure-track assistant professor in Aug. 2015. His research has been focusing on advancing control theories with recent progress in optimization, networks and learning to address fundamental challenges in autonomous systems, with particular research interests in multi-agent systems, control of autonomous systems, learning and adaptive systems, cybersecurity and resilience. Dr. Mou co-directs Purdue’s research Center for Innovation in Control, Optimization and Networks (ICON) and served as interim co-chair for Purdue’s Autonomous and Connected Systems Initiative (ACSI) in Spring/Summer in 2022. More information can be found in the website of Autonomous and Intelligent Multi-Agent Systems (AIMS) Lab

Seminar Recording:

(110 attendants in total with 58 through zoom and 52 in-person)

Seminar Pictures:

    

 

2022-09-16 14:00:00 2022-09-16 14:30:00 America/Indiana/Indianapolis ICON Seminar in Autonomy: Prof. Shaoshuai Mou (Purdue AAE) Title: A Tunable Control/Learning Framework for Autonomous Systems HAMP 1252 (in-person) Zoom: https://purdue-edu.zoom.us/j/99326083199?pwd=TjhqaE1TYkZ2RG1RMkt6S1JZbGk1UT09