Seminar invitation - Structured Control and Learning for Sustainable Energy Systems

05/3/2024 11:00 am 05/3/2024 12:00 pm Australia/Melbourne Seminar invitation - Structured Control and Learning for Sustainable Energy Systems

Speaker: Wenqi Cui PhD student

Date: May 2024

Time: 11am-12pm
Location: G29, 20 Research Way  Monash University Clayton Campus
Host: Dr Hao Wang
Abstract:  With decarbonization efforts in renewable integration and electrification, the electric grid needs to adapt and serve a larger system that is becoming more distributed, having less inertia, and facing more uncertainties. These changes have reduced the safety margins of the grid and significantly increased the costs of risk management. Machine learning tools can potentially unlock design freedoms found in the increased controllability from inverter-interfaced resources (e.g., solar, wind, and electric vehicles), and reshape the landscape of energy systems for more efficient operations. However, such algorithms typically do not provide guarantees about safety-critical constraints, making them difficult to implement in practice.
Bio: Wenqi Cui is a Ph.D. candidate in Electrical and Computer Engineering at the University of Washington. She received the B.Eng. degree in Electrical Engineering and Automation from Southeast University in 2016 and M.S. degree in Electrical Engineering from Zhejiang University in 2019. Her research interests are in the power and energy systems, from the perspective of control, machine learning, and optimization. She was a recipient of Rushmer Innovator Fellowship, Sarala Vadari Award, and Clean Energy Institute Fellowship at the University of Washington. She has participated in the Rising Stars in EECS Workshop in 2022 and the Rising Stars in Cyber-Physical Systems Workshop in 2023

Event Details

Date:
3 May 2024 at 11:00 am – 12:00 pm

Description

Speaker: Wenqi Cui PhD student

Date: May 2024

Time: 11am-12pm
Location: G29, 20 Research Way  Monash University Clayton Campus
Host: Dr Hao Wang
Abstract:  With decarbonization efforts in renewable integration and electrification, the electric grid needs to adapt and serve a larger system that is becoming more distributed, having less inertia, and facing more uncertainties. These changes have reduced the safety margins of the grid and significantly increased the costs of risk management. Machine learning tools can potentially unlock design freedoms found in the increased controllability from inverter-interfaced resources (e.g., solar, wind, and electric vehicles), and reshape the landscape of energy systems for more efficient operations. However, such algorithms typically do not provide guarantees about safety-critical constraints, making them difficult to implement in practice.
Bio: Wenqi Cui is a Ph.D. candidate in Electrical and Computer Engineering at the University of Washington. She received the B.Eng. degree in Electrical Engineering and Automation from Southeast University in 2016 and M.S. degree in Electrical Engineering from Zhejiang University in 2019. Her research interests are in the power and energy systems, from the perspective of control, machine learning, and optimization. She was a recipient of Rushmer Innovator Fellowship, Sarala Vadari Award, and Clean Energy Institute Fellowship at the University of Washington. She has participated in the Rising Stars in EECS Workshop in 2022 and the Rising Stars in Cyber-Physical Systems Workshop in 2023