YoVDO

Online and Hybrid System Identification Directly From Raw Sensory Signals

Offered By: Alan Turing Institute via YouTube

Tags

Adaptive Systems Courses Robotics Courses Neural Networks Courses Parameter Estimation Courses Autonomous Systems Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore cutting-edge techniques for system identification in adaptive engineering and experimental sciences through this insightful lecture. Delve into the challenges of extracting structured models from sparse observations and rich sensory data, particularly in robotics and autonomous systems. Discover how neural networks with physical model inductive biases are revolutionizing this field. Learn about switching density networks for learning hybrid controllers in robotics, and examine the application of variational recurrent neural network architectures for efficient parameter estimation from video streams. Investigate the versatility of these methods as they are applied to complex domains like molecular geometry modeling, including the inversion of ultrafast X-ray scattering with dynamics constraints. Gain valuable insights into the latest advancements in online and hybrid system identification, directly applicable to various fields of engineering and scientific research.

Syllabus

Subramanian Ramamoorthy - Online and hybrid system identification directly from raw sensory signals


Taught by

Alan Turing Institute

Related Courses

Underactuated Robotics
Massachusetts Institute of Technology via edX
Computer Systems Design for Energy Efficiency
Chalmers University of Technology via edX
Differential Equations: 2x2 Systems
Massachusetts Institute of Technology via edX
Decision-Making for Autonomous Systems
Chalmers University of Technology via edX
Drones and Autonomous Systems I: Fundamentals
University System of Maryland via edX