Several fields of study are concerned with uniting the concept of computation with that of the design of physical systems. For example, a recent trend in robotics is to design robots in such a way that they require a minimal control effort. Another example is found in the domain of photonics, where recent efforts try to benefit directly from the complex nonlinear dynamics to achieve more efficient signal processing. The underlying goal of these and similar research efforts is to internalize a large part of the necessary computations within the physical system itself by exploiting its inherent non-linear dynamics. This, however, often requires the optimization of large numbers of system parameters, related to both the system's structure as w...
There have been many recent advances in the simulation of biologically realistic systems, but contro...
Many popular optimization algorithms, like the Levenberg-Marquardt algorithm (LMA), use heuristic-ba...
We propose and demonstrate the first end-to-end artificial neural network (ANN) modeler for the auto...
Several fields of study are concerned with uniting the concept of computation with that of the desig...
Engineering and physical science often involve the design and manufacturing of physical devices. Con...
Numerical optimization of complex systems benefits from the technological development of computing p...
Proof of principle study using a machine learning algorithm to actively sample the operating paramet...
Thesis (Ph.D.)--University of Washington, 2014The goal of my thesis is to provide a theoretical demo...
Engineering a physical system to feature designated characteristics states an inverse design problem...
In this research methods are developed to facilitate the model-based control of mechatronic applicat...
To characterize a physical system to behave as desired, either its underlying governing rules must b...
In this thesis, we focus on machine learning (ML) techniques as modelling tools for dynamical proble...
A fundamental problem of robotics is how can one program a robot to perform a task with its limited ...
This book develops a coherent theoretical approach to algorithm design for iterative learning contro...
For robotic systems to continue to move towards ubiquity, robots need to be more autonomous. More au...
There have been many recent advances in the simulation of biologically realistic systems, but contro...
Many popular optimization algorithms, like the Levenberg-Marquardt algorithm (LMA), use heuristic-ba...
We propose and demonstrate the first end-to-end artificial neural network (ANN) modeler for the auto...
Several fields of study are concerned with uniting the concept of computation with that of the desig...
Engineering and physical science often involve the design and manufacturing of physical devices. Con...
Numerical optimization of complex systems benefits from the technological development of computing p...
Proof of principle study using a machine learning algorithm to actively sample the operating paramet...
Thesis (Ph.D.)--University of Washington, 2014The goal of my thesis is to provide a theoretical demo...
Engineering a physical system to feature designated characteristics states an inverse design problem...
In this research methods are developed to facilitate the model-based control of mechatronic applicat...
To characterize a physical system to behave as desired, either its underlying governing rules must b...
In this thesis, we focus on machine learning (ML) techniques as modelling tools for dynamical proble...
A fundamental problem of robotics is how can one program a robot to perform a task with its limited ...
This book develops a coherent theoretical approach to algorithm design for iterative learning contro...
For robotic systems to continue to move towards ubiquity, robots need to be more autonomous. More au...
There have been many recent advances in the simulation of biologically realistic systems, but contro...
Many popular optimization algorithms, like the Levenberg-Marquardt algorithm (LMA), use heuristic-ba...
We propose and demonstrate the first end-to-end artificial neural network (ANN) modeler for the auto...