textCan symmetry be utilized as a design principle to constrain evolutionary search, making it more effective? This dissertation aims to show that this is indeed the case, in two ways. First, an approach called ENSO is developed to evolve modular neural network controllers for simulated multilegged robots. Inspired by how symmetric organisms have evolved in nature, ENSO utilizes group theory to break symmetry systematically, constraining evolution to explore promising regions of the search space. As a result, it evolves effective controllers even when the appropriate symmetry constraints are difficult to design by hand. The controllers perform equally well when transferred from simulation to a physical robot. Second, the same...
We present a comprehensive study on discrete morphological symmetries of dynamical systems, which ar...
The application of evolutionary computation for designing and generating artificial creatures such a...
The structure and performance of neural networks are intimately connected, and by use of evolutionar...
textCan symmetry be utilized as a design principle to constrain evolutionary search, making it more...
Symmetry is useful as a constraint in designing complex systems such as distributed controllers for ...
Problems such as the design of distributed controllers are character-ized by modularity and symmetry...
Sorting networks are an interesting class of parallel sorting algorithms with applications in multi-...
Engineers routinely design systems to be modular and symmetric in order to increase robustness to pe...
Artificial Neural Networks (ANN) comprise important symmetry properties, which can influence the per...
In Evolutionary Robotics, Evolutionary Algorithms (EAs) are used to optimize robots. Research has sh...
Several attempts have been made in the past to construct encoding schemes that allow modularity to ...
The manual design of con- trol systems for robotic devices can be challenging. Methods for the autom...
Almost all animals natural evolution has produced on Earth have a symmetrical body. In this paper we...
Robots usually do a single job and would perform better when their mechanical structure is particula...
Designing optimal soft modular robots is difficult, due to non-trivial interactions between morpholo...
We present a comprehensive study on discrete morphological symmetries of dynamical systems, which ar...
The application of evolutionary computation for designing and generating artificial creatures such a...
The structure and performance of neural networks are intimately connected, and by use of evolutionar...
textCan symmetry be utilized as a design principle to constrain evolutionary search, making it more...
Symmetry is useful as a constraint in designing complex systems such as distributed controllers for ...
Problems such as the design of distributed controllers are character-ized by modularity and symmetry...
Sorting networks are an interesting class of parallel sorting algorithms with applications in multi-...
Engineers routinely design systems to be modular and symmetric in order to increase robustness to pe...
Artificial Neural Networks (ANN) comprise important symmetry properties, which can influence the per...
In Evolutionary Robotics, Evolutionary Algorithms (EAs) are used to optimize robots. Research has sh...
Several attempts have been made in the past to construct encoding schemes that allow modularity to ...
The manual design of con- trol systems for robotic devices can be challenging. Methods for the autom...
Almost all animals natural evolution has produced on Earth have a symmetrical body. In this paper we...
Robots usually do a single job and would perform better when their mechanical structure is particula...
Designing optimal soft modular robots is difficult, due to non-trivial interactions between morpholo...
We present a comprehensive study on discrete morphological symmetries of dynamical systems, which ar...
The application of evolutionary computation for designing and generating artificial creatures such a...
The structure and performance of neural networks are intimately connected, and by use of evolutionar...