We formulate the theory for steering an active particle with optimal travel time between two locations and apply it to the Mexican hat potential without brim. For small heights the particle can cross the potential barrier, while for large heights it has to move around it. Thermal fluctuations in the orientation strongly affect the path over the barrier. Then we consider a smart active particle and apply reinforcement learning. We show how the active particle learns in repeating episodes to move optimally. The optimal steering is stored in the optimized action-value function, which is able to rectify thermal fluctuations
For reinforcement learning tasks with multiple objectives, it may be advantageous to learn stochasti...
Both Semi-Supervised Leaning and Active Learning are techniques used when unlabeled data is abundant...
This paper questions the need for reinforcement learning or control theory when optimising behaviour...
We employ Q learning, a variant of reinforcement learning, so that an active particle learns by itse...
The development of self-propelled particles at the micro- and the nanoscale has sparked a huge poten...
Smart active particles can acquire some limited knowledge of the fluid environment from simple mecha...
We design new navigation strategies for travel time optimization of microscopic self-propelled parti...
The quest for the optimal navigation strategy in a complex environment is at the heart of microswimm...
Optimal navigation in complex environments is a problem with multiple applications ranging from desi...
As the length scales of the smallest technology continue to advance beyond the micron scale it becom...
We experimentally and numerically study the dependence of different navigation strategies regarding ...
We apply a reinforcement learning algorithm to show how smart particles can learn approximately opti...
The properties of a cognitive, self-propelled, and self-steering particle in the presence of a stati...
Although making artificial micrometric swimmers has been made possible by using various propulsion m...
We numerically study active Brownian particles that can respond to environmental cues through a smal...
For reinforcement learning tasks with multiple objectives, it may be advantageous to learn stochasti...
Both Semi-Supervised Leaning and Active Learning are techniques used when unlabeled data is abundant...
This paper questions the need for reinforcement learning or control theory when optimising behaviour...
We employ Q learning, a variant of reinforcement learning, so that an active particle learns by itse...
The development of self-propelled particles at the micro- and the nanoscale has sparked a huge poten...
Smart active particles can acquire some limited knowledge of the fluid environment from simple mecha...
We design new navigation strategies for travel time optimization of microscopic self-propelled parti...
The quest for the optimal navigation strategy in a complex environment is at the heart of microswimm...
Optimal navigation in complex environments is a problem with multiple applications ranging from desi...
As the length scales of the smallest technology continue to advance beyond the micron scale it becom...
We experimentally and numerically study the dependence of different navigation strategies regarding ...
We apply a reinforcement learning algorithm to show how smart particles can learn approximately opti...
The properties of a cognitive, self-propelled, and self-steering particle in the presence of a stati...
Although making artificial micrometric swimmers has been made possible by using various propulsion m...
We numerically study active Brownian particles that can respond to environmental cues through a smal...
For reinforcement learning tasks with multiple objectives, it may be advantageous to learn stochasti...
Both Semi-Supervised Leaning and Active Learning are techniques used when unlabeled data is abundant...
This paper questions the need for reinforcement learning or control theory when optimising behaviour...