Current and future high-contrast imaging instruments require extreme adaptive optics systems to reach contrasts necessary to directly imaged exoplanets. Telescope vibrations and the temporal error induced by the latency of the control loop limit the performance of these systems. One way to reduce these effects is to use predictive control. We describe how model-free reinforcement learning can be used to optimize a recurrent neural network controller for closed-loop predictive control. First, we verify our proposed approach for tip-tilt control in simulations and a lab setup. The results show that this algorithm can effectively learn to mitigate vibrations and reduce the residuals for power-law input turbulence as compared to an optimal gain...
Adaptive optics (AO) provides real-time compensation for atmospheric turbulence to improve the resol...
Research Doctorate - Doctor of Philosophy (PhD) (Electrical Engineering)Actuators are naturally limi...
This paper discusses various practical problems arising in the design and simulation of predictive c...
Context. The direct imaging of potentially habitable exoplanets is one prime science case for the ne...
Reinforcement learning (RL) presents a new approach for controlling adaptive optics (AO) systems for...
When planar wavefronts from distant stars traverse the atmosphere, they become distorted due to the...
International audienceWe present a novel formulation of closed-loop adaptive optics (AO) control as ...
Extreme Adaptive Optics (AO) systems are designed to provide high resolution and high contrast obser...
The search for exoplanets is pushing adaptive optics (AO) systems on ground-based telescopes to thei...
Context. The direct imaging of potentially habitable exoplanets is one prime science case for the ne...
Adaptive optics (AO) has become an indispensable tool for ground-based telescopes to mitigate atmosp...
The discovery of the exoplanet Proxima b highlights the potential for the coming generation of giant...
Autonomous systems extend upon human capabilities and can be equipped with superhuman attributes in ...
International audienceClassical adaptive optics (AO) is now a widespread technique for high-resoluti...
A novel, Machine Learning method is presented to solve control-specific problems related to Adaptiv...
Adaptive optics (AO) provides real-time compensation for atmospheric turbulence to improve the resol...
Research Doctorate - Doctor of Philosophy (PhD) (Electrical Engineering)Actuators are naturally limi...
This paper discusses various practical problems arising in the design and simulation of predictive c...
Context. The direct imaging of potentially habitable exoplanets is one prime science case for the ne...
Reinforcement learning (RL) presents a new approach for controlling adaptive optics (AO) systems for...
When planar wavefronts from distant stars traverse the atmosphere, they become distorted due to the...
International audienceWe present a novel formulation of closed-loop adaptive optics (AO) control as ...
Extreme Adaptive Optics (AO) systems are designed to provide high resolution and high contrast obser...
The search for exoplanets is pushing adaptive optics (AO) systems on ground-based telescopes to thei...
Context. The direct imaging of potentially habitable exoplanets is one prime science case for the ne...
Adaptive optics (AO) has become an indispensable tool for ground-based telescopes to mitigate atmosp...
The discovery of the exoplanet Proxima b highlights the potential for the coming generation of giant...
Autonomous systems extend upon human capabilities and can be equipped with superhuman attributes in ...
International audienceClassical adaptive optics (AO) is now a widespread technique for high-resoluti...
A novel, Machine Learning method is presented to solve control-specific problems related to Adaptiv...
Adaptive optics (AO) provides real-time compensation for atmospheric turbulence to improve the resol...
Research Doctorate - Doctor of Philosophy (PhD) (Electrical Engineering)Actuators are naturally limi...
This paper discusses various practical problems arising in the design and simulation of predictive c...