Active flow control of the flow past a cylinder under Reynolds number variation using deep reinforcement learning This study is published in German! In a 2D cylinder flow, a Kármán vortex street is created in the wake of the cylinder, which causes oscillating forces on the cylinder. An agent trained with a deep reinforcement learning algorithm is designed to reduce these forces. To achieve this, the agent rotates the cylinder based on the pressure values on the cylinder surface and thus actively regulates the flow. This algorithm uses a probability distribution, which is often a normal distribution, to select the rotation speed. However, other probability distributions can also be chosen. In this case, the difference in training speed and...
Deep artificial neural networks (ANNs) used together with deep reinforcement learning (DRL) are rece...
The aim of the following paper is to experimentally investigate, using Particle Image Velocimetry, t...
A comparative assessment of machine-learning (ML) methods for active flow control is performed. The ...
We apply deep reinforcement learning (DRL) to reduce and increase the drag of a 2-dimensional wake f...
The real power of artificial intelligence appears in reinforcement learning, which is computationall...
For active flow control, flow around a 2D cylinder is considered a generic example. The von kármán v...
We investigate drag reduction mechanisms in flows past two- and three-dimensional cylinders controll...
Machine learning has recently become a promising technique in fluid mechanics, especially for active...
This thesis presents and evaluates an approach for model-based deep reinforcement learning used for ...
This paper focuses on the active flow control of a computational fluid dynamics simulation over a ra...
This paper presents for the first time successful results of active flow control with multiple indep...
We present the first application of an Artificial Neural Network trained through a Deep Reinforcemen...
Active flow control has the potential of achieving remarkable drag reductions in applications for fl...
This study proposes a self-learning algorithm for closed-loop cylinder wake control targeting lower ...
[EN] The increase in emissions associated with aviation requires deeper research into novel sensing ...
Deep artificial neural networks (ANNs) used together with deep reinforcement learning (DRL) are rece...
The aim of the following paper is to experimentally investigate, using Particle Image Velocimetry, t...
A comparative assessment of machine-learning (ML) methods for active flow control is performed. The ...
We apply deep reinforcement learning (DRL) to reduce and increase the drag of a 2-dimensional wake f...
The real power of artificial intelligence appears in reinforcement learning, which is computationall...
For active flow control, flow around a 2D cylinder is considered a generic example. The von kármán v...
We investigate drag reduction mechanisms in flows past two- and three-dimensional cylinders controll...
Machine learning has recently become a promising technique in fluid mechanics, especially for active...
This thesis presents and evaluates an approach for model-based deep reinforcement learning used for ...
This paper focuses on the active flow control of a computational fluid dynamics simulation over a ra...
This paper presents for the first time successful results of active flow control with multiple indep...
We present the first application of an Artificial Neural Network trained through a Deep Reinforcemen...
Active flow control has the potential of achieving remarkable drag reductions in applications for fl...
This study proposes a self-learning algorithm for closed-loop cylinder wake control targeting lower ...
[EN] The increase in emissions associated with aviation requires deeper research into novel sensing ...
Deep artificial neural networks (ANNs) used together with deep reinforcement learning (DRL) are rece...
The aim of the following paper is to experimentally investigate, using Particle Image Velocimetry, t...
A comparative assessment of machine-learning (ML) methods for active flow control is performed. The ...