A condition-based control framework is proposed for gas turbine engines using reinforcement learning and adaptive dynamic programming (RL-ADP). The system behaviour, specifically the fuel efficiency function and constraints, exhibit unknown degradation patterns which vary from engine to engine. Due to these variations, accurate system models to describe the true system states over the life of the engines are difficult to obtain. Consequently, model-based control techniques are unable to fully compensate for the effects of the variations on the system performance. The proposed RL-ADP control framework is based on Q-learning and uses measurements of desired performance quantities as reward signals to learn and adapt the system efficiency maps...
We consider the maintenance process of gas turbines used in the Oil and Gas industry: the capital pa...
Condition monitoring, diagnostics, and prognostics are key factors in today’s competitive industrial...
With the rapid development of power electronic devices, the ideas of more-electric aircraft (MEA) ha...
A condition-based control framework is proposed for gas turbine engines using reinforcement learning...
The push for improvements in fuel economy while reducing tailpipe emissions has resulted in signific...
Reinforcement learning (RL) is a machine learning method that has recently seen significant research...
Increasingly strict legislation for greenhouse gas and real-world pollutant emissions makes it neces...
To solve the problem of transient control design with uncertainties and degradation in the life cycl...
Nowadays, liquid rocket engines use closed-loop control at most near-steady operating conditions. Th...
peer reviewedThis paper proposes an application of a Reinforcement Learning (RL) method to the contr...
This paper presents an online learning scheme based on reinforcement learning and adaptive dynamic p...
Advanced engine control is an important requirement for the efficient operation of future reusable ...
This paper presents an adaptive framework for prognostics in civil aero gas turbine engines, which i...
An open research question in deep reinforcement learning is how to focus the policy learning of key ...
International audienceFor maintenance of gas turbines (GTs) in oil and gas applications, capital par...
We consider the maintenance process of gas turbines used in the Oil and Gas industry: the capital pa...
Condition monitoring, diagnostics, and prognostics are key factors in today’s competitive industrial...
With the rapid development of power electronic devices, the ideas of more-electric aircraft (MEA) ha...
A condition-based control framework is proposed for gas turbine engines using reinforcement learning...
The push for improvements in fuel economy while reducing tailpipe emissions has resulted in signific...
Reinforcement learning (RL) is a machine learning method that has recently seen significant research...
Increasingly strict legislation for greenhouse gas and real-world pollutant emissions makes it neces...
To solve the problem of transient control design with uncertainties and degradation in the life cycl...
Nowadays, liquid rocket engines use closed-loop control at most near-steady operating conditions. Th...
peer reviewedThis paper proposes an application of a Reinforcement Learning (RL) method to the contr...
This paper presents an online learning scheme based on reinforcement learning and adaptive dynamic p...
Advanced engine control is an important requirement for the efficient operation of future reusable ...
This paper presents an adaptive framework for prognostics in civil aero gas turbine engines, which i...
An open research question in deep reinforcement learning is how to focus the policy learning of key ...
International audienceFor maintenance of gas turbines (GTs) in oil and gas applications, capital par...
We consider the maintenance process of gas turbines used in the Oil and Gas industry: the capital pa...
Condition monitoring, diagnostics, and prognostics are key factors in today’s competitive industrial...
With the rapid development of power electronic devices, the ideas of more-electric aircraft (MEA) ha...