An open research question in deep reinforcement learning is how to focus the policy learning of key decisions within a sparse domain. This paper emphasizes on combining the advantages of input-output hidden Markov models and reinforcement learning. We propose a novel hierarchical modeling methodology that, at a high level, detects and interprets the root cause of a failure as well as the health degradation of the turbofan engine, while at a low level, provides the optimal replacement policy. This approach outperforms baseline deep reinforcement learning (DRL) models and has performance comparable to that of a state-of-the-art reinforcement learning system while being more interpretable
A condition-based control framework is proposed for gas turbine engines using reinforcement learning...
Effective tracking of degradation in machine tools or vehicle, ship, and aircraft engines is key to ...
© 2018, the Authors. Reinforcement learning (RL) aims to resolve the sequential decision-making unde...
The increasing availability of sensor monitoring data has stimulated the development of Remaining-Us...
The turbofan engine is one of the most critical aircraft components. Its failure may introduce unwan...
Industrial operational environments are stochastic and can have complex system dynamics which introd...
An issue of utmost significance constitutes the maintenance of engineering systems exposed to corros...
Throughout the world, thousands of passengers travel by air, their quality depends on that of the eq...
In recent times, there has been a growing interest in predictive maintenance for turbofan engines as...
In recent years, research has proposed several deep learning (DL) approaches to providing reliable r...
peer reviewedIn the context of Industry 4.0, companies understand the advantages of performing Predi...
The use of aircraft operational logs to predict potential failure that may lead to disruption poses ...
The real-time, and accurate inference of model parameters is of great importance in many scientific ...
The increasing availability of condition-monitoring data for components/systems has incentivized the...
The study of intelligent operation and maintenance methods for turbofan engines is of great importan...
A condition-based control framework is proposed for gas turbine engines using reinforcement learning...
Effective tracking of degradation in machine tools or vehicle, ship, and aircraft engines is key to ...
© 2018, the Authors. Reinforcement learning (RL) aims to resolve the sequential decision-making unde...
The increasing availability of sensor monitoring data has stimulated the development of Remaining-Us...
The turbofan engine is one of the most critical aircraft components. Its failure may introduce unwan...
Industrial operational environments are stochastic and can have complex system dynamics which introd...
An issue of utmost significance constitutes the maintenance of engineering systems exposed to corros...
Throughout the world, thousands of passengers travel by air, their quality depends on that of the eq...
In recent times, there has been a growing interest in predictive maintenance for turbofan engines as...
In recent years, research has proposed several deep learning (DL) approaches to providing reliable r...
peer reviewedIn the context of Industry 4.0, companies understand the advantages of performing Predi...
The use of aircraft operational logs to predict potential failure that may lead to disruption poses ...
The real-time, and accurate inference of model parameters is of great importance in many scientific ...
The increasing availability of condition-monitoring data for components/systems has incentivized the...
The study of intelligent operation and maintenance methods for turbofan engines is of great importan...
A condition-based control framework is proposed for gas turbine engines using reinforcement learning...
Effective tracking of degradation in machine tools or vehicle, ship, and aircraft engines is key to ...
© 2018, the Authors. Reinforcement learning (RL) aims to resolve the sequential decision-making unde...