Mathematical optimization methods have been developed to a vast variety of complex problems in the field of process systems engineering (e.g., the scheduling of chemical batch processes). However, the use of these methods in online scheduling is hindered by the stochastic nature of the processes and prohibitively long solution times when optimized over long time horizons. The following questions are raised: When to trigger a rescheduling, how much computing resources to allocate, what optimization strategy to use, and how far ahead to schedule? We propose an approach where a reinforcement learning agent is trained to make the first two decisions (i.e., rescheduling timing and computing time allocation). Using neuroevolution of augmenting to...
In this work, a novel approach for generating rescheduling knowledge which can be used in real-time ...
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
Temporally extended actions have been proved to enhance the performance of reinforcement learning ag...
Mathematical optimization methods have been developed to a vast variety of complex problems in the f...
HUOM! TÄMÄn MANUSKAn EMBARGO ON YLIPITKÄ KUNNES ARTIKKELI ON JULKAISTU JA JULKAISUVIIVE MÄÄRITELTY K...
The computing continuum model is a widely ac-cepted and used approach that make possible the existen...
Attempts to address the production scheduling problem thus far rely on simplifying assumptions, such...
International audienceIn this paper, we propose READYS, a reinforcement learning algorithm for the d...
Cyber-physical systems, such as mobile robots, must respond adaptively to dynamic operating conditio...
This article presents a multi-agent framework for optimization using metaheuristics, called AMAM. In...
Scientific applications are large, complex, irregular, and computationally intensive and are charact...
Fog Computing is today a wide used paradigm that allows to distribute the computation in a geographi...
In the environment of modern processing systems, one topic of great interest is how to optimally sch...
In this study, we investigate a real-time system where computationally intensive tasks are executed ...
The flexible job shop problem (FJSP) has been studied in recent decades due to its dynamic and uncer...
In this work, a novel approach for generating rescheduling knowledge which can be used in real-time ...
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
Temporally extended actions have been proved to enhance the performance of reinforcement learning ag...
Mathematical optimization methods have been developed to a vast variety of complex problems in the f...
HUOM! TÄMÄn MANUSKAn EMBARGO ON YLIPITKÄ KUNNES ARTIKKELI ON JULKAISTU JA JULKAISUVIIVE MÄÄRITELTY K...
The computing continuum model is a widely ac-cepted and used approach that make possible the existen...
Attempts to address the production scheduling problem thus far rely on simplifying assumptions, such...
International audienceIn this paper, we propose READYS, a reinforcement learning algorithm for the d...
Cyber-physical systems, such as mobile robots, must respond adaptively to dynamic operating conditio...
This article presents a multi-agent framework for optimization using metaheuristics, called AMAM. In...
Scientific applications are large, complex, irregular, and computationally intensive and are charact...
Fog Computing is today a wide used paradigm that allows to distribute the computation in a geographi...
In the environment of modern processing systems, one topic of great interest is how to optimally sch...
In this study, we investigate a real-time system where computationally intensive tasks are executed ...
The flexible job shop problem (FJSP) has been studied in recent decades due to its dynamic and uncer...
In this work, a novel approach for generating rescheduling knowledge which can be used in real-time ...
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
Temporally extended actions have been proved to enhance the performance of reinforcement learning ag...