Modelling water disinfection process and sperm motility with deep reinforcement and imitation learning
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2024
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Universidad Rey Juan Carlos
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varying natural and engineering phenomena. This discipline plays a crucial role in optimizing
and predicting the behavior of complex systems, thereby facilitating advancements
in numerous scientific and industrial domains. Models often rely on parameters that must
be fine-tuned to accurately represent the real-world systems they are intended to simulate.
Reinforcement and imitation learning techniques offer a powerful path for addressing this
challenge, providing an approach to optimize these parameters based on objective functions
or expert demonstrations. This thesis presents two case studies to illustrate the
utilization of these technique in process modelling.
In the first case, the optimization of a parametric model of a water disinfection process
is addressed. Using reinforcement learning, a search for the optimal parameters that
align the model with the experimentally observed behavior of the process is performed.
This approach allows for the fine-tuning of the model to accurately reflect the real-world
dynamics of the system.
In the second case, a method for generating synthetic videos of spermatozoa is proposed.
Through imitation learning, a parametric model of a spermatozoon is animated to simulate
its real behavior in a petri dish. This method is subsequently used to generate synthetic
videos with fully labeled samples, to which a style transfer process is applied to give them a
photo-realistic appearance. This research provides a valuable tool for generating datasets
to validate and train deep learning based Computer Aided Sperm Analysis systems.
The results of this research show that both reinforcement learning and imitation learning
are feasible paradigms for process modelling. The choice between these methods depends
on the specific process to be modelled and it is primarily determined by the availability
of expert demonstrations or a suitable metric. Furthermore, it has been shown that these
paradigms, in conjunction with modelling, can contribute to obtain explainable solutions,
providing insights that are as understandable as the proposed model itself.
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Tesis Doctoral leída en la Universidad Rey Juan Carlos de Madrid en 2024. Directores:
Dr. Alfredo Cuesta Infante
Dr. Antonio Sanz Montemayor
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