Advanced Control Strategies Based on Reinforcement Learning for Linear Actuators

This work explores the application of reinforcement learning (RL) for advanced control of linear actuators in a simulated environment. We present the development of an RL agent using Python libraries to control the position of a linear actuator modelled with a specific dynamic system. The agent interacts with the simulated environment, receiving rewards based on its performance in achieving desired positions. Through continuous learning and exploration, the agent refines its control strategy, surpassing traditional methods in terms of improved accuracy and tuning effort. This approach offers a data-driven solution for complex control problems, particularly beneficial for actuators with non-linearities or uncertainties.


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Advanced control strategies for precision in piezoelectric actuators

Piezoelectric actuators are important because they can precisely convert electrical signals into very small but powerful movements. In this research, we aimed to use advanced control methods to improve their precision. This is an advantage for industries which require high accuracy such as medical devices or micro-robotics.




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Data Science Project: Tuberculosis

Tuberculosis is a transmitted disease with high morbidity and one of the main causes of death in the world. It is widely recognized as a marker of inequality worldwide, disproportionately affecting (though not exclusively) the most vulnerable populations and those with violated rights.

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