Tag: Dynamical Systems

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Introducing DEgym: A framework for developing Reinforcement Learning Environments for Dynamical Systems

Introducing DEgym: A framework for developing Reinforcement Learning Environments for Dynamical Systems

Reinforcement learning (RL) is increasingly being applied to complex processes across science and engineering, with promising results in manufacturing, biology, and energy systems. By learning through trial and error, RL agents can optimise behaviour without explicit supervision1.  Many of these processes are governed by differential-algebraic equations (DAEs). These combine time-dependent dynamics with algebraic constraints, making… Read more »