Reinforcement Learning Agent not taking realistic actions
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Karim Darwich
el 9 de Jul. de 2024
Comentada: Karim Darwich
el 16 de Jul. de 2024
I am using a PPO agent in a Simulink environment, but the actions produced by the agent seem to be discrete. Specifically, the agent only outputs either the upper limit or the lower limit. Any ideas why this could be happening? I am using the RL Toolbox for training.
Here are some details about my setup:
- I am using a variable step time Simulink model with the ode23t solver.
- My Simulink model uses the Simscape library for thermal fluids and simulates a simplified district heating network. The DHN has 2 branches NORTH (NORD) and SOUTH (SUD).
- I am trying to use an RL agent to optimize control, initially focusing on minimizing energy costs by changing the mass flow in the branches.
Regarding the hyperparameters of the agent I am using the RL Toolbox with the following parameters:
- Sample time= 3600
- Discount factor= 0.99
- GPU
- Batch size = 512
- Learning rate= 1e-3 (for both actor and critic)
I suspect there might be an issue with either my model or the agent. I will attach the Simulink model (the properties table should be loaded beforehand). I hope the problem is clear and that someone can help!
Thank you in advance!
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Kaustab Pal
el 16 de Jul. de 2024
From what I understand, you have a constrained action space, but after training the PPO agent, the agent is only outputting actions that are either at the upper or lower bounds of the action space. I don't think the problem arises from how the model or the agent is defined.
In the following snippet of code, I have defined obs, act, and the agent in the same format as you have. I ran it multiple iterations, and each time I received different outputs for the actions.
obs = rlNumericSpec([8 1]);
act = rlNumericSpec([2 1],"LowerLimit",-1,"UpperLimit",1);;
agent=rlPPOAgent(obs,act);
a = getAction(agent, rand(obs.Dimension)); % sample observations randomly and get an action from the agent
a = a{1};
disp(a);
This indicates that there are no issues with the model or the agent's definition. I suspect that the problem might lie in the design of the reward function.
Additionally, please note that for any agents other than DDPG, TD3, and SAC, if you want to enforce lower or upper bounds on the action space or the environment, you need to do so within the environment itself.
For more information you can refer to the documentation here: https://www.mathworks.com/help/releases/R2024a/reinforcement-learning/ref/rl.util.rlnumericspec.html
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