How can I have several actions for a DQN in the Reinforcement Learning Toolbox?

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I'm trying to define the output of a DQN agent with a custom environment, and can't use the actionInfo = rlFiniteSetSpec() correctly.
I'm trying to control 3 actuators that will receive commands 0 and 1.
I always get number of actions = 1.
And the documentation is not clear as it's a new toolbox.
Any suggestions?
  3 comentarios
Rusczak
Rusczak el 8 de Jul. de 2020
Yes,
I followed Emmanouil's suggestion:
actInfo = rlFiniteSetSpec({[0; 0; 0]; [1; 1; 1]; ...
[1; 0; 0]; [0; 1; 0]; [0; 0; 1]; ...
[1; 1; 0]; [0; 1; 1]; [1; 0; 1]})
Huzaifah Shamim
Huzaifah Shamim el 9 de Jul. de 2020
Oh nice okok. What custom environment where you trying to make?
Also how should I approach it if i have 3 agents (like your three actuators) but 12 actions could be applied to them?

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Emmanouil Tzorakoleftherakis
Emmanouil Tzorakoleftherakis el 11 de Mayo de 2019
If you type
help rlFiniteSetSpec
the second example is
spec = rlFiniteSetSpec({[0,1];[1,1];[1,2];[1,3]})
If you define all possible combinations of the discrete inputs in a cell array as above, that should work (think of a single action as one possible combination of your 3 actuator commands).
I hope this helps.

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