Investigation under the development of the master thesis "DeepRL-based Motion Planning for Indoor Mobile Robot Navigation" @ Institute of Systems and Robotics - University of Coimbra (ISR-UC)
Module | Software/Hardware |
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Python IDE | Pycharm |
Deep Learning library | Tensorflow + Keras |
GPU | GeForce GTX 1060 |
Interpreter | Python 3.8 |
Packages | requirements.txt |
To setup Pycharm + Anaconda + GPU, consult the setup file here.
To import the required packages (requirements.txt), download the file into the project folder and type the following instruction in the project environment terminal:
pip install -r requirements.txt
The training process generates a .txt file that track the network models (in 'tf' and .h5 formats) which achieved the solved requirement of the environment. Additionally, an overview image (graph) of the training procedure is created.
To perform several training procedures, the .txt, .png, and directory names must be change. Otherwise, the information of previous training models will get overwritten, and therefore lost.
Regarding testing the saved network models, if using the .h5 model, a 5 episode training is required to initialize/build the keras.model network. Thus, the warnings above mentioned are also appliable to this situation.
Loading the saved model in 'tf' is the recommended option. After finishing the testing, an overview image (graph) of the training procedure is also generated.
Actions:
0 - Push cart to the left
1 - Push cart to the right
States:
0 - Cart position [-2.4, 2.4]
1 - Cart velocity [-inf, inf]
2 - Pole angle [-41.8°, 41.8°]
3 - Pole velocity (at top) [-inf, inf]
Rewards:
Scalar value (1) for every step taken
Episode termination:
12° < Pole angle (State 2) < -12°
2.4 < Cart position (State 0) < -2.4
Episode length > 200
Solved Requirement:
Average reward of 195.0 over 100 consecutive trials
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Network model used for testing: 'saved_networks/dqn_model10' ('tf' model, also available in .h5)
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Network model used for testing: 'saved_networks/duelingdqn_model20' ('tf' model, also available in .h5)
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Network model used for testing: 'saved_networks/d3qn_model20' ('tf' model, also available in .h5)