DQN_of_DWA_matlab
DQN for DWA
An implementation of Deep Q-Learning on Dynamic Window Approach in MATLAB
learning the weight of each paras in DWA(Dynamic Window Approach) by using DQN(Deep Q-Learning)
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Language: Matlab
last commit: over 6 years ago
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