DQN_of_DWA_matlab

DQN Training

Trains a Deep Q-Network to learn the weights of DWA's parameters

learning the weight of each paras in DWA(Dynamic Window Approach) by using DQN(Deep Q-Learning)

GitHub

70 stars
0 watching
20 forks
Language: Matlab
last commit: about 6 years ago
Linked from 1 awesome list


Backlinks from these awesome lists:

Related projects:

Repository Description Stars
senya-ashukha/quantile-regression-dqn-pytorch An implementation of a reinforcement learning algorithm using quantile regression to model distributional behavior in agent-environment interactions. 94
vlgiitr/dmn-plus A PyTorch implementation of an improved question answering architecture with dynamic memory networks and attention mechanisms 64
muupan/dqn-in-the-caffe An implementation of Deep Q-Network using Caffe to train and test reinforcement learning algorithms. 213
dianixn/signal_detection_ofdmpowerofdnn A MATLAB implementation demonstrating the power of deep learning in signal detection and channel estimation for OFDM systems 115
hannah-zhou/optimization_algorithm A comprehensive collection of optimization algorithms implemented in MATLAB 178
kuz/deepmind-atari-deep-q-learner An implementation of a deep reinforcement learning architecture for playing Atari games 1,826
drkehan/dta Computes dynamic user equilibria on large-scale transportation networks using MATLAB 66
xuboming8/dstnet This repository implements a deep learning-based video deblurring method using PyTorch. 64
hungtuchen/pytorch-dqn An implementation of a deep reinforcement learning network using PyTorch to learn human-level control through trial and error. 386
zhiwu-huang/lienet This project uses deep learning and Lie group theory to recognize actions from skeleton data 64
floringogianu/categorical-dqn An implementation of reinforcement learning algorithm using PyTorch and designed to work with Atari games. 96
deng-cy/deep_learning_topology_opt A toolkit for using machine learning to optimize complex geometries in simulations 107
jnhwkim/nips-mrn-vqa This project presents a neural network model designed to answer visual questions by combining question and image features in a residual learning framework. 39
yonghaoxu/rpnet Matlab implementation of a deep learning-based method for classifying hyperspectral images 55
xingjunm/dimensionality-driven-learning An implementation of dimensionality-driven learning with noisy labels using deep neural networks and various optimization techniques. 58