Skip to main content

LUP Student Papers

LUND UNIVERSITY LIBRARIES

Local Planning for Unmanned Ground Vehicles using Imitation Learning

Henningsson, Johan (2023)
Department of Automatic Control
Abstract
Mobile robotics is an expanding field worldwide leading to the need for advanced path-planning algorithms that can traverse various environments. Current state-ofthe- art path-planning algorithms used at the Swedish Defence Research Agency, FOI, tend to be inflexible and parameter dependent. The parameters might need to be tuned for each new environment, which is a very labor-intensive process.
This thesis investigates the possibility to replace computationally heavy pathplanning algorithms with neural networks using Imitation Learning. Neural networks with and without Long Short-Term Memory (LSTM) layers were trained and evaluated. The network without LSTM failed to capture the temporal dependency of the input data, which lead to poor... (More)
Mobile robotics is an expanding field worldwide leading to the need for advanced path-planning algorithms that can traverse various environments. Current state-ofthe- art path-planning algorithms used at the Swedish Defence Research Agency, FOI, tend to be inflexible and parameter dependent. The parameters might need to be tuned for each new environment, which is a very labor-intensive process.
This thesis investigates the possibility to replace computationally heavy pathplanning algorithms with neural networks using Imitation Learning. Neural networks with and without Long Short-Term Memory (LSTM) layers were trained and evaluated. The network without LSTM failed to capture the temporal dependency of the input data, which lead to poor performance. Using LSTM layers performed close to the imitated algorithm in the training environment and in certain situations, the trained neural network outperformed the algorithm by a big margin. In conclusion, neural networks are, after training, able to replace path-planning algorithms and in certain scenarios, the network outperforms the algorithm. Further work is needed to get a robust local planner with a neural network as a base. (Less)
Please use this url to cite or link to this publication:
author
Henningsson, Johan
supervisor
organization
year
type
H3 - Professional qualifications (4 Years - )
subject
report number
TFRT-6210
other publication id
0280-5316
language
English
id
9136961
date added to LUP
2023-09-12 14:05:25
date last changed
2023-09-12 14:05:25
@misc{9136961,
  abstract     = {{Mobile robotics is an expanding field worldwide leading to the need for advanced path-planning algorithms that can traverse various environments. Current state-ofthe- art path-planning algorithms used at the Swedish Defence Research Agency, FOI, tend to be inflexible and parameter dependent. The parameters might need to be tuned for each new environment, which is a very labor-intensive process. 
 This thesis investigates the possibility to replace computationally heavy pathplanning algorithms with neural networks using Imitation Learning. Neural networks with and without Long Short-Term Memory (LSTM) layers were trained and evaluated. The network without LSTM failed to capture the temporal dependency of the input data, which lead to poor performance. Using LSTM layers performed close to the imitated algorithm in the training environment and in certain situations, the trained neural network outperformed the algorithm by a big margin. In conclusion, neural networks are, after training, able to replace path-planning algorithms and in certain scenarios, the network outperforms the algorithm. Further work is needed to get a robust local planner with a neural network as a base.}},
  author       = {{Henningsson, Johan}},
  language     = {{eng}},
  note         = {{Student Paper}},
  title        = {{Local Planning for Unmanned Ground Vehicles using Imitation Learning}},
  year         = {{2023}},
}