Full metadata
Title
Pain-Inspired Intrinsic Reward For Deep Reinforcement Learning
Description
Reinforcement learning (RL) is a powerful methodology for teaching autonomous agents complex behaviors and skills. A critical component in most RL algorithms is the reward function -- a mathematical function that provides numerical estimates for desirable and undesirable states. Typically, the reward function must be hand-designed by a human expert and, as a result, the scope of a robot's autonomy and ability to safely explore and learn in new and unforeseen environments is constrained by the specifics of the designed reward function. In this thesis, I design and implement a stateful collision anticipation model with powerful predictive capability based upon my research of sequential data modeling and modern recurrent neural networks. I also develop deep reinforcement learning methods whose rewards are generated by self-supervised training and intrinsic signals. The main objective is to work towards the development of resilient robots that can learn to anticipate and avoid damaging interactions by combining visual and proprioceptive cues from internal sensors. The introduced solutions are inspired by pain pathways in humans and animals, because such pathways are known to guide decision-making processes and promote self-preservation. A new "robot dodge ball' benchmark is introduced in order to test the validity of the developed algorithms in dynamic environments.
Date Created
2018
Contributors
- Richardson, Trevor W (Author)
- Ben Amor, Heni (Thesis advisor)
- Yang, Yezhou (Committee member)
- Srivastava, Siddharth (Committee member)
- Arizona State University (Publisher)
Topical Subject
Resource Type
Extent
94 pages
Language
eng
Copyright Statement
In Copyright
Primary Member of
Peer-reviewed
No
Open Access
No
Handle
https://hdl.handle.net/2286/R.I.50612
Level of coding
minimal
Note
Masters Thesis Computer Science 2018
System Created
- 2018-10-01 08:07:45
System Modified
- 2021-08-26 09:47:01
- 3 years 2 months ago
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