Title
Deep Reinforcement Learning For Single-Shot Diagnosis And Adaptation In Damaged Robots
Abstract
Robotics has proved to be an indispensable tool in many industrial as well as social applications, such as warehouse automation, manufacturing, disaster robotics, etc. In most of these scenarios, damage to the agent while accomplishing mission-critical tasks can result in failure. To enable robotic adaptation in such situations, the agent needs to adopt policies which are robust to a diverse set of damages and must do so with minimum computational complexity. We thus propose a damage aware control architecture which diagnoses the damage prior to gait selection while also incorporating domain randomization in the damage space for learning a robust policy. To implement damage awareness, we have used a Long Short Term Memory based supervised learning network which diagnoses the damage and predicts the type of damage. The main novelty of this approach is that only a single policy is trained to adapt against a wide variety of damages and the diagnosis is done in a single trial at the time of damage.
Year
DOI
Venue
2020
10.1145/3371158.3371168
PROCEEDINGS OF THE 7TH ACM IKDD CODS AND 25TH COMAD (CODS-COMAD 2020)
Keywords
Field
DocType
Reinforcement Learning, Domain Adaptation, Damage recovery, Gait Selection, LSTM
Computer science,Artificial intelligence,Robot,Reinforcement learning
Conference
Citations 
PageRank 
References 
1
0.37
0
Authors
5
Name
Order
Citations
PageRank
Shresth Verma111.39
Haritha S. Nair210.37
Gaurav Agarwal310.37
Joydip Dhar43712.11
Anupam Shukla515822.92