Abstract:
Multi-robot cooperation requires agents to make decisions that are consistent with the shared goal without disregarding action-specific preferences that might arise from ...Show MoreMetadata
Abstract:
Multi-robot cooperation requires agents to make decisions that are consistent with the shared goal without disregarding action-specific preferences that might arise from asymmetry in capabilities and individual objectives. To accomplish this goal, we propose a method named SLiCC: Stackelberg Learning in Cooperative Control. SLiCC models the problem as a partially observable stochastic game composed of Stackelberg bimatrix games, and uses deep reinforcement learning to obtain the payoff matrices associated with these games. Appropriate cooperative actions are then selected with the derived Stackelberg equilibria. Using a bi-robot cooperative object transportation problem, we validate the performance of SLiCC against centralized multi-agent Q-learning and demonstrate that SLiCC achieves better combined utility.
Date of Conference: 24 October 2020 - 24 January 2021
Date Added to IEEE Xplore: 10 February 2021
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Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Mobile Robot ,
- Cooperative Control ,
- Deep Learning ,
- Deep Reinforcement Learning ,
- Cooperative Problem ,
- Payoff Matrix ,
- Neural Network ,
- Learning Process ,
- State Space ,
- Best Response ,
- Common Objects ,
- Multi-agent Systems ,
- Problem Setting ,
- Reward Function ,
- Linear Velocity ,
- Policy Learning ,
- Global Goals ,
- Learning Center ,
- Independent Learning ,
- Communication Requirements ,
- Real Robot ,
- Deep Q-network ,
- Decision-making Strategies ,
- Reinforcement Learning Agent ,
- Decisive Step ,
- Average Reward ,
- Rest Of The Paper ,
- Angular Velocity ,
- Role Of Agency
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Mobile Robot ,
- Cooperative Control ,
- Deep Learning ,
- Deep Reinforcement Learning ,
- Cooperative Problem ,
- Payoff Matrix ,
- Neural Network ,
- Learning Process ,
- State Space ,
- Best Response ,
- Common Objects ,
- Multi-agent Systems ,
- Problem Setting ,
- Reward Function ,
- Linear Velocity ,
- Policy Learning ,
- Global Goals ,
- Learning Center ,
- Independent Learning ,
- Communication Requirements ,
- Real Robot ,
- Deep Q-network ,
- Decision-making Strategies ,
- Reinforcement Learning Agent ,
- Decisive Step ,
- Average Reward ,
- Rest Of The Paper ,
- Angular Velocity ,
- Role Of Agency