Multi-robot transfer learning: A dynamical system perspective
Title | Multi-robot transfer learning: A dynamical system perspective |
Publication Type | Conference Paper |
Year of Publication | 2017 |
Authors | Helwa, M. K., Schoellig, A. P. |
Conference Name | 2017 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS) |
Keywords | basic system properties, composability, dynamic system, dynamical system perspective, Dynamical Systems, Heuristic algorithms, learning (artificial intelligence), Linear systems, Metrics, multi-robot systems, multirobot transfer learning, Nonlinear dynamical systems, optimal dynamic map, optimal static map, optimal transfer learning map, optimal transfer map, pubcrawl, regression analysis, regressors, resilience, Resiliency, Robot kinematics, similar robot, single-input single-output systems, SISO systems, Transfer functions, transfer learning algorithms, transfer learning error |
Abstract | Multi-robot transfer learning allows a robot to use data generated by a second, similar robot to improve its own behavior. The potential advantages are reducing the time of training and the unavoidable risks that exist during the training phase. Transfer learning algorithms aim to find an optimal transfer map between different robots. In this paper, we investigate, through a theoretical study of single-input single-output (SISO) systems, the properties of such optimal transfer maps. We first show that the optimal transfer learning map is, in general, a dynamic system. The main contribution of the paper is to provide an algorithm for determining the properties of this optimal dynamic map including its order and regressors (i.e., the variables it depends on). The proposed algorithm does not require detailed knowledge of the robots' dynamics, but relies on basic system properties easily obtainable through simple experimental tests. We validate the proposed algorithm experimentally through an example of transfer learning between two different quadrotor platforms. Experimental results show that an optimal dynamic map, with correct properties obtained from our proposed algorithm, achieves 60-70% reduction of transfer learning error compared to the cases when the data is directly transferred or transferred using an optimal static map. |
URL | https://ieeexplore.ieee.org/document/8206342 |
DOI | 10.1109/IROS.2017.8206342 |
Citation Key | helwa_multi-robot_2017 |
- optimal transfer learning map
- transfer learning error
- transfer learning algorithms
- Transfer functions
- SISO systems
- single-input single-output systems
- similar robot
- Robot kinematics
- Resiliency
- resilience
- regressors
- regression analysis
- pubcrawl
- optimal transfer map
- basic system properties
- optimal static map
- optimal dynamic map
- Nonlinear dynamical systems
- multirobot transfer learning
- multi-robot systems
- Metrics
- Linear systems
- learning (artificial intelligence)
- Heuristic algorithms
- Dynamical Systems
- dynamical system perspective
- dynamic system
- composability