A Multi-Agent System for Autonomous Adaptive Control of a Flapping-Wing Micro Air Vehicle
Title | A Multi-Agent System for Autonomous Adaptive Control of a Flapping-Wing Micro Air Vehicle |
Publication Type | Conference Paper |
Year of Publication | 2015 |
Authors | G. Greenwood, M. Podhradsky, J. Gallagher, E. Matson |
Conference Name | 2015 IEEE Symposium Series on Computational Intelligence |
Date Published | Dec |
Keywords | 1239196, adaptive control, agent task scheduling, autonomous adaptive control, autonomous aerial vehicles, biomimetic flapping-wing vehicles, biomimetics, Cameras, Color, extrinsic evolution, fault tolerant control, flapping-wing microair vehicle, Force, intrinsic evolution, knowledge based systems, learning (artificial intelligence), microrobots, mobile robots, Monitoring, motion control, multi-agent systems, multiagent adaptive controller, multiagent system architecture, online learning process, rule base design, Storage tanks, subsumption architecture rule base, telerobotics, vehicle control, vehicle pose estimation, Vehicles, wing movements split-cycle control |
Abstract | Biomimetic flapping wing vehicles have attracted recent interest because of their numerous potential military and civilian applications. In this paper we describe the design of a multi-agent adaptive controller for such a vehicle. This controller is responsible for estimating the vehicle pose (position and orientation) and then generating four parameters needed for split-cycle control of wing movements to correct pose errors. These parameters are produced via a subsumption architecture rule base. The control strategy is fault tolerant. Using an online learning process an agent continuously monitors the vehicle's behavior and initiates diagnostics if the behavior has degraded. This agent can then autonomously adapt the rule base if necessary. Each rule base is constructed using a combination of extrinsic and intrinsic evolution. Details on the vehicle, the multi-agent system architecture, agent task scheduling, rule base design, and vehicle control are provided. |
DOI | 10.1109/SSCI.2015.154 |
Citation Key | 7376730 |
- microrobots
- wing movements split-cycle control
- vehicles
- vehicle pose estimation
- vehicle control
- telerobotics
- subsumption architecture rule base
- Storage tanks
- rule base design
- online learning process
- multiagent system architecture
- multiagent adaptive controller
- multi-agent systems
- motion control
- Monitoring
- mobile robots
- adaptive control
- learning (artificial intelligence)
- knowledge based systems
- intrinsic evolution
- Force
- flapping-wing microair vehicle
- fault tolerant control
- extrinsic evolution
- Color
- Cameras
- biomimetics
- biomimetic flapping-wing vehicles
- autonomous aerial vehicles
- autonomous adaptive control
- agent task scheduling
- 1239196