Abstract
Abstract: High-level, real-time mission control of semi-autonomous robots, deployed in remote and dynamic environments, remains a challenge. Control models, learnt from a knowledgebase, quickly become obsolete when the environment or the knowledgebase changes. This research study introduces a cognitive reasoning process, to select the optimal action, using the most relevant knowledge from the knowledgebase, subject to observed evidence. The approach in this study introduces an adaptive entropy-based set-based particle swarm algorithm (AE-SPSO) and a novel, adaptive entropy-based fitness quantification (AEFQ) algorithm for evidence-based optimization of the knowledge. The performance of the AE-SPSO and AEFQ algorithms are experimentally evaluated with two unmanned aerial vehicle (UAV) benchmark missions: (1) relocating the UAV to a charging station and (2) collecting and delivering a package. Performance is measured by inspecting the success and completeness of the mission and the accuracy of autonomous flight control. The results show that the AE-SPSO/AEFQ approach successfully finds the optimal state-transition for each mission task and that autonomous flight control is successfully achieved.
| Original language | English |
|---|---|
| Article number | 1684 |
| Journal | SN Applied Sciences |
| Volume | 1 |
| Early online date | 26 Nov 2019 |
| DOIs | |
| Publication status | Published - 26 Nov 2019 |
Keywords
- Computer science and informatics
- Markov decision process
- adaptive entropy-based fitness quantification
- cognitive robotics
- engineering
- high-level robot control
- intelligent transport systems
- knowledge optimization
- maximum entropy principle
- new technologies in mechanical engineering
- research article
- robotics
- set-based particle swarm optimization