Terrestrial Testing of Multi-Agent, Relative Guidance, Navigation, and Control Algorithms

Author(s):  
Mark Mercier ◽  
Sean Phillips ◽  
Matt Shubert ◽  
Wenjie Dong
Author(s):  
Anna Lukina

I develop novel intelligent approximation algorithms for solving modern problems of CPSs, such as control and verification, by combining advanced statistical methods. it is important for the control algorithms underlying the class of multi-agent CPSs to be resilient to various kinds of attacks, and so it is for my algorithms. I have designed a very general adaptive receding-horizon synthesis approach to planning and control that can be applied to controllable stochastic dynamical systems. Apart from being fast and efficient, it provides statistical guarantees of convergence. The optimization technique based on the best features of Model Predictive Control and Particle Swarm Optimization proves to be robust in finding a winning strategy in the stochastic non-cooperative games against a malicious attacker. The technique can further benefit probabilistic model checkers and real-world CPSs.


2014 ◽  
Vol 971-973 ◽  
pp. 1255-1260
Author(s):  
Li Li Wu ◽  
Yan Ling Zheng ◽  
Tie Jun Chen

In this paper, a small multi-agent system (MAS) is proposed based on behavioral approach for the complex grinding processes. Causal association agents were established according to the material balance of grinding processes, and prediction agents and stability control agents were built by adding prediction and control algorithms. The simulation results prove that the system has good stability and anti-interference performance. Multi-agent behavioral control method can be considered as a potential solution to stabilize grinding processes.


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