Verification And Control Of Hybrid Systems Using Reachability Analysis With Machine Learning

CPSWEEK(2012)

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摘要
This talk will present reachability analysis as a tool for model checking and controller synthesis for dynamic systems. We will consider the problem of guaranteeing reachability to a given desired subset of the state space while satisfying a safety property defined in terms of state constraints. We allow for nonlinear and hybrid dynamics, and possibly non-convex state constraints. We use these results to synthesize controllers that ensure safety and reachability properties under bounded model disturbances that vary continuously.The resulting control policy is a set-valued feedback map involving both a selection of continuous inputs and discrete switching commands as a function of system state. We show that new control policies based on machine learning are included in this map, resulting in high performance with guarantees of safety. We discuss real-time implementations of this, and present several examples from multiple aerial vehicle control, human-robot interaction, and multiple player games.
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关键词
Hybrid systems,Reachability
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