Performance analysis of stochastic behavior trees

Robotics and Automation(2014)

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摘要
This paper presents a mathematical framework for performance analysis of Behavior Trees (BTs). BTs are a recent alternative to Finite State Machines (FSMs), for doing modular task switching in robot control architectures. By encoding the switching logic in a tree structure, instead of distributing it in the states of a FSM, modularity and reusability are improved. In this paper, we compute performance measures, such as success/failure probabilities and execution times, for plans encoded and executed by BTs. To do this, we first introduce Stochastic Behavior Trees (SBT), where we assume that the probabilistic performance measures of the basic action controllers are given. We then show how Discrete Time Markov Chains (DTMC) can be used to aggregate these measures from one level of the tree to the next. The recursive structure of the tree then enables us to step by step propagate such estimates from the leaves (basic action controllers) to the root (complete task execution). Finally, we verify our analytical results using massive Monte Carlo simulations, and provide an illustrative example of the results for a complex robotic task.
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关键词
Markov processes,discrete time systems,finite state machines,robots,trees (mathematics),DTMC,FSM,Monte Carlo simulations,SBT,complex robotic task,discrete time Markov chains,finite state machines,modular task switching,performance analysis,performance measures,robot control architectures,stochastic behavior trees,success-failure probabilities,switching logic,tree structure
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