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A combined stochastic and greedy hybrid estimation capability for concurrent hybrid models with autonomous mode transitions

机译:具有自主模式转换的并发混合模型的组合的随机和贪婪混合估计能力

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摘要

Probabilistic hybrid discrete/continuous models, such as Concurrent Probabilistic Hybrid Automata (CPHA) are convenient tools for modeling complex robotic systems. In this paper, we present a novel method for estimating the hybrid state of CPHA that achieves robustness by balancing greedy and stochastic search. To accomplish this, we (1) develop an efficient stochastic sampling approach for CPHA based on Rao-Blackwellised Particle Filtering, (2) perform an empirical comparison of the greedy and stochastic approaches to hybrid estimation and (3) propose a strategy for mixing stochastic and greedy search. The resulting method handles nonlinear dynamics, concurrently operating components and autonomous mode transitions. We demonstrate the robustness of the mixed method empirically.
机译:诸如并行概率混合自动机(CPHA)之类的概率混合离散/连续模型是用于对复杂机器人系统进行建模的便捷工具。在本文中,我们提出了一种新的估计CPHA混合状态的方法,该方法通过平衡贪婪和随机搜索来实现鲁棒性。为此,我们(1)为基于Rao-Blackwellised粒子滤波的CPHA开发了一种有效的随机采样方法,(2)对贪婪和随机方法进行混合估计进行了实证比较,(3)提出了一种混合随机策略和贪婪的搜索。所得方法处理非线性动力学,同时运行的组件和自主模式转换。我们通过经验证明了混合方法的鲁棒性。

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