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Multiscale sensing with stochastic modeling

机译:随机建模的多尺度传感

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摘要

Many sensing applications require monitoring phenomena with complex spatio-temporal dynamics spread over large spatial domains. Efficient monitoring of such phenomena would require an impractically large number of static sensors; therefore, actuated sensing - mobile robots carrying sensors - is required. Path planning for these robots, i.e., deciding on a subset of locations to observe, is critical for high fidelity monitoring of expansive areas with complex dynamics. We propose MUST - a multiscale approach with stochastic modeling. MUST is a hierarchical approach that models the phenomena as a stochastic Gaussian process that is exploited to select a near-optimal subset of observation locations. We discuss in detail our proposed algorithm for the application of monitoring light intensity in a forest understory. We performed extensive empirical evaluations both in simulation using field data and on an actual cabled robotic system to validate the effectiveness of our proposed algorithm.
机译:许多传感应用都需要监视现象,这些现象具有分布在大空间域上的复杂时空动态。要有效监视此类现象,将需要大量不实际的静态传感器。因此,需要启动感应-带有传感器的移动机器人。这些机器人的路径规划,即决定要观察的位置的子集,对于具有复杂动态特性的扩展区域的高保真度监视至关重要。我们建议必须-一种具有随机建模的多尺度方法。 MUST是一种将现象建模为随机高斯过程的分层方法,可利用该过程选择观察点的最佳子集。我们将详细讨论我们提出的算法,该算法可用于监视林下的光照强度。我们在使用现场数据进行的仿真中以及在实际的有线机器人系统上均进行了广泛的经验评估,以验证所提出算法的有效性。

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