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Decentralized Dynamic Data-driven Monitoring of Atmospheric Dispersion Processes

机译:分散动态数据驱动的大气弥散过程监测

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摘要

Online state and parameter estimation of atmospheric dispersion processes using multiple mobile sensor platforms is a prominent example of Dynamic Data-Driven Application Systems (DDDAS). Based on repeated predictions of a partial differential equation (PDE) model and measurements of the sensor network, estimates are updated and sensor trajectories are adapted to obtain more informative measurements. While most of the monitoring strategies require a central supercomputer, a novel decentralized plume monitoring approach is proposed in this paper. It combines the benefits of distributed approaches like scalability and robustness with the prediction ability of PDE process models. The strategy comprises model order reduction to keep calculations computationally tractable and a joint Kalman Filter with Covariance Intersection for incorporating measurements and propagating state information in the sensor network. Moreover, a cooperative vehicle controller is employed to guide the sensor vehicles to dynamically updated target locations that are based on the current estimated error variance.
机译:使用多个移动传感器平台的大气扩散过程的在线状态和参数估计是动态数据驱动应用系统(DDDAS)的一个突出示例。基于对偏微分方程(PDE)模型的重复预测和传感器网络的测量,更新估计值,并调整传感器轨迹以获得更多信息。尽管大多数监视策略都需要中央超级计算机,但本文提出了一种新颖的分散羽流监视方法。它结合了可扩展性和鲁棒性等分布式方法的优势以及PDE过程模型的预测能力。该策略包括减少模型阶数以保持计算的可计算性,以及带有协方差相交的联合卡尔曼滤波器,用于在传感器网络中合并测量值和传播状态信息。此外,采用协作车辆控制器来引导传感器车辆到基于当前估计的误差方差的动态更新的目标位置。

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