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Sensor selection cost optimisation for tracking structurally cyclic systems: a P-order solution

机译:用于跟踪结构循环系统的传感器选择成本优化:P阶解决方案

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摘要

Measurements and sensing implementations impose certain cost in sensor networks. The sensor selection cost optimisation is the problem of minimising the sensing cost of monitoring a physical (or cyber-physical) system. Consider a given set of sensors tracking states of a dynamical system for estimation purposes. For each sensor assume different costs to measure different (realisable) states. The idea is to assign sensors to measure states such that the global cost is minimised. The number and selection of sensor measurements need to ensure the observability to track the dynamic state of the system with bounded estimation error. The main question we address is how to select the state measurements to minimise the cost while satisfying the observability conditions. Relaxing the observability condition for structurally cyclic systems, the main contribution is to propose a graph theoretic approach to solve the problem in polynomial time. Note that polynomial time algorithms are suitable for large-scale systems as their running time is upper-bounded by a polynomial expression in the size of input for the algorithm. We frame the problem as a linear sum assignment with solution complexity of O(m(3)).
机译:测量和感测实施会在传感器网络中带来一定的成本。传感器选择成本的优化是使监视物理(或电子物理)系统的传感成本最小化的问题。考虑用于跟踪目的的给定的一组传感器来跟踪动态系统的状态。对于每个传感器,假定测量不同(可靠)状态的成本不同。想法是分配传感器以测量状态,以使总成本最小化。传感器测量的数量和选择需要确保可观察性以有限的估计误差跟踪系统的动态状态。我们要解决的主要问题是如何在满足可观察性条件的同时选择状态测量以最小化成本。放松结构循环系统的可观测性条件,主要贡献是提出了一种图形理论方法来解决多项式时间内的问题。请注意,多项式时间算法适用于大型系统,因为其运行时间受该算法输入大小的多项式表达式的上限。我们将问题构造为线性和分配,其解决方案复杂度为O(m(3))。

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