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MAP moving horizon estimation for threshold measurements with application to field monitoring

机译:使用应用于现场监控的阈值测量来映射移动地平线估计

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This paper deals with state estimation of a spatially distributed system given noisy measurements from pointwise-in-time-and-space threshold sensors spread over the spatial domain of interest. Amaximum a posteriori probability(MAP) approach is undertaken and amoving horizon(MH) approximation of the MAP cost function is adopted. It is proved that, under system linearity and log-concavity of the noise probability density functions, the proposed MH-MAP state estimator amounts to the solution, at each sampling interval, of a convex optimization problem. Moreover, a suitable centralized solution for large-scale systems is proposed with a substantial decrease of the computational complexity. The latter algorithm is shown to be feasible for the state estimation of spatially dependent dynamic fields described bypartial differential equationsvia the use of thefinite elementspatial discretization method. A simulation case study concerning estimation of a diffusion field is presented in order to demonstrate the effectiveness of the proposed approach. Quite remarkably, the numerical tests exhibit anoise-assistedbehavior of the proposed approach in that the estimation accuracy results optimal in the presence of measurement noise with non-null variance.
机译:本文涉及空间分布的系统的状态估计,给出了来自点上时空的阈值传感器的噪声测量,这些阈值传感器扩展到感兴趣的空间领域。采用Amaximum的后验概率(MAP)方法,采用并采用地图成本函数的地平线(MH)近似。事实证明,在噪声概率密度函数的系统线性度和对数凹陷下,所提出的MH-MAP状态估计器在凸优化问题的每个采样间隔处的解决方案中的求解量。此外,提出了用于大规模系统的合适的集中解决方案,其计算复杂性的显着降低。后者算法被证明是对由分子差分方程式描述的空间依赖性动态字段的状态估计是可行的差分算术的使用。提出了关于估计扩散场的模拟案例研究,以证明所提出的方法的有效性。非常值得注意地,数值测试表现出所提出的方法的一个Anoise辅助方法,因为估计精度会在具有非空差异的测量噪声的存在下最佳。

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