用于空间分布过程识别的传感器网络调度

D. Ucinski
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引用次数: 34

摘要

该工作将偏微分方程描述的过程的故障检测问题视为参数假设检验的功率最大化问题,参数假设检验检查系统参数是否具有标称值。讨论了一种简单的节点激活策略,用于设计部署在空间域中的传感器网络,该网络用于检测控制过程演化的底层参数的变化。所考虑的设置涉及到一种情况,即由于成本限制,从有限的潜在传感器位置中只能选择其中的一个子集。作为一种合适的性能度量,对估计参数采用了在Fisher信息矩阵上定义的ds -最优性准则。然后将问题表述为确定测量站点的密度,以便最大化所采用的设计准则,并受到包含给定空间域中最大允许传感器密度的不等式约束。最优解的搜索是用简单分解算法进行的。通过一个涉及二维扩散过程传感器选择的数值例子说明了该方法的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensor network scheduling for identification of spatially distributed processes
Sensor network scheduling for identification of spatially distributed processes The work treats the problem of fault detection for processes described by partial differential equations as that of maximizing the power of a parametric hypothesis test which checks whether or not system parameters have nominal values. A simple node activation strategy is discussed for the design of a sensor network deployed in a spatial domain that is supposed to be used while detecting changes in the underlying parameters which govern the process evolution. The setting considered relates to a situation where from among a finite set of potential sensor locations only a subset of them can be selected because of the cost constraints. As a suitable performance measure, the Ds-optimality criterion defined on the Fisher information matrix for the estimated parameters is applied. The problem is then formulated as the determination of the density of gauged sites so as to maximize the adopted design criterion, subject to inequality constraints incorporating a maximum allowable sensor density in a given spatial domain. The search for the optimal solution is performed using a simplicial decomposition algorithm. The use of the proposed approach is illustrated by a numerical example involving sensor selection for a two-dimensional diffusion process.
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