论文标题

在资源受限的远程状态估计中改进了基于事件的粒子过滤

Improved event-based particle filtering in resource-constrained remote state estimation

论文作者

Ruuskanen, Johan, Cervin, Anton

论文摘要

已经提出了基于事件的抽样作为降低远程状态估计中平均通信率的一般技术,这在对网络带宽或传感器能量等资源的限制中可能很重要。最近,将粒子过滤器应用于基于事件的状态估计的兴趣已经上升了,部分是为了解决非线性和非高斯问题,但也是因为基于事件的采样不允许对线性 - 高斯系统的分析解决方案。到目前为止,关于将粒子过滤应用于基于事件的状态估计时出现的实际问题很少。 In this paper, we provide such a discussion by (i) demonstrating that there exists a high risk of sample degeneracy at new events, for which the auxiliary particle filter provides an intuitive solution, (ii) introducing a new alternative to the local predictor approach based on precomputing state estimates which is better suited to solve the issue of observer-to-sensor communication for closed-loop triggering in difficult systems, and (iii) exploring the difficulties surrounding the increased在基于事件的采样下实现粒子过滤器时的计算负载。

Event-based sampling has been proposed as a general technique for lowering the average communication rate in remote state estimation, which can be important in scenarios with constraints on resources such as network bandwidth or sensor energy. Recently, the interest of applying particle filters to event-based state estimation has seen an upswing, partly to tackle nonlinear and non-Gaussian problems, but also since event-based sampling does not allow an analytic solution for linear--Gaussian systems. Thus far, very little has been mentioned regarding the practical issues that arise when applying particle filtering to event-based state estimation. In this paper, we provide such a discussion by (i) demonstrating that there exists a high risk of sample degeneracy at new events, for which the auxiliary particle filter provides an intuitive solution, (ii) introducing a new alternative to the local predictor approach based on precomputing state estimates which is better suited to solve the issue of observer-to-sensor communication for closed-loop triggering in difficult systems, and (iii) exploring the difficulties surrounding the increased computational load when implementing the particle filter under event-based sampling.

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