This paper studies the event-triggered distributed fusion estimation problems for a class of nonlinear networked multisensor fusion systems without noise statistical characteristics. When considering the limited resource problems of two kinds of communication channels (i.e., sensor-to-remote estimator channel and smart sensor-to-fusion center channel), an event-triggered strategy and a dimensionality reduction strategy are introduced in a unified networked framework to lighten the communication burden. Then, two kinds of compensation strategies in terms of a unified model are designed to restructure the untransmitted information, and the local/fusion estimators are proposed based on the compensation information. Furthermore, the linearization errors caused by the Taylor expansion are modeled by the state-dependent matrices with uncertain parameters when establishing estimation error systems, and then different robust recursive optimization problems are constructed to determine the estimator gains and the fusion criteria. Meanwhile, the stability conditions are also proposed such that the square errors of the designed nonlinear estimators are bounded. Finally, a vehicle localization system is employed to demonstrate the effectiveness and advantages of the proposed methods.
翻译:本文研究一类非线性网络多传感器或聚合系统在不具有噪音统计特征的情况下因事件引发的分布式聚变估计问题。在考虑两类通信渠道(即传感器至远程估计信道和智能传感器至聚变中心信道)的有限资源问题时,在统一的网络框架内采用事件触发战略和维度减少战略,以减轻通信负担。然后,设计了两种统一模式的赔偿战略,以调整未传送的信息,并根据补偿信息提出了局部/聚变估计数据。此外,泰勒扩张造成的线性错误是由建立在估算错误系统时参数不确定的州基体模拟的,然后形成了不同的稳健循环优化问题,以确定估计收益和聚变标准。与此同时,还提出了稳定条件,使设计的非线性估测器的平方错误受到约束。最后,车辆本地化系统用于证明拟议方法的有效性和优势。