In this paper, the information-weighted consensus filter (ICF) with partial information exchange is proposed to reduce the bandwidth of the signals transmitted between the sensor nodes and guarantee its convergence to the centralized Kalman filter (CKF). In the proposed algorithm, a part of information chosen with the entry selection matrix is transmitted to the sensor nodes in the neighborhood at each consensus step, and consensus averaging is conducted at each sensor node with the partial and the local information. This ensures that the proposed distributed estimation algorithm converges to the centralized algorithm, while allowing the proposed algorithm to achieve bandwidth reduction of the signals transmitted between the sensors. With the proposed algorithm, the stability of the estimation error dynamics is proven and the convergence to the centralized algorithm is mathematically shown using the property of the average consensus. Simulations are conducted to validate the proposed ICF with partial information exchange and the related theoretical findings.
翻译:本文建议采用信息加权共识过滤器(ICF)进行部分信息交流,以减少传感器节点之间传送信号的带宽,保证与中央卡尔曼过滤器(CKF)的连接。在拟议的算法中,通过输入选择矩阵所选定的部分信息在每个协商一致步骤中传送给周边的传感器节点,每个传感器节点都使用部分和地方信息进行平均共识。这确保拟议的分布估计算法与中央算法一致,同时允许拟议的算法减少传感器之间传送的信号的带宽。在拟议的算法中,估计误差动态的稳定性得到证明,与中央算法的趋同用平均共识的特性在数学上得到显示。进行模拟,通过部分信息交流和相关理论结论来验证拟议的ICF。