Xufeng Lin , Yanyan Hu , Xuechun Zhang , Kaixiang Peng
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引用次数: 0
Abstract
This paper is concerned with encoding–decoding-based distributed state estimation over sensor networks under DoS attacks. Different from most of the existing research results on distributed state estimation for sensor networks, where all sensors are assumed to have sufficiently wide sensing ranges, this paper considers sensors with limited sensing ranges. Therefore, the problem studied has more practical significance. To save the limited bandwidth resources of sensor networks, a two-channel encoding–decoding scheme (EDS) based on probability is proposed for each node to compress the transmitted data to an acceptable range, where independent DoS attacks are launched randomly on the communication channels between nodes. Then, a distributed state estimator with limited sensing ranges under DoS attacks in the presence of both the sensor-estimator channel EDS and the node–node channel EDS is constructed under the criterion of minimum mean-square error. Furthermore, considering the real-time changes of the communication topology resulting from independent DoS attacks and the uncertainty introduced by the node–node channel EDS, the upper bound of the expected estimation error covariance is derived and the boundedness of the upper bound is analyzed under given assumption conditions. Finally, a numerical example is exhibited to illustrate the effectiveness of the designed algorithm.
本文关注在 DoS 攻击下基于编码-解码的传感器网络分布式状态估计。与现有的大多数关于传感器网络分布式状态估计的研究成果不同,本文假定所有传感器都有足够宽的感应范围,而考虑的是感应范围有限的传感器。因此,所研究的问题更具有实际意义。为了节省传感器网络有限的带宽资源,本文提出了一种基于概率的双信道编码-解码方案(EDS),在节点间的通信信道上随机发起独立的 DoS 攻击,将每个节点的传输数据压缩到可接受的范围。然后,根据均方误差最小的准则,在传感器-估计器信道 EDS 和节点-节点信道 EDS 同时存在的情况下,构建了一种在 DoS 攻击下具有有限感知范围的分布式状态估计器。此外,考虑到独立 DoS 攻击导致的通信拓扑实时变化以及节点-节点信道 EDS 带来的不确定性,得出了预期估计误差协方差的上界,并在给定的假设条件下分析了上界的有界性。最后,通过一个数值示例说明了所设计算法的有效性。
期刊介绍:
Neurocomputing publishes articles describing recent fundamental contributions in the field of neurocomputing. Neurocomputing theory, practice and applications are the essential topics being covered.