Abstract

For target tracking in radar network, any anomaly in a part of the system can quickly spread over the network and lead to tracking failures. False data injection (FDI) attacks can damage the state estimation mechanism by modifying the radar measurements with unknown and time-varying attack variables, therefore making traditional filters inapplicable. To tackle this problem, we propose a novel consensus-based distributed state estimation (DSE) method for target tracking with FDI attacks, which is effective even when all radars are under FDI attacks. First, a real-time residual-based detector is introduced to the DSE framework, which can effectively detect FDI attacks by analyzing the statistical properties of the residual. Secondly, a simple yet effective attack parameter estimation method is proposed to provide attack parameter estimation based on a pseudo-measurement equation, which has the advantage of decoupled estimation of state and attack parameters compared with augmented state filters. Finally, for timely attack mitigation and global consistency achievement, a novel hybrid consensus method is proposed which can compensate for the estimation error caused by FDI attacks and provide estimation accuracy improvement. The simulation results show that the proposed solution is effective and superior to the traditional DSE method for target tracking in the presence of FDI attacks.

Highlights

  • A novel, consensus-based distributed state estimation (DSE) algorithm is proposed to enhance the resilience of radar networks against False data injection (FDI) attacks

  • We propose a novel DSE method that can combat FDI attacks for radar networks and provide high accuracy target tracking results

  • This paper studied distributed target tracking with FDI attacks

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. For DSE, consensus estimation is an effective tool for state estimation in sensor networks that are not fully connected to achieve global consistency. A novel, consensus-based DSE algorithm is proposed to enhance the resilience of radar networks against FDI attacks. Note that even if half of the sensors are under an FDI attack, the proposed method is effective. To estimate the FDI attack parameters, a simple yet effective attack parameter estimation method is proposed based on a pseudo-measurement equation, which has the. To mitigate the FDI attack and achieve global consistency in a timely manner, a novel hybrid consensus method is proposed by combining the CM and CI methods, which can provide estimation accuracy improvement when the number of consensus iterations is moderate.

Problem Formulation
Topology Structure
Target Dynamics and Radar Measurement Model
Distributed State Estimation Algorithm with False Data Injection Attacks
Injected Data Detection
Attack Parameter Estimation
Time Update for Each Group
Hybrid Consensus
6: Procedure2: Attack parameter estimation
13: Procedure4: Hybrid consensus
Numerical Simulation
Two Radars under Attack
Four Radars under Attack
Discussion
Full Text
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