Neural-Network-based Event-triggered Adaptive Security Path Following
Control of AGVs Subject to Abnormal Actuator Signal
Abstract
The malicious physical attacks from both sensor and actuator side make
real threats to the security and safety of autonomous ground vehicles
(AGVs). This paper focuses on the problem of neural-network-based
event-triggered adaptive security control (ET-ASC) scheme for path
following of AGVs subject to arbitrary abnormal actuator signal.
Firstly, we assume that an arbitrary abnormal signal is caused by
arbitrary malicious attacks or disturbances from actuators. Then, radial
basis function neural network (RBF-NN) is used to reconstruct such
abnormal actuator signal. Secondly, modelling issues on security path
following control of AGVs with Sigmoid-like ETC scheme are shown when
the AGV is suffering from abnormal actuator signal. In what follows, an
ET-ASC scheme is developed to mitigate the adverse effects of abnormal
actuator signal with the reconstructed abnormal signal based on a novel
Sigmoid-like event-triggered communication scheme. By using the proposed
RBF-NN-based ET-ASC scheme, H ∞ control performance can be guaranteed
under arbitrary malicious actuator signal rather than such attacks
following a specific probability distribution. Finally, some simulation
experiments are provided to verify the effectiveness of proposed ET-ASC
scheme.