Publication | Closed Access
Real-Time Error Detection in Nonlinear Control Systems Using Machine Learning Assisted State-Space Encoding
11
Citations
35
References
2019
Year
EngineeringAutonomous SystemsIntelligent SystemsNonlinear System IdentificationSystems EngineeringFault-tolerant ControlUnderlying Signal ProcessingNonlinear ControlReal-time Error DetectionMechatronicsIntelligent ControlComputer EngineeringComputer ScienceSystem IdentificationAutomatic Fault DetectionSignal ProcessingDigital ProcessorAutomationMechanical SystemsProcess ControlFault Detection
Successful deployment of autonomous systems in a wide range of societal applications depends on error-free operation of the underlying signal processing and control functions. Real-time error detection in nonlinear systems has mostly relied on redundancy at the component or algorithmic level causing expensive area and power overheads. This paper describes a real-time error detection methodology for nonlinear control systems for detecting sensor and actuator degradations as well as malfunctions due to soft errors in the execution of the control algorithm on a digital processor. Our approach is based on creation of a redundant check state in such a way that its value can be computed from the current states of the system as well as from a history of prior observable state values and inputs (via machine learning algorithms). By checking for consistency between the two, errors are detected with low latency. The method is demonstrated on two test case simulations - an inverted pendulum balancing problem and a sliding mode controller driven brake-by-wire (BBW) system. In addition, hardware results from error injection experiments in an ARM core representation on an FPGA and artificial sensor degradations on a self-balancing robot prove the practical feasibility of implementation.
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