New Method of Faults Diagnostic based on Neuro-Dynamic Sliding Mode for Flat Nonlinear Systems

Abstract

This paper addresses the problem of simultaneous actuator, process and sensor Fault Detection and Isolation (FDI) for nonlinear system having flatness properties with the presence of disturbances and which are operating in closed-loop. In particular, the nonlinear system is corrupted with additive actuator, process or sensor faults with simultaneous occurrence. In this case, the residual signals might be sensitive to all of these faults that can appear in the system. The proposed FDI method is based on both input and parameter estimators that are designed in parallel. With the flatness property of such system, the design of these two estimators requires information on the measured outputs and their successive derivatives. To estimate these last one, a new scheme of the 2nd-order dynamic sliding mode differentiator is proposed. Residuals are next defined as the difference between the estimated and expected behavior. In order to isolate the faults, dynamic neural networks technique is employed. Besides, comparative study between this new differentiator and the well-known 2nd-order Levant’s differentiator is provided to show the pros and cons of the proposed FDI method. This latter is validated by the simulation results and is carried out on a three tank system.

Authors and Affiliations

O. Dhaou, L. Sidhom, A. Abdelkrim

Keywords

Related Articles

Medical Image De-Noising Schemes Using Different Wavelet Threshold Techniques

In recent years most of researcher’s has done tremendous work in the field of medical image applications such as Magnetic Resonance Imaging (MRI), Ultra Sound, CT scan but still there are many research and experiments in...

A Feature Fusion Approach for Hand Tools Classification

The most important functions in objects classification and recognition system are to segment the objects from the input image, extract common features from the objects, and classify these objects as a member of one of th...

Training an Agent for FPS Doom Game using Visual Reinforcement Learning and VizDoom

Because of the recent success and advancements in deep mind technologies, it is now used to train agents using deep learning for first-person shooter games that are often outperforming human players by means of only scre...

Towards a Service-Based Framework for Environmental Data Processing

Scientists are confronted with significant data management problems due to the huge volume and high complexity of environmental data. An important aspect of environmental data management is that data, needed for a proces...

OpenSimulator based Multi-User Virtual World: A Framework for the Creation of Distant and Virtual Practical Activities

The exponential growth of technology has contributed to the positive revolution of distance learning. E-learning is becoming increasingly used in the transfer of knowledge where instructors can model and script their cou...

Download PDF file
  • EP ID EP596782
  • DOI 10.14569/IJACSA.2019.0100639
  • Views 104
  • Downloads 0

How To Cite

O. Dhaou, L. Sidhom, A. Abdelkrim (2019). New Method of Faults Diagnostic based on Neuro-Dynamic Sliding Mode for Flat Nonlinear Systems. International Journal of Advanced Computer Science & Applications, 10(6), 279-291. https://europub.co.uk/articles/-A-596782