Applications of Fault Diagnosis and Failure Prognosis of Dynamic Systems

A special issue of Processes (ISSN 2227-9717). This special issue belongs to the section "Automation Control Systems".

Deadline for manuscript submissions: closed (30 April 2022) | Viewed by 8927

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IM2NP-Lab, Aix-Marseille University, 13007 Marseille, France
Interests: conception and characterization of micro-sensors; micro-systems for the environment and building, for nuclear and for health
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Special Issue Information

Dear Colleagues,

Fault diagnosis and failure prognosis concern several fields of application, such as transport, energy, aeronautics and production units. There are various causes for incipient faults in these applications, such as wear and tear, cracks in mechanical structures, and corrosion. If the onset of an incipient fault is not detected and maintenance actions are not taken into account in time, it may lead to a catastrophic failure. Once an incipient fault has been detected, a question is whether and for how long a faulty system can continue to operate with an accommodated control and an admissible reduced functionality if there is a limited number of redundant hardwares. Safety, reliability and availability require one to constantly monitor the health state of a dynamic system, to detect the onset of an incipient fault, to project the start of a potential failure into the future and to estimate the remaining operating time until a failure occurs. Predictive failure prognosis should take into account all kind of uncertainties, such as uncertainties in the monitored data, uncertainties in the choice of a degradation model and its parameters, or uncertainties with regard to appropriate failure alarm thresholds.

The predictive maintenance of dynamic systems and pro-active supervision strategies have gained significant importance in the industrial sector and have been increasingly addressed in academia in recent years. New and efficient techniques for the detection of fault events, their monitoring for health assessment and predictions are to be developed for safe and reliable operations. 

This Special Issue seeks original scientific contributions on novel methods/algorithms for the health monitoring (fault diagnosis and failure prognosis) of dynamic systems that may be of a theoretical and/or applied nature. Suitable topics for this Special Issue may include, but are not limited to: fault detection and system supervision.

  • Health monitoring of multi-energy systems.
  • Prognostics and prediction of remaining useful life (RUL).
  • Model-based or hybrid, i.e., integrated model-based and data-based diagnostics and prognostics.
  • Data-driven, model-based, or hybrid methods for industrial maintenance.
  • Machine learning and data mining methods for system/component prognostics.
  • Integrated diagnostics and prognostics architectures.
  • Algorithms for health assessment and prognosis based on multiple sensor data.

Dr. Mohand Djeziri
Dr. Marc Bendahan
Guest Editors

Manuscript Submission Information

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Published Papers (2 papers)

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Research

23 pages, 4813 KiB  
Article
A Feature Engineering-Assisted CM Technology for SMPS Output Aluminium Electrolytic Capacitors (AEC) Considering D-ESR-Q-Z Parameters
by Akeem Bayo Kareem and Jang-Wook Hur
Processes 2022, 10(6), 1091; https://0-doi-org.brum.beds.ac.uk/10.3390/pr10061091 - 30 May 2022
Cited by 7 | Viewed by 2191
Abstract
Recent research has seen an interest in the condition monitoring (CM) approach for aluminium electrolytic capacitors (AEC), which are present in switched-mode power supplies and other power electronics equipment. From various literature reviews conducted and from a failure mode effect analysis (FMEA) standpoint, [...] Read more.
Recent research has seen an interest in the condition monitoring (CM) approach for aluminium electrolytic capacitors (AEC), which are present in switched-mode power supplies and other power electronics equipment. From various literature reviews conducted and from a failure mode effect analysis (FMEA) standpoint, the most critical and prone to fault component with the highest percentage is mostly capacitors. Due to its long-lasting ability (endurance), CM offers a better paradigm for AEC due to its application. However, owing to severe conditions (over-voltage, mechanical stress, high temperature) that could occur during use, they (capacitors) could be exposed to early breakdown and overall shutdown of the SMPS. This study considered accelerated life testing (electrical stress and long-term frequency testing) for the component due to its endurance in thousands of hours. We have set up the experiment test bench to monitor the critical electrical parameters: dissipation factor (D), equivalent series resistance (ESR), quality factor (Q), and impedance (Z), which would serve as a health indicator (HI) for the evaluation of the AECs. Time-domain features were extracted from the measured data, and the best features were selected using the correlation-based technique. Full article
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15 pages, 3394 KiB  
Article
RUL Prediction of Switched Mode Power Supply Using a Kalman Filter Assisted Deep Neural Network
by Jae Eon Kwon, Tanvir Alam Shifat, Akeem Bayo Kareem and Jang-Wook Hur
Processes 2022, 10(1), 55; https://0-doi-org.brum.beds.ac.uk/10.3390/pr10010055 - 28 Dec 2021
Cited by 7 | Viewed by 2592
Abstract
Switched-mode power supply (SMPS) has been of vital importance majorly in power management of industrial equipment with much-improved efficiency and reliability. Given the diverse range on loading and operating conditions of SMPS, several anomalies can occur in the device resulting to over-voltage, overloading, [...] Read more.
Switched-mode power supply (SMPS) has been of vital importance majorly in power management of industrial equipment with much-improved efficiency and reliability. Given the diverse range on loading and operating conditions of SMPS, several anomalies can occur in the device resulting to over-voltage, overloading, erratic atmospheric conditions, etc. Electrical over-stress (EOS) is one of the commonly used causes of failure among power electronic devices. Since there is a limitation for the SMPS in terms of input voltage and current (two methods of controlling an SMPS), the device has been subjected to an accelerated aging test using EOS. This study presents a two-fold approach to evaluate the overall state of health of SMPS using an integration of extended Kalman filter (EKF) and deep neural network. Firstly, the EKF algorithm would assist in fusing fault features to acquire an comprehensive degradation trend. Secondly, the degradation pattern of the SMPS has been monitored for four different electrical loadings, and a bi-directional long short-term memory (BiLSTM) deep neural network is trained for future predictions. The proposed model provides a unique approach and accuracy in SMPS fault indication with the aid of electrical parameters. Full article
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