147 research outputs found
Real-Time Detection of Incipient Inter-Turn Short Circuit and Sensor Faults in Permanent Magnet Synchronous Motor Drives Based on Generalized Likelihood Ratio Test and Structural Analysis
This paper presents a robust model-based technique to detect multiple faults in permanent magnet synchronous motors (PMSMs), namely inter-turn short circuit (ITSC) and encoder faults. The proposed model is based on a structural analysis, which uses the dynamic mathematical model of a PMSM in an abc frame to evaluate the system’s structural model in matrix form. The just-determined and over-determined parts of the system are separated by a Dulmage–Mendelsohn decomposition tool. Subsequently, the analytical redundant relations obtained using the over-determined part of the system are used to form smaller redundant testable sub-models based on the number of defined fault terms. Furthermore, four structured residuals are designed based on the acquired redundant sub-models to detect measurement faults in the encoder and ITSC faults, which are applied in different levels of each phase winding. The effectiveness of the proposed detection method is validated by an in-house test setup of an inverter-fed PMSM, where ITSC and encoder faults are applied to the system in different time intervals using controllable relays. Finally, a statistical detector, namely a generalized likelihood ratio test algorithm, is implemented in the decision-making diagnostic system resulting in the ability to detect ITSC faults as small as one single short-circuited turn out of 102, i.e., when less than 1% of the PMSM phase winding is short-circuited.publishedVersio
Real-Time Fault Diagnosis of Permanent Magnet Synchronous Motor and Drive System
Permanent Magnet Synchronous Motors (PMSMs) have gained massive popularity in industrial applications such as electric vehicles, robotic systems, and offshore industries due to their merits of efficiency, power density, and controllability. PMSMs working in such applications are constantly exposed to electrical, thermal, and mechanical stresses, resulting in different faults such as electrical, mechanical, and magnetic faults. These faults may lead to efficiency reduction, excessive heat, and even catastrophic system breakdown if not diagnosed in time. Therefore, developing methods for real-time condition monitoring and detection of faults at early stages can substantially lower maintenance costs, downtime of the system, and productivity loss. In this dissertation, condition monitoring and detection of the three most common faults in PMSMs and drive systems, namely inter-turn short circuit, demagnetization, and sensor faults are studied. First, modeling and detection of inter-turn short circuit fault is investigated by proposing one FEM-based model, and one analytical model. In these two models, efforts are made to extract either fault indicators or adjustments for being used in combination with more complex detection methods. Subsequently, a systematic fault diagnosis of PMSM and drive system containing multiple faults based on structural analysis is presented. After implementing structural analysis and obtaining the redundant part of the PMSM and drive system, several sequential residuals are designed and implemented based on the fault terms that appear in each of the redundant sets to detect and isolate the studied faults which are applied at different time intervals. Finally, real-time detection of faults in PMSMs and drive systems by using a powerful statistical signal-processing detector such as generalized likelihood ratio test is investigated. By using generalized likelihood ratio test, a threshold was obtained based on choosing the probability of a false alarm and the probability of detection for each detector based on which decision was made to indicate the presence of the studied faults. To improve the detection and recovery delay time, a recursive cumulative GLRT with an adaptive threshold algorithm is implemented. As a result, a more processed fault indicator is achieved by this recursive algorithm that is compared to an arbitrary threshold, and a decision is made in real-time performance. The experimental results show that the statistical detector is able to efficiently detect all the unexpected faults in the presence of unknown noise and without experiencing any false alarm, proving the effectiveness of this diagnostic approach.publishedVersio
Neural network-based diagnostic tool for detecting stator inter-turn faults in line start permanent magnet synchronous motors
Three-phase line-start permanent magnet synchronous motors are considered among the most promising types of motors in industrial applications. However, these motors experience several faults, which may cause significant financial losses. This paper proposed a feed-forward neural network-based diagnostic tool for accurate and fast detection of the location and severity of stator inter-turn faults. The input to the neural network is a group of representative statistical and frequency-based features extracted from the steady-state three-phase stator current signals. The current signals with different numbers of shorted turns and loading conditions are captured using the developed finite element JMAG ™ model for interior mount LSPMSM. In addition, an experimental set-up was built to validate the finite element model and the proposed diagnostics tool. The simulation and experimental test results showed an overall accuracy of 93.125% in detecting the location and the size of inter-turn, whereas, the accuracy in detecting the location of the fault is 100%
An Assessment on the Non-Invasive Methods for Condition Monitoring of Induction Motors
The ability to forecast motor mechanical faults at incipient stages is vital to reducing maintenance costs, operation downtime and safety hazards. This paper synthesized the progress in the research and development in condition monitoring and fault diagnosis of induction motors. The motor condition monitoring techniques are mainly classified into two categories that are invasive and non-invasive techniques. The invasive techniques are very basic, but they have some implementation difficulties and high cost. The non-invasive methods, namely MCSA, PVA and IPA, overcome the disadvantages associated to invasive methods. This book chapter reviews the various non-invasive condition monitoring methods for diagnosis of mechanical faults in induction motor and concludes that the instantaneous power analysis (IPA) and Park vector analysis (PVA) methods are best suitable for the diagnosis of small fault signatures associated to mechanical faults. Recommendations for the future research in these areas are also presented
Fault Signature Identification for BLDC motor Drive System -A Statistical Signal Fusion Approach
A hybrid approach based on multirate signal processing and sensory data
fusion is proposed for the condition monitoring and identification of fault
signal signatures used in the Flight ECS (Engine Control System) unit. Though
motor current signature analysis (MCSA) is widely used for fault detection
now-a-days, the proposed hybrid method qualifies as one of the most powerful
online/offline techniques for diagnosing the process faults. Existing
approaches have some drawbacks that can degrade the performance and accuracy of
a process-diagnosis system. In particular, it is very difficult to detect
random stochastic noise due to the nonlinear behavior of valve controller.
Using only Short Time Fourier Transform (STFT), frequency leakage and the small
amplitude of the current components related to the fault can be observed, but
the fault due to the controller behavior cannot be observed. Therefore, a
framework of advanced multirate signal and data-processing aided with sensor
fusion algorithms is proposed in this article and satisfactory results are
obtained. For implementing the system, a DSP-based BLDC motor controller with
three-phase inverter module (TMS 320F2812) is used and the performance of the
proposed method is validated on real time data.Comment: 7 Pages, 7 figure
Detection of inter-turns short circuits in permanent magnet synchronous motors operating under transient conditions by means of the zero sequence voltage
This work proposes the zero sequence voltage component (ZSVC) of the stator three-phase voltages as a method for detecting winding inter-turns short circuits in permanent magnet synchronous motors PMSM operating under transient conditions. Additionally it proves the linear relationship between the
ZSVC and speed, which is effectively used as a fault severity index. The acquired ZSVC temporal signal is processed by means of the Hilbert-Huang transform (HHT).
Experimental results presented in this work show the advantages of the method to provide helpful data for online diagnosis of stator winding inter-turn faults.Peer ReviewedPostprint (author’s final draft
Electrical and magnetic faults diagnosis in permanent magnet synchronous motors
Permanent magnet synchronous motors (PMSMs) are an alternative in critical applications where high-speed operation,
compactness and high efficiency are required. In these applications it is highly desired to dispose of an on-line, reliable and
cost-effective fault diagnosis method. Fault prediction and diagnosis allows increasing electric machines performance and
raising their lifespan, thus reducing maintenance costs, while ensuring optimum reliability, safe operation and timely
maintenance. Consequently this thesis is dedicated to the diagnosis of magnetic and electrical faults in PMSMs.
As a first step, the behavior of a healthy machine is studied, and with this aim a new 2D finite element method (FEM) modelbased
system for analyzing surface-mounted PSMSs with skewed rotor magnets is proposed. It is based on generating a
geometric equivalent non-skewed permanent magnet distribution which accounts for the skewed distribution of the practical
rotor, thus avoiding 3D geometries and greatly reducing the computational burden of the problem.
To diagnose demagnetization faults, this thesis proposes an on-line methodology based on monitoring the zero-sequence
voltage component (ZSVC). Attributes of the proposed method include simplicity, very low computational burden and high
sensibility when compared with the well known stator currents analysis method. A simple expression of the ZSVC is
deduced, which can be used as a fault indicator parameter. Furthermore, mechanical effects arising from demagnetization
faults are studied. These effects are analyzed by means of FEM simulations and experimental tests based on direct
measurements of the shaft trajectory through self-mixing interferometry. For that purpose two perpendicular laser diodes are
used to measure displacements in both X and Y axes. Laser measurements proved that demagnetization faults may induce
a quantifiable deviation of the rotor trajectory.
In the case of electrical faults, this thesis studies the effects of resistive unbalance and stator winding inter-turn short-circuits
in PMSMs and compares two methods for detecting and discriminating both faults. These methods are based on monitoring
and analyzing the third harmonic component of the stator currents and the first harmonic of the ZSVC.
Finally, the Vold-Kalman filtering order tracking algorithm is introduced and applied to extract selected harmonics related to
magnetic and electrical faults when the machine operates under variable speed and different load levels. Furthermore,
different fault indicators are proposed and their behavior is validated by means of experimental data. Both simulation and
experimental results show the potential of the proposed methods to provide helpful and reliable data to carry out a
simultaneous diagnosis of resistive unbalance and stator winding inter-turn faults
Trends in Fault Diagnosis for Electrical Machines
[EN] The fault diagnosis of rotating electrical machines has received
an intense amount of research interest during the last 30 years.
Reducing maintenance costs and preventing unscheduled downtimes,
which result in losses of production and financial incomes,
are the priorities of electrical drives manufacturers and operators.
In fact, both correct diagnosis and early detection of incipient
faults lead to fast unscheduled maintenance and short downtime
for the process under consideration. They also prevent the harmful and sometimes devastating consequences of faults and failures. This topic has become far more attractive and critical as the population of electric machines has greatly increased in recent years. The total number of operating electrical machines in the world was around 16.1 billion in 2011, with a growth rate of about 50% in the last five years [1].Henao, H.; Capolino, G.; Fernández-Cabanas, M.; Filippetti, F.; Bruzzese, C.; Strangas, E.; Pusca, R.... (2014). Trends in Fault Diagnosis for Electrical Machines. IEEE Industrial Electronics Magazine. 8(2):31-42. doi:10.1109/MIE.2013.2287651S31428
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