Comparison of Selected Methods for the Stator Winding Condition Monitoring of a PMSM Using the Stator Phase Currents

: Stator winding faults are one of the most common faults of permanent magnet synchronous motors (PMSMs), and searching for methods to efﬁciently detect this type of fault and at an early stage of damage is still an ongoing, important topic. This paper deals with the selected methods for detecting stator winding faults (short-circuits) of a permanent magnet synchronous motor, which are based on the analysis of the stator phase current signal. These methods were experimentally veriﬁed and their effectiveness was carefully compared. The article presents the results of experimental studies obtained from the spectral analysis of the stator phase current, stator phase current envelope, and the discrete wavelet transform. The original fault indicators (FIs) based on the observation of the symptoms of stator winding fault were distinguished using the aforementioned methods, which clearly show which symptom is most sensitive to the incipient fault of the stator winding of PMSMs. and become phase-to-phase or phase-to-ground short-circuits.


Introduction
The many significant advantages of permanent magnet synchronous motors (PMSMs), such as very good dynamic properties, high efficiency, and power density, have led to their frequent use in many drives systems today. Progress in the field of power electronics, microprocessor technology, and materials engineering for permanent magnets contributed to the popularization of PMSM drives in many applications in the automotive, transport, and aviation industries [1]. These motors are also characterized by a quiet operation, long lifetime, and high power factor, resulting in their common use in household appliances and other commercial applications [2].
PMSMs, despite their higher price, are replacing induction motors (IMs), which until now were the most popular in industrial applications. Nevertheless, such high-efficiency motors are exposed to various types of faults, just like other electric motors. As shown in Figure 1, the most common faults of electric motors include stator (36%), rotor (9%), and bearing (41%) faults. However, the percentage share of mechanical damage decreases with increasing rated voltage and power of the motor, in favor of electrical damage, up to 66% of all faults [3].
Stator winding damages in PMSMs are mainly short-circuits, which are usually caused by insulation damage. Insulation damage is a consequence of abrasion or overheating of the winding as a result of electrical or mechanical stresses and excessive motor loads [4]. This type of damage is highly destructive. It begins with a very difficult to detect interturn short-circuit (ITSC) in the adjacent turns of the winding, which may quickly damage subsequent coils and become phase-to-phase or phase-to-ground short-circuits. The consequence of this may be the failure of the motor and an emergency shutdown of the entire drive system. Inter-turn short-circuits may also cause irreversible demagnetization of permanent magnets.
Due to the destructive nature of the stator winding fault of a PMSM, it must be detected at an early stage to prevent the fault spreading, which may result in a significant increase in repair costs. Therefore, the implementation of an appropriate diagnostic system, based on effective algorithms, is essential to prevent complete failure of the drive system, causing losses and delays in the industrial process [5].
When developing an effective diagnostic system, the basic issue is the knowledge of changes in motor operation caused by specific damage and their subsequent monitoring according to the signals available for measurements [6]. Over the years, a number of methods for detecting faults in electrical motors have been developed, including PMSMs [7][8][9][10][11]. However, new, more robust, faster, and more accurate diagnostic algorithms are still being intensively searched for. Currently, the stator phase current and voltage are the basic diagnostic signals in the diagnosis of stator winding faults. Nevertheless, the stator fault may also affect the rotational speed, temperature, back electromotive force, and magnetic flux, as well as internal signals of the control structure, of the PMSM drive system [12,13].
The most common methods for identifying symptoms of damage to the PMSM stator winding are methods based on stator current analysis. The most popular technique is the spectral analysis of the stator phase current using fast Fourier transform (FFT), presented among others in [14,15]. Since the FFT requires the signals to be stationary, a condition that is difficult to meet in speed-controlled drives, other methods have also been used to analyze the stator current of PMSM drives, such as Hilbert-Huang transform (HHT) [16,17], principal component analysis (PCA) [18,19], short-time Fourier transform (STFT) [20,21], continuous wavelet transform (CWT) [22,23], discrete wavelet transform (DWT) [24][25][26], and Wigner-Ville distribution (WVD) [27].
The processing of the phase current signal with the aforementioned methods allows for the extraction of symptoms characteristic for the failure of the stator winding of PMSM drives. These symptoms can be used directly for diagnostic purposes or can be used as a basis for the construction of faults detectors and classifiers.
Nevertheless, an essential and actual problem in the development of electric motor fault detectors and classifiers is the selection of an appropriate signal processing method, ensuring the best possible extraction of the fault symptoms and, thus, achieving the highest possible efficiency in the detection and classification of damage.
It should also be noted that the effectiveness of selected methods of diagnosing motor faults may depend on many different factors, such as the type of the motor, control structure, regulator settings [28], measurement resolution, and acquisition of diagnostic signals. Unwanted disturbances can significantly reduce the effectiveness or even make the fault diagnosis process impossible.
The main goal of this article is to compare the effectiveness and experimentally verify selected methods of stator current analysis under the initial stage of inter-turn short-circuits (ITSCs) of PMSM drives, using frequency domain and time-frequency domain analyses. Classical FFT was used for analysis of the stator phase current signal and stator phase current envelope. Next, the discrete wavelet transform (DWT) was applied to current envelope analysis. Both signal processing methods were tested for a PMSM drive operating under variable speed and load torque.
The article is divided into six sections. Section 2 discusses the symptoms of damage to the stator winding of a PMSM that may be visible in the stator phase current signal and selected methods for its analysis. In Section 3, the test stand and the methodology of experimental research are presented. In Section 4, the experimental results of stator current analysis using the aforementioned methods for detecting the symptoms of ITSCs in the PMSM stator winding are demonstrated, and some fault indicators are proposed. Next, in Section 5, the online operation of the proposed fault indicators according to the analyzed signal processing methods is experimentally validated and evaluated. Final conclusions from the conducted research are presented in Section 6.

Stator Current Data Acquisition for Diagnostic Purposes
The stator phase current is one of the most frequently used signals in the diagnosis of electric motors, including synchronous motors with permanent magnets [29][30][31][32]. Current measurement is cheap, easy, and noninvasive, and it can be performed using current transducers usually applied in drive systems that do not interfere with the operation of the motor.
Damage to the stator winding, specifically an inter-turn short-circuit, causes changes in the stator current amplitude, fluctuations, and unbalance [33]. These changes make it possible to extract the fault symptoms from the stator phase current signal using a variety of diagnostic methods. As outlined in Section 1, some methods are based on the raw current signal and others on the processed signal, using the various mathematical methods described previously. The stages of processing diagnostic information using this approach are shown in Figure 2. Various types of electric motor faults, including stator winding faults, may also cause changes in selected motor parameters. For this reason, identifying parameters and monitoring them while the system is in operation can be useful for detecting faults [34]. In the case of inter-turn short-circuits, the detection of which is the main subject of this paper, the failure symptom is a decrease in stator resistance value [35].
When the motor is operating in a closed-loop vector control structure, the detection of ITSCs is more difficult. The effect of the fault is to some extent compensated for by the operation of regulators, which makes it difficult to detect the failure at an early stage [13]. Additionally, in the FFT amplitude spectrum, there are frequency components independent of the fault, increasing with the load torque, such as even multiples of the frequency of the supply voltage f s . This phenomenon complicates the isolation of the changes related only to the winding failure.
In the case of frequency domain analysis, carried out mainly using the FFT, an interturn short-circuit may cause an increase in the third harmonic (3f s ) in the spectrum of the stator phase current [36]. According to [37], the amplitude of the frequency components described by Equation (1) may also increase.
where f s is the supply voltage frequency, k represents the consecutive positive integers, and p p represents the number of pole pairs. Nevertheless, it should be taken into account that an increase in these frequency components can also be caused by eccentricity. In [37] and [38], the authors suggested that, in order to distinguish between an inter-turn short-circuit and an eccentricity, one can use the monitoring of the 17th and 19th harmonious values, as well as sideband frequencies.
Additionally, damage to the stator winding may result in an increase in the slot harmonics, calculated using the following equation [39]: where N ss is the number of stator slots. Due to the decreasing prices and the increasing computing power of microcontrollers, as well as the increasingly better possibilities of measuring devices and data acquisition (DAQ) cards, ensuring very good resolution, it is still worth paying attention to research on the application of spectral analysis using FFT. Several years ago, the resolution of the converters did not allow for the full potential of this solution to be used, and the limited computing power and memory of microcontrollers made it impossible to implement diagnostic algorithms, especially on low-cost processors.
In the diagnosis of electric motors, the quality of devices used for data acquisition is extremely important. To illustrate this effect, in Figure 3, a comparison of FFT spectra of the stator phase current of the PMSM obtained using different DAQ cards is shown. The tested motor parameters are grouped in Appendix A. The first FFT spectrum was obtained after transforming the stator phase current signal acquired with the use of a DAQ Universal Serial Bus (USB) card (NI-USB-6212 DAQ CARD), with 16 bit resolution. The second one was obtained using a DAQ card with 24 bit resolution (DAQ NI PXI-4492). According to the analysis of these spectra, it is possible to note a significant difference in the noise level. This difference may significantly affect the effectiveness of diagnosis (the possibility of isolating the damage symptom in the early stage of the damage), which significantly depends on the difference in the symptom amplitude values for the undamaged motor and after the failure. For example, the difference between the third harmonic amplitude level and the measurement noise level when using a better-quality DAQ card is about 42,811 dB, while, in the case of a USB card, this value is equal to 20,915 dB. Thus, there is a large discrepancy in the ratio of the noise value level to the signal level despite the same motor state (presented as the signal-to-noise ratio (SNR)).

Selected Methods for the PMSM Stator Current Signal Preprocessing
As described in Section 1, there are many methods to preprocess the stator phase current signal for motor fault diagnosis and condition monitoring purposes. Nevertheless, it is essential to choose the method that will ensure the best diagnostic effectiveness. This section describes the selected methods of phase current signal preprocessing. Some of them were experimentally verified, and their results are discussed in detail in the subsequent sections. One of the approaches that may improve the effectiveness of diagnosis compared to the classical spectral analysis of the stator phase current is the calculation of the stator phase current space vector magnitude according to Equation (3) and its spectral analysis using FFT. Following an inter-turn short-circuit, the amplitude of the frequency component 2f s increases in its spectrum. This approach is known under the acronym EPVA (extended Park's vector approach), and its effectiveness in short-circuit detection has been confirmed among others in [40].
where i sα , i sβ are components of the stator current vector in a stationary reference frame (α/β). The increase in the amplitude of the characteristic failure frequencies causes increased fluctuations of the stator phase current amplitude. The Hilbert transform may be used to isolate them, determining the envelope of the stator phase current in accordance with Equation (4).
where H[i s (t)] is the Hilbert transform of the stator phase current signal [41], Unlike the frequency domain diagnostic signal analysis methods, which do not monitor the failure time, time-frequency domain methods such as STFT or wavelet transform (WT) can detect when a failure occurs.
The ITSC faults using STFT can be detected by analyzing the obtained stator phase current spectrogram. The values of the spectrogram depend on the amplitudes of the individual harmonics. After the failure occurs, the value of the spectrogram increases for the failure frequencies characteristic for the amplitude spectrum, but only for the time periods corresponding to the failure [42].
The WT, in turn, allows for noise reduction and the selection of frequency bands on which the analysis is to be focused [43]. Stator winding fault results in an increase in the value of details, which cover the frequency range, in which there are components characteristic for this type of damage [44]. The use of WT for the diagnosis of stator winding damage to PMSM drives is associated with complications resulting from the presence in the spectrum of frequency components independent of the damage, which also penetrate the bands where only damage symptoms should be present. Therefore, research on the application of this signal processing method is still ongoing.
Discrete wavelet transform is based on the dyadic (twofold sampling) division of the scale and the shift (coefficients a and b). Taking into account a = 1 The practical form of DWT in numerical calculations is expressed as follows: where ψ * jk (n) is the conjugation of function of the form where N is the number of samples determined by the limits of occurrence of the wavelet described by Equation (8).
DWT performs multiresolution wavelet analysis. At each of its stages, the signal can be split into two components. In the case of dyadic division, the bands of these components occupy half of the j-th resolution degree. To obtain these components, a set of filters (low-and high-pass) and the signal sampling operation are used, selecting only even samples [45]. An example of a wavelet decomposition tree for a second-level analysis is shown in Figure 4.
Wavelet transform is frequently compared with FFT. The biggest advantage of wavelet transform is that it is very well suited for the analysis of nonstationary signals, i.e., signals with a parameters varying in time, whereas FFT is a powerful tool for analyzing the components of stationary signals. Diagnostic signals are very often nonstationary signals; therefore, the use of DWT in this field is justified. The second difference is that wavelets are very well localized in both the time and the frequency domain, whereas the FFT is only localized in frequency domain [46].

Experimental Setup and Test Scenarios
The object of the experimental verification was a 2.5 kW PMSM operating in a closedloop control structure (with field-oriented control (FOC)) and powered by a voltage source inverter (VSI). The parameters of the tested motor are listed in Appendix A. This motor was connected via a rigid coupling to the second PMSM with nominal power of 4.7 kW, generating load torque to the tested motor. The test stand is shown in Figure 5a. The motor shown on the left side of the figure is the loading motor, while that on the right is the tested motor. The design of the stator winding of the tested motor was specially prepared to enable controlled short-circuits of a selected number of turns in the stator phase B, which is shown in Figure 5b. In practice, the preparation of the stator winding for the study of the impact of inter-turn short-circuits consisted of leading the appropriate taps corresponding to the specified number of turns from the coil. Direct short-circuits were implemented by connecting the taps on the terminal board with a wire. During the tests, a maximum of four turns in phase B were short-circuited, which accounted for 1.6% of all turns in the phase winding. The tests were carried out without limiting the short-circuit current with an additional resistor in the short-circuit loop. The stator phase currents were measured using LEM LA 25-NP multirange transducers. The output signals from the transducers were entered into the data acquisition system, which was the DAQ NI PXI-4492 (8-channels) measurement card by National Instruments (NI). This card was placed in the NI PXI 1082 industrial computer, which can be seen in Figure 5c. The block diagram of the experimental stand is shown in Figure 6.
Using the described test stand, an experimental verification of the application of FFT to the current signal and the stator phase current envelope analysis, as well as the DWT of the stator current envelope, to detect ITSC in the PMSM stator winding was carried out. The tests were carried out for various values of the load torque in the range of 0−1T N and for various set rotational speeds (frequency of the supply voltage, 50-100 Hz), which allowed examining the influence of motor operating conditions on the extracted ITSC symptoms.

Application of Spectral Analysis of the Stator Current Signal and the Current Envelope for ITSC Detection
As previously mentioned, the spectral analysis of the signal with the use of FFT is one of the most frequently used methods for diagnosing faults in electric motors [47]. Amplitudes of harmonics with characteristic ITSC fault frequencies are searched for in the FFT spectra, the change of which allows detecting a fault. Figure 7 shows the spectra of the stator current in phase B of the tested motor operating at nominal frequency f s = 100 Hz (N = N N = 1500 rpm) for idle running (Figure 7a) and nominal torque (Figure 7b), for an undamaged winding case and with a changeable number N sh of modeled ITSCs (from 1-3). In these spectra, a large increase in the amplitude of the third harmonic of the stator current can be observed after the ITSC. The effect of the number of shorted turns N sh and the load torque T L on the amplitude value of the 3f s component is shown in Figure 8a, while the dependence on the frequency of the supply voltage f s is illustrated in Figure 8b.     From the above results, it can be concluded that the load torque change does not have a significant impact on the value of the third harmonic amplitude in the stator phase current spectrum, which allows the use of this component as a good symptom of ITSC. Nevertheless, in the case of the analysis of the influence of the supply voltage frequency on the level of this amplitude, it can be noted that the greatest sensitivity to damage occurred when the motor operated at the rated frequency f s = f sN = 100 Hz.
In order to isolate the fluctuations caused by the increase in the characteristic failure frequency 3f s , the signal envelope was determined in accordance with Equation (4). The stator current waveforms of phase B and the current envelope for the PMSM undamaged winding and that with a stator winding fault are shown in Figure 9.  Figure 10 shows the spectra of the stator phase current envelope in the B phase of the motor operating at f s = 100 Hz and different numbers of ITSCs physically modeled in this phase of the stator winding. As can be seen in these spectra, a significant increase in the value of the 2f s frequency component can be observed in the case of damage to the stator winding. The effect of the number of shorted turns N sh and the load torque T L on the level of this amplitude is shown in Figure 11a, while the effect of the supply voltage frequency f s is presented in Figure 11b.  The greatest sensitivity to the increasing number of shorted turns occurs when the motor operates at high rotational speeds, close to the rated value. Similarly to the analysis of the stator phase current spectrum, it can be concluded that the 2f s component and its changes due to damage to the stator winding are a good diagnostic indicator.

Application of DWT of the Stator Current Envelope for ITSC Detection
At the next stage of the research, the DWT method was tested for ITCS symptoms extraction from the stator current envelope of the PMSM drive. To isolate the symptoms of stator damage of the PMSM drive, the stator phase current envelope signal was re-sampled to obtain an amplitude spectrum in the 0-1024 Hz band, and decomposition to the fifth level was performed. The obtained bands are grouped in Table 1 and shown in Figure 12. The choice of the decomposition level resulted from the values of the characteristic failure frequencies in the FFT spectrum of the stator phase current envelope, which was shown in Figure 10.  In the case of the signal analysis using the wavelet transform, it is essential to select an appropriate type of the wavelet, because the effectiveness of fault detection may depend on the selected wavelet. Several families of wavelets that have proven to be especially useful in this case were proposed in the literature. The Haar wavelet is one of the simplest in microcontroller implementation, because the signal processing needs only products and signed sums [48]. Nevertheless, this type of wavelet has not found an application in fault diagnosis as diagnostic signals are usually complex nonstationary signals. The Daubechies family of wavelets, invented by Ingrid Daubechies, is very popular for analyzing these types of signals. These wavelets are marked dbO, where O is the wavelet order [49]. To avoid overlapping between two adjacent frequency bands, a mother wavelet with a high order has to be used. To separate the different frequency bands, there is an obvious tradeoff between the order of the mother wavelet and the computational cost. This is why intensive study is necessary to adapt the order of the mother wavelet to the requirements [50]. In this study, according to the wavelet responses of different orders of this family, we used the Daubechies wavelet of order 13 (db13), because it ensured the lowest frequency cross-over between adjacent bands. Figure 13 shows a comparison of approximations and details waveforms for an undamaged motor and one with three shorted turns in the stator winding, for the supply voltage frequency f s = 100 Hz and idle running of the drive, as well as for the rated load torque. After an occurrence of ITSC, a significant increase in the amplitude of the third detail (d 3 ) can be observed, the band of which covers the value of the 2f s component in the spectrum of the stator current envelope.
The root mean square (RMS) value of individual details, calculated in accordance with Equation (9), was adopted as the failure index for this analysis.
where n is the number of samples for the waveform of each detail. The influence of the number of shorted turns and the load torque on the RMS value of the third detail of DWT of the stator current envelope for the motor operating at rated speed (f s = 100 Hz) is shown in Figure 14. It can be stated that the fault symptom is highly sensitive to the increasing number of shorted turns, while it also shows the relatively low sensitivity to changing load torque.
The impact of stator winding fault on the percentage increase in the RMS value according to the details and approximations of the wavelet transform of the stator phase current envelope for the motor operating at rated rotational speed (f s = 100 Hz) and rated load torque is shown in Figure 15. After an ITSC occurs, a significant increase in the RMS value of the detail occurs, the frequency band of which covers the characteristic failure frequency 2f s in the stator current envelope spectrum.
The influence of the supply voltage frequency on the RMS value of the third detail of the stator phase current envelope is shown in Figure 16a. As expected, when the 2f s component starts to move beyond the frequency band covering detail number 3 (Table 1), its RMS value changes as shown in Figure 16b. This allows us to conclude that monitoring the values of the third and fourth details allows for the detection of stator winding ITSCs in the entire tested range of motor speeds (supply voltage frequency). It must be added that the determination of f s is very simple to implement and automate, because it is enough to find the frequency component with the greatest amplitude in the spectrum of the stator phase current.    In Figure 17, another failure index is proposed, which was obtained after squaring the third detail of the DWT of the stator phase current envelope. It also allows for observation of changes that are the result of the ITSC in the stator winding, especially when operating at rated load.

Testing of the Proposed Fault Indicators of ITSCs in On-Line Operation of the Drive System
In this section, the online operation results of the proposed diagnostic methods and selected fault indicators are discussed and compared. Figure 18 shows the changes in the amplitude of the stator phase current and the previously described fault symptoms for the operation of the motor at the rated speed (f s = 100 Hz) during cyclic instantaneous short-circuiting of three turns in phase B of the stator winding and with variable load torque. The load torque was increased every 0.2 T N in the range from 0 to T N .
From the observation of these waveforms, it can be concluded that each of the fault symptoms obtained with the use of the proposed methods allows for the detection of stator winding faults of the PMSM operating in the drive system with vector control. Importantly, the values of these symptoms are not strongly dependent on the load torque. The greatest changes in the fault symptom at a short-circuit of three turns in the phase B winding in the entire range of load torque changes occurred for the amplitude values of the third harmonic of the stator phase current, the 2f s component in the spectrum of the stator phase current envelope, and the RMS values of the third detail of DWT of the stator phase current envelope. Fault symptoms values after a failure increase by up to 300%. In the case of the last proposed fault symptom, i.e., the squared RMS value of the third detail of DWT of the stator phase current envelope, this increase is smaller, especially in the range of small load torques 0−0.4T N . A detailed analysis of the effectiveness of proposed fault symptoms is discussed later in this section. Figure 19 shows the changes of the same failure symptoms at constant load torque, rated speed (f s = 100 Hz), and cyclic instantaneous short-circuiting of an increasing number of shorted turns in the range from 1-4. With the increasing number of shorted turns, the values of damage symptoms increase, which confirms the effectiveness of the proposed methods. Nevertheless, these changes become most pronounced in the case of two or more shorted turns.  To more precisely compare and evaluate the effectiveness and sensitivity of the proposed methods to the changes of the load torque and the number of shorted turns, the waveforms of the previously discussed fault indicators were averaged. A filter based on the centered moving average described by Equation (10) was used for the averaging process. The 11th element window was adopted in the filtering algorithm, with five samples on both sides around the center. This process is illustrated in Figure 20.
where N is the window size, n is the sample number of the original fault symptom waveform, k is the sample number in the window, y(k) is the symptom value of the k-th sample in the window, and y (filtered) (n) is the average fault symptom value of the n-th sample. Next, the ratio of average values for the undamaged motor and for the motor with a stator winding fault was compared, defining the failure detection efficiency index of fault indicators (FIs), calculated according to Equation (11).
where SWFS Nsh is the value of the stator winding fault symptom with N sh shorted coils, and SWFS Undamaged is the value of the stator winding fault symptom for an undamaged motor. The averaged waveform of the third harmonic amplitude value at the cyclic instantaneous short-circuiting of three turns in phase B is shown in Figure 21. The method of calculating the failure detection efficiency indicator is also graphically shown in this figure. This allowed for the exact determination of the actual impact of the damage on the value of this fault indicator. Using the proposed method of certain indicator averaging, it is easy to clearly notice a very large impact of the analyzed winding failure on the analyzed indicator due to its significant increase (by about 310-400%). Proposing the above index allowed for the comparison of the actual fault impact and the assessment of the usefulness of the discussed diagnostic indicators. These results are summarized in Table 2. From the presented results, it can be concluded that the amplitude of the 3f s component in the stator current spectrum is the most sensitive to stator winding fault in the entire range of the load torque changes. Nevertheless, each of the proposed fault indicators increases at least twofold on average after the failure.   In order to compare the impact of the load torque on the values of the described symptoms during online operation, the standard deviation for the FD EFF index values from the entire tested load torque range was calculated in accordance with Equation (12). These results, together with the ratio of the indicator value at rated load to the value without load, are grouped in Table 3, while, in Table 4, the FD EFF values depending on the number of shorted turns in the B phase of the stator winding are presented.
where On the basis of the above comparison, it can be concluded that the third harmonic amplitude in the stator phase current spectrum is the best fault indicator, taking into account the entire range of tested load torques. It should be noted, however, that the other proposed fault indicators are also very sensitive to ITSCs of the PMSM winding. The least load-dependent damage indicator is FI d 3RMS (i sB ) . On the other hand, the greatest increase in the value of the fault symptoms for one shorted turn occurred in the case of the FI d 2 3RMS (i sB ) indicator.

Conclusions
In this paper, ITSC fault symptoms of stator windings in the stator phase current signal of a PMSM drive were discussed, and optimal fault indicators were searched for. The results of experimental tests for three methods of diagnosing this type of damage on the basis of stator current signal analysis were taken into account, using methods belonging to the frequency domain and time-frequency domain. The presented experimental research results confirm the effectiveness of the application of the spectral analysis of the stator phase current, the stator phase current envelope, and the discrete wavelet transform of the current envelope for the detection of ITSCs in the PMSM stator winding at an early stage of failure, even with one shorted turn in the phase, which constitutes 0.4% of all turns in a phase of the tested motor.

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In the case of the FFT analysis of the stator phase current, the most significant symptom of damage is an increase in the amplitude of the third harmonic-the 3f s component.

Conflicts of Interest:
The authors declare no conflict of interest.
Appendix A Table A1. Rated parameters of the tested permanent magnet synchronous motor.