It is important to track the integrity of insulators in electrical machines to prevent unexpected breakdowns over time. Three important aspects of insulation diagnostics are DC polarization, loss of the insulation system, and partial discharge. The diagnostic criteria allow for a prediction of the duration of reliability of the motor. It also allows for repair and maintenance planning of the machine. The commonly used diagnostic techniques are as follows:
2.2. Insulation Thermal Imaging
Generally, motor winding insulations are based on classes. The National Electrical Manufacturers Association (NEMA) dictates operating temperatures for every insulation class, as shown in
Table 3 [
8,
9]. These allowable temperatures are based on a full-load operation.
The insulation classes are categorized according to the polarization index,
PI, which is the ratio of insulation resistance measurement after 10 min, as is shown in Equation (1), [
9].
where
and
are the insulation resistance values after 600 min and 60 min, respectively. The recommended values of the PI are as shown in
Table 4 [
9,
10].
The categorization of insulation classes is shown in
Table 5 [
9,
10].
Infrared cameras can be used to scan for winding hotspots due to temperature variations within the motor. Additionally, infrared thermography was applied to a nondestructive test to detect temperature variations on the surface of the motor. Hotspots on the windings are an indication of insulation degradation. SRM nameplates have a normal operating temperature indicated on them. The exterior motor temperature increases with an increase in internal temperature. It has been found that a winding temperature increase of 10 °C above the rated nameplate temperature degrades the life of winding insulators by approximately 50 percent. Since the infrared camera does not access the internal operating temperatures of the motor, the motor surface temperature is captured by the infrared camera. Therefore, for temperature readings from the middle of the motor frame, abnormally high temperature sources within the motor, i.e., coupling, windings, and bearings, can be easily pointed out from an infrared image. Ref. [
11] uses an infrared thermograph for inspection and then applies deep learning-based hotspot localization based on segmentation of the motor windings. Smith et al. [
12] present an experimental study on novel insulation wire materials for stator winding designs that can withstand high temperatures. Various materials were tested for temperature dependency performance, including a MAGNETEMP CA-200 wire, standard Class H enamel wire, CERAFIL 500 wire, VonRoll SK650 wire, S-2 glass fiber, and Photonis glass-coated wire. The materials were investigated, as prospective winding material wires, for insulation systems operating in an over 375 °C thermal environment.
This paper uses empirical data on stator winding temperature for different test runs to predict insulation degradation over time by applying different machine learning techniques for leakage current estimation in a time series forecast.
2.4. Online and Offline Monitoring
Sensors can be used to provide online monitoring of insulation conditions by measuring physical quantities such as magnetic flux, stator current, and motor internal temperature. Offline, historical data from the sensors can be used to perform time series forecasting of the behavior of factors influencing the health of the insulation materials. Predictive maintenance of the motor windings relies on diagnostic techniques to ascertain when significant aging of the insulation of material has occurred and, thus, help in planning for avoidance of failure during service. Online monitoring and offline diagnostics such as partial discharge, magnetic flux, end winding vibration, and temperature have been well explored by researchers over the years. New methods such as dielectric spectroscopy, polarization current, and online leakage current monitoring are currently being introduced. However, the monitoring of stator winding temperature and leakage currents requires efficient sensors, which may occasionally fail. It is for these reasons that there is a need to utilize historical data from the sensors to estimate future trends of the physical quantities that point toward the aging of insulation material.
2.5. Prediction of Stator Winding Temperature
For air-cooled machines, thermal stress has been the major cause of insulation deterioration. Thermal stress accelerates the breakdown of chains between molecules into smaller ones in the process of insulation aging. Insulation delamination is also caused by overheating. Therefore, the main purpose of monitoring the stator winding temperature is to ensure insulation integrity, which ensures the mitigation of future damage resulting from inter-turn faults. Insulation aging caused by inter-turn short-circuit faults results in high winding temperatures. Moreover, hotspots around the insulation accelerate aging due to higher localized temperatures.
Thermocouples are the main devices utilized in temperature measurement of the stator windings. However, such devices only provide an alarm notification for abnormal temperature values during operation. These sensors may also suffer false-positive and false-negative phenomena. Therefore, there is a need to use historical data to estimate and predict future temperature trends even when the sensors have long failed. Temperature analysis of the SRM in relation to insulation integrity has not been extensively studied. The service life of winding insulations critically depends on the internal motor temperatures and the ambient temperature.
Copper losses, core losses, and friction losses are the common sources of temperature rise within the motor. Stator copper losses are a major contributor to temperature variations within the motor, even though the lack of rotor windings contributes to temperature rise limitations. Moreover, the alternating electric field leads to dielectric polarization and incomplete discharges. The discharges result in rising local temperatures. The internal heat due to high internal temperatures is given in Equation (2) [
14].
The stator coils are the source of copper losses. The
copper losses are defined in Equation (3) [
15].
In switched reluctance machines, the core losses were determined experimentally from [
16] as:
where
a,
b, and
c are constants, and
is the second mode natural frequency.
The viscous flow experienced over the rotor, and the relative motion of the bearings, presents friction losses given in Equation (5) [
16].
The above losses are shared in different sections of the motor as heat flow sources.
Recently, researchers have performed a thermal field analysis of switched reluctance motors for reliable and safe operation. However, the vulnerability of SRM drives due to insulation degradation faults needs attention. It is therefore imperative to develop intelligent methods of insulation health monitoring and diagnosis. Motor surface temperatures have easily been monitored using sensors mounted near the couplings. However, internal temperatures, which generally affect the integrity of the insulation, have been a challenge for a number of reasons. The performance of temperature sensors inside the motors is easily affected by the heat from the copper losses, resulting in sensor faults. The thermal problem can be easily solved by the introduction of sufficient and adequate ventilation during motor design and manufacture. However, the introduction of ventilation would require more space and, therefore, an increase in costs. Consequently, it is critical to developing intelligent methods of insulation health monitoring and diagnosis based on the time series forecasting of temperature behavior within and around the stator windings. This paper considers low-voltage stator windings of below 700 V. For windings of these voltage levels, inter-turn shorts rapidly develop into phase-to-phase shorts. This kind of insulator failure can be very rapid as compared to high-voltage stator winding insulation breakdown. Therefore, there is a need for inter-turn short-circuit diagnosis due to insulation degradation as this will provide an early warning of low-voltage stator insulation faults.
According to [
17], stator winding insulation faults account for 20% to 39% of overall motor faults, and one of the most prominent causes of insulation failure is the rising temperature over time. Online and offline analysis of the temperature trend is therefore necessary. Online monitoring enables identification of faults in the initial phases and, therefore, preventive actions can be planned to alleviate critical downtimes of the machine. However, online monitoring can face challenges such as sensor faults and the increased cost of sensor installations. Although offline techniques investigated in this paper depend on historical data, they are non-invasive and operate on anomaly detection within the data. Temperature monitoring methods can also be categorized into contact direct measurement techniques, such as infrared and contactless estimation methods. The applicability of contact-based methods is limited by the need for accessibility within the mechanical structure of the motor, thereby increasing the cost of manufacturing. On the other hand, sensorless estimation methods use temperature derivations based on intelligence algorithms. Refs. [
18,
19] present models and iterative algorithms with measurable quantities to estimate temperature values for a permanent magnet synchronous motor. However, from a technical point of view, these methods can be categorized, as shown in
Figure 1 and
Figure 2 [
20]. Over the last decade, artificial intelligence techniques such as particle swarm optimization (PSO), neural networks (NNs), and the genetic algorithm have been utilized in temperature monitoring [
20].
This paper uses historical data on stator winding temperatures to predict temperature behavior over time and, hence, provide information for preventive maintenance. Recently, artificial intelligence and machine learning-based techniques have attracted the attention of researchers in the assessment of insulation conditions since they are non-intrusive and easy to apply.
2.6. Prediction of Stator Winding Leakage Current
Insulation breakdown leads to the establishment of abnormal paths that encourage the flow of leakage currents. Thermal, electrical, environmental, and mechanical stresses on the insulation material will cause leakage current paths to develop within the winding insulation. The level of severity of the insulation deterioration is a perfect indicator of the magnitude of the leakage current flowing in the abnormal path. It is often difficult to precisely localize the source of the leakage current within the winding insulation.
The resultant leakage current is due to capacitive and resistive leakage currents, which is shown in Equation (6)
The capacitive leakage current,
, occurs as a result of alternating current flowing between conductors separated by a dielectric. Resistive leakage current,
, is a result of current loss via the insulation around the conductor. Resistive and capacitive leakage currents are dependent on the supply voltage. It is only the magnitude of the resistive leakage current that determines the integrity of the insulation material. Deterioration of the insulation resistance is escalated through rising values of the resistive leakage current. Additionally, the leakage current has a direct proportionality to surface contaminants on the insulator, that is, more leakage current flows with more contaminant deposits. For instance, water trappings under a layer of contaminants cause the insulation surface resistance to decrease. Therefore, Equation (7) shows that for an area
S of a contaminant layer, then [
21,
22]:
where
and
are the insulator radius and the total radius of the contaminant layer and the insulator, respectively. Notably, a fault is not implied when the leakage current suddenly rises, followed by a decreasing steady trend over a short period of time. It can, however, imply that there has been a humidity increase around the insulators. Preventative maintenance should be performed if the leakage current values do not decrease with time.
Therefore, it is important to estimate the flow of these currents over time using historical data in order to assess the health of the insulation material. Monitoring of motor winding insulation can be performed by tracking physical properties such as the leakage current. Common techniques employed by researchers include wavelet transform, Fourier transform, and matched filters [
23,
24,
25]. The drawbacks to these approaches include intensive computations, while wavelet and Fourier transforms are only efficient for steady-state diagnoses. Recently, several machine learning and artificial intelligence techniques have been developed for classification and prediction problems. For instance, neural networks, support vector machines (SVMs), K-nearest neighbors, and long short-term memory (LSTM) deep learning have gained popularity in anomaly detection. In [
26], a support vector machine is applied in the classification of inter-turn leakage currents in the stator windings. The SVM frequency pattern is presented in [
27] for leakage current fault detection in motor windings. However, SVM is limited by the careful need to precisely choose its parameters and those of the optimization algorithms. Neural networks are utilized in [
28,
29] for the detection of leakage current faults in stator windings. However, the neural network technique demands a large amount of data for training and testing. The deep learning classification of leakage currents between phases and phase-to-neutral is studied using LSTM in [
30].