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Induction machines are the most frequently used electrical machines in domestic and
industrial processes. Around 85% of motors used in industrial appliances are induction
machines. The main reason behind it is lower cost, ruggedness, robust in structure, lower
maintenance requirement, easiness in availability and capability to work under severe
working atmosphere. The fault in the induction motor distracts the overall production of
the industry, which may lead to increase the idle time and losses of revenue. In order to
decrease the down time and for reliable and safe operation, fault recognition in early stage
is desirable which necessitates condition-based monitoring of the induction motor. The
basic principle of condition monitoring (CM) lies on investigating the running
characteristics of the machine such that prediction for maintenance is done prior to
breakdown or deterioration to occur in order to introspect the health monitoring of the
machine. In this context, the individual part’s life or the life of the whole machine is
critically analyzed. In this direction the correct data acquiring process and the data
analysis is done in order to capture the trends that might occur. The maintenance based on
time investigate the machines repair in offline mode in accordance with time schedule are
working hour that leads to avoid the probability of failure. However unwanted shutdown
or sudden accidents that may occur in the stipulated period should be taken into account
in order to explore the health of the equipments. Thus fast fault detection in early stage
can improve the performance of the motor and reduce the consequential harms,
breakdown repairs, decrease the cost of maintenance and unpredicted failure risk is
remarkably reduced with the availability of the machine. Accurate identification scheme
urges the methodologies to be implemented in the direction of condition-based preventive
and predictive maintenance rather than conventional time-based maintenance. In this
context, the focus of condition based repair is to illustrate the evaluation accurately and
identifies the fault a prior. Condition based maintenance leads to the set of information
about the machine’s state and focuses CM approach followed by efficacy of the type of
maintenance needed in order to reduce the manpower. The said scheme would not lead to
halt the machine accidentally.
Further protection issues with prognostics of condition monitoring is not been adequately
discussed in the recent literatures. Subsequently to address the protection issues thermal
relay has been considered and its detailed modelling followed by the operational aspect
has been discussed in this thesis. Reliability is an important indicator associated with
condition monitoring as a matter of fact different reliability indices and its impact on
condition monitoring is discussed which would obviously augment the reliability aspects
of condition based maintenance. Further for inter-turn fault analysis pattern classification
scheme is explored for accurate detection and comparative assessment of different
classification scheme such as ANN and SVM is carried out.
The thesis organization and brief focus of different chapters are illustrated as mentioned
below.
Chapter 1 presents needs of induction motor condition monitoring, various faults and
their root causes, various condition monitoring techniques employed for induction motor
condition assessment, major challenges. Chapter 2 presents the thermal protection theory
of induction motor, it’s first-order thermal model, and identification of parameters’ by
using particle swarm optimization technique. Chapter 3 illustrates the theoretical
background of mechanical overload and voltage unbalance on induction motors, motor
protection with NEMA norms, and implementation of protection schemes under overload
and unbalance voltage condition by using MATLAB™ Simulink for induction motor.
Chapter 4 presents the analysis of 1hp, 400Volts, induction motor by ANSYS Maxwell
electromagnetic field simulation software for inter-turn fault, experimental set up has
been made for inter-turn fault, signature of various current signal has been taken at no
load as well as different loading condition and their THD has been calculated, finally the
ANN (Artificial Neural Network) and SVM (Support Vector Machine) have been used
for detection of fault in three phase induction motor. It has been observed that SVM gives
better accuracy in comparison to ANN. Chapter 5 describe the hazard model of induction
motor in brief, the attempt is made to comprehensively discuss the reliability, MTBF, and
the failure rate of induction motors have been evaluated with the help of the industrial
data. It has also been described mathematically how the purchase of a standby machine
increases the reliability of system operation. For various failure modes, preventive and
suggestive methods are demonstrated in order to reduce the faults in induction machines.
The reliability indices (reliability, MTBF and failure rate) v/s operational time curve
based on probabilistic evaluation has been demonstrated successfully. This curve is very
helpful to provide information about the planning maintenance schedules to obtain
reliable operation without interruption.Chapter 6 presents the main conclusions and
recommendations for future work. |
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