Intelligent algorithm based robust and fault tolerant control of induction machines
Abstract
Induction machines (IMs) are the driving force in industries such as manufacturing,
transportation and wind power generation. Hence, it is essential to reliably detect faults in IMs so
as to enhance production quality in manufacturing and avoid operational degradation. However, it
is still challenging to reliably detect faults in IMs as fault feature properties could change under
variable IM operating conditions. The first objective of this thesis is to develop an enhanced
empirical mode decomposition (EEMD) technique to detect an IM broken rotor bar (BRB) fault
based on motor current signature analysis. In the developed EEMD technique, a phase insensitive
similarity function is initially suggested to determine the representative intrinsic mode functions
(IMFs). Moreover, an optimized adaptive multi-band filter is suggested to process the current
spectrum and to recognize the fault characteristic features. Likewise, a modified whale
optimization algorithm (MWOA) is proposed, which is utilized to optimize the parameters in
adaptive multi-band filter. Finally, a reference function is recommended to enhance feature
properties and IM fault detection. The effectiveness of the proposed EEMD technique is verified
through experimental analysis under different IM operating conditions. [...]