International Journal of Application or Innovation in Engineering & Management
An Inspiration for Recent Innovation & Research….
ISSN 2319 – 4847
www.ijaiem.org
Call for Paper, Published Articles, Indexing Infromation
Title: |
Negative Selection Inspired Machine Learning Approach for Damage Detection
|
Author Name: |
Farzin Azimpour |
Abstract: |
ABSTRACT
The fault detection of dynamics systems is of great importance when it comes to ensuring safety and increasing their
performance. The present paper uses the concept of the natural immune systems and takes the advantage of its major
characteristics like evolution and trainability for fault detection purposes. In the presented approach, first, both negative and
clonal selection methods are used in order to improve the rate of convergence. Second, the generated population is compared to
the members of memory cells (as the set of best samples of overall population) that results in a more efficient local search and
faster convergence. Finally, the obtained results from the artificial immune system (AIS) are compared to the genetic
algorithm (GA). The simulation results indicate that the proposed approach shows a higher accuracy in terms of identifying the
location and intensity of the fault in the system under study.
Keywords: Machine Learning, Fault Detection, Genetic Algorithm |
Cite this article: |
Farzin Azimpour , "
Negative Selection Inspired Machine Learning Approach for Damage Detection " , International Journal of Application or Innovation in Engineering & Management (IJAIEM),
Volume 6, Issue 1, January 2017 , pp.
066-075 , ISSN 2319 - 4847.
|