The project completed at the Wichita State University Department of Aeronautical Engineering. Presented at the 9th Annual Capitol Graduate Research Summit, Topeka, KS, 20122012 CGRS winnerMaintenance has remained an important issue in the aerospace structures and materials field. As technologies have improved, composites have begun to replace increasingly more structural components. However, these still have a long expected life for service use and damage can occur within that time. Ultrasonic sensors can be placed on or within composite laminates to scan for damage. Analysis of signals from these sensors is difficult for composites due to effects of material boundaries. A novel method of using artificial neural networks to interpret signal...
The need for reliable methodologies for structural monitoring is certainly a current line of researc...
This paper presents a structural health monitoring (SHM) method for in situ damage detection and loc...
Neural networks have proved to be very powerful tools in pattern recognition and machine learning an...
Paper presented to the 8th Annual Symposium on Graduate Research and Scholarly Projects (GRASP) held...
Thesis (Ph.D.)--Wichita State University, College of Engineering, Dept. of Aerospace Engineering.Bec...
ABSTRACT: An artificial neural network has been developed that can analyze signals from piezoelectri...
This thesis considers two basic aspects of impact damage in composite materials, namely damage sever...
This paper deals with the evaluation of residual tensile strength of composite laminates containing ...
Abstract:- In this work a methodology for damage detection on laminated composite plates involving t...
This paper investigates the effectiveness of the combination of global (changes in natural frequenci...
Fleet maintenance and safety aspects represent a strategic aspect in the managing of the modern airc...
This paper presents an approach to defect detection and characterisation in ultrasonic inspection of...
The problems related to damage detection represents a primary concern, particularly in the framework...
An experimental study for the determination of the optimal pulse repetition rate frequency (PRF) for...
Artificial neutral networks (ANN) can be used as an online health monitoring systems (involving dama...
The need for reliable methodologies for structural monitoring is certainly a current line of researc...
This paper presents a structural health monitoring (SHM) method for in situ damage detection and loc...
Neural networks have proved to be very powerful tools in pattern recognition and machine learning an...
Paper presented to the 8th Annual Symposium on Graduate Research and Scholarly Projects (GRASP) held...
Thesis (Ph.D.)--Wichita State University, College of Engineering, Dept. of Aerospace Engineering.Bec...
ABSTRACT: An artificial neural network has been developed that can analyze signals from piezoelectri...
This thesis considers two basic aspects of impact damage in composite materials, namely damage sever...
This paper deals with the evaluation of residual tensile strength of composite laminates containing ...
Abstract:- In this work a methodology for damage detection on laminated composite plates involving t...
This paper investigates the effectiveness of the combination of global (changes in natural frequenci...
Fleet maintenance and safety aspects represent a strategic aspect in the managing of the modern airc...
This paper presents an approach to defect detection and characterisation in ultrasonic inspection of...
The problems related to damage detection represents a primary concern, particularly in the framework...
An experimental study for the determination of the optimal pulse repetition rate frequency (PRF) for...
Artificial neutral networks (ANN) can be used as an online health monitoring systems (involving dama...
The need for reliable methodologies for structural monitoring is certainly a current line of researc...
This paper presents a structural health monitoring (SHM) method for in situ damage detection and loc...
Neural networks have proved to be very powerful tools in pattern recognition and machine learning an...