- The Journal of Cognitive Systems
- Volume:3 Issue:1
- A DATA DRIVEN STRUCTURAL HEALTH MONITORING APPROACH INTEGRATING COGNITIVE CONCEPTS
A DATA DRIVEN STRUCTURAL HEALTH MONITORING APPROACH INTEGRATING COGNITIVE CONCEPTS
Authors : Burcu GUNES
Pages : 17-20
View : 14 | Download : 5
Publication Date : 2018-12-01
Article Type : Research Paper
Abstract :The most crucial step of the structural health monitoring insert ignore into journalissuearticles values(SHM); methodology is the detection stage where a decision on the existence of damage has to be made. Without a very detailed and refined finite element model of the system, data driven approaches have the potential for rapid assessment of the structure at the damage detection stage of the more encompassing SHM problem. Change in the dynamic properties of structures offers a real-time structural health monitoring technique which detects damage at low cost and with little or no human intervention. Whether the changes in the identified parameters are due to the onset of damage or due to factors introducing non-linearity to the system, such as closing and opening of micro-cracks in concrete structures, environmental conditions or noise present in the data is a challenge that needs to be faced. This study presents a pattern recognition type of approach that will help with the distinction of true and false positives. The first step of the model-free methodology includes the linearity check of the system. The recorded vibration measurements recorded from the structure is divided into time segments and with each data set modal parameters are identified. The variability of the identification results are used as a measure for the existence of confounding factors that may mask accumulation of damage revelation. An ‘expert’ knowledge gained through this allows better treatment of the uncertainties in the problem and mimic the human decision process. The results of the numerical simulations are promising for the effectiveness of the procedure to minimize ‘false negative’ identifications.Keywords : Data Driven Damage Detection, Structural Health Monitoring, Cognitive, Cognitive Concepts