Vertically Integrated Project Group
as a Methodology for Improving Diagnostics & Prognostics
in Structural Health Monitoring Applications
Managing Professor: Antonios Kontsos antonios.kontsos@drexel.edu
VIP IoT Subgroups
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Hardware & Software
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Machine Learning/Algorithms
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Name
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Email
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Name
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Email
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Rakeen Rouf
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Krzysztof Mazur
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Sadman Jafir Islam
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Matthew Rantz
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Ishtiaq Shahriar
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Sarah Malik
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Har Patel
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Mohammad Adib
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mma343@drexel.edu
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Abrar Zawad
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Raj Patel
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Project Abstract
Structural Health Monitoring (SHM), defined as the process that involves sensing, computing and decision making to assess the integrity of infrastructure has been plagued by data management and data-driven decision-making challenges. The Internet of Things (IoT) provides a way to decisively address both SHM’s big data problems. The purpose of the IoT project proposed herein is to develop a framework that connects sensor data with processing and modeling to provide diagnostic/prognostic capabilities related to SHM. Specifically, the proposed IoT model will be comprised of 3 components: the Edge, the Fog and the Cloud. The Edge is the bottom level hardware that interfaces with the sensors used and is capable of filtering and transmitting data. The Fog is the hardware that provides an environment where computational algorithms for both diagnostics and prognostics can be implemented leveraging cloud-like properties. The Cloud is used to store data as well as to perform demanding computations such that required large databases and training sets. To accomplish this goal a team of three undergraduate students in majors including mechanical, electrical and computer engineering, as well as computer science and business was formed. The team will leverage existing sensing, computing and data post-processing capabilities at the lab using an actual test case to demonstrate the performance of the proposed IoT framework.
Data Trends
The Data Trends above exhibit the first major case for an IoT framework. In DIC, it shows some of the 15 different features, in IRT we have 5 different features and in AE we have up to 35 different features. These features come in during tests of up to 10,000 cycles at a variety of acquisition rates. All in all, the “big data problem” of SHM is seen at a small scale. The issue comes with the fact that in aerospace cases any single hit can be an indication of major damage propagation.
General IoT Framework
IoT Data Flow Framework
The
focus of the IoT framework in terms of SHM is information management and
consolidation performed live by separating workload into varying levels of
computational expense and varying levels of informational load. For each
structure, a data history in terms of NDT methods and sensors would be required
initially. This data history can be simulated as fatigue data obtained from
Acoustic Emission (AE), Infrared Thermography (IRT), Digital Image Correlation
(DIC) and a load curve obtained from the testing machine itself. This
information is trimmed to a manageable level using feature selection and feature
reduction techniques, more specifically, correlations between features are
compared so that the least correlated features are kept, and then Principal
Component Analysis (PCA) is used to further diminish the number of features
used.
Encardio Rite provides an end-to-end solution for Structural Health Monitoring of bridges, monuments, dams & buildings with integrated sensors & instruments.
ReplyDeleteEncardio Rite also provides an instrumentation solution for monitoring the new construction of high-rise buildings and its foundation works. Structural Health Monitoring is required to verify the design parameters, manage construction in a safe and controlled manner, and safeguard existing buildings.
Structural Health Monitoring(SHM) is indispensable for ensuring the safety and longevity of critical infrastructure. Through advanced sensors and data collection technologies, SHM helps detect early signs of damage, preventing catastrophic failures. Encardio Rite stands out in this field by offering innovative solutions that integrate continuous monitoring, risk assessment, and real-time data analysis, ensuring the structural integrity of projects worldwide. Their expertise is invaluable in maintaining resilient infrastructure.
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