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What were the early explorations in structure health monitoring of pressure vessels during the 1990s? 


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Early explorations in structural health monitoring (SHM) of pressure vessels during the 1990s focused on operational evaluation, diagnostic measurements, information condensation, and damage identification . Additionally, advancements were made in utilizing PVDF piezoelectric film sensors for load measurement systems in aerospace structures to prevent damage from external forces . Furthermore, the use of ultrasound for structural health monitoring in composite structures, particularly bilayered laminates, was explored to detect metal to composite disbonding and through-thickness delamination induced by impacts like space debris . These early explorations laid the foundation for incorporating IoT technology, cloud computing, and innovative fitting methods based on space deformation for real-time monitoring and accurate damage detection in pressure vessels and other large structures .

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Early explorations in structural health monitoring of pressure vessels during the 1990s focused on operational evaluation, diagnostic measurements, information condensation, and damage identification using experimental data from various applications.
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Related Questions

What were the early explorations in structure health monitoring of pressure vessels during the 2000s?5 answersEarly explorations in structural health monitoring (SHM) of pressure vessels during the 2000s involved various technological advancements and experimental validations. These explorations encompassed the development of an Internet of Things (IoT)-enabled system for real-time monitoring of pressure vessel structures, utilizing technologies like digital twin, Flask framework, Vue framework, and Mysql databases for data mining and scene perception. Additionally, research efforts focused on operational evaluation, diagnostic measurements, information condensation, and damage identification using experimental data from aging aircraft, wind energy, bridges, offshore structures, and mechanical parts, paving the way for advanced SHM applications in diverse infrastructure sectors. Furthermore, studies delved into the application of ultrasound for structural health monitoring of composite structures, particularly addressing metal to composite disbonding through guided ultrasonic waves, numerical modeling, and signal processing techniques for improved detectability and warning systems.
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