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Dr. Subhra Majhi is a Lecturer in Structural Engineering within the School of Civil and Mechanical Engineering at Curtin University, Faculty of Science and Engineering. He obtained his Doctor of Philosophy in Civil Engineering, specializing in Non-Destructive Testing, from Curtin University (March 2015–February 2019). Previously, he earned a Master's degree in Civil Engineering from the Indian Institute of Technology Gandhinagar (July 2012–August 2014) and a Bachelor's degree in Civil Engineering from Osmania University (September 2008–May 2012). His academic career includes roles as Research Associate and Sessional Academic at Curtin University since February 2018, and Assistant Professor in Civil Engineering at MVSR Engineering College, India (September 2014–February 2015).
Majhi's research specializations encompass non-destructive testing, guided wave ultrasonics, ultrasonic imaging, signal processing, acoustic emission systems, and structural health monitoring, with a particular emphasis on wave-based corrosion monitoring for concrete and steel infrastructure. His work explores innovative non-invasive techniques for detecting corrosion, bolt loosening, and cracks, contributing to effective lifecycle management of built facilities. Notable publications include 'Investigating corrosion-induced deterioration in bolted steel plate joints using guided wave ultrasonic inspection' (2024), 'Smart Soil Nails' (2024), 'Enhancing Corrosion Monitoring in Bolted Steel Joints Through Ultrasonic Inspection' (2023), 'Multimodal Monitoring of Corrosion in Reinforced Concrete for Effective Lifecycle Management of Built Facilities' (2022), 'Enhanced Ultrasonic Imaging in Concrete Structures with Spatial Apodization Filters' (2021), and 'Corrosion Monitoring in Steel Bars using Laser Ultrasonic Guided Waves and Advanced Signal Processing' (2020). Majhi's scholarly output has amassed over 580 citations on Google Scholar, underscoring his impact in advancing condition monitoring technologies for civil engineering applications.
