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Showing results 1 to 11 of 11
- Soon In Jung
- 2022
- Soon In Jung. (2022). Damping Optimization and Advanced Materials Integration towards High-Performance Piezoelectric Resonant Sensors. doi: 10.22677/thesis.200000628634
- DGIST
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Thesis
Design and Optimization of an Air-Coupled Opto-Mechanical Ultrasound Sensor for High Sensitivity
- Dongju Choi
- 2026
- DGIST
- View : 26
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- Bongho Jang
- 2024
- Bongho Jang. (2024). Flexible Sol-Gel Processed ZrO2/SnO2 Thin Film Transistors Using Combustion Synthesis. doi: 10.22677/THESIS.200000798549
- DGIST
- View : 192
- Download : 0
- Seunghun Baik
- 2024
- Seunghun Baik. (2024). Formation of Low Resistance Contacts to Silicon and Germanium by Low-Temperature Process. doi: 10.22677/THESIS.200000730337
- DGIST
- View : 358
- Download : 0
- LIM MIN GI
- 2024
- LIM MIN GI. (2024). Four-Wave Mixing Processes in a Photonic Molecule Reconfigured by Micro-Electro-Mechanical System(MEMS). doi: 10.22677/THESIS.200000723573
- DGIST
- View : 94
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- Jae Hyeon Kim
- 2026
- DGIST
- View : 79
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- Kyungtaek Lee
- 2022
- Kyungtaek Lee. (2022). Materials Analysis and Device Integration of Carbon Nanotubes and Rare-Earth Orthoferrites for Hazardous Gas Sensing Applications. doi: 10.22677/thesis.200000593648
- DGIST
- View : 381
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- Myeongseok Hong
- 2024
- Myeongseok Hong. (2024). On-chip programmable Mach-Zehnder Interferometer based on silicon photonic MEMS. doi: 10.22677/THESIS.200000725378
- DGIST
- View : 207
- Download : 0
- Man J. Her
- 2023
- Man J. Her. (2023). Programmable Photonic Integrated Circuits Using Low Power Consumption MEMS. doi: 10.22677/THESIS.200000656269
- DGIST
- View : 262
- Download : 0
- Do Y. Kim
- 2022
- Do Y. Kim. (2022). Scalable Recirculating Programmable Silicon Photonic MEMS. doi: 10.22677/thesis.200000596371
- DGIST
- View : 341
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- Dongkyu Jung
- 2022
- Dongkyu Jung. (2022). Speckle-to-Speckle: Ultrasound speckle reduction technique using unsupervised deep learning. doi: 10.22677/thesis.200000629151
- DGIST
- View : 279
- Download : 0
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