A Novel Ultrasonic Leak Detection System in Nuclear Power Plants Using Rigid Guide Tubes with FCOG and SNR
Abstract
:1. Introduction
2. Background and Related Work
2.1. Leak-Before-Break
2.2. Acousto-Optic Leakage Monitoring
2.3. β-Ray Detection
2.4. Probabilistic Evaluations
3. Enhanced Acoustic Leak Detection System
3.1. Current Acoustic Leak Detection Technology
3.2. Acoustic Signal Forwarding with Rigid Guided Tubes
3.3. Enhanced FCOG for Leak Detection
- fi represents the frequency component I;
- A(fi) denotes the energy or spectral density at frequency component fi;
- N is the total number of frequency components.
3.4. Leak Detection Criteria
- Criterion 1: FCOG Shift
- FCOGLeak represents the FCOG for the detected leak signal;
- FCOGB/G represents the FCOG for the background noise signal;
- ∆f is the threshold frequency that defines the minimum deviation required to determine a leak event.
- Criterion 2: S/N Ratio in Random Frequencies
- represents the Signal-to-Noise Ratio at frequency fi;
- N is the total number of randomly selected frequencies;
- denotes the number of frequencies for which the S/N ratio exceeds 2.
4. Experiments and Results Analysis
4.1. Experimental Setup
4.2. Leak Point near ULD #2 (LN #2, 0.5 mm Leakage Nozzle, 200 kPa)
- Lower Frequency Band (25–46.6 kHz):
- Middle Frequency Band (46.8–67.4 kHz):
- Upper Frequency Band (67.6–88.8 kHz):
4.2.1. FCOG Shift Analysis (Leakage @ LN #2)
4.2.2. S/N Ratio Analysis (Leakage @ LN #2)
4.3. Leak Point near ULD #3 (LN #3, 1.0 mm Leakage Nozzle, 200 kPa)
4.3.1. FCOG Shift Analysis (Leakage @ LN #3)
4.3.2. S/N Ratio Analysis (Leakage @ LN #3)
4.4. Future Directions in Parameter Optimization Using Machine Learning
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Choi, Y.-R.; Yeo, D.; Lee, J.-C.; Cho, J.-W.; Moon, S. A Novel Ultrasonic Leak Detection System in Nuclear Power Plants Using Rigid Guide Tubes with FCOG and SNR. Sensors 2024, 24, 6524. https://doi.org/10.3390/s24206524
Choi Y-R, Yeo D, Lee J-C, Cho J-W, Moon S. A Novel Ultrasonic Leak Detection System in Nuclear Power Plants Using Rigid Guide Tubes with FCOG and SNR. Sensors. 2024; 24(20):6524. https://doi.org/10.3390/s24206524
Chicago/Turabian StyleChoi, You-Rak, Doyeob Yeo, Jae-Cheol Lee, Jai-Wan Cho, and Sangook Moon. 2024. "A Novel Ultrasonic Leak Detection System in Nuclear Power Plants Using Rigid Guide Tubes with FCOG and SNR" Sensors 24, no. 20: 6524. https://doi.org/10.3390/s24206524
APA StyleChoi, Y.-R., Yeo, D., Lee, J.-C., Cho, J.-W., & Moon, S. (2024). A Novel Ultrasonic Leak Detection System in Nuclear Power Plants Using Rigid Guide Tubes with FCOG and SNR. Sensors, 24(20), 6524. https://doi.org/10.3390/s24206524