Using Phase-Sensitive Optical Time Domain Reflectometers to Develop an Alignment-Free End-to-End Multitarget Recognition Model
Abstract
:1. Introduction
2. Sensing Principle
2.1. Φ-OTDR of Direct Detection Combined with Coherent Detection
2.2. Raw Data Acquisition Method
3. Methodology
3.1. Proposed Framework
3.2. Local Digital I/Q Signal Demodulation
3.3. Data Time-Frequency Conversion
3.4. Recognition Model
3.4.1. CLSTM and CTC
- The CNN layer focuses on extracting image spatial dimensional features, forming feature maps at different scales employing convolution layers, pooling layers, padding, activation functions, etc., thereby extracting high-dimensional features. Since the convolution layer is computed by sliding from left to right on the original image, it has translation invariance. Therefore, each column of the feature map corresponds to a perceptual field at the relevant position on the original image in the same order. The feature map is a sequence of subframe features obtained by sequential operation after dividing the original time–frequency map into frames.
- The LSTM layer extracts the temporal dimensional features of the data. Sequences containing contextual features are extracted by memory gates, forgetting gates, cell states, etc., eventually forming the sequence of labels to be aligned. The depth and length of the extracted sequence features depend on the extraction direction of the LSTM, the number of layers, and the number of hidden layers per LSTM.
- The transcription layer solves the alignment problem between the label and output of the neural network. During the model training, the sequence path probability that matches the label is obtained when the output sequence of LSTM undergoes labeled path search and transform. The smaller the value of this probability, the greater the overall loss of the system.
- Once the system loss value is acquired, the backpropagation algorithm updates the parameters of the algorithm module in the first and second steps. So far, an update iteration operation has been completed. The backpropagation algorithm, including learning rate, learning rate update method, batch size, etc., will affect the training speed and final effect. Therefore, to compare different performance metrics of the models, the parameters of the backpropagation algorithm should be consistent when training different models with multiple iterations until convergence.
3.4.2. Beam Search Decoding Function
4. Experimental Dataset Generation and Preparation
4.1. Data Collection
4.2. Network Construction
4.3. Evaluation Metrics
5. Experimental Procedure
5.1. Experimental Setup
- The processing time of the raw data is compared between two methods of fast hybrid demodulation and global digital I/Q demodulation [13], using piezoelectric ceramics (PZT) as the vibration source.
- The effects of different CNN network structures on the model’s overall performance are discussed. Nine models consisting of CNNs and LSTMs with different structures are used for training and testing, thus addressing the effect of different network structures on model recognition performance.
- The validation set observes the training effect, and the model with satisfactory metrics in Section 4.3 is selected as the final model. The test set is used to analyze various performance metrics. In addition, the performance differences between the proposed CNN network and three classical VGG [44] networks are compared.
- The sequence data collected by Φ-OTDR contain different lengths and different kinds of vibrations. An end-to-end model training method is constructed without using manual forced alignment. The effectiveness of the model for multi-vibration target recognition is verified.
5.2. Fast Hybrid Demodulation Method
5.3. Network Training
5.4. Models Performance
5.5. Comparison of Models Based on Different CNNs
6. Conclusions and Future Work
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
Φ-OTDR | Phase-sensitive Optical Time-domain Reflectometer |
RBSs | Rayleigh Backscatter Signals |
CNN | Convolution Neural Network |
Bi-LSTM | Bidirectional Long Short-term Memory |
CTC | Connectionist Temporal Classification |
NARs | Nuisance-alarm Rates |
L.O. | Local Oscillator |
EMD | Empirical Mode Decomposition |
MFCC | Mel-scale Frequency Cepstral Coefficients |
W.D. | Wavelet Decomposition |
WPD | Wavelet Packet Decomposition |
XGBoost | Extreme Gradient Boosting |
k-NNs | K-nearest Neighbors |
SVMs | Support Vector Machines |
GMMs | Gaussian Mixture Models |
LSTM | Long Short-time memory |
HMM | Hidden Markov Model |
AOM | Acoustic-optic Modulator |
EDFA | Erbium-doped Fiber Amplifier |
P.D. | Photodetector |
SMF | Single-mode Fiber |
DAQ | Data Acquisition Module |
BPD | Balanced Photodetector |
STFT | Short-time Fourier Transform |
FFT | Fast Fourier Transform |
RNN | Recurrent Neural Networks |
P.C. | Personal Computer |
T.P. | True Positive |
T.N. | True Negative |
F.P. | False Positive |
F.N. | False Negative |
PZT | Piezoelectric Ceramics |
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Vibration Source | Included Vibration Frequencies | Lasting Time | Number in Type I Data | Number in Type II Data | Number in Type III Data | Label |
---|---|---|---|---|---|---|
A | 250 hz, 500 hz | 0.1–0.3 s | 338 | 1366 | 2037 | 1 |
B | 350 hz, 650 hz | 0.1–0.3 s | 364 | 1383 | 2021 | 2 |
C | 500 hz, 750 hz | 0.1–0.3 s | 340 | 1361 | 2086 | 3 |
D | 650 hz, 1000 hz | 0.1–0.3 s | 330 | 1356 | 2046 | 4 |
E | 250 hz, 750 hz | 0.1–0.3 s | 342 | 1386 | 2079 | 5 |
Model | CNN | LSTM | Transcription | ||||
---|---|---|---|---|---|---|---|
C2 | C3 | C6 | Number of Hidden Layers | Number of Layers | Bi-LSTM | CTC | |
CLSTM1 | √ | 32 | 2 | √ | √ | ||
CLSTM2 | √ | 16 | 2 | √ | √ | ||
CLSTM3 | √ | 64 | 2 | √ | √ | ||
CLSTM4 | √ | 64 | 1 | √ | √ | ||
CLSTM5 | √ | 16 | 1 | √ | √ | ||
CLSTM6 | √ | 64 | 2 | √ | √ | ||
CLSTM7 | √ | 64 | 2 | √ | √ | ||
CLSTM8 | √ | 64 | 2 | √ | |||
CLSTM9 | √ | 16 | 1 | √ |
Model | Type | Precision (%) | Recall (%) | F1 (%) | Accuracy (%) | Number of False Alarms | Number of Missed Alarms | Parameters (M.B.) | Inference (ms) |
---|---|---|---|---|---|---|---|---|---|
CLSTM1 | All | 99.34 | 99.18 | 99.26 | 99.18 | 8 | 5 | 21.6 | 2.211 |
A | 98.62 | 99.44 | 99.03 | ||||||
B | 99.75 | 99.51 | 99.63 | ||||||
C | 100 | 99.23 | 99.61 | ||||||
D | 99.75 | 99.5 | 99.62 | ||||||
E | 99.75 | 99.5 | 99.62 | ||||||
CLSTM2 | All | 99.13 | 98.46 | 98.79 | 98.46 | 18 | 5 | 21.3 | 2.206 |
A | 98.61 | 98.33 | 98.47 | ||||||
B | 99.51 | 99.75 | 99.63 | ||||||
C | 99.74 | 98.72 | 99.23 | ||||||
D | 99.75 | 98.5 | 99.12 | ||||||
E | 99.23 | 98.23 | 98.73 | ||||||
CLSTM3 | All | 99.64 | 99.33 | 99.49 | 99.33 | 8 | 2 | 22.3 | 2.204 |
A | 99.17 | 99.17 | 99.17 | ||||||
B | 100 | 99.51 | 99.75 | ||||||
C | 100 | 99.23 | 99.61 | ||||||
D | 99.75 | 99.5 | 99.62 | ||||||
E | 99.75 | 99.75 | 99.75 | ||||||
CLSTM4 | All | 99.49 | 99.18 | 99.33 | 99.18 | 9 | 3 | 21.9 | 2.212 |
A | 98.62 | 98.89 | 98.75 | ||||||
B | 100 | 99.75 | 99.88 | ||||||
C | 100 | 99.23 | 99.61 | ||||||
D | 100 | 99.5 | 99.75 | ||||||
E | 99.49 | 99.24 | 99.37 | ||||||
CLSTM5 | All | 97.47 | 97.51 | 97.48 | 97.51 | 17 | 18 | 21.3 | 2.197 |
A | 96.48 | 98.89 | 97.67 | ||||||
B | 98.76 | 98.52 | 98.64 | ||||||
C | 98.45 | 98.2 | 98.33 | ||||||
D | 99.75 | 98.5 | 99.12 | ||||||
E | 98.22 | 97.98 | 98.1 | ||||||
CLSTM6 | All | 96.04 | 96.71 | 96.37 | 96.71 | 16 | 30 | 1.55 | 2.05 |
A | 95.1 | 96.94 | 96.01 | ||||||
B | 98.05 | 99.51 | 98.77 | ||||||
C | 99.22 | 97.94 | 98.58 | ||||||
D | 96.56 | 98.5 | 97.52 | ||||||
E | 98.47 | 97.98 | 98.22 | ||||||
CLSTM7 | All | 95.12 | 96.99 | 96.04 | 96.99 | 7 | 46 | 4.93 | 2.091 |
A | 93.67 | 98.61 | 96.08 | ||||||
B | 97.11 | 99.75 | 98.41 | ||||||
C | 99.49 | 99.23 | 99.36 | ||||||
D | 97.78 | 99.25 | 98.51 | ||||||
E | 98.5 | 99.49 | 98.99 | ||||||
CLSTM8 | All | 97.93 | 98.42 | 98.17 | 98.42 | 6 | 16 | 21.9 | 2.201 |
A | 96.99 | 98.33 | 97.66 | ||||||
B | 99.02 | 99.51 | 99.26 | ||||||
C | 100 | 98.97 | 99.48 | ||||||
D | 98.03 | 99.5 | 98.76 | ||||||
E | 99.5 | 99.75 | 99.62 | ||||||
CLSTM9 | All | 99.47 | 97.28 | 98.36 | 97.28 | 44 | 1 | 21.3 | 2.196 |
A | 99.15 | 96.67 | 97.89 | ||||||
B | 99.8 | 98.76 | 99.25 | ||||||
C | 99.74 | 97.43 | 98.57 | ||||||
D | 99.75 | 98 | 98.86 | ||||||
E | 99.21 | 95.7 | 97.42 |
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Yang, N.; Zhao, Y.; Wang, F.; Chen, J. Using Phase-Sensitive Optical Time Domain Reflectometers to Develop an Alignment-Free End-to-End Multitarget Recognition Model. Electronics 2023, 12, 1617. https://doi.org/10.3390/electronics12071617
Yang N, Zhao Y, Wang F, Chen J. Using Phase-Sensitive Optical Time Domain Reflectometers to Develop an Alignment-Free End-to-End Multitarget Recognition Model. Electronics. 2023; 12(7):1617. https://doi.org/10.3390/electronics12071617
Chicago/Turabian StyleYang, Nachuan, Yongjun Zhao, Fuqiang Wang, and Jinyang Chen. 2023. "Using Phase-Sensitive Optical Time Domain Reflectometers to Develop an Alignment-Free End-to-End Multitarget Recognition Model" Electronics 12, no. 7: 1617. https://doi.org/10.3390/electronics12071617
APA StyleYang, N., Zhao, Y., Wang, F., & Chen, J. (2023). Using Phase-Sensitive Optical Time Domain Reflectometers to Develop an Alignment-Free End-to-End Multitarget Recognition Model. Electronics, 12(7), 1617. https://doi.org/10.3390/electronics12071617