DOA Estimation of Unknown Emitter Signal Based on Time Reversal and Coprime Array
<p>Elements’ positions of the CA.</p> "> Figure 2
<p>The distribution of the conventional DCA. Therein, the red circle represents the hole, and the white circle indicates the element of virtual ULA constructed by DCA.</p> "> Figure 3
<p>The distribution of the proposed DCA. Therein, the red circle represents the hole, and the white circle indicates the element of virtual ULA constructed by DCA.</p> "> Figure 4
<p>System model for DOA estimation. Background scatter is denoted by rectangle.</p> "> Figure 5
<p>Schematic diagram for noise suppression using ANFIS</p> "> Figure 6
<p>Structure of fuzzy system.</p> "> Figure 7
<p>Amplitude loss of signal versus distance between ES and antenna.</p> "> Figure 8
<p>2-path normalized power spectra versus angles using conventional Capon DOA, TR-Capon-DOA and TR-NS-Capon-DOA algorithms under the condition of SNR = −15 dB and ULA, (<b>a</b>) LFM (<b>b</b>) NLFM.</p> "> Figure 9
<p>2-path normalized power spectra versus angles using conventional Capon DOA, TR-Capon-DOA and TR-NS-Capon-DOA algorithms under the condition of SNR = −100 dB and ULA, (<b>a</b>) LFM (<b>b</b>) NLFM.</p> "> Figure 10
<p>3-path normalized power spectra versus angles for conventional Capon DOA, TR-Capon-DOA and TR-NS-Capon-DOA algorithms under the condition SNR = −15 dB and ULA, (<b>a</b>) LFM (<b>b</b>) NLFM.</p> "> Figure 11
<p>3 near paths’ normalized power spectra versus angles for conventional Capon DOA, TR-Capon-DOA and TR-NS-Capon-DOA algorithms under the condition of SNR = −15 dB and ULA, (<b>a</b>) LFM (<b>b</b>) NLFM.</p> "> Figure 12
<p>2-path normalized power spectra versus angles for conventional Capon DOA, TR-Capon-DOA and TR-NS-Capon-DOA algorithms under the condition of LFM used as ES, SNR = −15 dB and (<b>a</b>) conventional CA (<b>b</b>) Optimized CA.</p> "> Figure 13
<p>4-path normalized power spectra versus angles for conventional Capon DOA, TR-Capon-DOA and TR-NS-Capon-DOA algorithms under the condition of LFM used as ES, SNR = −15 dB and (<b>a</b>) conventional CA (<b>b</b>) Optimized CA.</p> "> Figure 14
<p>Normalized power spectra versus angles for conventional Capon DOA, TR-Capon-DOA and TR-NS-Capon-DOA algorithms with the configurations of MRA, NA and OCA under the condition of LFM used as ES, SNR = −15 dB and (<b>a</b>) 2-path (<b>b</b>) 4-path.</p> "> Figure 15
<p>CRLB versus SNR for conventional Capon DOA, TR-Capon-DOA and TR-NS-Capon-DOA algorithms with the configurations of ULA, CA, OCA MRA and NA under the condition of LFM used as ES and DOA = <math display="inline"><semantics> <msup> <mn>32</mn> <mo>∘</mo> </msup> </semantics></math>, (<b>a</b>) all methods and configurations; (<b>b</b>) the conventional method and all configurations; (<b>c</b>) the TR-Capon-DOA method and all configurations; (<b>d</b>) the TR-NS-Capon-DOA method and all configurations.</p> "> Figure 16
<p>CRLB versus SNR for conventional Capon DOA, TR-Capon-DOA and TR-NS-Capon-DOA algorithms with the configurations of ULA, CA, OCA MRA and NA under the condition of LFM used as ES and DOA = <math display="inline"><semantics> <msup> <mn>40</mn> <mo>∘</mo> </msup> </semantics></math>, (<b>a</b>) all methods and configurations; (<b>b</b>) the conventional method and all configurations; (<b>c</b>) the TR-Capon-DOA method and all configurations; (<b>d</b>) the TR-NS-Capon-DOA method and all configurations.</p> "> Figure 17
<p>RMSE versus SNR for conventional Capon DOA, TR-Capon-DOA and TR-NS-Capon-DOA algorithms with the configurations of ULA, CA, OCA MRA and NA under the condition of LFM used as ES (<b>a</b>) DOA = <math display="inline"><semantics> <msup> <mn>32</mn> <mo>∘</mo> </msup> </semantics></math> (<b>b</b>) DOA = <math display="inline"><semantics> <msup> <mn>40</mn> <mo>∘</mo> </msup> </semantics></math>.</p> "> Figure 18
<p>Computation time comparison with different sampling interval.</p> ">
Abstract
:1. Introduction
1.1. DOF Design and Method of Increasing Effective Aperture of Array for DOA Estimation
1.2. High Resolution and Accuracy Algorithms for DOA Estimation
1.3. Contributions of This Paper
- (1)
- An optimized CA (OCA) with higher DOF is designed. By properly designing the inter-space between elements of only one subarray, which is easy to operate, a large aperture array can be obtained.
- (2)
- For the sake of solving the problem of wide sidelobe and multipath effect, a DOA estimation algorithm based on TR and Capon is proposed (called TR-Capon-DOA algorithm here) for passive array to detect active targets. Furthermore, on the basis of TR-Capon-DOA algorithm, and in order to reduce the negative influence of noise on locating ES, a DOA estimation method with noise suppression is developed (called TR-NS-Capon-DOA here), combined with ANFIS. In the ANFIS, the distorted noise in the resubmitting stage and channel noise are considered.
- (3)
- TR-NS-Capon-DOA, TR-Capon-DOA with the conventional counterpart–Capon algorithm are compared. The performance of these DOA estimation algorithms with ULA, CA, OCA, NA and MRA are analyzed for locating different unknown ES from different directions under the conditions of a multipath environment. Moreover, the corresponding root mean square error (RMSE), Cramér-Rao lower bound (CRLB) and computational complexity are also discussed.
1.4. Organizaton of This Paper
2. System Model and Methodology
2.1. DOF Design and Method of Increasing Effective Aperture of Array for DOA Estimation
2.2. High Resolution and Accuracy Algorithm for DOA Estimation
2.2.1. Conventional Capon DOA Estimation
2.2.2. TR-Capon-DOA Estimation
2.2.3. Suppressing Noise DOA Estimation Based on TR
- (a).
- Compare the input variables with the membership functions on the premise part, so that the membership values or compatibility measures of each decision can be obtained. This step is always called fuzzification. This step needs a fuzzification interface block which transforms the crisp inputs into degrees of match with decisions.
- (b).
- Combine the membership values on the premise part to get weight of each fuzzy if-then rule. Therein, the membership values can be obtained through a specific T-norm operator which is usually multiplication or min. Then, generate the qualified fuzzy or crisp consequent of each fuzzy if-then rule depending on weight.This step need three functional blocks-a rule base, a database, a decision-making unit. Therein, a rule base contains a plenty of fuzzy if-then rules; a database defines the membership functions of the fuzzy sets used in fuzzy rules; and a decision-making unit performs the inference operations upon the rules and gets the weight. Usually, the rule base and the database are jointly referred to as the knowledge base.
- (c).
- Aggregate the qualified consequents to develop a crisp output. This step is called defuzzification which need a defuzzification interface block. This block transforms the fuzzy results of the inference into a crisp output.
2.2.4. DOA Estimation Performance Based on RMSE and CRLB
3. Numerical Experiment
3.1. Multipath DOA Estimation with ULA
3.2. Multipath DOA Estimation with CA and Optimized CA
3.3. Multipath DOA Estimation with OCA, MRA and NA
4. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
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Abbreviation | Full Writting |
---|---|
ANFIS | Adaptive neuro-fuzzy interference system |
CA | Coprime array |
CRLB | Cramér-Rao lower band |
DCA | Difference coprime array |
DNB | Distorted noise base |
DOA | Direction of arrival |
DOF | Degree of freedom |
ES | Emiiter signal |
OCA | Optimized coprime array |
RMSE | Root mean square error |
SNR | Signal-to-noise ratio |
TR | Time reversal |
TR-Capon-DOA | Direction of arrival estimation based on time reversal and Capon |
TR-DOA | Direction of arrival estimation based on time reversal |
TR-NS-Capon-DOA | Direction of arrival estimation based on time reversal and Capon with the property of noise suppression |
ULA | Uniform linear array |
ULSA | Uniform linear subarray |
Symbol/Notaion | Meaning |
---|---|
j | |
transpose operator | |
conjugate operator | |
conjugate transpose operator | |
inverse operator | |
expectation operator | |
upward rounding operator | |
the trace of a matrix | |
⊗ | Kronecker product |
get the th element to the th element from matrix |
Step | Operation |
---|---|
Step 1 | Construct the CA/OCA and the DOA estimation system model. |
Step 2 | DOA estimation using conventional algorithm–Capon |
Step 3 | DOA estimation using the proposed TR-Capon-DOA algorithm |
Step 4 | DOA estimation using the proposed TR-NS-Capon-DOA algorithm |
Step 5 | Analyze the performance (including the resolution, accuracy, RMSE, CRLB and computational complexity) of the proposed TR-Capon-DOA and TR-NS-Capon-DOA algorithms with the comparison of conventional Capon mehtod under the condition of different arrangements of array, unknown ES and multipath. |
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Li, B.; Liu, S.; Zhao, D.; Hu, B.-J. DOA Estimation of Unknown Emitter Signal Based on Time Reversal and Coprime Array. Sensors 2019, 19, 1398. https://doi.org/10.3390/s19061398
Li B, Liu S, Zhao D, Hu B-J. DOA Estimation of Unknown Emitter Signal Based on Time Reversal and Coprime Array. Sensors. 2019; 19(6):1398. https://doi.org/10.3390/s19061398
Chicago/Turabian StyleLi, Bing, Shiqi Liu, Deshuang Zhao, and Bin-Jie Hu. 2019. "DOA Estimation of Unknown Emitter Signal Based on Time Reversal and Coprime Array" Sensors 19, no. 6: 1398. https://doi.org/10.3390/s19061398
APA StyleLi, B., Liu, S., Zhao, D., & Hu, B. -J. (2019). DOA Estimation of Unknown Emitter Signal Based on Time Reversal and Coprime Array. Sensors, 19(6), 1398. https://doi.org/10.3390/s19061398