1. Introduction
Matched field processing (MFP) is a classic underwater acoustic source localization (ASL) method, and a series of improved methods [
1,
2,
3,
4,
5,
6] based on this method are often used for underwater ASL. However, this method requires consistency between marine environment and the model, but marine environment is time variant and spatial variant, leading to a degeneration in the ASL accuracy of MFP, or even complete failure. A series of methods have been developed to solve the problem of model mismatch. Richardson [
7] used the maximum a posterior estimation and realized narrow-band ASL in the deep-sea uncertain sound velocity field, the result of which was more stable than that of MFP. Krolik [
8] used the minimum variance beamforming to realize ASL in a random ocean channel, which had high stability to the random change of the sound speed profile (SSP) between the acoustic source and the receiver. Mourad [
9] used reference sound waves to correct marine environment variation, realized ASL, and eliminated distance integral effect of marine environment. Fialkowski [
10] used Bartlett processing to eliminate noise, and used focusing to reduce the impact of marine environment uncertainty, realizing ASL in noisy and uncertain ocean. In the presence of internal waves, Yoo [
11] adopted uncoupled normal modes to achieve ASL, while Book [
12] used the hybrid Cramer-Rao lower bound and significantly improved the performance of low-frequency broadband coherent ASL. Song [
13] adopted maximum likelihood estimation to realize ASL in a random medium, with an ASL relative error of 20%. Yoo [
14] adopted broadband matched beam processing and realized shallow water broadband ASL in the presence of internal waves. Collison [
15] used the normalized matched mode processing for ASL and used the replica field as a priori estimation to improve adaptation to environmental mismatch. Soares [
16] found that MFP for ASL would become robust to temporal and spatial changes of environment, if the parameters related to mismatch were clearly identified, appropriately modeled and estimated by focusing methods. Finette [
17] used horizontal array beamforming to deal with anisotropic internal wave fields and weakened the horizontal refraction effect by internal waves.
Zhang [
18] adopted a seabed horizontal line array (HLA) MFP to realize shallow water ASL, the performance of which was better than that of HLA at other depths. Based on a reliable acoustic path time-reverse ASL method, Wang [
19] used an HLA to realize deep-sea ASL, and enhanced the focusing effect by increasing the number and spacing of the array elements. For broadband ASL in shallow water, based on the waveguide invariant, Qi [
20] proposed an operator according to the autocorrelation function of the received signal, effectively realizing passive ASL. By extracting the peak points of the autocorrelation function of the experimentally received signal, Thomassin [
21] obtained the corresponding time delay of multipath arrivals, realizing ASL. Based on autocorrelation function of the broadband signal received by a single hydrophone, Zhang [
22] realized shallow water ASL adapting to marine environment mismatch.
In addition, the waveguide invariant method is also a commonly used broadband ASL method. Based on the relation between the slope of broadband sound field interference striation and the acoustic source range, this method realizes underwater acoustic source ranging (ASR). Yu [
23] achieved passive ranging of moving targets based on waveguide invariants. Based on vector sound field interference structure, Lin [
24] used waveguide invariant to carry out passive ASR. Wang [
25] used HLA to estimate the target velocity, using shallow ocean waveguide invariant for ASR. Combined with the virtual source method, Liu [
26] proposed a waveguide invariant ASR method, improving the source ranging accuracy. Under the condition of linearly changed ocean depth with distance, based on waveguide invariant and warping transform, Shao [
27] used an iterative algorithm to realize ASR, which reduced the ranging error.
However, in the broadband sound field interference pattern, as an important piece of information, the quasi-periodic variation of the sound intensity interference with frequency is often ignored. In our previous research [
28], the quasi-periodicity in broadband sound intensity fluctuation with frequency was discovered, and the quantitative relation between the quasi-periodicity and the position of the soliton internal wave was derived, realizing soliton internal wave localization. This paper focuses on the phenomenon that the broadband sound intensity fluctuates quasi-periodically with frequency. The quantitative relation between the quasi-periodicity in broadband sound intensity fluctuation with frequency and the acoustic source range is found, and the underwater acoustic source is localized. The accuracy of the results obtained is significantly better than that of MFP. Moreover, this work is remarkable in that the results coming from the study of interference frequency periodicity suggest that the frequency periodicity can be used for high-accuracy underwater ASR even with a single receiving range. Further, this new scientific thinking model will be applied to other fields involving frequency periodicity of physical field modal interference, bringing more practical application results. For instance, underwater broadband vector acoustic field ranging and acoustic source ranging in the air can be realized in the same way, which will be studied next.
Based on the principle of frequency synthesis, we adopted the normal mode method and obtained the relevant results of the broadband pulse signal propagating in shallow water. The theoretical derivation leads us to the relation between the acoustic source range and the interference period of the two-normal-mode interference curves in frequency. This relation can accurately estimate the acoustic source range when the receiver is far from the acoustic source (further than 10 km), and is simulated and verified by experimental data processing. Moreover, compared with the traditional “waveguide invariant-interference striation slope” ranging method, the frequency periodicity method has better real-time performance and lower computational complexity for the acoustic source range monitoring. The frequency periodicity method can not only accurately estimate the acoustic source range, but also can be used as a scientific idea to be extended to the application of other physical fields for normal mode broadband interference parameter measurement.
3. Broadband Interference Simulation and Theoretical Analysis
After intercepting the first two largest wave packets, we obtained a new received temporal signal, written as
(for the first two modes,
m = 1,
n = 2). Next,
is processed with Fourier transform, to obtain frequency domain received signal as follows:
and the corresponding received broadband interference spectrum is
Combined with the broadband acoustic source frequency spectrum
(
Figure 1b), only the 250–450 Hz band with a large amplitude is reserved, to obtain the frequency response of the broadband sound field
as well as the broadband sound intensity containing only two normal modes:
Frequency domain received signals for various
R are shown in
Figure 4a–c, and the interference pattern
of the broadband acoustic pressure field
containing all normal modes is shown in
Figure 4e. The 250–450 Hz band is chosen because the source amplitude of the band is much larger and more flat than that of other bands, resulting in high ASL accuracy. This is a limitation of the proposed algorithm: the received signal spectrum is required to be relatively flat throughout the band. If not, you need to choose a relatively flat band from the broadband source spectrum, such as the 250:1:450 Hz band in
Figure 1b.
As shown in
Figure 4e, the interference pattern of the sound field obtained by superposing all modes tends to be stable as
R increases, and the sound field interference at a far field is dominated by the interference between the first two modes (interference spatial period d
mn is close to
). As shown in
Figure 4a–c, the frequency response of the broadband sound field fluctuates with frequency quasi-periodically, and since only the first two modes are retained, the interference in
Figure 4a–c is dominated by the spatial interference of the two modes. In other words, the interference pattern
is actually dominated by the interference pattern
of the first two modes, and, according to Equation (11),
Taking source spectrum into consideration, the received interference spectrum
As shown by Equation (12), when
R is constant,
term causes the fluctuation of sound intensity in frequency. Combining the fluctuation property with Equation (4), if the frequencies of two adjacent peak points for the sound intensity fluctuation are
and
, the relation between
R and
and
is as follows:
According to Equation (14), the broadband pulse ASR can be done. If the adjacent valley values and of the sound intensity interference in frequency are taken, still holds, and the derivation is not repeated here. So, changes with frequency, resulting in a quasi-periodical change in frequency for , which can be used to obtain R.
In addition, the farther R is, the smaller required for frequency interference to complete a full cycle is, and the smaller corresponding is, which is easier to satisfy in a narrower frequency band, so as to achieve ASR more easily. On the contrary, when R is too small, it is not easy to meet the above condition, causing ranging failure. Therefore, the performance of the proposed method on far-field ranging is theoretically better than that of near-field. The poor accuracy of near-field ranging is the second drawback of the proposed method.
However, in practice, for other ASL methods, near-field ASL is often relatively simple, while far-field precise ASL is more difficult, so this algorithm can solve the far-field precise ASL problem that is difficult for other methods, and near-field ASL can be solved by other methods.
In addition, to reduce the ranging error, we used the method below. For example,
and
are frequency points corresponding to the two peaks of the broadband sound field interferogram. The acoustic intensity fluctuates with frequency, and the band between
and
contains
n interference cycles (
). Then,
Therefore,
R can be accurately obtained. Taking
Figure 4a–c, for example, according to multiple interference periods in the broadband interferogram of the sound field at three distances, the estimated
R is shown in
Table 1.:
As shown in
Table 1, ranging errors at the three distances are all less than 2%, and the ASR errors at 30 and 40 km are even less than 0.1%. Therefore, the method realizes high accuracy in ASR for the far field. Next, considering the limitation of the proposed method in the near field, we used the method to analyze broadband sound intensity interference
and draw the estimated source range when the actual source range is
R = 30:0.1:100 km, as shown in
Figure 5. Considering that high-order normal mode attenuation is large in the far field, far-field sound intensity interference is dominated by low-order normal modes, so there is no need to truncate the received temporal signal and keep the first two wave packets only. To obtain the broadband receiving spectrum, we conducted Fourier transform on the entire received temporal signal; then, combining broadband receiving spectrum with Equation (15), we obtained the ASR result shown in
Figure 5. In addition, as
R increases, the interference period in frequency will become shorter, and the wrong peak points will be found due to insufficient sampling frequency points, bringing ranging errors. Therefore, we avoided the interference peaks at lower frequencies, and, starting from the third interference peak point counting from low to high frequency, we counted the number of interference peaks and the corresponding number of interference cycles n and calculated
R.
As shown in
Figure 5a, at all
R, the relative ranging error is far less than 10%. To further show the high precision of the ASR algorithm, we reduced the error limitation to 1%, and the relative ranging error with
R is shown in
Figure 5b, where the error is less than 1% at most distances and between 1 and 2% at a small part of distances, and higher than 2% and lower than 10% for only one measured point. Moreover, when
R is further than 40 km, the error of all distances is within 1%, illustrating the high accuracy of the proposed method on far-field ASR.
It is often impossible for us to predict the frequency spectrum of the acoustic source, so we can only perform ASR based on the received signal. Under such a premise, we still used the above method, select the 250:1:450 Hz band, and use the fluctuation periodicity of the received intensity spectrum
in frequency to perform ASR, and the ranging results are shown in
Figure 6.
As shown in
Figure 6b, when
is used for ASR, the relative ranging error is within 2% at most distances, and 2–5% for a small number of distance points, which also achieves accurate far-field ASR.
Next, we determined the acoustic source azimuth based on the multi-receiver ranging. Theoretically, only three non-collinear receivers are required to locate an acoustic source, and ASR relative to the three receivers can be calculated based on the geometric relation. To test the source azimuth measurement performance of the proposed method, we kept the marine environment parameters consistent with those in
Figure 1a, and choose the layout shown in
Figure 7a, where A, B, and C are three receivers and D is the acoustic source, and their relative positions are shown in
Figure 7a. The distances from D to A, B, and C are, respectively,
Combining
, the estimated range
and relative error
obtained by the frequency periodicity method are as follows:
As demonstrated by the the above results, the ASR errors at three receivers are all within 2%, achieving high-precision ranging. Next, according to the geometric relation, we drew three circles with the points A, B, and C as the center and
,
,
as the radius, respectively, to determine the acoustic source position, as shown in
Figure 7b.
As shown in
Figure 7b, the three circles centered on A, B, and C have a common intersection point close to the acoustic source, D. The details of the intersection point in
Figure 7b are enlarged and shown in
Figure 7c, where there are actually three intersections for the three circles near D, namely (50.29,51.74) km, (50.42,51.67) km, and (50.44,51.56) km. If the average of the horizontal and vertical co-ordinates of the three points, (50.383,51.657) km, is used as the positioning result, selecting A(–10,0) km as the reference point and positive x axis as the 0° direction, the actual acoustic source position by polar co-ordinate is (78.102 km, 39.806°), the estimated acoustic source position is (79.464 km, 40.547°), the relative ranging error is 1.74%, and the error of direction estimation is 0.741°. Thus, the distance and direction of the acoustic source have been determined accurately. Here, we still emphasize that, due to theoretical limitation, the proposed method is more accurate for far-field ASL but has insufficient performance for near-field ASL. Moreover, the received signal spectrum is required to be relatively flat.
4. Experimental Verification
In order to test the underwater ASL performance of the proposed method in the actual marine environment, the data from the Qingdao sea test in the summer of 2007 by the Institute of Acoustics of the Chinese Academy of Sciences is processed using the above method, and the results are as follows.
The SSP measured in the experiment is shown in
Figure 8a. The sea depth is
H = 36 m, and the 32-element vertical array was used to receive data. Among the elements, three were faulty and 29 were effective. The effective receiving depth
zr = 2.5:1:30.5 m, the acoustic source depth
zs = 16.5 m, and 38 explosion acoustic source tests were performed in the experiment. The 38 distances from acoustic sources to the receiver are shown in
Figure 8b. The bottom geometry parameters were not measured in the experiment. According to the results in Reference [
32], supposing the bottom is half infinite space and liquid seabed, the bottom sound speed
cb = 1588 m/s, bottom density
, and bottom longitudinal wave attenuation coefficient
is fitted base on the results in Reference [
31]:
, where the unit of frequency
f is Hz, the unit of
is
, and
is the wavelength of the sound wave. Combined with the normal mode method, the corresponding eigenvalue and eigenfunction are calculated, and the needed sound wave frequency band is determined according to the actual calculation requirements. The calculated
combined with the test environment is shown in
Figure 8c.
In the experiment, an amount of 0.1 kg TNT was used as the explosion acoustic source, and the Fourier transform was performed on the received temporal sound signal to obtain the received signal spectrum:
The normal mode method is used to obtain the eigenvalue and eigenfunction, and then, combined with the sound field interference frequency periodicity method, the acoustic source range is estimated. According to the KRAKEN program [
33] and the environment in
Figure 8a, only two propagating normal modes are obtained when the sound wave frequency
f = 105:0.1:175 Hz. The sound field interference structure is simple, which is convenient for subsequent processing. Therefore, this frequency band is selected for ASR. The received signal spectrum
is used to realize ASR. To obtain high-precision results, mode filtering [
30] is performed on
to obtain received spectrum
and
of the first two normal modes, and the filtered received signal spectrum is as follows:
Taking the 38th bombing location as an example, the actual distance
r38 = 31.348 km. Selecting the received acoustic signal at the 27th receiving depth (
zr = 28.5 m, at which the peak of the received spectrum is sharper that that at other depths), and the corresponding
is shown in
Figure 9.
As shown in
Figure 9,
fluctuates with frequency. To improve the accuracy of ASR, the 128.4–160.3 Hz band is selected, which has a long and stable received signal fluctuation period, and there are eight interference cycles in this band, so the estimated source range
and relative error
are, respectively,
Thus, the frequency periodicity method obtains an accurate ASR result. Next, the method is applied to other bombing locations. To reduce the error, after the mode filtering is used to obtain
, the
at each receiving depth is added to obtain the sum of received signal spectrum:
The ASR is performed according to the interference period of
in frequency, and the ASR result is shown in
Figure 10b; while the ASR result by the MFP algorithm (Equation (1b) in Reference [
14]) is shown in
Figure 10a.
Comparing
Figure 10a,b, it can be seen that the accuracy of the ASR result by the frequency periodicity method is significantly higher than the result by MFP. In the ranging results of MFP, the ranging error of a considerable part of the locations is far more than 10%, while the ranging results of the frequency periodicity method are all within 10%, in which a considerable part are far less than 10%, showing the superiority of the proposed method in ASL accuracy. In addition, compared with MFP, the frequency periodicity method does not need to calculate the entire replica field that changes with distance, but only processes the actual received data, which greatly reduces the amount of calculation for ASR. Moreover, the method only needs the signal at a single receiving distance, and does not rely on the slope of the interference striation of the sound field interference pattern composed of multiple distances to realize ASR. Compared with the waveguide invariant ranging method, the proposed method greatly improves the real-time nature of ranging.
In addition, there are only 36 estimated distance points in
Figure 10b, and the estimated distances of explosion locations No.1 and No.2 do not appear. The reason for this is that the actual acoustic source ranges of the two explosion locations are 1.496 and 2.071 km, respectively, which are too close for the proposed method, causing ASR to fail, and they are not marked in the
Figure 10b.