Clutter Cancellation and Long Time Integration for GNSS-Based Passive Bistatic Radar

: Clutter cancellation and long time integration are two vital steps for global navigation satellite system (GNSS)-based bistatic radar target detection. The former eliminates the inﬂuence of direct and multipath signals on the target detection performance, and the latter improves the radar detection range. In this paper, the extensive cancellation algorithm (ECA), which projects the surveillance channel signal in the subspace orthogonal to the clutter subspace, is ﬁrst applied in GNSS-based bistatic radar. As a result, the clutter has been removed from the surveillance channel effectively. For long time integration, a modiﬁed version of the Fourier transform (FT), called longtime integration Fourier transform (LIFT), is proposed to obtain a high coherent processing gain. Relative acceleration (RA) is deﬁned to describe the Doppler variation results from the motion of the target and long integration time. With the estimated RA, the Doppler frequency shift compensation is carried out in the LIFT. This method achieves a better and robust detection performance when comparing with the traditional coherent integration method. The simulation results demonstrate the effectiveness and advantages of the proposed processing method.


Introduction
Passive bistatic radar (PBR) has attracted the attention of many researchers in the recent years, due to its low cost, convert operation, and no need for frequency allocations [1][2][3][4][5][6]. Various kinds of illuminators of opportunity are exploited as transmitters of the passive bistatic radar for target detection, such as FM radio [7][8][9], Digital Video Broadcasting-Terrestrial [10,11], WIFI [12,13], and GSM [14]. The key problem of passive bistatic radar is that the illuminators are not radar-designed, and the transmitting power is low, which leads to a limited probing distance.
When compared with the aforementioned illuminators, the Global Navigation Satellite Systems (GNSS) signal [15,16] are more attractive for its global coverage and spatial diversity. Each point on the earth is illuminated by 6-8 GNSS satellites simultaneously at any time for each constellation, and a minimum of 24 satellites are guaranteed if four GNSS constellations are in full capacity [17]. Moreover, each GNSS constellation operates on code or frequency division, and the signals that are transmitted by every satellite can be effectively discriminated. However, two major issues should be considered for GNSS-based passive radar. One is that satellite signals are continuous wave, and the target echoes are always interfered by the direct-path wave and multipath echoes; the other is that the low power level substantially limits the target detection range.
The direct-path wave and multipath echoes have almost zero Doppler, and the power of them is much higher than that of the target echo, and the weak target echo may be submerged by them. Hence, clutter cancellation is an essential step in passive radar signal processing. In this paper, direct-path wave and multipath echoes are referred as clutter.
A variety of methods have been proposed for clutter cancellation. The adaptive filtering approach, which contains least mean square (LMS) [18], normalized least mean square (NLMS) [19], recursive least square (RLS) [20], and so on, is the most commonly used. However, these methods suffer from heavy computational burden and the filter orders are always uncertain. A trade-off must be made between the converge rate and running time. Another classical approach for clutter cancellation is the extensive cancellation algorithm (ECA) [21], which is derived from the least squares (LS) method and subspace projection technique. The captured signal is projected onto a subspace that is orthogonal to the clutter subspace. However, the computational burden of the method is high. To overcome this limitation, many modified algorithms have been proposed, such as the batches version of ECA (ECA-B) [22], ECA-S (ECA-sliding) [23], and so on. Besides, some researchers focus on the ground clutter cancellation [24,25]. The ground clutter removal is achieved using the framing based mean removal and subspace decomposition [24]. In [25], the clutter position is extracted by implementing a correlation-based method and it is then used to remove the radar self-motion effects.
In addition to clutter cancellation, long time integration is also an important step in target detection. The low effective isotropic radiated power (EIRP) leads to the target detection challengeable [26]. In order to counteract the low signal level, the target echoes need to be integrated over long time integrations to obtain a promising maximum detectable range. Additionally, the integration times are always up to dozens of seconds. However, the subsequent issue that arises with the increase of integrated time is that the Doppler frequency may migrate through Doppler resolution cells, which degrade the target detection performance. Moreover, for air moving targets, the motion of the target is always maneuvering and the Doppler frequency is time-varying severely during the coherent processing interval (CPI). The existing research for long time integration techniques for GNSS-based radar refers to traditional methods, such as fractional Fourier transform (FrFT) [27], Radon Fourier transform [28], etc. In [29,30], the whole integration interval is divided into several frames. The target echoes are coherent accumulated inside the frame and noncoherent integration among different frames to obtain a focused RD map. However, the target echoes have not been accumulated effectively due to the noncoherent integration process. A modified radon Fourier transform is proposed in [31] to achieve long time integration for GNSS_based bistatic radar. However, this method needs to estimate the parameters of the target echo signal and the estimation result will affect the integration gain.
In this paper, we focus on the clutter cancellation and long time integration of GNSSbased passive radar for air target detection. Firstly, the classical clutter cancellation method, ECA, which projects the surveillance channel signal in the subspace orthogonal to the clutter subspace is applied in GNSS-based bistatic radar. As a result, the clutter has been effectively removed from the surveillance channel. After that, an integration method based on long-time integration Fourier transform (LIFT) is proposed to achieve the azimuth compression. In the new method, the Doppler frequency of the target during the CPI is described by a second-order polynomial. Additionally, the Doppler variation is described by a new variable, called relative acceleration (RA). Once the RA is obtained, the target echo can be correctly accumulated by LIFT. The coarse estimation of RA is obtained by FrFT and the accurate one is obtained through optimizing the parameter that is related to the target detection results.
The remainder of this paper is organized, as follows: Section 2 describes the GNSSbased bistatic radar system consists of system geometry and signal model/Section 3 discusses the clutter cancellation algorithm and elaborates the new long time integration method that is based on LIFT. Section 4 validates the proposed method through simulations and Section 5 concludes the paper.

GNSS-Based Bistatic Radar System Geometry Signal Model
The radar system in this paper consists of a satellite transmitter and stational receiver antenna on the ground. The receiver is equipped by two channels. One (referred to as Remote Sens. 2021, 13, 701 3 of 16 reference channel) collects the direct path signal that is transmitted by illuminators as the reference signal to accomplish the cross-correction, and the other (surveillance channel) captures the target echoes from the area of interest. Figure 1 illustrates the geometric configuration of GNSS_based bistatic radar. O-XYZ defines a Cartesian coordinate system, where the radar receiver is located at the origin O. The transmitter is one GNSS satellite that is located at P TX (x s ; y s ; z s ) and moves at a velocity V s v sx ; v sy ; v sz . The target is an airplane with a velocity and acceleration v t and a t , respectively. Assuming that an air target within the receiver antenna for the whole aperture time T a . The instantaneous position of the air target can be expressed as . The target is an airplane with a velocity and acceleration t v and t a , respectively. Assuming that an air target within the receiver antenna for the whole aperture time a T . The instantaneous position of the air target can be expressed as R t denote, respectively, the baseline between the satellite and the receiver, the instantaneous range from satellite to target, and target to receiver at time m t during the coherent processing interval (CPI). ( ) m R t is the instantaneous bistatic range, which is given by the range difference between the target echo and direct signal Additionally, the Doppler frequency can be expressed as where  is the signal wavelength.  Let R D (t m ), R T (t m ), and R R (t m ) denote, respectively, the baseline between the satellite and the receiver, the instantaneous range from satellite to target, and target to receiver at time t m during the coherent processing interval (CPI). R(t m ) is the instantaneous bistatic range, which is given by the range difference between the target echo and direct signal Additionally, the Doppler frequency can be expressed as where λ is the signal wavelength. Because GNSS signals are continuous in time, they do have a period of T c = 1 ms. The captured data can be formatted in a two-dimensional scheme by defining the equivalent pulse in signal processing. The fast time dimension is defined as the sample of each period of the ranging code, and the slow time dimension is the equivalent pulses for coherent processing, as shown in Figure 2.
Because GNSS signals are continuous in time, they do have a period of 1  c T ms. The captured data can be formatted in a two-dimensional scheme by defining the equivalent pulse in signal processing. The fast time dimension is defined as the sample of each period of the ranging code, and the slow time dimension is the equivalent pulses for coherent processing, as shown in Figure  The received echo after the cross-correction can be modelled, as follows [18]   where A is the backward scattering coefficient of the target, ( )  Q is the cross-correction function between target echo and reference signal, and c is the speed of light.
The Taylor series of the bistatic range ( ) m R t around the reference time is where 0 R is the initial range at the reference time and dc f and dmr f are the Doppler centroid (DR) and Doppler modulated rate (DMR) of the target. Generally, a second-order expansion is sufficient for describing the Doppler variation of the air target. Hence, the received signal in (4) can be rewritten as (6) It is clear that the signal power of the GNSS_based bistatic radar is extremely low, which limits the target detection distance of the radar system. Long time integration is needed in order to improve the detection performance. However, it can be seen from (6) that both the range and Doppler are time-varying during the aperture time. Proper strategies are needed to eliminate the range and Doppler migrations.
It should be noticed that the signal bandwidth of the GNSS signal is reasonably small and the range-curvature in the envelope term can be ignored. Hence, the signal model can be rewritten as After the above approximation, the range migration reduces to a linear term. Keystone transform (KT) [32] can be applied to remove the couple between the range and frequency domain. The detailed procedures of KT have been presented in [32], so only a brief description will be provided here. Firstly, a Fourier transform (FT) is applied along the fast time and the data are converted to the ( , )  The received echo after the cross-correction can be modelled, as follows [18] where A is the backward scattering coefficient of the target, Q(·) is the cross-correction function between target echo and reference signal, and c is the speed of light. The Taylor series of the bistatic range R(t m ) around the reference time is where R 0 is the initial range at the reference time and f dc and f dmr are the Doppler centroid (DR) and Doppler modulated rate (DMR) of the target. Generally, a second-order expansion is sufficient for describing the Doppler variation of the air target. Hence, the received signal in (4) can be rewritten as It is clear that the signal power of the GNSS_based bistatic radar is extremely low, which limits the target detection distance of the radar system. Long time integration is needed in order to improve the detection performance. However, it can be seen from (6) that both the range and Doppler are time-varying during the aperture time. Proper strategies are needed to eliminate the range and Doppler migrations.
It should be noticed that the signal bandwidth of the GNSS signal is reasonably small and the range-curvature in the envelope term can be ignored. Hence, the signal model can be rewritten as After the above approximation, the range migration reduces to a linear term. Keystone transform (KT) [32] can be applied to remove the couple between the range and frequency domain. The detailed procedures of KT have been presented in [32], so only a brief description will be provided here. Firstly, a Fourier transform (FT) is applied along the fast time and the data are converted to the ( f τ , t m ) domain, and then interpolated to a new , finally an inverse FT is used to come back to the range and slow-time domain. Subsequently, the range cell migration corrected data can be described as Assuming that the range cell contains target echo has been selected, we focus on the azimuth signal and the envelope is neglected in the following discussion. Subsequently, (8) can be written as The DRM will seriously impact the traditional target detection performance. Next, we focus on the compensation of the quadratic phase term that is caused by DRM.

The Principle of Extensive Cancellation Algorithm
Unlike the traditional active radar, a reference antenna is required in passive radar for collecting the direct path signal that is transmitted by illuminators as the reference signal to accomplish the cross-correction. The surveillance antenna is mainly applied to capture the target echo; however, it is inevitably polluted by the direct-path and multipath signals. The strong clutter will degrade the target detection performance. Hence, it is critical to remove the clutter from the captured data before cross-correlation.
The sampled signal in surveillance channel is where N is the number of samples within the CPI.
Assuming that the clutter echoes are backscattered from the first R range cells, it is needed to extract the N + R − 1 samples of the signal in reference channel: The signal model of ECA is for exploring by minimizing the residual signal power after clutter cancellation, thus min with where B is an incidence matrix that selects the last N rows of the matrix, Λ P is the diagonal matrix corresponding to the p-th Doppler cell.
where D is a 0/1 permutation matrix that applies a delay of a single sample that is defined as: The columns of the matrix X define a M-dimensional clutter subspace, where M = (2P + 1) * R. The filter coefficients α = [α 0 α 1 . . . α R−1 ] T are evaluated based on the least square approach and it can be expressed as Remote Sens. 2021, 13, 701 6 of 16 The surveillance signal after clutter cancellation can be expressed as where P is the projection matrix projecting the surveillance channel signal in the subspace orthogonal to the clutter subspace. After clutter cancellation, the received signals in surveillance channel are target echoes and thermal noise. Subsequently, cross-correlation and KT are applied to accomplish the range compression and range cell migrations, respectively.

The Proposed Long Time Integration Algorithm
It is worth noticing that DC and DRM that are related to the motion of the air target are constant during the CPI. The ratio of DRM and DC are defined as relative acceleration (RA), which can be expressed as Subsequently, (9) can be rewritten as If the Doppler is constant during the CPI, FT can be applied to obtain the coherent integration processing gain. The target echo after cross-correlation and KT is denoted as S(m, n), where m is the slow time and n is the fast time. We denote the range-Doppler map as I, the FT matrix as F, and the process of the coherent integration can be expressed as For a coherent integration containing M pulses, the FT matrix can be written as where W = exp(−j 2π M ), m, m = 0, 1, 2, . . . , M − 1. Each m value corresponds to a row vector in the FT matrix. Subsequently, the integration component for quadratic phase terms in (20) can be expressed as According to (23), the compensation component can be constructed with the variation of m and m . The size of the matrix F c is the same as F. The FT matrix containing the Doppler shift compensation is where ⊗ denotes Hadamard product and F is named as the long-time integration Fourier transform (LIFT) matrix. Subsequently, the coherent integration process can be expressed as The above analysis is based on the fact that the RA is already known. However, the ratio is unknown for the target and it needs to be estimated in advance.
Equation (9) indicates that the Doppler frequency can be described by a linear frequency modulated signal. Many parameter estimation methods can be applied to estimate the RA, such as fractional Fourier transform (FrFT) and Lv's distribution [33,34]. Here, FrFT is used for parameter estimation. The definition of the FrFT for signal x(t) is where K p (u, t) is the transform kernel that is defined as (27) and n = 1, 2 . . .. The result of the transformation concentrates the chirp signal energy on the specific point in the FrFT plane. Additionally, the parameters of the LFM signal can be obtained by Subsequently, the estimated RA can be calculated by However, the estimated value is inaccurate due to the interfere and noise. Here, we define a new variable to evaluate the coherent integration performance. The definition of energy integration ratio (EIR) is where E( µ) is the signal power of the Doppler cell that target located after coherent integration and E is the total signal power of the target echo after clutter cancellation. It can be noticed that ρ < 1 and a larger ρ indicates a better integration effect. Hence, the accurate µ can be obtained by maximizing the ρ. Detailed implementation procedures of the proposed processing technique are given, as follows: Step 1: Remove the direct and multipath signal from the target echo signal; Step 2: Calculate the cross-correlation between the target echo signal and the reference signal; Step 3: Estimate the coarse RA based on FrFT; Step 4: Estimate the accurate RA through maximizing the EIR; and, Step 5: Compensate the quadratic phase terms that are caused by the motion of the target and long time integration in the LIFT matrix.
In summary, Figure 3 illustrates the flowchart of the proposed processing technique.

Simulation Results
In this section, the proposed method is tested by using MATLAB software to simulate the radar system and Table 1 provides the parameter settings of the radar system. The

Simulation Results
In this section, the proposed method is tested by using MATLAB software to simulate the radar system and Table 1 provides the parameter settings of the radar system. The target echo pulses with different motion status are provided in order to verify the effectiveness of the proposed method. In the simulation, GPS L1 signal is adopted as the transmitter of opportunity. The reason of this choice is that it represents the worst case in terms of signal power. The position of the satellite in the radar coordinate system is (5.59,7.19,18.2) × 10 6 m and its velocity is (60,100, −20) m/s. Two multipath signals are considered in the simulation. Table 2 illustrates the related parameters of the signals. When considering that Doppler frequency is related to the bistatic angle which is varying during the CPI, the coordinate form of Doppler frequency calculation is given here, as follows: where · denotes the modular operation and v tx , v ty , v tz T is the target instantaneous velocity vector relative to the receiver. We consider the target with smooth motion and the acceleration is set as zero. At first, the conventional detection approach looking for the peak that the RD map got over a CPI is applied to detect the target. The RD map is obtained by performing a slow-time FT for the range-compressed echo. Figure 4 shows the RD map without considering the clutter cancellation. It can be seen that, except for the direct and multi-path echo located in zero Doppler, there is no bright spot that can be associated to the target. It can be deduced that the clutter and low power target echo affect the target detection performance.
Subsequently, we take clutter cancellation into consideration. Figure 5 shows the coherent processing results which both the direct and multipath signal at zero Doppler from the first 50 range cells (4400 m) are cancelled. Figure 5 provides the RD map obtained by the traditional FT. A clear spot that corresponds to the actual position of the target can be identified from Figure 5. However, the target energy has not been correctly gathered in the Doppler dimension due to the long integration time. The Doppler frequency of the target migrate several Doppler cells. When the echo signal is low, the target cannot be detected effectively. Moreover, the spread Doppler will affect the following parameter extraction. a CPI is applied to detect the target. The RD map is obtained by performin FT for the range-compressed echo. Figure 4 shows the RD map without co clutter cancellation. It can be seen that, except for the direct and multi-path in zero Doppler, there is no bright spot that can be associated to the target duced that the clutter and low power target echo affect the target detection Subsequently, we take clutter cancellation into consideration. Figure 5 herent processing results which both the direct and multipath signal at zero the first 50 range cells (4400 m) are cancelled. Figure 5 provides the RD ma the traditional FT. A clear spot that corresponds to the actual position of the identified from Figure 5. However, the target energy has not been correctl the Doppler dimension due to the long integration time. The Doppler fre target migrate several Doppler cells. When the echo signal is low, the tar detected effectively. Moreover, the spread Doppler will affect the followi extraction. Subsequently, the long time integration method that is based on modifi rier transform (MFRT) is applied as comparison. Figure 6 shows the RD ma  Subsequently, we take clutter cancellation into consideration. Figure 5 sh herent processing results which both the direct and multipath signal at zero D the first 50 range cells (4400 m) are cancelled. Figure 5 provides the RD map the traditional FT. A clear spot that corresponds to the actual position of the ta identified from Figure 5. However, the target energy has not been correctly the Doppler dimension due to the long integration time. The Doppler frequ target migrate several Doppler cells. When the echo signal is low, the targe detected effectively. Moreover, the spread Doppler will affect the following extraction. Subsequently, the long time integration method that is based on modified rier transform (MFRT) is applied as comparison. Figure 6 shows the RD map Subsequently, the long time integration method that is based on modified radon Fourier transform (MFRT) is applied as comparison. Figure 6 shows the RD map obtained by MFRT. When compared with the RD map in Figure 5, it can be seen that the Doppler spread has been effectively eliminated. However, a slight spread is still existing in Doppler dimension. It can be deduced that the spread is caused by the parameter estimation error. emote Sens. 2021, 13, x FOR PEER REVIEW MFRT. When compared with the RD map in Figure 5, it can be seen tha spread has been effectively eliminated. However, a slight spread is still ex pler dimension. It can be deduced that the spread is caused by the parame error. Next, the new proposed method is applied to deal with the data. Fir shows the instantaneous Doppler frequency versus the slow time. The red Next, the new proposed method is applied to deal with the data. Firstly, Figure 7a shows the instantaneous Doppler frequency versus the slow time. The red curve shown in Figure 7a is the real instantaneous Doppler frequency during the CPI, and the blue one is the result after curve fitting. It can be seen that the Doppler frequency is time varying and a slow-time FFT cannot effectively integrate the target energy. Figure 7b shows the errors between the real and fitting Doppler, from which it is seen that the errors are increased with the coherent integration time. The maximum error is 0.12 Doppler cell within the CPI, which can be negligible. It can also be noticed that the second-order expansion is sufficient for describing the Doppler variation during the dwell time. Next, the new proposed method is applied to deal with the data. Firstly, Figure 7a shows the instantaneous Doppler frequency versus the slow time. The red curve shown in Figure 7a is the real instantaneous Doppler frequency during the CPI, and the blue one is the result after curve fitting. It can be seen that the Doppler frequency is time varying and a slow-time FFT cannot effectively integrate the target energy. Figure 7b shows the errors between the real and fitting Doppler, from which it is seen that the errors are increased with the coherent integration time. The maximum error is 0.12 Doppler cell within the CPI, which can be negligible. It can also be noticed that the second-order expansion is sufficient for describing the Doppler variation during the dwell time.   Figure 9 gives the EIR versus the RA, from which we can see that when the RA equals −0.061, the EIR is the largest. A more accurate RA can be obtained by a smaller step length, which means a longer computational time.  Figure 8 is the parameter estimation result of signal in 33rd range cell by FrFT. The search interval of the rotation angle p was set to [0, π] with a step length of 0.005π. The estimation result indicates that the DR and DMR are 3.14 and −56.12, respectively. The rough RA can be calculated according (21) and it is −0.056. The accurate RA is obtained by maximizing the EIR and the search interval is set to [−0.066, −0.046], with a step length of 0.001. Figure 9 gives the EIR versus the RA, from which we can see that when the RA equals −0.061, the EIR is the largest. A more accurate RA can be obtained by a smaller step length, which means a longer computational time.     Figure 10 shows the coherent processing results obtained by the proposed pro technique. It can be seen from Figure 10 that the target energy is correctly accu over the CPI. As evident, a bright spot that is well-gathered in both range and dimensions can be noticed in the RD map, and the Doppler spreads in Figures have been eliminated effectively.    Figure 10 shows the coherent processing results obtained by the proposed processing technique. It can be seen from Figure 10 that the target energy is correctly accumulated over the CPI. As evident, a bright spot that is well-gathered in both range and Doppler dimensions can be noticed in the RD map, and the Doppler spreads in Figures 5 and 6 have been eliminated effectively.   Figure 10 shows the coherent processing results obtained by the propo technique. It can be seen from Figure 10 that the target energy is correct over the CPI. As evident, a bright spot that is well-gathered in both rang dimensions can be noticed in the RD map, and the Doppler spreads in F have been eliminated effectively.   Figure 11 presents the Doppler cross-section of 33rd range cell to further illustrate the effectiveness of the new proposed method. As is apparent, the new proposed method has effectively integrated the signal energy during the long dwell time. A clear peak can be individuated in the red curve. Specifically, it is seen that an improvement of more than 10 dB is obtained. Such an improvement indicates the effectiveness and robustness of the proposed processing technique.

Detection Results of Target with Constant Acceleration
Usually, the motion of the air target is not smooth, and the acceleration must be considered. In this section, the proposed technique is tested by the target with constant acceleration. We set the acceleration of the target as (−3, −5, 1) m/s 2 , while the velocity and initial position of the target remain unchanged. The SNR of the target echo is set as −46 dB. ECA cancels the clutter from the first 50 range cells.
be individuated in the red curve. Specifically, it is seen that an improvemen 10 dB is obtained. Such an improvement indicates the effectiveness and rob proposed processing technique.

Detection Results of Target with Constant Acceleration
Usually, the motion of the air target is not smooth, and the acceleration sidered. In this section, the proposed technique is tested by the target with c eration. We set the acceleration of the target as (−3, −5,1) m/s 2 , while the velo position of the target remain unchanged. The SNR of the target echo is set a cancels the clutter from the first 50 range cells. Figure 12a is the detection result that is based on FT without clutter ca can be seen, the target cannot be identified due to the strong direct and mul Figure 12b provides the RD map obtained by FT with clutter cancellation, f can see that the target echo has not been accumulated effectively. Although be identified in the RD map, the Doppler spans several resolution cells.   Figure 12a is the detection result that is based on FT without clutter cancellation. As can be seen, the target cannot be identified due to the strong direct and multipath signals. Figure 12b provides the RD map obtained by FT with clutter cancellation, from which we can see that the target echo has not been accumulated effectively. Although the target can be identified in the RD map, the Doppler spans several resolution cells. Figure 13 shows an RD map obtained by the MFRT. The target echoes have been gathered and a bright spot can be identified in the map. However, the Doppler spread has not been eliminated effectively.

Detection Results of Target with Constant Acceleration
Usually, the motion of the air target is not smooth, and the acceleration must be considered. In this section, the proposed technique is tested by the target with constant acceleration. We set the acceleration of the target as (−3, −5,1) m/s 2 , while the velocity and initial position of the target remain unchanged. The SNR of the target echo is set as −46dB. ECA cancels the clutter from the first 50 range cells. Figure 12a is the detection result that is based on FT without clutter cancellation. As can be seen, the target cannot be identified due to the strong direct and multipath signals. Figure 12b provides the RD map obtained by FT with clutter cancellation, from which we can see that the target echo has not been accumulated effectively. Although the target can be identified in the RD map, the Doppler spans several resolution cells. Figure 13 shows an RD map obtained by the MFRT. The target echoes have been gathered and a bright spot can be identified in the map. However, the Doppler spread has not been eliminated effectively.    Figure 7a, the Doppler changes more severely due to the maneuvering of the target. The maximum curve fitting error is 1.8 Doppler cells and it can be negligible in the subsequent processing.
Next, the proposed processing technique is applied to obtain a high coherent integration gain. The coarse RA that is estimated by FrFT is −0.0079. The accurate RA is obtained by maximizing the EIR and the search interval is set to [−0.089, −0.069], with a step length of 0.001. The running results indicate that, when the RA equals −0.0083, the EIR achieves maximum.
The signal to background ratio has been improved due to the enhanced energy concentration by the proposed method. The RD map that is given in Figure 15 Figure 14a is the Doppler variation during the CPI. When comparing w the Doppler changes more severely due to the maneuvering of the target. T curve fitting error is 1.8 Doppler cells and it can be negligible in the su cessing.
Next, the proposed processing technique is applied to obtain a high coh tion gain. The coarse RA that is estimated by FrFT is −0.0079. The accurate R by maximizing the EIR and the search interval is set to   0.089 0.069 ，   length of 0.001. The running results indicate that, when the RA equals −0 achieves maximum. The signal to background ratio has been improved due to the enhance centration by the proposed method. The RD map that is given in Figure 15 that the target echoes have been accumulated in both range and Doppler d bright spot can be identified in the RD map.
When compared with the traditional target detection method, the pro can obtain a higher coherent integration gain, and a longer detection range Both of the the simulation results presented above indicate the effectivene posed processing technique.   Figure 14a is the Doppler variation during the CPI. When comparing with Figure 7a, the Doppler changes more severely due to the maneuvering of the target. The maximum curve fitting error is 1.8 Doppler cells and it can be negligible in the subsequent processing.
Next, the proposed processing technique is applied to obtain a high coherent integration gain. The coarse RA that is estimated by FrFT is −0.0079. The accurate RA is obtained by maximizing the EIR and the search interval is set to   0.089 0.069 ，   , with a step length of 0.001. The running results indicate that, when the RA equals −0.0083, the EIR achieves maximum. The signal to background ratio has been improved due to the enhanced energy concentration by the proposed method. The RD map that is given in Figure 15 also indicates that the target echoes have been accumulated in both range and Doppler dimensions. A bright spot can be identified in the RD map.
When compared with the traditional target detection method, the proposed method can obtain a higher coherent integration gain, and a longer detection range is guaranteed. Both of the the simulation results presented above indicate the effectiveness of the proposed processing technique.

Discussions
In this part, the system link budget will be analyzed. Investigating th detection range of this system as a function of the coherent integration time When compared with the traditional target detection method, the proposed method can obtain a higher coherent integration gain, and a longer detection range is guaranteed. Both of the the simulation results presented above indicate the effectiveness of the proposed processing technique.

Discussion
In this part, the system link budget will be analyzed. Investigating the maximum detection range of this system as a function of the coherent integration time is the main objective of this analysis.
According to the bistatic radar function, the SNR for the echo signal is where Table 3 provides the parameters of the radar system. Next, we take the signal processing gain into consideration. The whole signal processing gain G sp can be written as: where BT c and T coh T c , respectively, denote the range and azimuth processing gain. After the two-dimensional integration processing, the SNR of the echo signal is: We set the minimum SNR for the target detection is SNR min = 8 dB and the coherent time T coh = 3 s. Subsequently, the detection of the GNSS_based passive radar system is 3.5 km.
A large-scale antenna with long integration interval is highly recommended to further enhance the detection range of the GNSS_based radar system. Moreover, any point on the earth is illuminated by more than 32 satellites simultaneously, the detection range can also be enhanced by utilizing multiple satellites. Research on the exploitation of multiple satellites to increase the detection range is our future work.

Conclusions
In this paper, we address the detection of air targets by means of the passive bistatic radar that is based on low-EIRP GPS satellite. Extensive cancellation algorithm (ECA) which project the surveillance channel signal in the subspace orthogonal to the clutter subspace is firstly applied in GNSS-based bistatic radar. Subsequently, a new coherent processing method that is based on LIFT is proposed for long time integration. The parameter, RA, is defined to describe the Doppler variation during the dwell time. Based on RA, the