
- Journal of Applied Optics
- Vol. 44, Issue 5, 1088 (2023)
Abstract
Introduction
The ATP is an important technical means to accurately track and point the target, but when the size of the detection target is small and is in the far distance, the field of view (FOV) of the photoelectric system becomes very small, which requires an effective pre-stage guidance to allow the target to fall into the FOV of ATP, then to achieve capturing, tracking and pointing. Effective pre-stage target guidance is the premise for the ATP to track and point the target[
1 Principles for target guidance
1.1 Target guidance scenario
As shown in
Figure 1.Schematic diagram of target guidance scenario
1.2 Target guidance mathematic model
As shown in
Figure 2.Calculation process during coordinate conversion
The calculation process of each step is as follows.
1)Converting the geodetic position of the target into the earth-centered earth-fixed (ECEF) coordinates
The calculation process of converting the longitude (L), latitude (B), and height (H) into the ECEF coordinates is as shown in formula (1):
where
The target position (Lt, Bt, Ht) and ATP position (Lz, Bz, Hz) are put into formula (1), respectively, and it is calculated to gain the target position (Xt, Yt, Zt) and ATP position (Xz, Yz, Zz) in the ECEF coordinates, then the target position is subtracted from the ATP position to obtain the target vector (X1, Y1, Z1) in the ECEF coordinates.
2)Converting the target vector into the flat earth coordinates
The calculation process of converting the target vector into the flat earth coordinates is as shown in formula (2):
where
3)Converting the flat earth position of the target into the inertial navigation system (INS) coordinates
The calculation process of converting the flat earth position of the target into the INS coordinates is as shown in formula (3):
where
4)Converting the INS position of the target into the local polar coordinates of ATP
The calculation process of converting the INS position of the target into the local polar coordinates of ATP is as shown in formula (4) and formula (5), respectively. First, it is converted into the local rectangular coordinates of ATP by using formula (4), then it is converted into the polar coordinates by using formula (5):
where (X0, Y0, Z0) is the translation between the INS fix and the origin of the ATP coordinates, and (α0, β0, γ0) is the rotation between the INS and the ATP coordinates.
Where (A, E, D) is the local polar coordinate of the target position of ATP, A is the target azimuth, E is the target pitch, D is the target distance, and E0 is the pitch zero correction of the ATP.
2 Source of error
From the mathematical model of the guidance, we can see that the target guidance error sources are from the followings: the pre-stage target detection error, the position error of the ATP, the attitude angle error of the INS measurement, the calibration error of the installation relationship between the INS coordinates and the ATP coordinates (i.e., installation error), and the pitch coder zero calibration error of the ATP (i.e., pitch zero error)[
In addition, it takes time from the target detection to send the solved guidance data to the ATP, thus the ATP certain error is produced due to the delay of the received guidance data, and this error is called delay error.
In the above errors, the pre-stage target detection error, the position measurement error of the ATP, and the attitude position error of the INS measurement are determined by the inherent performance of the measuring equipment. The delay error is mainly affected by the delay of the system signal transmission. For a stable guidance system, the delay is generally more stable, and it can be obtained by the ATP time of receiving the guidance data minus the time of the target detection at the pre-stage, and compensated by deriving the guidance data.
The installation error and pitch zero error depend on the calibration method and the measurement accuracy of the calibration data. Therefore, it is mainly aimed to improve the guidance accuracy by studying the installation relationship between the INS coordinates and the ATP coordinates, as well as the pitch zero calibration method of the ATP.
3 Calibration of guidance parameters
3.1 ATP's pitch zero calibration method
As shown in
Figure 3.Schematic diagram of pitch zero error
Figure 4.Schematic diagram of pitch zero calibration
This calibration method has a high accuracy of the ATP's pitch zero correction, which can be as high as an angle represented by one pixel unit of the ATP.
3.2 Calibration of installation relationship between INS and ATP
The ATP and the pre-stage detection system are required to simultaneously detect a moving UAV target, while let the UAV's flight tracks cover all the directions of the ATP as much as possible, and the target tracks detected by the ATP as well as that detected by the pre-stage detection system are recorded as P{A, E, D} and S, respectively. The formula (7) is used to obtain the target's track coordinate P' under the ATP's local coordinates, and the conversion of formula (1), formula (2) and formula (3) is used to obtain the target's track coordinate
The conversion between
where
The first three lines of
Since the purpose of the guidance is to point the ATP to the target, the target track P detected by the ATP in the closed-loop can be used as a reference criterion for the guidance data solution. The calibration of installation relationship is the process of solving the parameters of conversion from the target's pre-stage detection track S to the ATP's detection track P. Therefore, the calibration of installation relationship can be converted to a math problem of solving the optimal conversional matrix
The smaller the difference of target position data between the target guidance data and ATP detection, the higher guidance accuracy. Based on this principle, we use J (
where J (
The derivative θ is substituted into formula (10) to obtain:
When the derivative is zero, the value of
For the rotational and translational conversion parameters obtained through this method, because the solution process uses a large number of UAV track points covering all the directions around the ATP to fit the calculation, the random error of the pre-stage detection and the ATP has less impact on
4 Validation experiment
4.1 Experimental design
As shown in
Figure 5.Schematic diagram of experimental device
The ATP was used to track and point the flying UAV and acquire the UAV's flight track. The INS is used to measure the geodetic coordinates of the experimental device and the ATP's azimuth, pitch, and roll attitude relative to the horizontal coordinates. As the target for detection, the UAV flied around the ATP, and at the same time, its own position data was transmitted to the control system via the radio station as the position for pre-stage detection. The main function of the control system was to guide the ATP to track and point the UAV, and record the ATP's tracking and pointing tracks, the UAV's track, and the position and attitude data measured by the INS.
The experimental site was selected at an unobstructed open area. The UAV should change its height and distance during flight to avoid its track being in a near-same plane.
4.2 Experimental results
Referring to the ATP's pitch zero calibration method described in section 3.1, when the ATP pointing at the static target, we read the pitch angle E1=0.9°. Then the ATP was horizontally rotated by 180°, the pitch angle was adjusted till after overhead and pointed to the same point of target again, and the pitch angle E2 =180.3° was read. The formula (6) was used to calculate and obtain the corrected value of the pitch zero E0=0.6°.
During the calibration experiment of the installation relationship between the INS and the ATP, the frequencies of the acquired pre-stage detection data of the target and the ATP's detection data were both 20 Hz, the flight time of the UAV was about 23 min, and 11 000 sets of valid data were acquired from the flight track. The valid data was defined when the pre-stage detection data of the target was normal and the ATP was in a closed-loop state with respect to the target. In this section of valid data, the UAV's flight track was as shown in
Figure 6.UAV's flight track around ATP
The longitude, latitude, and height of the ATP's position measured by the INS were [104.731 95°, 31.530 62°, 550.24 m], respectively. The azimuth, pitch, and roll attitudes of the ATP relative to the horizon when measured in static conditions were [317.93°, −0.08°, 1.12°], respectively. Based on the above data and using the installation relationship calibration method described in section 3.2, the direct rotational and translational parameter matrix
The fourth line of
The target pre-stage detection data, the position and attitude data measured by the INS, and the above calibration values were put into the guidance mathematical model described in section 1.2, and the difference between the guidance data and the target data directly detected by the ATP was calculated to obtain the guidance error. The azimuth and pitch guidance errors were as shown in
Figure 7.Azimuth and pitch error curves of guidance data
Figure 8.Azimuth and pitch angular speed curves of target
Comparing
5 Conclusion
In regard to the problem of the ATP's pre-stage guidance error correction, this paper suggests a guidance error correction method based on the target's flight track. This method uses the UAV's track data and the least square method to estimate the optimal guidance data transfer parameters, thus reducing the effect of the target's pre-stage detection and the ATP's random error on the calibration process, and obtaining highly accurate target guidance calculation parameters. On the experimental device set up for this study project, we can achieve that the azimuth guidance accuracy is better than 0.052° (variance), the pitch guidance accuracy is better than 0.04° (variance), and the maximum guidance error is no more than 0.7° when the target's speed is 0.8°/s. For the problem of increased guidance error when the target's angular speed relative to the ATP is larger, the follow-on study will be carried out on the target track prediction method, with the aim to reduce the effect of delay errors on the guidance accuracy.
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