1. Introduction
With the increasingly active space launch activities of various countries, the number of spacecraft worldwide is on a surge. The ensuing mass of space debris threatens the operational safety of orbiting spacecraft [
1]. A complete catalog of space debris is useful for current and future missions, as unexpected impacts may compromise the mission of the impacted operative platforms [
2]. Given the necessity of many interactions among international stakeholders [
3], cooperation, responsibility, liability, and the obligations to register space objects under the existing space treaties are fundamental concerns of space situational awareness (SSA) [
4].
At present, space debris is mainly detected by ground-based observation and then cataloged, recorded, and entered into a database by major aerospace nations. There are two types of ground-based observations: ground-based radar observations and ground-based optical observations. More than 50 radars are currently used worldwide for space target and space debris monitoring. More and more efforts have been made to extend the network of available radar systems devoted to the control of space [
5]. Ground-based radar detection methods are not limited by factors such as size and weight. A radar with a large aperture antenna and large transmitting power is usually chosen to obtain high detection accuracy and increase the detection distance. However, since the target signal loss is proportional to the fourth power of distance, the detection range of the radar is usually limited to low orbit. In addition, due to the effects of atmospheric transmission jitter, ionospheric scintillation, astronomical refraction error, and atmospheric attenuation limitations, the radar can only operate in lower frequency bands, which will limit the detection accuracy of ground-based radar. At present, there are still great difficulties for ground-based radar to identify small-sized space debris [
6].
Compared with ground-based radar detection, ground-based optical detection can obtain a longer observation distance because the signal attenuation is proportional to the square of the distance, thus enabling the observation of large-size space debris in higher orbit [
7]. With regard to the ground-based optical observations, ESA has installed a 1 m Schmidt telescope on the Canary Islands with a limiting detection size of about 15 cm in order to characterize the GEO environment [
8]. Simulated results are reported, where it is claimed that the accuracy of the satellite’s estimated position is better than 5 arc seconds, and the satellite’s tracking accuracy is around 1–3 arc seconds. Other ongoing missions focused on ground-based optical observations are described in [
9]. However, due to the limitation of lighting conditions and other factors, the observation efficiency of ground-based optical detection methods is low, and clouds, fog, atmospheric pollution, urban glow or glow at full moon, and the thermal effect of the atmosphere will increase the background noise, thus reducing the detection signal-to-noise ratio. The atmospheric turbulence also limits the observation accuracy and limiting resolution, thus limiting the detection capability of ground-based optical observation for small-sized space debris.
In recent years, on the basis of research on ground-based monitoring means, some countries have further developed space-based detection means to improve space debris monitoring and warning capabilities, especially the observation and warning capabilities for small-sized space debris with wide distribution, large numbers, and high collision threats [
10]. For example, the United States, Canada, and Europe have successively launched plans to establish a space-based space target surveillance system [
11].
A pathfinder satellite with the Space Based Visible (SBV) on-board was launched in 2010 in a sun-synchronous orbit to successfully detect objects as small as 1 m
3 in the geosynchronous belt. The pathfinder satellite and the geosynchronous space situational awareness program are part of the U.S. Air Force space-based surveillance system program [
12]. In Europe, ESA supported and is still supporting several research programs for space-based SSA, such as the space-based space surveillance service [
13], the optical In-situ Monitor project [
14], A summary of ESA activities related to space-based optical observations of space debris and NEOs is reported in [
15].
All of the above missions are designed with dedicated payloads, but most satellites already have one or more-star trackers for attitude determination, which, if properly utilized, can constitute a zero-cost space surveillance system. Using the star as the reference frame for attitude measurement, the star trackers can output the vector direction of the star in the coordinates of the star trackers, thus providing highly accurate measurement data for spacecraft attitude control and astronomical navigation. The star map taken by the star trackers contains not only stars but also space targets, such as space debris [
16]. In the starry background, space debris can also reflect part of the energy from the Sun and has similar luminous characteristics to the stars. When the signal-to-noise ratio is high enough, space debris can be captured by star trackers, and all its information is contained in the point target of the star map. Combined with the principle of extracting star points and star map recognition of star trackers [
17], it can distinguish space targets from stars. In simple terms, the identification of all the stars in the star map is accomplished with the help of star trackers, and the targets are naturally filtered out. In fact, in multi-star tracker missions, one or more sensors are usually not used to determine the attitude. Therefore, the images acquired in these sensors can be used for surveillance operations. In this way, unlike most space-based missions designed specifically for space situational awareness, no specific attitude maneuver is required [
18].
The proposed strategy has also been discussed in previous literature. In [
19], a convolutional filter-based centroid estimation image preprocessing was first used. Then, stars were removed using the pyramidal star identification technique, and finally, the spatial target was tracked by combining the center-of-mass estimation and the Kalman filter. However, this work did not address the orbiting of space targets. The initial possibility of using a star tracker for space target detection was discussed in [
20]. The idea is to use convolutional neural networks, which is interesting but not feasible with the current technology of spacecraft applications. In [
21], a faint streak detection algorithm based on a streak-like spatial filter was proposed, but it took 2–3 h for 4000 × 4000-pixel images. Considering the limited computing power of spacecraft on-board computers, none of these techniques is designed for efficient implementation. Therefore, research on novel observation methods to improve the cost-effectiveness of observation is the main research direction at present.
In this paper, the configuration of a space debris monitoring network based on multiple star trackers is proposed and studied for detection feasibility. Unlike the previous algorithms, the proposed algorithm uses satellite equipped star trackers to detect and extract space targets from star maps taken during star tracker attitude fixation and mines the available observation information of space targets from a large amount of data to achieve space target surveillance, thus saving the cost of launching dedicated surveillance satellites. The space target is observed by a single satellite star tracker and the target orientation data are given. The maximum projection time information method is used to achieve target detection, and then the goniometric data of a single optical platform are converted into the spatial coordinates of the target by a Gaussian minimum mean square error difference correction algorithm through a space-based multi-optical platform to achieve target localization. Subsequently, the multi-frame image spatial target position information is fused to complete the solution of orbital equations, followed by space debris orbit determination for accurate safety prediction of spacecraft in-orbit operation.
By applying the performance advantages of star trackers to space target detection, the advantages of star trackers in terms of high accuracy and high update rate are thus effectively exploited in the field of space detection. Different from the tracking and observation mode of specialized monitoring satellites, the space debris monitoring network based on multiple star trackers proposed in this paper relies on the natural intersection between the field of view of star trackers and the target to capture the target. Although each continuous observation is short, the number of star trackers is large, which can realize the intermittent short arc observation of space targets under different observation geometry. This kind of network does not require enhancing the detection ability of the system but increases the detection opportunities of the system so that more targets can be detected by the system at the same time. In fact, it improves the visible turn state between the target and the platform and provides ideas and engineering practice for the expansion and application of star trackers.
This paper is structured as follows:
Section 2 presents the comprehensive analysis of space debris.
Section 3 presents the star tracker model.
Section 4 focuses on the target identification method between star trackers.
Section 5 presents the localization and initial orbiting of space targets, presenting both typical and advanced operations required for the specific task of this work.
Section 6 reports the results obtained from the feasibility and characterization experiments, the results of the simulation validation, and a discussion of the related computational effort. Finally, concluding remarks are given in
Section 7.
3. Star Tracker Observation Model
In the process of observing space debris, assuming that the vector of debris observed by the star tracker in the geocentric coordinate system is
, the basic relationship between the instantaneous geocentric position vector of debris
and the position vector of the satellite in which the star tracker is located is as follows [
25]:
where
and
are the coordinates in the inertial system of the debris and star tracker, respectively, and the spatial polar coordinates of the observed debris
are expressed as follows:
where
is the distance from the debris to the observation star tracker,
and
the rectascension and declination of the debris. The angle subscript “
star” indicates the observation vector of the rectascension and declination by the star tracker.
The angle subscript “earth” indicates the rectascension and declination of the debris vector observed under the center of the celestial sphere, that is, the center of the earth.
After the coordinate transformation,
The relationship between the direction vector of the debris under the celestial sphere, that is, under the center of the earth, and the direction vector of the debris by satellite observation is the coordinate transformation from the coordinate system of the star tracker to the coordinate system of the geocentric coordinate system, where
k is the scaling factor,
is the coordinate system rotation matrix,
is the vector of the observation satellite (quasi-satellite optical observation platform) in the geocentric coordinate system, that is, the translation vector from the star tracker coordinate system to the geocentric coordinate system [
5]. Since translation and scaling do not change the directionality of the vector, it can be derived
Then, after the observation vector under the geocentric observation point is rotated, it can be transformed into the observation vector under the satellite observation point. The rotation matrix is the rotation transformation matrix from the geocentric coordinate system to the star tracker coordinate system.
Obtained by the reversibility of the rotation matrix
It can be concluded from the above equation that any satellite observation vector of the debris can be rotated to obtain the observation vector of the debris based on the center of the earth, and this property is defined as the invariability of the geocentric observation vector.
With the observation model of the star tracker, the rectascension and declination of the observed debris can be obtained, and it can be obtained according to Formulas (4) and (5)
Then the observation equation is derived:
The instantaneous direction of the moving target in the space (rectascension, declination), brightness, velocity, and motion trajectory can be obtained by a single star tracker. From the joint calculation of the instantaneous pointing and the motion trajectory, the orbital inclination of the target can be calculated. Because of the high pointing accuracy of the star tracker, the more precise orbit inclination calculated with its data will be used as the basis for the main target recognition and classification index. Because the brightness information is closely related to the observation angle and the angle of the sun, even if certain space debris can simultaneously be observed by two star trackers, its brightness information will also vary greatly due to the influence of the observation angle and the sun angle [
26]. Therefore, it is only a reference value and can be used to evaluate the target size information after the completion of orbit determination. The speed is the relative speed, which is the projection of the space debris velocity vector on the satellite optical observation platform detector. Because of the different angles of the two satellite observation positions, the relative velocity will vary greatly and is not significant for the classification and recognition by the two satellite observations.
4. Target Identification Method between Star Trackers
The proposed target identification method in this paper is combined with the star tracker technology. First, the proposed maximum projection method is used for star detection, where the median frame image obtained during star detection is removed from the maximum projection image, and the stars in the image can be removed. Next, the target detection method based on the projection time information is used to detect the moving targets using the trajectory of the moving targets as well as the continuity of the time information, while eliminating the false targets. After the detection of the targets in frame groups is completed, the target information array of each frame group can be obtained, and then the inter-frame target trajectory association method is used for the trajectory association of the target information to form a complete target trajectory. Finally, the identification method of targets observed by the same orbital arc segment as well as different orbital arc segments by using the star tracker is analyzed.
4.1. Maximum Projection Method
For k frames of astronomical images, denote the data samples as , where , , . Assume that the set of images satisfies the following conditions:
The data samples taken from the image sequence are mutually independent Gaussian random variables and the noise can be considered Gaussian white noise.
If the moving target does not exist, the data sample can be regarded as a temporally stable but spatially unstable data model. This means that all images are spatially registered and there is no motion clutter.
The maximum projection of
K samples is expressed as follows:
The above equation implies that the 3D data are projected onto the 2D plane. To describe this process, we assume that there are three consecutive frames of images, as shown in
Figure 4a–c below, in which the information of the image is the same except for the moving target and some perturbations. After the maximum projection, the motion of the target is connected, as shown in
Figure 4d below. Most importantly, in addition to the maximum projection information, we can obtain the time scale corresponding to the maximum value generated at each pixel position, as shown in
Figure 4e below. It can be used to estimate the velocity of the target’s motion.
Figure 5 shows the image after the projection of the maximum value.
The median frame image obtained during stellar detection is removed from the maximum projection image to remove the stars from the image.
The maximum projection image after background removal is binarized by adaptive threshold segmentation.
In addition to the maximum projection frame, it is also possible to obtain the time scale corresponding to the maximum value on each pixel during projection, i.e., the time information of the maximum projection frame
. Binarize the maximum projected image. After being separated from the image noise, and then multiplied with the time marker information, the time information frame of the maximum projected image can be obtained (as shown in
Figure 6). The formula is as follows:
From
Figure 7, it can be seen that in the temporal information frame of the maximum projection, the moving targets are connected domains where the information with the same time markers are clustered together, while the stars are connected domains where the different temporal information are clustered together. After stellar removal, the time information and position information of the moving target can be used for target detection.
4.2. Target Detection Based on Projection Time Information
On the maximum projected frame after star removal, only candidate moving targets remain, which include stars that are not removed, and false target points composed of isolated noise, as shown below. In this paper, we propose a target detection method based on temporal information, which uses the trajectory of moving targets as well as the continuity of temporal information to detect moving targets while removing false targets. The principle of the algorithm is shown in
Figure 8 and
Figure 9.
Figure 9 shows the process of setting a tracking window based on speed to detect possible objects, and the specific steps are as follows.
(1) The search starts with the candidate target with time number T = 3, and the search radius is set to R (R is the maximum motion speed threshold of the moving target). When the candidate target points of T = 2 and T = 4 are found in the search range, the distance between T = 3 and T = 2 is calculated, and the distance between T = 3 and T = 4 is calculated. If , (where is the distance threshold, because the target is moving at a uniform speed, so is set to a very small value), then P2, P3, and P4 are judged to be a candidate trajectory; if the distance condition is not satisfied, the trajectory is judged as false trajectory.
(2) Determine the angle of the candidate trajectories , , and that meet the distance judgment conditions, and calculate the angle between the straight line composed of and and the straight line composed of and and denote it as …. If (where is the angle threshold. Because the target is moving in a straight line, it is set to a small value), then confirm that , , and are a true track, if not, it is judged as a false trajectory.
(3) The estimated velocity of the moving target is obtained by calculating the mean value of , : . The forward and backward searches are performed on the trajectories of , , and to obtain the estimated positions and of and . A tracking window of a certain size is established with the estimated position as the center, and the detection of targets within the window is performed by binarization and center-of-mass localization to obtain all candidate targets within the window. If a candidate target, , satisfies (where is the estimated position , and is the position error threshold), then is determined to be the true position of or . In this way, the position of , can be detected.
(4) Use the time information to judge the time markers of – for the trajectory again and declare it as the real trajectory if it is the relation of contact increment.
4.3. Identification of Targets Observed in the Same Orbital Arc
The effectiveness analysis of information obtained from a single star tracker shows that the magnitude brightness and velocity components of the debris are different with the observation position when the debris is observed with respect to different star trackers, making it impossible to be used as the debris identification characteristic between the star trackers. The debris identifies the feature value. However, the geocentric observation vector of the debris can be transformed by the observation vector of the star tracker and the rotation matrix between the geocentric coordinate system and the coordinate system of the star tracker based on the invariance of the geocentric observation of the debris, and the calculation of the rotation matrix can be calculated by star image recognition and attitude of the star tracker. Thus, the identification of the debris image trajectory observed by the star tracker can be transformed into the similarity of the geocentric observation vector. The debris observed by different star trackers is identified by comparing the number of similar points of the motion trajectories of the debris observed by the star tracker.
The vector C is defined as follows:
, are the rectascension and declination of the debris, respectively.
The similarity criterion uses the Bhattacharyya coefficient, and Bhattacharyya is defined as follows:
It can be seen from the definition of the Bhattacharyya coefficient that the closer the two modes are, the larger the value
is, and the above formula can be transformed into the following:
The more similar the measurement mode structure to the standard mode structure is, the smaller the value is. When , it can be judged as a point in a similar trajectory.
Figure 10 shows the simulating orbital trajectory of space debris in 100 different motion velocities. The 100 sets of debris are identified by similarity criteria, and the error of 20 s of arc is added to 100 sets of data to form another set of observation data of the star tracker. After 100 measurements, the recognition rate is above 85%.
4.4. Identification of Targets Observed in the Different Orbital Arc
The identification of targets observed in the different orbital arc segments is done based on the existing multiple star trackers in the respective orbital arc segments, and the star trackers can complete the solution of the positioning information to identify the same debris targets in different orbital arc segments space debris. The observation correlation of different orbital arcs is low, and the similarity cannot be used to extract the same debris targets. The initial orbital parameters of space debris can only be solved by the positioning information of each arc segment, and then the similarity of orbital parameters can be used to identify the target in different orbital arcs. The orbit determination algorithm will be described in the next section.
5. Positioning and Orbit Determination of Space Targets
In this section, a joint position method using multiple star trackers is proposed to achieve the target position of multiple optical observations using a Gaussian minimum mean square error difference correction algorithm, fusing the spatial target position information of multiple frames of images and completing the solution of the orbital equations. The schematic diagram of multiple star trackers observing debris simultaneously is shown in
Figure 11:
From Equations (10) and (11), it can be seen that the right ascension and declination information of the observed debris through the star tracker has a high order nonlinear relationship with the debris orbital position information, which cannot be obtained with high accuracy by using the traditional geometric solution. From the observation equation, a high-precision static equation solving algorithm is introduced to solve the problem to filter out the noise to the maximum extent and achieve the optimal estimation result.
5.1. Gaussian Minimum Mean Square Error Correction Positioning Algorithm
The optimal solution of the nonlinear static equation can be determined with the Gaussian minimum mean square error differential correction algorithm [
26]. The loss equation determined by the Wahba minimum mean square error is as follows:
The optimization of the loss equation can be attributed to the minimization of the redundant mean square error with the weight. Where, is a single measurement label, and is the total number of available measurements. is a weight coefficient matrix to assess the relative importance of each measurement. Estimated by the minimum variance estimation criterion, the optimal weight coefficient matrix is the inverse matrix of the measurement covariance matrix .
The Gaussian minimum mean square error differential correction algorithm uses an iterative approximation to find accurate minimum mean square estimates.
Assuming the estimate of the current state is
, then the next target state estimates
can be expressed as follows:
If
is small enough,
can be linearized with Taylor’s first-order expansion linearization.
where
is the Jacobian matrix of the measurement model.
Then the redundancy error of the state estimation can be expressed as follows:
The measurement vector and the prediction vector can be expressed as follows:
Then the measurement error and sensitivity matrix can be expressed as follows:
To minimize the loss Equation of (19), that is, the optimal correction amount is searched to minimize the linearized prediction redundancy mean square error:
Solve the above formula, the optimal approximate solution is
where
is the covariance matrix,
Therefore, of Formula (20) will be updated to be .
An initial estimation state
is required to start the entire Gaussian minimum mean square error differential correction algorithm, and an iterative condition is required to stop the entire algorithm. The iteration condition can be expressed by:
Orbital position solution, the Equations (12) and (13) can be transformed as follows:
, is the tangent error of the rectascension and declination caused by the measurement error of the satellite optical observation platform, respectively.
Let vector
, then we have:
The measured sensitivity matrix is:
where
, vector
is a nonlinear equation about the debris vector
. In order to solve the debris vector, three or more measurement vectors are required, i.e., more than three satellites are needed to observe the debris.
From the measurement sensitivity matrix, the error transfer function for the right ascension and declination is obtained as follows:
The smaller the , the larger the , the larger the error in calculating the declination, and the smaller the , the larger the , the larger the error in calculating the right ascension.
Since the observation quantities of multiple star trackers are needed to perform the solution, the observation time synchronization for the star tracker observation quantities is particularly important. The instantaneous time error of the observation quantities includes the satellite-borne clock error, the clock transmission–reception errors, and the tracker information acquisition time errors. In terms of the tracker information acquisition time error, the error is on the order of 10−6 s, the satellite-borne clock error is about 10−11 s, and the clock transmission reception error increases with the increase in distance, these time errors bring great difficulties to the time synchronization of the observation quantity. However, for space debris, no matter how many satellites observe, the spatial position of debris at the same time is unique, i.e., geocentric observation invariance. By comparing the motion trajectories of debris observed by different star trackers, the right ascension and declination of the motion trajectories are compared, and the two sets of measurements with the closest declination and declination are taken as a time synchronization point, and two time synchronization points in a set of motion trajectories are selected as the starting and ending points of the trajectory observations. Since the debris observed in the star tracker image is a very short orbital arc segment, and its motion trajectory is a straight line motion, the starting and ending points of the trajectory observation are re-fitted differentially according to the customized time to obtain a new measurement quantity, which can reduce the error caused by the measurement, and also solve the difficulty of not being able to perform high precision orbit determination due to the insufficient measurement quantity. The arc segment with an observation duration of less than 180 s is defined as a short arc. In order to highlight the effect of short arc correlation, trajectory data with an observation duration of 50~120 s are selected for correlation. The revisit time of general space targets is 20~50 min. The longer the trajectory interval that can be associated, the higher the utilization rate of data. The maximum interval in the simulation is 10 h, which can meet most of the requirements of interrupted trajectory association.
5.2. A Model for Determining Orbital Parameters of Space Debris Based on Space-Based Observations
Accurate evaluation of orbital precision is very difficult because, first, there is no way to know the true criterion for precision assessment, the true value of the orbit, and secondly, it is often difficult to obtain higher precision orbits that can be used as a criterion. Therefore, the evaluation of orbital precision can only be an approximately statistical result under certain assumptions. The orbital precision can be evaluated by comparing the instantaneous orbital roots, the average orbital roots, or the spatial debris position and velocity components of the time series [
27].
In this paper, referring to the Gooding initial orbit determination method of space-based optical measurement, three sets of angular measurement data and the position information of the measurement platform are used to estimate the position and velocity of the space target. In addition, the space coordinate position is converted into six orbital elements using the star tracker coordinates.
The orbital elements of elliptical motion are commonly expressed in terms of six Kepler orbital elements (as shown in
Figure 12), namely: orbital half-length diameter
, orbital eccentricity
, argument of perigee
, orbital inclination
, longitude of ascending node
and mean anomaly
.
is an orbital element describing the position of the satellite in orbit:
where
,
is often called the translation and
is the moment of perigee of the debris.
The angle between the directional diameter
and the perigee is called the true anomaly
. The orbital equation and energy integral are then converted into:
The spatial coordinate position is transformed into the six orbital elements. The coordinates and at a given moment are known, and the six orbital elements are calculated as follows:
- ①
- ②
Calculate
- ③
- ④
Calculate
The true anomaly angle
can be calculated according to the following formula.
The eccentric anomaly
can be calculated according to the following formula:
- ⑤
By calculating the positioning algorithm in the previous section, a higher accuracy position determination of the target can be accomplished. If the spatial positions of the target at two moments can be obtained, the initial orbital parameters of the space debris can be calculated by Equations (37)–(43). If there are multiple measurements of space debris in one orbital arc, the initial orbital elements can be further obtained with higher accuracy by calculating the average orbital elements.
The location information of each orbital arc segment of space debris can be solved through the positioning algorithm in the previous section. On each small orbital arc, the motion trajectory can be considered as a uniform linear motion. Since the positioning information has a certain error, if the position between two points is directly divided by the elapsed time, the introduced speed error will be larger. About this point, we calculate the average speed of the arc through the speed fitting of each small arc, and the error will be minimized.
6. Positioning Algorithm Analysis
The satellite tool kit (STK) platform was used to build the observation model. The observation platform was located in the solar synchronous orbit, and the orbit parameters refer to the observation data of the union of American Yousi scientists. The space debris position vector
was generated by simulation to traverse the low orbit and high orbit. The instantaneous position height was from 6800 km to 40,000 km, and the orbit inclination was 0°~2°. The orbital inclination range of the observation platform was 96.8°~98.5°, and the eccentricity was 0. The positions of three star trackers were randomly generated according to the space debris position vector, and the observation distance from the space debris was guaranteed. A total of 200 cooperative positioning of space debris were carried out, and the positioning errors of star trackers at different heights were calculated at the observation distances of 200 km, 100 km, and 50 km. In order to simulate the attitude determination error of the star tracker and the position error of the platform itself in the task, the position errors of 10 m and 100 m were introduced into the position of the star tracker in the geocentric coordinate system according to the performance of the existing star tracker, and the pointing accuracy of the star tracker was set to 2″, which is more in line with the practical application. The code had been verified on computers with an Intel Core i7-6500u (dual cores) CPU up to 3.1 GHz, 8 GB Ram, and operating system Windows 10. The simulation results are shown in
Figure 13 and
Figure 14.
It can be seen from the above curve data that the positioning accuracy of the debris also changed with the change in the positioning accuracy of the satellite itself. When the positioning accuracy of the satellite itself was 10 m, the positioning accuracy of the debris was also about 10 m, as shown in
Figure 13. It can be found from
Figure 14 that when the positioning accuracy of the satellite itself was 100 m, the positioning accuracy of the debris was about 100 m. For the positioning of space debris with a plurality of optical sensors, the positioning accuracy varied with the positioning accuracy of the observation satellite itself, and the positioning accuracy of the space debris was limited by the positioning accuracy of the satellite itself.
By calculating the positioning algorithm, a higher accuracy position determination of the target can be accomplished. If the spatial positions of the target at two moments can be obtained, the initial orbital parameters of the space debris can be calculated by Equations (37)–(43). If there are multiple measurements of space debris in one orbital arc, the initial orbital elements can be further obtained with higher accuracy by calculating the average orbital elements. The space debris was in different orbits, and the positioning accuracy of space debris changed due to the influence of the positioning accuracy of the observation star tracker itself, and the positioning accuracy of the high-orbit satellite itself was poor compared with that of the low-orbit satellite. The following simulation calculations were completed by using 20 sets of position measurements in one orbital arc segment to solve the orbital elements, the simulation results are shown in
Figure 15 and
Figure 16.
As shown in
Figure 15 and
Figure 16, the orbital parameters were estimated by using the arc segments distributed at different positions and the 20-position information of each arc segment with a position error of 10 m, where there were 20 sets of measurements for each arc segment. The real orbital parameters were
. The initial orbital parameters estimated using one arc segment had high accuracy.
Figure 15 indicates that the maximum error of orbital half-length diameter was 0.5 km; the maximum error of orbit eccentricity was 1.5 × 10
−4, and the error of orbit inclination was below 6 × 10
−60; the error of longitude of ascending node was also below 1 × 10
−40. With the help of orbital parameter estimation, the initial orbital parameters can be used as feature vectors to accomplish target identification for different orbital arc segments. From
Figure 16, it can be seen that the longitude of orbit parameters still maintained high calculation accuracy as the orbit height decreased, The real orbital parameters were
, the maximum error of orbital half-length diameter was below 0.1 km, the maximum error of orbit eccentricity was 6 × 10
−4, and the error of orbit inclination and the error of longitude of the ascending node were both in the order of 1 × 10
−40.
It can be seen from the positioning accuracy of space debris, the positioning accuracy of the star tracker itself largely determined the observation accuracy of the debris. Only by improving the positioning accuracy of the satellite itself, can the positioning accuracy of the observation target (that is, the space debris) be achieved, and finally the high-precision orbit determination of the target can be completed.