Geolocation and Tracking by TDOA Measurements Based on Space–Air–Ground Integrated Network
Abstract
:1. Introduction
- (1)
- We derive the CRLB of the source localization in different coordinate systems. Most research about the CRLB of geolocation is derived in the standard Earth-centered Earth-fixed (ECEF) coordinate system [24,25]. Under the constraint conditions of source position and velocity on the Earth, the Fisher information matrix (FIM) of the source location in the ECEF coordinate system may be occasionally nonreversible. For the purpose of more accurate estimation, we also derive the CRLB for the target modeled in the geodetic coordinate system.
- (2)
- Our second contribution is to analyze the effects of different system errors, such as clock synchronization error, position bias of the observers, elevation bias of the target and non-horizontal velocity of the target. Meanwhile, most existing research focuses on the effect of random errors [26,27,28]. However, it should be remarked that system biases are common in the scenario of passive geolocation based on SAGI networks, where accurate synchronization among observers is an impractical assumption.
- (3)
- Note that most previous research concentrates on estimation of source position with TDOA measurements. Due to the spherical constraint conditions of source position and velocity, previous algorithms are not suitable for jointly estimating the source position and velocity [29,30] with TDOA measurements only. Therefore, we propose an iterative maximum likelihood estimator for both position and velocity in the scenario of geolocation based on SAGI networks.
2. Theoretical Performance
2.1. Problem Statement and Mathematical Formulation
2.2. CRLB
2.2.1. CRLB in ECEF Coordinate System
2.2.2. CRLB in Geodetic Coordinate System
2.3. The Effect of System Errors
2.3.1. System Error of Clock Synchronization
2.3.2. System Error of Observer Location
2.3.3. System Error of Target’s Elevation Bias
2.3.4. System Error of Non-Horizontal Velocity
2.3.5. Total System Errors
3. Maximum Likelihood Estimator
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Title 1 | X (m) | Y (m) | Z (m) | Vx (m/s) | Vy (m/s) | Vz (m/s) |
---|---|---|---|---|---|---|
GEO satellite | −10,912,884.14 | 40,727,438.07 | −44,151.31 | 0 | 0 | 0 |
LEO satellite | −1,306,917.55 | 6,752,827.56 | −7416.31 | −4793.46 | −933.62 | −5380.76 |
Airplane | −1,435,061.91 | 6,215,936.03 | 332,097.67 | −264.62 | −86.94 | 480.47 |
Ground station | −1,644,543.41 | 6,137,519.57 | 552,183.96 | 0 | 0 | 0 |
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Li, J.; Lv, S.; Jin, Y.; Wang, C.; Liu, Y.; Liao, S. Geolocation and Tracking by TDOA Measurements Based on Space–Air–Ground Integrated Network. Remote Sens. 2023, 15, 44. https://doi.org/10.3390/rs15010044
Li J, Lv S, Jin Y, Wang C, Liu Y, Liao S. Geolocation and Tracking by TDOA Measurements Based on Space–Air–Ground Integrated Network. Remote Sensing. 2023; 15(1):44. https://doi.org/10.3390/rs15010044
Chicago/Turabian StyleLi, Jinzhou, Shouye Lv, Ying Jin, Chenglin Wang, Yang Liu, and Shuai Liao. 2023. "Geolocation and Tracking by TDOA Measurements Based on Space–Air–Ground Integrated Network" Remote Sensing 15, no. 1: 44. https://doi.org/10.3390/rs15010044
APA StyleLi, J., Lv, S., Jin, Y., Wang, C., Liu, Y., & Liao, S. (2023). Geolocation and Tracking by TDOA Measurements Based on Space–Air–Ground Integrated Network. Remote Sensing, 15(1), 44. https://doi.org/10.3390/rs15010044