A Suboptimal Optimizing Strategy for Velocity Vector Estimation in Single-Observer Passive Localization

Sensors (Basel). 2023 Jun 26;23(13):5940. doi: 10.3390/s23135940.

Abstract

In a single-observer passive localization system, the velocity and position of the target are estimated simultaneously. However, this can lead to correlated errors and distortion of the estimated value, making independent estimation of the speed and position necessary. In this study, we introduce a novel optimization strategy, suboptimal estimation, for independently estimating the velocity vector in single-observer passive localization. The suboptimal estimation strategy converts the estimation of the velocity vector into a search for the global optimal solution by dynamically weighting multiple optimization criteria from the starting point in the solution space. Simulation verification is conducted using uniform motion and constant acceleration models. The results demonstrate that the proposed method converges faster with higher accuracy and strong robustness.

Keywords: Kalman filtering (KF); direction of arrival (DOA); optimization; simulated annealing (SA); single-observer passive localization; time of arrival (TOA).

MeSH terms

  • Acceleration*
  • Algorithms*
  • Computer Simulation
  • Motion