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A Selection of Starting Points for Iterative Position Estimation Algorithms Using Feedforward Neural Networks.

Jaroslaw Sadowski1, Jacek Stefanski1

  • 1Faculty of Electronics, Telecommunications and Informatics, Gdansk University of Technology, 80-233 Gdansk, Poland.

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|January 23, 2024
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Summary
This summary is machine-generated.

This study shows that simple feedforward neural networks (FNNs) can ensure iterative location estimation algorithms always converge. Minimal FNNs with a single hidden layer are sufficient for effective position estimation.

Keywords:
feedforward neural networkiterative algorithmsposition estimationradio localization

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Area of Science:

  • * Signal Processing
  • * Artificial Intelligence
  • * Network Engineering

Background:

  • * Iterative location estimation algorithms often face convergence challenges.
  • * Selecting optimal starting points is crucial for algorithm performance.
  • * Existing methods may not guarantee convergence in all scenarios.

Purpose of the Study:

  • * To determine the minimum feedforward neural network (FNN) size for guaranteed convergence of iterative location estimation.
  • * To investigate the effectiveness of FNNs in supporting 2D and 3D position estimation.
  • * To analyze the impact of FNN parameters on convergence probability and iteration count.

Main Methods:

  • * Utilizing a feedforward neural network (FNN) to select initial points for iterative location algorithms.
  • * Designing and evaluating various FNN structures for 2D and 3D positioning.
  • * Simulating performance in a Time Difference of Arrival (TDoA) positioning network.

Main Results:

  • * FNNs achieved a 100% convergence probability for iterative algorithms in a TDoA network.
  • * Simple FNNs with one hidden layer and a dozen neurons were sufficient.
  • * Data on average and maximum iteration counts were obtained, indicating FNN effectiveness.

Conclusions:

  • * Feedforward neural networks effectively solve the convergence problem in iterative location estimation.
  • * Minimal neural network architectures are adequate for enhancing positioning accuracy and reliability.
  • * FNNs offer a promising approach to improve the performance of positioning systems.