A Novel Statistically-Aided Learning Framework for Precise Localization of UAVs
  • Mandal, Akash Kumar
  • Seo, Jun-Bae
  • De, Swades
  • Poddar, Ajay K.
  • Rohde, Ulrich
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초록

The accuracy of localization using global positioning system (GPS) data plays a key role in reliable positioning and control of unmanned aerial vehicles (UAVs). This paper proposes a novel statistically-aided earning-based localization approach, called filtered neural network (FNN) for high-precision localization of UAVs. The proposed FNN framework utilizes an entropy adaptive Kalman filter to fine-tune the inputs to a recurrent neural network, which works in a loop with the filter to generate subsequent robust position estimates. The proposed framework outperforms the state-of-the-art techniques with an nRMSE of ˜ 10-6, ˜ 97% reduced estimation delay, ˜ 73% reduced modeling time, = 100 lag samples for FNN training, and only 4-6 overall model retraining instances per flight trajectory. The results are verified over a wide range of mean GPS noise power. © 2023 IEEE.

키워드

Entropy adaptive Kalman filterfiltered neural network (FNN)long short-term memoryUAV localization
제목
A Novel Statistically-Aided Learning Framework for Precise Localization of UAVs
저자
Mandal, Akash KumarSeo, Jun-BaeDe, SwadesPoddar, Ajay K.Rohde, Ulrich
DOI
10.1109/VTC2023-Spring57618.2023.10200280
발행일
2023-09
유형
Proceedings Paper
저널명
IEEE Vehicular Technology Conference
2023-June