Electro-Optical Sensors for Atmospheric Turbulence Strength Characterization with Embedded Edge AI Processing of Scintillation Patterns

Abstract

This study introduces electro-optical (EO) sensors (TurbNet sensors) that utilize a remote laser beacon (either coherent or incoherent) and an optical receiver with CCD camera and embedded edge AI computer (Jetson Xavier Nx) for in situ evaluation of the path-averaged atmospheric turbulence refractive index structure parameter Cn2 at a high temporal rate. Evaluation of Cn2 values was performed using deep neural network (DNN)-based real-time processing of short-exposure laser-beacon light intensity scintillation patterns (images) captured by a TurbNet sensor optical receiver. Several pre-trained DNN models were loaded onto the AI computer and used for TurbNet sensor performance evaluation in a set of atmospheric propagation inference trials under diverse turbulence and meteorological conditions. DNN model training, validation, and testing were performed using datasets comprised of a large number of instances of scintillation frames and corresponding reference (“true”) Cn2 values that were measured side-by-side with a commercial scintillometer (BLS 2000). Generation of datasets and inference trials was performed at the University of Dayton’s (UD) 7-km atmospheric propagation test range. The results demonstrated a 70–90% correlation between Cn2 values obtained with the TurbNet sensors and those measured side-by-side with the scintillometer.

Document Details

Document Type
Pub Defense Publication
Publication Date
Oct 24, 2022
Source ID
10.3390/photonics9110789

Entities

People

  • Don Lahiru Nirmal Hettiarachchi
  • Ernst Polnau
  • Mikhail Vorontsov

Organizations

  • Office of Naval Research
  • United States Air Force

Tags

Fields of Study

  • Physics

Readers

  • Image Processing and Computer Vision.
  • Neural Network Machine Learning.
  • Spectroscopy.

Technology Areas

  • AI & ML
  • AI & ML - Neural Networks
  • Directed Energy