Paper
12 August 2009 Experiment to characterize optical turbulence along a 2.33 km free-space laser path via differential image motion measurements
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Abstract
In a previous experiment (Tunick, 2008: Optics Express 16, 14645-14654), values for the refractive index structure constant and the Fried parameter were calculated from measurements of signal intensity and angle-of-arrival statistics based on idealized models. Calculated turbulence parameters were evaluated in comparison to scintillometer-based measurements for several cases. It was found that the idealized models alone were insufficient to accurately describe complex, non-uniform microclimate and turbulence conditions. In addition, the signal intensity and focal spot displacement measurements were quite sensitive to platform and light source jitter. In order to compensate for adverse effects such as platform vibrations, an alternative differential image motion method is explored for optical turbulence parameter characterization. Hence, further experimental research is conducted along a 2.33 km free-space laser path to capture differential image centroid data from which Fried parameter and refractive index structure constant information can be obtained. This research is intended to provide useful information for US Army laser communications, long-range imaging and energy-on-target.
© (2009) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Arnold Tunick "Experiment to characterize optical turbulence along a 2.33 km free-space laser path via differential image motion measurements", Proc. SPIE 7463, Atmospheric Optics: Models, Measurements, and Target-in-the-Loop Propagation III, 746303 (12 August 2009); https://doi.org/10.1117/12.823969
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KEYWORDS
Optical turbulence

Turbulence

Atmospheric propagation

Refractive index

Telescopes

Motion models

Knowledge management

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