Atmospheric aerosol profiling with a bistatic imaging lidar system.

Appl Opt

NOAA/Earth System Research Laboratory/Global Monitoring Division, Mauna Loa Observatory, Hawaii, 1437 Kilauea Avenue, Hilo, Hawaii 96720.

Published: May 2007

Atmospheric aerosols have been profiled using a simple, imaging, bistatic lidar system. A vertical laser beam is imaged onto a charge-coupled-device camera from the ground to the zenith with a wide-angle lens (CLidar). The altitudes are derived geometrically from the position of the camera and laser with submeter resolution near the ground. The system requires no overlap correction needed in monostatic lidar systems and needs a much smaller dynamic range. Nighttime measurements of both molecular and aerosol scattering were made at Mauna Loa Observatory. The CLidar aerosol total scatter compares very well with a nephelometer measuring at 10 m above the ground. The results build on earlier work that compared purely molecular scattered light to theory, and detail instrument improvements.

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http://dx.doi.org/10.1364/ao.46.002922DOI Listing

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