Articles | Volume 13, issue 12
https://doi.org/10.5194/amt-13-6543-2020
https://doi.org/10.5194/amt-13-6543-2020
Research article
 | 
04 Dec 2020
Research article |  | 04 Dec 2020

Real-time estimation of airflow vector based on lidar observations for preview control

Ryota Kikuchi, Takashi Misaka, Shigeru Obayashi, and Hamaki Inokuchi

Related subject area

Subject: Others (Wind, Precipitation, Temperature, etc.) | Technique: Remote Sensing | Topic: Data Processing and Information Retrieval
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Cited articles

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Barny, H.: DELICAT – Demonstration of Lidar Based Clear Air Turbulence Detection, in: Innovation for Sustainable Aviation in a Global Environment: Proceedings of the Sixth European Aeronautics Days, 30 March–1 April 2011, Madrid, Spain, 253, 2012. 
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Fezans, N., Joos, H. D., and Deiler, C.: Gust load alleviation for a long-range aircraft with and without anticipation, Aeronaut. J., 10, 1–25, 2019. 
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Short summary
The control technique in a gust-alleviation system using the airborne Doppler lidar is expected to minimize the risks of turbulence-related accidents. Accurate estimation of the vertical wind is important in the successful implementation of a gust-alleviation system. An estimation algorithm of the airflow vector based on the lidars is proposed for preview control. The estimation performance and the computational cost of the proposed method can satisfy the performance demand for preview control.