A Bayesian Neural Network Approach for Tropospheric Temperature Retrievals from a Lidar Instrument
Ghazal Farhani, Giovanni Martucci, Tyler Roberts, Alexander Haefele, and Robert J. Sica

TL;DR
This paper presents a Bayesian neural network that accurately retrieves tropospheric temperature profiles from lidar measurements, providing uncertainty estimates and demonstrating robustness across various atmospheric conditions.
Contribution
The study introduces a Bayesian neural network approach for temperature retrievals from lidar data, including uncertainty quantification, with validation against standard algorithms.
Findings
Temperature bias within 0.05 K below 4.5 km altitude
High accuracy in clear and cloudy conditions
Provides full uncertainty estimates for temperature profiles
Abstract
We have constructed a Bayesian neural network able of retrieving tropospheric temperature profiles from rotational Raman-scatter measurements of nitrogen and oxygen and applied it to measurements taken by the RAman Lidar for Meteorological Observations (RALMO) in Payerne, Switzerland. We give a detailed description of using a Bayesian method to retrieve temperature profiles including estimates of the uncertainty due to the network weights and the statistical uncertainty of the measurements. We trained our model using lidar measurements under different atmospheric conditions, and we tested our model using measurements not used for training the network. The computed temperature profiles extend over the altitude range of 0.7 km to 6 km. The mean bias estimate of our temperatures relative to the MeteoSwiss standard processing algorithm does not exceed 0.05 K at altitudes below 4.5 km, and…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Atmospheric and Environmental Gas Dynamics · Spectroscopy and Laser Applications
