Abstract

The use of Automatic Lidars and Ceilometers (ALC) is increasingly extended beyond monitoring cloud base height to the study of atmospheric boundary layer (ABL) dynamics. Therefore, long‐term sensor network observations require robust algorithms to automatically detect the mixed layer height (ZML). Here, a novel automatic algorithm CABAM (Characterising the Atmospheric Boundary layer based on ALC Measurements) is presented. CABAM is the first non‐proprietary mixed layer height algorithm specifically designed for the commonly deployed Vaisala CL31 ceilometer. The method tracks ZML, takes into account precipitation, classifies the ABL based on cloud cover and cloud type, and determines the relation between ZML and cloud base height. CABAM relies solely on ALC measurements. Results perform well against independent reference (AMDAR: Aircraft Meteorological Data Relay) measurements and supervised ZML detection. AMDAR‐derived temperature inversion heights allow ZML evaluation throughout the day. Very good agreement is found in the afternoon when the mixed layer height extends over the full ABL. However, during night or the morning transition the temperature inversion is more likely associated with the top of the residual layer. From comparison with SYNOP reports, the ABL classification scheme generally correctly distinguishes between convective and stratiform boundary‐layer clouds, with slightly better performance during daytime. Applied to 6 years of ALC observations in central London, Kotthaus and Grimmond (), a companion paper, demonstrate CABAM results are valuable to characterise the urban boundary layer over London, United Kingdom, where clouds of various types are frequent.

Highlights

  • The mixed layer (ML) height (ZML) can be identified by different physical indicators

  • Number of daySR periods is given above each sub-plot cloudy class

  • Given automatic lidars and ceilometers (ALC) provide vertical profiles of attenuated backscatter and automatic cloud base height (CBH) detection, they are very suitable to determine atmospheric boundary layer (ABL) characteristics automatically

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Summary

Introduction

The mixed layer (ML) height (ZML) can be identified by different physical indicators. Developed as cloud base height (CBH) recorders, ALC provide automatic CBH estimates, with multiple cloud layers identified (Martucci et al, 2010). Given they are automatic and low maintenance, ALC networks are widespread (e.g. DWD, 2018). Regions or heights of potential layer boundaries are detected based on a range of indicators, such as negative vertical gradients While detection based on negative gradients may be more prone to noise than the wavelet method, it has the advantage of capturing potential layers at low ranges (Di Giuseppe et al, 2012). The recent pathfinderTURB (Poltera et al, 2017), based on the pathfinder algorithm (de Bruine et al, 2017), applies a graph theory approach to track ZML through the course of the day, while COBOLT (Geiß et al, 2017) uses a time–height-tracking approach with moving windows

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