Internal wave and turbulence observations with very high-resolution temperature sensors along the Cabauw mast
Hans van Haren, Fred. C. Bosveld

TL;DR
This study uses high-resolution temperature sensors on a tall mast to observe atmospheric internal waves and turbulence under various stable conditions, providing detailed insights into boundary layer dynamics.
Contribution
It introduces a novel high-resolution temperature measurement setup along a 200-m mast to observe internal waves and turbulence in the atmospheric boundary layer.
Findings
Internal waves observed up to 300 s buoyancy period
Shear and convective deformation detected across the measurement range
Different wind conditions lead to varying turbulence structures
Abstract
Knowledge about the characteristics of the atmospheric boundary layer is vital for the understanding of redistribution of air and suspended contents that are particularly driven by turbulent motions. Despite many modelling studies, detailed observations are still demanded of the development of turbulent exchange under stable and unstable conditions. In this paper, we present an attempt to observationally describe atmospheric internal waves and their associated turbulent eddies in detail, under varying stable conditions. Therefore, we mounted 198 high-resolution temperature T-sensors with 1-m spacing on a 200-m long cable. The instrumented cable was attached along the 213 m tall meteorological mast of Cabauw, the Netherlands, during late-summer 2017. The mast has standard meteorological equipment at extendable booms at 6 levels in height. A sonic anemometer is at 60 m above ground. The…
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Taxonomy
TopicsOceanographic and Atmospheric Processes · Meteorological Phenomena and Simulations · Ocean Waves and Remote Sensing
