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An Accelerating Wind Tunnel for Testing Untethered Bodies in Transverse Gusts - Dataset

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DataCite Commons2025-10-16 更新2026-05-07 收录
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https://datashare.ed.ac.uk/handle/10283/9103
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Dataset corresponds to the manuscript - An Accelerating Wind Tunnel for Testing Untethered Bodies in Transverse Gusts. The manuscript abstract states: Understanding the gust response of free-falling bodies such as plant seeds and debris is critical in predicting their dispersal. Furthermore, gusts can significantly affect the performance and survivability of low-inertia aerial vehicles. However, current methodologies for studying common gusts, particularly transverse gusts, which are characterised by the sudden appearance of a flow velocity component orthogonal to the flyer’s velocity, are not applicable to untethered or free-falling bodies. This article introduces a novel approach that addresses this limitation through an accelerating reference frame generating a fictitious force that temporarily scales and redirects the gravitational force. This approach is demonstrated through a first-of-its-kind vertical wind tunnel that accelerates horizontally in the direction normal to the flow with the same acceleration as the gust. A preliminary characterisation of the facility is presented. The tunnel acceleration generates the same pressure gradient as irrotational, uniform transverse gusts, without introducing the shear layer typical of K¨ussner’s gusts. The gust response of a free-falling dandelion diaspore to a discrete transverse gust (Wagner-type) is demonstrated, but the proposed approach is suitable for arbitrary time series of transverse gusts, including Theodorsen-type periodic gusts. For the first time, this novel approach will allow investigating the dynamic response of untethered bodies to transverse gusts, including micro and nano drones, unpowered microrobots, plant seeds, debris, and more.
提供机构:
University of Edinburgh. School of Engineering. Institute for Energy Systems
创建时间:
2025-10-16
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