Acoustics Research Centre, University of Salford, Manchester M5 4WT, UK.
Int J Environ Res Public Health. 2022 Mar 8;19(6):3152. doi: 10.3390/ijerph19063152.
Novel electric air transportation is emerging as an industry that could help to improve the lives of people living in both metropolitan and rural areas through integration into infrastructure and services. However, as this new resource of accessibility increases in momentum, the need to investigate any potential adverse health impacts on the public becomes paramount. This paper details research investigating the effectiveness of available noise metrics and sound quality metrics (SQMs) for assessing perception of drone noise. A subjective experiment was undertaken to gather data on human response to a comprehensive set of drone sounds and to investigate the relationship between perceived annoyance, perceived loudness and perceived pitch and key psychoacoustic factors. Based on statistical analyses, subjective models were obtained for perceived annoyance, loudness and pitch of drone noise. These models provide understanding on key psychoacoustic features to consider in decision making in order to mitigate the impact of drone noise. For the drone sounds tested in this paper, the main contributors to perceived annoyance are perceived noise level (PNL) and sharpness; for perceived loudness are PNL and fluctuation strength; and for perceived pitch are sharpness, roughness and Aures tonality. Responses for the drone sounds tested were found to be highly sensitive to the distance between drone and receiver, measured in terms of height above ground level (HAGL). All these findings could inform the optimisation of drone operating conditions in order to mitigate community noise.
新型电动交通正在兴起,这一行业可以通过融入基础设施和服务,帮助改善城市和农村地区居民的生活。然而,随着这种新的无障碍资源的发展势头越来越强劲,有必要调查其对公众健康可能产生的任何不良影响。本文详细介绍了一项研究,该研究调查了现有的噪声指标和声音质量指标(SQMs)在评估无人机噪声感知方面的有效性。进行了一项主观实验,以收集关于人类对一整套无人机声音的反应的数据,并研究感知烦恼、感知响度和感知音高与关键心理声学因素之间的关系。基于统计分析,获得了无人机噪声感知烦恼、响度和音高的主观模型。这些模型提供了在决策中考虑关键心理声学特征的理解,以减轻无人机噪声的影响。对于本文测试的无人机声音,感知烦恼的主要贡献因素是感知噪声级(PNL)和尖锐度;感知响度的主要贡献因素是 PNL 和波动强度;感知音高的主要贡献因素是尖锐度、粗糙度和 Aures 音调。测试的无人机声音的响应被发现对无人机和接收器之间的距离非常敏感,以离地高度(HAGL)来衡量。所有这些发现都可以为优化无人机的运行条件提供信息,以减轻社区噪声。