2020
DOI: 10.3390/s20174760
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WASN-Based Day–Night Characterization of Urban Anomalous Noise Events in Narrow and Wide Streets

Abstract: In addition to air pollution, environmental noise has become one of the major hazards for citizens, being Road Traffic Noise (RTN) as its main source in urban areas. Recently, low-cost Wireless Acoustic Sensor Networks (WASNs) have become an alternative to traditional strategic noise mapping in cities. In order to monitor RTN solely, WASN-based approaches should automatize the off-line removal of those events unrelated to regular road traffic (e.g., sirens, airplanes, trams, etc.). Within the LIFE DYNAMAP proj… Show more

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Cited by 10 publications
(13 citation statements)
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“…In the context of a smart-city framework, one could imagine a wireless acoustic sensor network (WASN) large enough to cover a whole urban area; having a noise annoyance prediction algorithm at the node position that can return live annoyance scores to a central server from sounds recorded locally by the sensor would make for a useful application for environmental protection officers and other stakeholders at community or local authority level [52]. A relevant issue to consider from the WASN perspective, is that previous studies conducted in both urban [21] and suburban [20] environments, there is a clear influence of the type of environment around the sensor location on the types of noise detected. Not all the urban or suburban locations for sensors have frequent sirens or horns, it depends on the more common activities (leisure, hospitals, etc.…”
Section: Discussionmentioning
confidence: 99%
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“…In the context of a smart-city framework, one could imagine a wireless acoustic sensor network (WASN) large enough to cover a whole urban area; having a noise annoyance prediction algorithm at the node position that can return live annoyance scores to a central server from sounds recorded locally by the sensor would make for a useful application for environmental protection officers and other stakeholders at community or local authority level [52]. A relevant issue to consider from the WASN perspective, is that previous studies conducted in both urban [21] and suburban [20] environments, there is a clear influence of the type of environment around the sensor location on the types of noise detected. Not all the urban or suburban locations for sensors have frequent sirens or horns, it depends on the more common activities (leisure, hospitals, etc.…”
Section: Discussionmentioning
confidence: 99%
“…In this section we detail the several methods applied our experiment from the perceptual test design based on an urban sound dataset [21] to the multilevel linear regression modelling applied to obtain the annoyance prediction described as contribution in this paper.…”
Section: Methodsmentioning
confidence: 99%
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