EAgLE: Equivalent Acoustic Level Estimator Proposal

Road infrastructures represent a key point in the development of smart cities. In any case, the environmental impact of road traffic should be carefully assessed. Acoustic noise is one of the most important issues to be monitored by means of sound level measurements. When a large measurement campaig...

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Main Author: Claudio Guarnaccia
Format: Article
Language:English
Published: MDPI AG 2020-01-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/3/701
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spelling doaj-b6ff96aca5214bed8d274b6daa8e94a72020-11-25T02:33:37ZengMDPI AGSensors1424-82202020-01-0120370110.3390/s20030701s20030701EAgLE: Equivalent Acoustic Level Estimator ProposalClaudio Guarnaccia0Department of Civil Engineering, University of Salerno, I-84084 Fisciano, ItalyRoad infrastructures represent a key point in the development of smart cities. In any case, the environmental impact of road traffic should be carefully assessed. Acoustic noise is one of the most important issues to be monitored by means of sound level measurements. When a large measurement campaign is not possible, road traffic noise predictive models (RTNMs) can be used. Standard RTNMs present in literature usually require in input several information about the traffic, such as flows of vehicles, percentage of heavy vehicles, average speed, etc. Many times, the lack of information about this large set of inputs is a limitation to the application of predictive models on a large scale. In this paper, a new methodology, easy to be implemented in a sensor concept, based on video processing and object detection tools, is proposed: the Equivalent Acoustic Level Estimator (EAgLE). The input parameters of EAgLE are detected analyzing video images of the area under study. Once the number of vehicles, the typology (light or heavy vehicle), and the speeds are recorded, the sound power level of each vehicle is computed, according to the EU recommended standard model (CNOSSOS-EU), and the Sound Exposure Level (SEL) of each transit is estimated at the receiver. Finally, summing up the contributions of all the vehicles, the continuous equivalent level, <i>L<sub>eq</sub></i>, on a given time range can be assessed. A preliminary test of the EAgLE technique is proposed in this paper on two sample measurements performed in proximity of an Italian highway. The results will show excellent performances in terms of agreement with the measured <i>L<sub>eq</sub></i> and comparing with other RTNMs. These satisfying results, once confirmed by a larger validation test, will open the way to the development of a dedicated sensor, embedding the EAgLE model, with possible interesting applications in smart cities and road infrastructures monitoring. These sites, in fact, are often equipped (or can be equipped) with a network of monitoring video cameras for safety purposes or for fining/tolling, that, once the model is properly calibrated and validated, can be turned in a large scale network of noise estimators.https://www.mdpi.com/1424-8220/20/3/701noise controlsensor conceptroad traffic noise modeldynamic model
collection DOAJ
language English
format Article
sources DOAJ
author Claudio Guarnaccia
spellingShingle Claudio Guarnaccia
EAgLE: Equivalent Acoustic Level Estimator Proposal
Sensors
noise control
sensor concept
road traffic noise model
dynamic model
author_facet Claudio Guarnaccia
author_sort Claudio Guarnaccia
title EAgLE: Equivalent Acoustic Level Estimator Proposal
title_short EAgLE: Equivalent Acoustic Level Estimator Proposal
title_full EAgLE: Equivalent Acoustic Level Estimator Proposal
title_fullStr EAgLE: Equivalent Acoustic Level Estimator Proposal
title_full_unstemmed EAgLE: Equivalent Acoustic Level Estimator Proposal
title_sort eagle: equivalent acoustic level estimator proposal
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-01-01
description Road infrastructures represent a key point in the development of smart cities. In any case, the environmental impact of road traffic should be carefully assessed. Acoustic noise is one of the most important issues to be monitored by means of sound level measurements. When a large measurement campaign is not possible, road traffic noise predictive models (RTNMs) can be used. Standard RTNMs present in literature usually require in input several information about the traffic, such as flows of vehicles, percentage of heavy vehicles, average speed, etc. Many times, the lack of information about this large set of inputs is a limitation to the application of predictive models on a large scale. In this paper, a new methodology, easy to be implemented in a sensor concept, based on video processing and object detection tools, is proposed: the Equivalent Acoustic Level Estimator (EAgLE). The input parameters of EAgLE are detected analyzing video images of the area under study. Once the number of vehicles, the typology (light or heavy vehicle), and the speeds are recorded, the sound power level of each vehicle is computed, according to the EU recommended standard model (CNOSSOS-EU), and the Sound Exposure Level (SEL) of each transit is estimated at the receiver. Finally, summing up the contributions of all the vehicles, the continuous equivalent level, <i>L<sub>eq</sub></i>, on a given time range can be assessed. A preliminary test of the EAgLE technique is proposed in this paper on two sample measurements performed in proximity of an Italian highway. The results will show excellent performances in terms of agreement with the measured <i>L<sub>eq</sub></i> and comparing with other RTNMs. These satisfying results, once confirmed by a larger validation test, will open the way to the development of a dedicated sensor, embedding the EAgLE model, with possible interesting applications in smart cities and road infrastructures monitoring. These sites, in fact, are often equipped (or can be equipped) with a network of monitoring video cameras for safety purposes or for fining/tolling, that, once the model is properly calibrated and validated, can be turned in a large scale network of noise estimators.
topic noise control
sensor concept
road traffic noise model
dynamic model
url https://www.mdpi.com/1424-8220/20/3/701
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