A crowdsensing-based framework for sound and vibration data analysis in smart urban environments
In this paper, we introduce a framework tailored to the precise analysis of sound and vibration data in the dynamic context of smart cities. By harnessing the power of crowdsensing data, our system offers a robust and highly adaptable solution for the real-time monitoring and comprehensive assessme...
Saved in:
| Main Authors: | , , |
|---|---|
| Format: | Article |
| Language: | English |
| Published: |
Pro Universitaria
2024-02-01
|
| Series: | Smart Cities and Regional Development Journal |
| Subjects: | |
| Online Access: | https://www.scrd.eu/index.php/scrd/article/view/471 |
| Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
| _version_ | 1849232951342006272 |
|---|---|
| author | Boban DAVIDOVIC Sanja DEJANOVIC Maja DAVIDOVIC |
| author_facet | Boban DAVIDOVIC Sanja DEJANOVIC Maja DAVIDOVIC |
| author_sort | Boban DAVIDOVIC |
| collection | DOAJ |
| description |
In this paper, we introduce a framework tailored to the precise analysis of sound and vibration data in the dynamic context of smart cities. By harnessing the power of crowdsensing data, our system offers a robust and highly adaptable solution for the real-time monitoring and comprehensive assessment of acoustic and vibrational parameters within urban environments. The rise of smart cities, fueled by sensor tech and data analysis, demands advanced tools to tackle urban environmental issues and improve residents’ quality of life. Our framework empowers city stakeholders, offering insights for informed decisions in urban planning, transportation, infrastructure maintenance, and public health. Key features of our system include data acquisition through mobile crowdsensing application, advanced signal processing algorithms for noise and vibration identification, and the integration of geospatial information to provide location-specific context. Furthermore, our framework supports scalable and adaptable data analytics, ensuring the efficient utilization of resources and the effective management of urban environments. The presented framework addresses the challenges of noise pollution, structural health monitoring, transportation optimization, and public safety in smart cities. By exploiting crowdsourced data, it promotes a collaborative approach to data collection, analysis, and decision-making, fostering an environment where cities can continuously evolve and adapt to the evolving needs of their residents. This paper offers a detailed exploration of the system’s architecture, and showcases its practical implementation, affirming its potential as a powerful starting point for advancing the science of smart cities.
|
| format | Article |
| id | doaj-art-19b501fe5fe34404b40cdcda7ece6b53 |
| institution | Kabale University |
| issn | 2537-3803 2821-7888 |
| language | English |
| publishDate | 2024-02-01 |
| publisher | Pro Universitaria |
| record_format | Article |
| series | Smart Cities and Regional Development Journal |
| spelling | doaj-art-19b501fe5fe34404b40cdcda7ece6b532025-08-20T14:06:10ZengPro UniversitariaSmart Cities and Regional Development Journal2537-38032821-78882024-02-018210.25019/h550wd78A crowdsensing-based framework for sound and vibration data analysis in smart urban environmentsBoban DAVIDOVIC0Sanja DEJANOVIC1Maja DAVIDOVIC2Faculty of Organizational Sciences, Belgrade, SerbiaFaculty of Organizational Sciences, Belgrade, SerbiaFaculty of Information Technology, Belgrade, Serbia In this paper, we introduce a framework tailored to the precise analysis of sound and vibration data in the dynamic context of smart cities. By harnessing the power of crowdsensing data, our system offers a robust and highly adaptable solution for the real-time monitoring and comprehensive assessment of acoustic and vibrational parameters within urban environments. The rise of smart cities, fueled by sensor tech and data analysis, demands advanced tools to tackle urban environmental issues and improve residents’ quality of life. Our framework empowers city stakeholders, offering insights for informed decisions in urban planning, transportation, infrastructure maintenance, and public health. Key features of our system include data acquisition through mobile crowdsensing application, advanced signal processing algorithms for noise and vibration identification, and the integration of geospatial information to provide location-specific context. Furthermore, our framework supports scalable and adaptable data analytics, ensuring the efficient utilization of resources and the effective management of urban environments. The presented framework addresses the challenges of noise pollution, structural health monitoring, transportation optimization, and public safety in smart cities. By exploiting crowdsourced data, it promotes a collaborative approach to data collection, analysis, and decision-making, fostering an environment where cities can continuously evolve and adapt to the evolving needs of their residents. This paper offers a detailed exploration of the system’s architecture, and showcases its practical implementation, affirming its potential as a powerful starting point for advancing the science of smart cities. https://www.scrd.eu/index.php/scrd/article/view/471sound and vibration in trafficdata analysisurban planningnoise pollutioncrowdsensing |
| spellingShingle | Boban DAVIDOVIC Sanja DEJANOVIC Maja DAVIDOVIC A crowdsensing-based framework for sound and vibration data analysis in smart urban environments Smart Cities and Regional Development Journal sound and vibration in traffic data analysis urban planning noise pollution crowdsensing |
| title | A crowdsensing-based framework for sound and vibration data analysis in smart urban environments |
| title_full | A crowdsensing-based framework for sound and vibration data analysis in smart urban environments |
| title_fullStr | A crowdsensing-based framework for sound and vibration data analysis in smart urban environments |
| title_full_unstemmed | A crowdsensing-based framework for sound and vibration data analysis in smart urban environments |
| title_short | A crowdsensing-based framework for sound and vibration data analysis in smart urban environments |
| title_sort | crowdsensing based framework for sound and vibration data analysis in smart urban environments |
| topic | sound and vibration in traffic data analysis urban planning noise pollution crowdsensing |
| url | https://www.scrd.eu/index.php/scrd/article/view/471 |
| work_keys_str_mv | AT bobandavidovic acrowdsensingbasedframeworkforsoundandvibrationdataanalysisinsmarturbanenvironments AT sanjadejanovic acrowdsensingbasedframeworkforsoundandvibrationdataanalysisinsmarturbanenvironments AT majadavidovic acrowdsensingbasedframeworkforsoundandvibrationdataanalysisinsmarturbanenvironments AT bobandavidovic crowdsensingbasedframeworkforsoundandvibrationdataanalysisinsmarturbanenvironments AT sanjadejanovic crowdsensingbasedframeworkforsoundandvibrationdataanalysisinsmarturbanenvironments AT majadavidovic crowdsensingbasedframeworkforsoundandvibrationdataanalysisinsmarturbanenvironments |