2020
DOI: 10.1002/ett.3862
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Internet of Things data analytics for parking availability prediction and guidance

Abstract: Cutting-edge sensors and devices are increasingly deployed within urban areas to make-up the fabric of TCP/IP connectivity driven by Internet of Things (IoT). This immersion into physical urban environments creates new data-streams which could be exploited to deliver novel cloud-based services. Connected-vehicles and road-infrastructure data are leveraged in this paper to build applications that alleviate notorious parking and induced traffic-congestion issues. To optimize the utility of parking-lots, our prop… Show more

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Cited by 15 publications
(6 citation statements)
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“…Network infrastructure data (e.g., GIS data) is becoming increasingly available within open-access traffic datasets due to its importance in representing both spatial and temporal correlations (Liao et al, 2018a;Pan et al, 2019a;Peng et al, 2020a;James, 2021). More specifically, in applications such as map matching, network infrastructure data can be leveraged to map trajectory data sequences to actual positions on the roadway infrastructure, improving traffic prediction capabilities (Atif et al, 2020;James, 2021). This data includes information about the topology of roadway, subway, and bus networks.…”
Section: Spatio-temporal Sequence Datamentioning
confidence: 99%
“…Network infrastructure data (e.g., GIS data) is becoming increasingly available within open-access traffic datasets due to its importance in representing both spatial and temporal correlations (Liao et al, 2018a;Pan et al, 2019a;Peng et al, 2020a;James, 2021). More specifically, in applications such as map matching, network infrastructure data can be leveraged to map trajectory data sequences to actual positions on the roadway infrastructure, improving traffic prediction capabilities (Atif et al, 2020;James, 2021). This data includes information about the topology of roadway, subway, and bus networks.…”
Section: Spatio-temporal Sequence Datamentioning
confidence: 99%
“…Mostly applied to off-street parking facilities, it is based on the assumption that vehicles arrive at parking spaces following a Poisson distribution. A number of studies (Atif et al 2020;Caliskan et al 2007;Klappenecker, Lee, and Welch 2014;Peng and Li 2016;Wu et al 2014) made parking occupancy predictions using a continuous-time Markov Chain. Lu et al (2009) used advanced technologies for the provision of arrival and departure rates, whereas Caicedo, Blazquez, and Miranda (2012) made parking availability predictions based on request allocations.…”
Section: Model-based Approachmentioning
confidence: 99%
“…In another study, [93] have discussed about intravehicle resource sharing model to provide a range of cloud services such as on-demand entertainment and speech recognition for driver assistance. The proposed solution forms nearly low-latency vehicular service cloud (VSC) on-the-fly as per the need of vehicular users [94].…”
Section: Cloud and Smart Vehicle Challengesmentioning
confidence: 99%
“…The proposed solution forms nearly low-latency vehicular service cloud on-the-fly as per the need of vehicular users. 94 Multitenancy is another concern in the cloud IoT. Multitenancy is one of the differences between locally managed computing and cloud computing in which some of the tenants can share resources and delegate the management of the data and process to the cloud service provider.…”
Section: Cloud and Smart Vehicle Challengesmentioning
confidence: 99%