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‘Intelligent transportation key technology enabler of smart cities’

New research by ABI indicates that by 2025, penetration of ITS technologies in smart cities will range from 20 per cent (autonomous vehicles) to 98 per cent (traffic management). With more than two-thirds of the global population expected to live in urban contexts by 2050, the deployment of smart cities technologies and intelligent transportation services in particular, will become key policy areas for local governments. While numerous smart city projects are currently testing or deploying multimodal tr
March 13, 2014 Read time: 2 mins
New research by ABI indicates that by 2025, penetration of ITS technologies in smart cities will range from 20 per cent (autonomous vehicles) to 98 per cent (traffic management). With more than two-thirds of the global population expected to live in urban contexts by 2050, the deployment of smart cities technologies and intelligent transportation services in particular, will become key policy areas for local governments.

While numerous smart city projects are currently testing or deploying multimodal transportation, traffic management, adaptive traffic signalling, transit ticketing and smart parking payment solutions, the focus will shift to urban tolling and freight systems to address rampant congestion and pollution issues, especially in developing regions. However, more structural approaches based on eMobility, cooperative ITS and V2I, autonomous vehicles, and widespread adoption of car sharing and on-demand taxis will be needed by the start of the next decade to cope with the unstoppable urbanisation trend,” says VP and practice director, Dominique Bonte.

Meanwhile, inter-vertical technologies such as Vehicle-to-Grid (V2G) will be required to realize the synergies offered by an urban IoT strategy. In this respect, it is essential city governments and technology providers adopt holistic approaches maximizing the combined effect of technologies within and across the energy, transportation, communication, education, retail, construction, public services, and healthcare verticals in order to unlock the full potential of smart cities in terms of sustainability, quality of life, efficiency, and economic growth.

Unfortunately, many smart city projects remain fragmented and/or hijacked for gaining political capital on the back of public funding, especially in Europe. Other issues include complexity, high costs, lack of standards, reluctance to share data, and privacy concerns. For the smart cities conundrum to emerge as a viable concept, it will have to emancipate and leave its old heritage behind.

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