A Serious Game Approach for the Electro-Mobility Sector
- URL: http://arxiv.org/abs/2012.01171v1
- Date: Tue, 1 Dec 2020 13:41:35 GMT
- Title: A Serious Game Approach for the Electro-Mobility Sector
- Authors: Bartolomeo Silvestri, Alessandro Rinaldi, Antonella Berardi, Michele
Roccotelli, Simone Acquaviva and Maria Pia Fanti
- Abstract summary: This paper aims to present a SG approach for the electro-mobility context, in order to encourage the use of electric light vehicles.
The design of the SG is based on the typical elements of the classic "game" with a real gameplay with different purposes.
- Score: 56.31696262234312
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Serious Games (SGs) represent a new approach to improve learning processes
more effectively and economically than traditional methods. This paper aims to
present a SG approach for the electro-mobility context, in order to encourage
the use of electric light vehicles. The design of the SG is based on the
typical elements of the classic "game" with a real gameplay with different
purposes. In this work, the proposed SG aims to raise awareness on
environmental issues caused by mobility and actively involve users, on
improving livability in the city and on real savings using alternative means to
traditional vehicles. The objective of the designed tool is to propose elements
of fun and entertainment for tourists or users of electric vehicles in the
cities, while giving useful information about the benefits of using such
vehicles, discovering touristic and interesting places in the city to discover.
In this way, the user is stimulated to explore the artistic and historical
aspects of the city through an effective learning process: he/she is encouraged
to search the origins and the peculiarities of the monuments.
Related papers
- MetaUrban: An Embodied AI Simulation Platform for Urban Micromobility [52.0930915607703]
Recent advances in Robotics and Embodied AI make public urban spaces no longer exclusive to humans.
Micromobility enabled by AI for short-distance travel in public urban spaces plays a crucial component in the future transportation system.
We present MetaUrban, a compositional simulation platform for the AI-driven urban micromobility research.
arXiv Detail & Related papers (2024-07-11T17:56:49Z) - Wireless Crowd Detection for Smart Overtourism Mitigation [50.031356998422815]
This chapter describes a low-cost approach to monitoring overtourism based on mobile devices' wireless activity.
The crowding sensors count the number of surrounding mobile devices, by detecting trace elements of wireless technologies.
They run detection programs for several technologies, and fingerprinting analysis results are only stored locally in an anonymized database.
arXiv Detail & Related papers (2024-02-14T13:20:24Z) - Meta-learning enhanced next POI recommendation by leveraging check-ins
from auxiliary cities [32.70591612636725]
We propose a novel Meta-learning Enhanced next POI Recommendation framework (MERec)
MERecleverages the correlation of check-in behaviors among various cities into the meta-learning paradigm to help infer user preference in the target city.
In particular, a city-level correlation strategy is devised to attentively capture common patterns among cities, so as to transfer more relevant knowledge from more correlated cities.
arXiv Detail & Related papers (2023-08-18T05:07:41Z) - Play&Go Corporate: An End-to-End Solution for Facilitating Urban
Cyclability [9.61441029601318]
Municipalities are increasingly facing problems of traffic congestion, road safety, energy dependency and air pollution.
We present an end-to-end solution, called Play&Go Corporate, for enabling urban cyclability and its concrete exploitation in the realization of a home-to-work sustainable mobility campaign.
arXiv Detail & Related papers (2022-09-06T18:21:06Z) - Weak Signals in the Mobility Landscape: Car Sharing in Ten European
Cities [0.6875312133832077]
We use web-based, digital records about vehicle availability in 10 European cities for one of the major active car sharing operators.
We discuss which socio-demographic and urban activity indicators are associated with variations in car sharing demand.
arXiv Detail & Related papers (2021-09-20T20:37:25Z) - Connecting Language and Vision for Natural Language-Based Vehicle
Retrieval [77.88818029640977]
In this paper, we apply one new modality, i.e., the language description, to search the vehicle of interest.
To connect language and vision, we propose to jointly train the state-of-the-art vision models with the transformer-based language model.
Our proposed method has achieved the 1st place on the 5th AI City Challenge, yielding competitive performance 18.69% MRR accuracy.
arXiv Detail & Related papers (2021-05-31T11:42:03Z) - Assessing the Learning Behavioral Intention of Commuters in Mobility
Practices [0.0]
The study aims to assess the learning behavioral intention (LBI) of commuters in Greater Kuala Lumpur.
The perceived usefulness of learning during traveling and transit service quality has a vibrant impact on LBI.
arXiv Detail & Related papers (2021-05-19T04:27:11Z) - Smart Urban Mobility: When Mobility Systems Meet Smart Data [55.456196356335745]
Cities around the world are expanding dramatically, with urban population growth reaching nearly 2.5 billion people in urban areas and road traffic growth exceeding 1.2 billion cars by 2050.
The economic contribution of the transport sector represents 5% of the GDP in Europe and costs an average of US $482.05 billion in the U.S.
arXiv Detail & Related papers (2020-05-09T13:53:01Z) - Learning to Move with Affordance Maps [57.198806691838364]
The ability to autonomously explore and navigate a physical space is a fundamental requirement for virtually any mobile autonomous agent.
Traditional SLAM-based approaches for exploration and navigation largely focus on leveraging scene geometry.
We show that learned affordance maps can be used to augment traditional approaches for both exploration and navigation, providing significant improvements in performance.
arXiv Detail & Related papers (2020-01-08T04:05:11Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.