ARTÍCULO
TITULO

iTrip, a framework to enhance urban mobility by leveraging various data sources

Praboda Rajapaksha    
Reza Farahbakhsh    
Eftihia Nathanail    
Noel Crespi    

Resumen

Available big data have proliferated rapidly in the last decade and continue to grow in popularity. The existing new data sources such as Online Social Networks (OSNs) and Internet of Things (IoT) influence many digital aspects in-order to shape/reshape normal life of people and other related parties such as businesses, stockholders etc. Urban mobility is one of the considerable impacted domains, where many applications and services have been provided by implicating user activities and other city information. This paper aims to provide a comprehensive view on the influence of various sources of data in the users? trips. To this end, at first we review relevant studies and available services that are designed to facilitate travelers? life as well as we identify the existing gaps in this domain. Next we propose a framework iTrip, which aims to utilize data from different data sources as input and then, recommend/provide advance services to various type of customers. The outcome of this framework will provide a set of summarized recommendations, predictions, decisions, and plans to be used in decision-making for long/short distance transportation mechanisms. In addition, as a future direction of this study a set of ideas and topics is provided.

 Artículos similares

       
 
Wenjie Zhen, Shifang Huang, Zhihui Tian and Xiaoyue Yang    
Tourist maps provide tourists with destination information that reflects their unique characteristics and cultural connotations and play an important role in attracting tourists and serving marketing purposes. However, existing designs of tourist maps of... ver más

 
Sanjay Nambiar, Anan Ashrabi Ananno, Herman Titus, Anton Wiberg and Mehdi Tarkian    
In the quest to enhance the efficiency of gas turbines, there is a growing demand for innovative solutions to optimize high-pressure turbine blade cooling. However, the traditional methods for achieving this optimization are known for their complexity an... ver más

 
Hanyue Xu, Kah Phooi Seng, Jeremy Smith and Li Minn Ang    
In the context of smart cities, the integration of artificial intelligence (AI) and the Internet of Things (IoT) has led to the proliferation of AIoT systems, which handle vast amounts of data to enhance urban infrastructure and services. However, the co... ver más
Revista: Future Internet

 
Saima Bhatti, Asif Ali Shaikh, Asif Mansoor and Murtaza Hussain    
Machinery components undergo wear and tear over time due to regular usage, necessitating the establishment of a robust prognosis framework to enhance machinery health and avert catastrophic failures. This study focuses on the collection and analysis of v... ver más
Revista: Applied Sciences

 
Juyao Wei, Zhenggang Lu, Zheng Yin and Zhipeng Jing    
This paper presents a novel data-driven multiagent reinforcement learning (MARL) controller for enhancing the running stability of independently rotating wheels (IRW) and reducing wheel?rail wear. We base our active guidance controller on the multiagent ... ver más
Revista: Applied Sciences