3 research outputs found

    Big Data Methodologies, Tools and Infrastructures

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    Big Data opens up new opportunities to define “Intelligent” mobility and transportation solutions. The transportation industry is a leader in creating the so-called Internet of Everything. Each day vast volumes of data are generated through sensors in passenger counting and vehicle locator systems and ticketing and fare collection systems, just to name a few."br" The goal is to create value out of this amount of data, by providing a comprehensive picture of what’s happening, using business analytics, leveraging big data tools and predictive analytics, to help transportation agencies improve operations, reduce costs and hopefully better serve travelers."br" The technical challenge is that much of this Big Data is non-standard data (e.g., social, geospatial or sensor-generated data that does not an easy fit into traditional, structured, relational data warehouses or databases)."br" An additional challenge is that with such an amount of real-time structured and unstructured data captured from a variety of sources, it is difficult to determine which data is most valuable. Terabytes of data are collected and result in an added complexity to the underlying IT infrastructures."br" These terabytes of data require immense amounts of storage in silo after silo of transportation operator data centers. In order to analyze Big Data, an appropriate Data Infrastructure needs to be in place to:"br" 1. store and maintain data"br" 2. analyze data"br" 3. present results in a clear visual way"br" Several Big Data platforms have been proposed recently, open source and proprietary. In order to tackle the demands and challenges in the transportation domain, an optimal stack of Big Data technologies needs to be selected and designed based on the application requirements."br" This is not an easy task."br" This report, which is a follow up of Deliverable 1.1, offers an in-depth introduction to relevant technologies for Big Data Analytics and Big Data Management. It also looks at how these technologies are applied to build a Big Data Platform suitable for the transport sector. We present in detail how application-specific benchmarking can be used in order to evaluate which Big Data technologies are most suited for the domain. We conclude the report with an applied example of using data analytics for urban mobility."br" This document offers the reader a technical insight into existing Big Data technologies at various levels: software management, data platform, and application. In order to evaluate which specific software components in the Big Data stack are more suitable for transport applications, with high volume and high-velocity requirements, a benchmarking approach is presented."br" The future of data analytics in transportation has many applications and opportunities."br" The main challenge is using significantly improved technologies and methods to gather and understand the data in order for business decisions to be informed by better insights

    Endbericht RENEWBILITY III - Optionen einer Dekarbonisierung des Verkehrssektors

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    Das Projekt Renewbility hat sich in den vergangenen Jahren auf vielfältige Weise mit den Optionen für Politik, Wirtschaft und Zivilgesellschaft im Verkehrssektor auseinandergesetzt. Es handelt sich um ein Forschungsprojekt, das mögliche Entwicklungen des Verkehrssektors durch die Betrachtung von Szenarien darstellt. Dabei werden Optionen aufgezeigt, die Treibhausgasemissionen des Verkehrssektors zu senken. Mit plausiblen, in sich konsistenten und vorstellbaren Szenarien werden die Potenziale konkreter Maßnahmen für einen sachgerechten Klimaschutz im Verkehr aufgezeigt – und zwar sowohl bezüglich der Umwelt-, als auch der ökonomischen Wirkung

    Case study reports on constructive findings on the prerequisites of successful big data implementation in the transport sector

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    The deliverable presents seven reports of the case studies conducted in Work Package 3 during Task 3.2. The case studies conducted include: • Case study 1 “Railway transport” • Case study 2 “Open data and the transport sector” • Case study 3 “Real-time traffic management” • Case study 4 “Logistics and consumer preferences” • Case study 5 “Smart inland shipping” • Case study 6 “Optimised transport & improved customer service” • Case study 7 “Big data and intelligent transport systems
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