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Smart City Mobility Application—Gradient Boosting Trees for Mobility Prediction and Analysis Based on Crowdsourced Data (CROSBI ID 225458)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Šemanjski, Ivana ; Gautama Sidharta Smart City Mobility Application—Gradient Boosting Trees for Mobility Prediction and Analysis Based on Crowdsourced Data // Sensors, 15 (2015), 7; 15974-15987

Podaci o odgovornosti

Šemanjski, Ivana ; Gautama Sidharta

engleski

Smart City Mobility Application—Gradient Boosting Trees for Mobility Prediction and Analysis Based on Crowdsourced Data

Mobility management represents one of the most important parts of the smart city concept. The way we travel, at what time of the day, for what purposes and with what transportation modes, have a pertinent impact on the overall quality of life in cities. To manage this process, detailed and comprehensive information on individuals’ behaviour is needed as well as effective feedback/communication channels. In this article, we explore the applicability of crowdsourced data for this purpose. We apply a gradient boosting trees algorithm to model individuals’ mobility decision making processes (particularly concerning what transportation mode they are likely to use). To accomplish this we rely on data collected from three sources: a dedicated smartphone application, a geographic information systems-based web interface and weather forecast data collected over a period of six months. The applicability of the developed model is seen as a potential platform for personalized mobility management in smart cities and a communication tool between the city (to steer the users towards more sustainable behaviour by additionally weighting preferred suggestions) and users (who can give feedback on the acceptability of the provided suggestions, by accepting or rejecting them, providing an additional input to the learning process).

smart city; mobility management; modelling mobility decision making; gradient boosted trees; crowdsourcing

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Podaci o izdanju

15 (7)

2015.

15974-15987

objavljeno

1424-8220

Povezanost rada

Tehnologija prometa i transport

Indeksiranost