LGOct 10, 2020

Vehicle predictive trajectory patterns from isochronous data

arXiv:2010.05026v2
Originality Synthesis-oriented
AI Analysis

This work addresses vehicle dynamics and city planning by providing predictive trajectory data for energy-saving pathways and engineering improvements, but it is incremental as it applies existing methods to new sensor data.

The paper tackled the problem of predicting vehicle trajectories using isochronous data from sensors in Graz, Austria, and found that the derived patterns successfully predict likely trajectory evolution and assess future driving situations.

Measuring and analyzing sensor data is the basic technique in vehicle dynamics development and with the advancement of embedded and data acquisition systems it is possible to analyze large data sets. In this paper a detailed method is presented for assessing and mapping isochronous trajectory patterns in Graz (Austria) by using data fusion from video, ArduinoUno and the compass sensor HDMM01. The predictive isochronous trajectory patterns are derived from the data values for a predefined time horizon. Both extreme driving behavior and hazardous road geometries can be identified. It is possible to provide instant road sensor data which can be used to compare the data from a trajectory path as well as for different time instances. Results of this study show that the trajectory patterns are successful in predicting the likely evolution of a current trajectory pattern and can provide assessment on future driving situations. The obtained data from this study can be useful as reference in future city planning for energy saving driving pathways as well as vehicle design and engineering improvements based on quantitative and relevant dynamic measurements.

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