Abstract

The energy consumption and emissions from vehicles adversely affect human health and urban sustainability. Analysis of GPS big data collected from vehicles can provide useful insights about the quantity and distribution of such energy consumption and emissions. Previous studies, which estimated fuel consumption/emissions from traffic based on GPS sampled data, have not sufficiently considered vehicle activities and may have led to erroneous estimations. By adopting the analytical construct of the space-time path in time geography, this study proposes methods that more accurately estimate and visualize vehicle energy consumption/emissions based on analysis of vehicles’ mobile activities (MA) and stationary activities (SA). First, we build space-time paths of individual vehicles, extract moving parameters, and identify MA and SA from each space-time path segment (STPS). Then we present an N-Dimensional framework for estimating and visualizing fuel consumption/emissions. For each STPS, fuel consumption, hot emissions, and cold start emissions are estimated based on activity type, i.e., MA, SA with engine-on and SA with engine-off. In the case study, fuel consumption and emissions of a single vehicle and a road network are estimated and visualized with GPS data. The estimation accuracy of the proposed approach is 88.6%. We also analyze the types of activities that produced fuel consumption on each road segment to explore the patterns and mechanisms of fuel consumption in the study area. The results not only show the effectiveness of the proposed approaches in estimating fuel consumption/emissions but also indicate their advantages for uncovering the relationships between fuel consumption and vehicles’ activities in road networks.

Highlights

  • IntroductionTransport-related environmental issues deteriorate. The report of Intergovernmental Panel on Climate Change (IPCC) shows that 20–30% of total greenhouse gases (GHGs) are released from urban transportation operation including passenger and freight transportation [1].Estimating and visualizing fuel consumption and emissions from transportation provide an understanding of the energy cost and air pollution caused by travel or transportation

  • As urbanization accelerates, transport-related environmental issues deteriorate

  • Based on individual space-time path, we present an N-dimensional representation for visually describing N estimating attributes of individuals, a space-time path consisting of M space-time path segment (STPS) can be described as a fuel consumption/emissions and representing different multi-dimensional information

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Summary

Introduction

Transport-related environmental issues deteriorate. The report of Intergovernmental Panel on Climate Change (IPCC) shows that 20–30% of total greenhouse gases (GHGs) are released from urban transportation operation including passenger and freight transportation [1].Estimating and visualizing fuel consumption and emissions from transportation provide an understanding of the energy cost and air pollution caused by travel or transportation. The report of Intergovernmental Panel on Climate Change (IPCC) shows that 20–30% of total greenhouse gases (GHGs) are released from urban transportation operation including passenger and freight transportation [1]. Estimating and visualizing fuel consumption and emissions from transportation provide an understanding of the energy cost and air pollution caused by travel or transportation. Previous studies often estimated fuel consumption/emissions without considering vehicles’ activities and might lead to erroneous estimations. This study proposes approaches that estimate and visualize vehicles’. Res. Public Health 2018, 15, 566; doi:10.3390/ijerph15040566 www.mdpi.com/journal/ijerph

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