Table of contents : Front-Matter_2021_Data-Driven-Traffic-Engineering Front Matter Copyright_2021_Data-Driven-Traffic-Engineering Copyright Aim-of-the-book_2021_Data-Driven-Traffic-Engineering Aim of the book Expected-readers_2021_Data-Driven-Traffic-Engineering Expected readers Scope-and-outline-of-the-book_2021_Data-Driven-Traffic-Engineering Scope and outline of the book Chapter-1---Introduction_2021_Data-Driven-Traffic-Engineering Introduction References Chapter-2---How-traffic-data-are-measure_2021_Data-Driven-Traffic-Engineerin How traffic data are measured Loop detector data Probe vehicle data Propagating congestion Localized congestion Localized and propagating congestion: A general traffic pattern Localized congestion: Complete freeway blockage (``Megajam´´) Induced congestion: Propagating structures Similar and heterogeneous congested traffic patterns Complex empirical traffic patterns Traffic patterns in urban areas Camera-based microscopic measurements References Chapter-3---Analysis-of-congested-traffic-pattern-fea_2021_Data-Driven-Traff Analysis of congested traffic pattern features on freeways: A historical overview About empirical studies of traffic congestion A brief history of Kerner's three-phase traffic theory The beginning Kerner's synchronized flow as a new traffic phase Paradigm shift in traffic science caused by the discovery of the empirical nucleation nature of a traffic breakdown Kerner's indifferent zone in car following Some milestones of related projects in the past The situation today Summary of some main hypotheses of Kerner's three-phase traffic theory Main types of spatiotemporal congested traffic patterns Detection of congested traffic patterns based on probe vehicles Phase transition points Examples of applications of probe vehicle data for reconstruction of traffic in space and time Prediction of upstream fronts of traffic phases (in particular jam front warning) based on probe vehicle data References Chapter-4---Congested-traffic-patterns-in-urb_2021_Data-Driven-Traffic-Engin Congested traffic patterns in urban areas Synchronized flow patterns at a traffic signal Classification of urban traffic patterns Probability of speed breakdown Detection of urban traffic patterns based on camera observations Traffic flow optimization by change of vehicle behavior References Chapter-5---Applications-of-traffic-in-transpor_2021_Data-Driven-Traffic-Eng Applications of traffic in transportation science Introduction Reconstruction of freeway congested traffic patterns based on measured detector data FOTO and ASDA models for stationary loop data FOTO and ASDA models for probe vehicle data The impact of severe weather on freeway traffic characteristics Description of weather database ASDA/FOTO congested pattern examples in fair weather conditions ASDA/FOTO congested pattern examples in severe weather conditions Analysis and spatial-temporal weather and traffic radar Mobility parameters Route choice behaviour in networks Jam tail warning Identifying traffic states from empirical microscopic data Generating jam fronts from state transitions Evaluation Fuel consumption in road networks Empirical microscopic fuel consumption data Different applications of using energy matrices Automated driving NEDC versus WLTP Traffic simulation Cumulated acceleration and energy efficiency of vehicles Automated driving: The problem of merging Traffic information for in-vehicle control units Traffic services for navigation systems Traffic service protocols TMC and TPEG Traffic services in case of global pandemic Estimation of arrival time References Chapter-6---Future-directions_2021_Data-Driven-Traffic-Engineering Future directions References Index_2021_Data-Driven-Traffic-Engineering Index A B C D E F G H I J K L M N O P Q R S T U V W