2019
DOI: 10.1007/s11116-019-10074-y
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Simulation-based joint optimization framework for congestion mitigation in multimodal urban network: a macroscopic approach

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Cited by 18 publications
(8 citation statements)
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“…Moreover, Geroliminis and Daganzo [38] and Geroliminis and Sun [39][40][41][42] demonstrated empirically and through simulation experiments that well-defned MFDs exist for large-scale urban trafc networks. Given this unique feature, the MFD has been applied for neighborhood-or network-level demand and operation management, such as congestion pricing (e.g., [43,44], trafc signal control (e.g., [45,46], and road space allocation (e.g., [47,48].…”
Section: Impact Of Avs On Trafcmentioning
confidence: 99%
“…Moreover, Geroliminis and Daganzo [38] and Geroliminis and Sun [39][40][41][42] demonstrated empirically and through simulation experiments that well-defned MFDs exist for large-scale urban trafc networks. Given this unique feature, the MFD has been applied for neighborhood-or network-level demand and operation management, such as congestion pricing (e.g., [43,44], trafc signal control (e.g., [45,46], and road space allocation (e.g., [47,48].…”
Section: Impact Of Avs On Trafcmentioning
confidence: 99%
“…There were eight studies that applied traffic management techniques and optimisation. The transport modes included cars [46,58,60,136] and multimodal networks of bicycles, buses, cars, rail, and shared mobility systems [95], of buses and cars [157], and of buses, rail systems, and cars [125]. The decision variables included network design (corridors and/or stations' location, routes) [58,64,95,125], network modifications (to reverse road traffic flow or to leave it unaltered) [136], frequencies setting [95,125,197], fleet sizing [197], policy variables [58,125,157], modal split [64], and traffic management [46,60].…”
Section: ) Traffic Management On Congested Networkmentioning
confidence: 99%
“…In another study, Song et al reported that the presence of bike-sharing has great prospects for boosting bicycle accessibility, thus, ensuring green and sustainable urban transportation [23]. Congestion pricing, travel demand management (TDM), proactive traffic prediction, and network optimizations have also proved beneficial in mitigating traffic congestion effectively [24][25][26][27].…”
Section: Introductionmentioning
confidence: 99%