Method for Arterial Coordination Control of Two-Phase Signalized Intersection
CICTP 2018(2018)
Abstract
In comprehensive consideration of traffic operation characteristics of main roads and intersection roads, this paper examines the offset between intersections to improve the efficiency of two-phase intersections in trunk coordination. Under the premise that the sum of the two signal periods is the common period, two different signal cycles with different numerical values are proposed. Reasonable distribution of green time and the selection of the offset, two-way green wave coordination achieves a two-phase intersection and two downstream intersections, improves road capacity and traffic speed, queue length, and delay line, and reduces the vehicle road intersection.
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