Grey Models for Short-Term Queue Length Predictions for Adaptive Traffic Signal Control

12/29/2019
by   Gurcan Comert, et al.
0

Traffic congestion at a signalized intersection greatly reduces the travel time reliability in urban areas. Adaptive signal control system (ASCS) is the most advanced traffic signal technology that regulates the signal phasing and timings considering the patterns in real-time in order to reduce congestion. Real-time prediction of queue lengths can be used to adjust the phasing and timings for different movements at an intersection with ASCS. The accuracy of the prediction varies based on the factors, such as the stochastic nature of the vehicle arrival rates, time of the day, weather and driver characteristics. In addition, accurate prediction for multilane, undersaturated and saturated traffic scenarios is challenging. Thus, the objective of this study is to develop queue length prediction models for signalized intersections that can be leveraged by ASCS using four variations of Grey systems: (i) the first order single variable Grey model (GM(1,1)); (ii) GM(1,1) with Fourier error corrections; (iii) the Grey Verhulst model (GVM), and (iv) GVM with Fourier error corrections. The efficacy of the GM is that they facilitate fast processing; as these models do not require a large amount of data; as would be needed in artificial intelligence models; and they are able to adapt to stochastic changes, unlike statistical models. We have conducted a case study using queue length data from five intersections with ASCS on a calibrated roadway network in Lexington, South Carolina. GM were compared with linear, nonlinear time series models, and long short-term memory (LSTM) neural network. Based on our analyses, we found that EGVM reduces the prediction error over closest competing models (i.e., LSTM and time series models) in predicting average and maximum queue lengths by 40 Root Mean Squared Error, and 51 Absolute Error.

READ FULL TEXT
research
11/18/2020

Improved Grey System Models for Predicting Traffic Parameters

In transportation applications such as real-time route guidance, ramp me...
research
08/10/2020

Predicting Coordinated Actuated Traffic Signal Change Times using LSTM Neural Networks

Vehicle acceleration and deceleration maneuvers at traffic signals resul...
research
07/19/2014

Context Aware Dynamic Traffic Signal Optimization

Conventional urban traffic control systems have been based on historical...
research
12/06/2017

Short-Term Prediction of Signal Cycle in Actuated-Controlled Corridor Using Sparse Time Series Models

Traffic signals as part of intelligent transportation systems can play a...
research
08/19/2021

An Innovative Attack Modelling and Attack Detection Approach for a Waiting Time-based Adaptive Traffic Signal Controller

An adaptive traffic signal controller (ATSC) combined with a connected v...
research
11/18/2020

Cycle-to-Cycle Queue Length Estimation from Connected Vehicles with Filtering on Primary Parameters

Estimation models from connected vehicles often assume low level paramet...
research
01/16/2020

Analysis of Queue Length Prediction from Probe Vehicles Problem with Bunch Arrival Headways

This paper discusses the real-time prediction of queue lengths from prob...

Please sign up or login with your details

Forgot password? Click here to reset