A probabilistic model for missing traffic volume reconstruction based on data fusion

05/06/2021
by   Xintao Yan, et al.
0

Traffic volume information is critical for intelligent transportation systems. It serves as a key input to transportation planning, roadway design, and traffic signal control. However, the traffic volume data collected by fixed-location sensors, such as loop detectors, often suffer from the missing data problem and low coverage problem. The missing data problem could be caused by hardware malfunction. The low coverage problem is due to the limited coverage of fixed-location sensors in the transportation network, which restrains our understanding of the traffic at the network level. To tackle these problems, we propose a probabilistic model for traffic volume reconstruction by fusing fixed-location sensor data and probe vehicle data. We apply the probabilistic principal component analysis (PPCA) to capture the correlations in traffic volume data. An innovative contribution of this work is that we also integrate probe vehicle data into the framework, which allows the model to solve both of the above-mentioned two problems. Using a real-world traffic volume dataset, we show that the proposed method outperforms state-of-the-art methods for the extensively studied missing data problem. Moreover, for the low coverage problem, which cannot be handled by most existing methods, the proposed model can also achieve high accuracy. The experiments also show that even when the missing ratio reaches 80 proposed method can still give an accurate estimate of the unknown traffic volumes with only a 10 the effectiveness and robustness of the proposed model and demonstrate its potential for practical applications.

READ FULL TEXT

page 11

page 13

page 17

research
11/18/2020

Traffic Network Partitioning for Hierarchical Macroscopic Fundamental Diagram Applications Based on Fusion of GPS Probe and Loop Detector Data

Most network partitioning methods for Macroscopic Fundamental Diagram ar...
research
08/07/2023

A Causal Inference Approach to Eliminate the Impacts of Interfering Factors on Traffic Performance Evaluation

Before and after study frameworks are widely adopted to evaluate the eff...
research
01/20/2023

A Big-Data Driven Framework to Estimating Vehicle Volume based on Mobile Device Location Data

Vehicle volume serves as a critical metric and the fundamental basis for...
research
04/23/2014

Bayesian Reconstruction of Missing Observations

We focus on an interpolation method referred to Bayesian reconstruction ...
research
11/02/2017

Estimating Historical Hourly Traffic Volumes via Machine Learning and Vehicle Probe Data: A Maryland Case Study

This paper focuses on the problem of estimating historical traffic volum...

Please sign up or login with your details

Forgot password? Click here to reset