作者
Rongye Shi, Zhaobin Mo, Kuang Huang, Xuan Di, Qiang Du
发表日期
2022/8/9
期刊
IEEE Transactions on Intelligent Transportation Systems
卷号
23
期号
8
页码范围
11688-11698
出版商
IEEE
简介
Traffic state estimation (TSE) bifurcates into two main categories, model-driven and data-driven (e.g., machine learning, ML) approaches, while each suffers from either deficient physics or small data. To mitigate these limitations, recent studies introduced hybrid methods, such as physics-informed deep learning (PIDL), which contains both model-driven and data-driven components. This paper contributes an improved paradigm, called physics-informed deep learning with a fundamental diagram learner (PIDL + FDL), which integrates ML terms into the model-driven component to learn a functional form of a fundamental diagram (FD), i.e., a mapping from traffic density to flow or velocity. The proposed PIDL + FDL has the advantages of performing the TSE learning, model parameter identification, and FD estimation simultaneously. This paper focuses on highway TSE with observed data from loop detectors, using …
引用总数
学术搜索中的文章
R Shi, Z Mo, K Huang, X Di, Q Du - IEEE Transactions on Intelligent Transportation …, 2021