Quantum annealing for industry applications: Introduction and review

S Yarkoni, E Raponi, T Bäck… - Reports on Progress in …, 2022 - iopscience.iop.org
Quantum annealing (QA) is a heuristic quantum optimization algorithm that can be used to
solve combinatorial optimization problems. In recent years, advances in quantum …

Short‐term traffic forecasting: Overview of objectives and methods

EI Vlahogianni, JC Golias, MG Karlaftis - Transport reviews, 2004 - Taylor & Francis
In the last two decades, the growing need for short‐term prediction of traffic parameters
embedded in a real‐time intelligent transportation systems environment has led to the …

Online-SVR for short-term traffic flow prediction under typical and atypical traffic conditions

M Castro-Neto, YS Jeong, MK Jeong, LD Han - Expert systems with …, 2009 - Elsevier
Most literature on short-term traffic flow forecasting focused mainly on normal, or non-
incident, conditions and, hence, limited their applicability when traffic flow forecasting is most …

Optimized and meta-optimized neural networks for short-term traffic flow prediction: A genetic approach

EI Vlahogianni, MG Karlaftis, JC Golias - Transportation Research Part C …, 2005 - Elsevier
Short-term forecasting of traffic parameters such as flow and occupancy is an essential
element of modern Intelligent Transportation Systems research and practice. Although many …

Traffic flow optimization: A reinforcement learning approach

E Walraven, MTJ Spaan, B Bakker - Engineering Applications of Artificial …, 2016 - Elsevier
Traffic congestion causes important problems such as delays, increased fuel consumption
and additional pollution. In this paper we propose a new method to optimize traffic flow …

Short-term forecasting of high-speed rail demand: A hybrid approach combining ensemble empirical mode decomposition and gray support vector machine with real …

X Jiang, L Zhang, XM Chen - Transportation Research Part C: Emerging …, 2014 - Elsevier
Short-term forecasting of high-speed rail (HSR) passenger flow provides daily ridership
estimates that account for day-to-day demand variations in the near future (eg, next week …

Short-term freeway traffic volume forecasting using radial basis function neural network

B Park, CJ Messer, T Urbanik - Transportation Research …, 1998 - journals.sagepub.com
A radial basis function (RBF) neural network has recently been applied to time-series
forecasting. The test results of an RBF neural network in forecasting short-term freeway …

Reinforcement learning approach for coordinated passenger inflow control of urban rail transit in peak hours

Z Jiang, W Fan, W Liu, B Zhu, J Gu - Transportation Research Part C …, 2018 - Elsevier
In peak hours, when the limited transportation capacity of urban rail transit is not adequate
enough to meet the travel demands, the density of the passengers waiting at the platform …

Adaptive hybrid fuzzy rule-based system approach for modeling and predicting urban traffic flow

L Dimitriou, T Tsekeris, A Stathopoulos - Transportation Research Part C …, 2008 - Elsevier
This paper presents an adaptive hybrid fuzzy rule-based system (FRBS) approach for the
modeling and short-term forecasting of traffic flow in urban arterial networks. Such an …

Spatio‐temporal short‐term urban traffic volume forecasting using genetically optimized modular networks

EI Vlahogianni, MG Karlaftis… - Computer‐Aided Civil …, 2007 - Wiley Online Library
Current interest in short‐term traffic volume forecasting focuses on incorporating temporal
and spatial volume characteristics in the forecasting process. This article addresses the …