Category
Data type
Tag
Region
Less is more: Lightweight reinforcement learning method for traffic signal control with less observation
Data and code for "Less is more: Lightweight reinforcement learning method for traffic signal control with less observation"

Electric Vehicle Trip Energy Consumption Data
The data consists of normal driving records for dozens of private cars over several months (from June 5, 2015 to June 30, 2016), with a sampling frequency of one minute. The basic specifications of the vehicles are as follows: Roewe E50 is a pure electric vehicle, weighing 1080 kilograms. It is equipped with a 22.4 kWh battery pack, and is reported to have a driving range of 170 kilometers. The raw data has been preprocessed and denoised, resulting in a final dataset containing 10,000 trips. This dataset offers substantial potential for reuse in research and analysis focused on electric vehicle energy consumption. Researchers, engineers, and policy makers can leverage this data to understand patterns, develop optimization algorithms, and inform energy-efficient practices. The dataset adheres to all applicable legal requirements. All sensitive information has been removed, and the data has been preprocessed to ensure confidentiality. There are no known legal or ethical obstacles to its use.

Codes and simulation results for evaluation of platooning configurations
The package includes the codes (Codes.rar) and simulation results (simulation results.rar) related to the manuscript 'Evaluation of platooning configurations for connected and automated vehicles at an isolated roundabout in a mixed traffic environment'. Main codes are written in Python and Matlab, and the simulation results are stored in ‘.xlsx’ format.

Training and Application Code of the MDP Driving Policy in Highway
The dataset comes from the paper "Markov probabilistic decision making of self-driving cars in a highway with random traffic flow: a simulation study" and mainly consists of three parts:
1. The "policy_training" folder, which includes the code used for training driving strategies in the highway scenario mentioned in the paper. The main function is "main_v3.cpp," and the functionality is implemented in the file "f_define_v3.cpp." Additionally, "to_strategy.m" exports the trained strategy as a state-action table for application, and "FIGURE.me" visualizes this table.
2. The "policy_application" folder contains "test.py" as the main file, which uses "MdpModel.py" to call the state-action table from the "Strategy" folder and visualizes it through "MdpModel.py." The "Map" and "Vehicle" folders store visualization elements.
3. The third part is a video of the visualization results named "simulation_demo.avi."

Vehicle and charging scheduling of electric bus fleets: a comprehensive review
Purpose — Transit electrification has emerged as an unstoppable force, driven by the considerable environmental benefits if offers. Nevertheless, the adoption of battery electric bus is still impeded by its limited flexibility. The constraint necessitates adjustments to current bus scheduling plans. To this end, this paper aspires to offer a thorough review of articles focused on battery electric bus scheduling.
Design/methodology/approach — We provide a comprehensive review of 42 papers on electric bus scheduling and related studies, with a focus on the most recent developments and trends in this research domain.

Replication Package for Multivariate Modeling of Autonomous Vehicle Interests
This is a publicly released replication package containing data and analysis scripts from the research study titled 'Private or on-demand autonomous vehicles? Modeling public interest using a multivariate model.' The package includes the 2019 California Vehicle Survey data and R scripts used to clean and analyze the data. The study identifies the key factors influencing public interest in different forms of autonomous vehicles and their implications for future transportation policies.

USA GA400 dataset-vehicles speeds and densities
The GA400 dataset includes a total of 47,815 observations of speeds and densities from 76 stations and was collected on the Georgia State Route 400 in 2003. The original data is aggregated every 5 minutes. Column 1 is density(veh/km) and Column 2 is speed(km/h).

Formulation and Solution for Calibrating Boundedly Rational Activity-Travel Assignment: An Exploratory Study
1. The SF and EMA transportation network data comes from http://www.bgu.ac.il/~bargera/tntp/.
2. The codes are run by MATLAB.
3. Operation guidance can be found in the corresponding document.

Lane changing and congestion are mutually reinforcing?
1. The data and codes involved in the paper are included here, including the selected original raw data and freeway data.
2. The Python code includes data cleaning and preprocessing code, as well as the code to achieve all the main results in the paper.
3. Data format: .csv
4. Code running environment: Python Jupyter

Impacts to Maritime Shipping from Marine Chokepoint Closures
This replication package contains links to the primary datasets used in Pratson, L.F., Assessing impacts to maritime shipping from marine chokepoint closures, Communications in Transportation Research. It also contains the secondary data sets generated from the primary datasets and the MATLAB code developed to create the secondary data sets. The primary datasets are the ORNL 2000 Global Shipping Lane Network GIS shapefile, and HS92_202102 version of CEPII's 2019 BACI Trade Flow data. The secondary datasets consist of three Excel files: (1) MarineChokepointBlockagePaperShipLaneNetworkNodeEdgeTable.xlsx, (2) MarineChokepointBlockagePaperChokepointScenarioTables.xlsx, and (3) MarineChokepointBlockagePaperMasterTradeAndChokepointTables.xlsx. The code used to produce these consists of eleven MATLAB scripts. See included replication explanatory file for further details.

Battery electric buses charging schedule optimization considering time-of-use electricity price
This dataset is the replication package of the paper entitled "Battery electric buses charging schedule optimization considering time-of-use electricity price" in the Journal of Intelligent and Connected Vehicles. The dataset includes the inputs of the MILP model and the corresponding code of the numerical test.

Trip energy consumption estimation for battery electric buses: a regression method
This dataset is the replication package of the paper entitled "Trip energy consumption estimation for battery electric buses: a regression method" in Communications in Transportation Research. The dataset includes the partial data of electric bus operation at trip level.

Transport Network Downsizing based on Optimal Sub-network
Data and code for replicating the results and figures in the article

Assessment of the variability in total cost of vehicle ownership across vehicle and user profiles
This is the replication package for the paper entitled "Informing environmental policy design through an assessment of the variability in total cost of vehicle ownership across vehicle and user profiles" in Communications in Transportation Research.

Replication package explanatory file for "Replacing urban trucks via ground-air cooperation"
The data used in this work is accessible through order in the space geodetic coordinate system.xls (coordinates of 200 orders in the space geodetic coordinate system) and 1kmzone_wsg_xy.csv (the latitude, longitude, and geodetic coordinates of the center of each 1km * 1km area).
For each business mode, a python file is provided individually. For instance, mode1_truck_trailer.py is for mode 1, mode2_truck_drone.py is for mode 2 and mode3_drone_socialvehicle.py is for mode 3. The time, cost and energy consumption can be derived directly from these files.

A topology-based bounded rationality day-to-day traffic assignment model
The MATLAB code is the implementation of the model presented in the article 'A topology-based bounded rationality day-to-day traffic assignment model. The software allows to represent the evolution of the road network state when subjected to a disruptive event and is composed of 3 fundamental elements.
-The main_Equilibrium.m function implements the Frank-Wolf algorithm for the computation of the User Equilibrium. This makes it possible to know the traffic flow patterns on the original network.
-The Disruption.m and ShockAssignment.m functions take care of constructing the new network following the disruption and routing the flows directly affected by the network topology changes.
-The function DTD_TrafficAssignment.m implements the proportional switch traffic assignment model presented in the aforementioned article. For each period, at each iteration, the amount of flows moving from more expensive paths to less expensive paths is calculated.

Replication package: Investigating the effects of gradual deployment of market penetration rates (MPR) of connected vehicles on delay time and fuel consumption
This replication package provides the necessary data and codes for replicating the main results in our paper submitted to Journal of Intelligent and Connected Vehicles, entitled "Investigating the effects of gradual deployment of market penetration".

Calibration and validation of matching functions for ride-sourcing markets
Replication package for the paper entitled "Calibration and validation of matching functions for ride-sourcing markets" in Communications in Transportation Engineering

Vehicle trajectory dataset in Guangzhou
This is a vehicle trajectory dataset from on-borad device. The data collect the corrdinates of vehicles at the frequency of every 10 seconds. The data can be used upon permissions from the uploader.

Automation and connectivity of electric vehicles: Energy boon or bane?
This is the replication package for the paper entitled 'Automation and connectivity of electric vehicles: Energy boon or bane?'
