Illinois Data Bank Dataset Search Results
Results
published:
2021-09-06
Airglow images and Meteor radar data used in the paper "Mesospheric gravity wave activity estimated via airglow imagery, multistatic meteor radar, and SABER data taken during the SIMONe–2018 campaign".
keywords:
airglow; meteor radar; gravity waves; momentum flux;
published:
2025-07-11
Zhixin, Zhang; Jinho, Lim; Haoyang, Ni; Jian-Min, Zuo; Axel, Hoffmann
(2025)
This dataset includes experimental data supporting the findings in the manuscript "Magnetostriction and Temperature Dependent Gilbert Damping in Boron Doped Fe80Ga20 Thin Films". It contains raw data for X-Ray diffraction, high resolution transmission electron microscopy, magnetic hysteresis loop measurement, magnetostriction measurement, and temperature dependent magnetic damping measurement.
keywords:
magnetostriction; magnetic damping; magnetoelasticity; magnon-phonon coupling
published:
2025-03-12
Jeong, Gangwon; Villa, Umberto; Park, Seonyeong; Anastasio, Mark A.
(2025)
References
- Jeong, Gangwon, Umberto Villa, and Mark A. Anastasio. "Revisiting the joint estimation of initial pressure and speed-of-sound distributions in photoacoustic computed tomography with consideration of canonical object constraints." Photoacoustics (2025): 100700.
- Park, Seonyeong, et al. "Stochastic three-dimensional numerical phantoms to enable computational studies in quantitative optoacoustic computed tomography of breast cancer." Journal of biomedical optics 28.6 (2023): 066002-066002.
Overview
- This dataset includes 80 two-dimensional slices extracted from 3D numerical breast phantoms (NBPs) for photoacoustic computed tomography (PACT) studies. The anatomical structures of these NBPs were obtained using tools from the Virtual Imaging Clinical Trial for Regulatory Evaluation (VICTRE) project. The methods used to modify and extend the VICTRE NBPs for use in PACT studies are described in the publication cited above.
- The NBPs in this dataset represent the following four ACR BI-RADS breast composition categories:
> Type A - The breast is almost entirely fatty
> Type B - There are scattered areas of fibroglandular density in the breast
> Type C - The breast is heterogeneously dense
> Type D - The breast is extremely dense
- Each 2D slice is taken from a different 3D NBP, ensuring that no more than one slice comes from any single phantom.
File Name Format
- Each data file is stored as a .mat file. The filenames follow this format: {type}{subject_id}.mat where{type} indicates the breast type (A, B, C, or D), and {subject_id} is a unique identifier assigned to each sample. For example, in the filename D510022534.mat, "D" represents the breast type, and "510022534" is the sample ID.
File Contents
- Each file contains the following variables:
> "type": Breast type
> "p0": Initial pressure distribution [Pa]
> "sos": Speed-of-sound map [mm/μs]
> "att": Acoustic attenuation (power-law prefactor) map [dB/ MHzʸ mm]
> "y": power-law exponent
> "pressure_lossless": Simulated noiseless pressure data obtained by numerically solving the first-order acoustic wave equation using the k-space pseudospectral method, under the assumption of a lossless medium (corresponding to Studies I, II, and III).
> "pressure_lossy": Simulated noiseless pressure data obtained by numerically solving the first-order acoustic wave equation using the k-space pseudospectral method, incorporating a power-law acoustic absorption model to account for medium losses (corresponding to Study IV).
* The pressure data were simulated using a ring-array transducer that consists of 512 receiving elements uniformly distributed along a ring with a radius of 72 mm.
* Note: These pressure data are noiseless simulations. In Studies II–IV of the referenced paper, additive Gaussian i.i.d. noise were added to the measurement data. Users may add similar noise to the provided data as needed for their own studies.
- In Study I, all spatial maps (e.g., sos) have dimensions of 512 × 512 pixels, with a pixel size of 0.32 mm × 0.32 mm.
- In Study II and Study III, all spatial maps (sos) have dimensions of 1024 × 1024 pixels, with a pixel size of 0.16 mm × 0.16 mm.
- In Study IV, both the sos and att maps have dimensions of 1024 × 1024 pixels, with a pixel size of 0.16 mm × 0.16 mm.
keywords:
Medical imaging; Photoacoustic computed tomography; Numerical phantom; Joint reconstruction
published:
2021-11-23
Riemer, Nicole; Yao, Yu; Dawson, Matthew; Dabdub, Donald
(2021)
This dataset contains simulation results from PartMC-MOSAIC-CAPRAM used in the article ”Eval- uating the impacts of cloud processing on resuspended aerosol particles after cloud evaporation using a particle-resolved model”.
In this V2, there are eight folders: one for urban plume simulation to provide the initial particle population for cloud processing, the other four folders are for the four cloud cycles simulated and the last two are for the coagulation cases. Within the urban plume simulation, there are 25 NetCDF files hourly output from PartMC-MOSAIC simulations containing the gas and particle information. Within the four cloud cycle folders, there are 25 subdirectories that contain the cloud processing results for aerosol population from urban plume environment. For each subdirectory, there are 31 NetCDF files out- put every minute from PartMC-MOSAIC-CAPRAM simulations containing aerosol and gas information after aqueous chemistry. Another two folders are for the cases considering Brownian coagulation and sedimentation coalescence. Each contained 93 NetCDF files, produced from repeating the 30-minutes simulations for three times to consider the coagulation randomness. The low polluted case folder includes the simulated cloud processing results for 25 urban plume cases with less aerosol number concentration. This dataset was used to investigate the effects of cloud processing on aerosol mixing state and CCN properties.
keywords:
cloud process; coagulation; aqueous chemistry; aerosol mixing state; CCN
published:
2023-03-27
Littlefield, Alexander; Xie, Dajie; Richards, Corey; Ocier, Christian; Gao, Haibo; Messinger, Jonah; Ju, Lawrence; Gao, Jingxing; Edwards, Lonna; Braun, Paul; Goddard, Lynford
(2023)
This dataset contains the full data used in the paper titled "Enabling High Precision Gradient Index Control in Subsurface Multiphoton Lithography," available at https://doi.org/10.1021/acsphotonics.2c01950 .
The data used for Table 1 can be found in the dataset for the related Figure 8.
Some supplemental figures' data can be found in the main figures data:
Figure S2's data is contained in Figure 6.
Figure S4 and Table S1 data is derived from Figure 6.
Figure S9 is derived from Figure 7.
Figure S10 is contained in Figure 7.
Figure S12 is derived from Figure 6 and the Python code prism-fringe-analysis.
Figures without a data file named after them do not have any data affiliated with them and are purely graphical representations.
published:
2021-02-18
Wang, Shaowen; Lyu, Fangzheng; Wang, Shaohua; Catlet, Charles; Padmanabhan, Anand; Soltani, Kiumars
(2021)
Increasingly pervasive location-aware sensors interconnected with rapidly advancing wireless network services are motivating the development of near-real-time urban analytics. This development has revealed both tremendous challenges and opportunities for scientific innovation and discovery. However, state-of-the-art urban discovery and innovation are not well equipped to resolve the challenges of such analytics, which in turn limits new research questions from being asked and answered. Specifically, commonly used urban analytics capabilities are typically designed to handle, process, and analyze static datasets that can be treated as map layers and are consequently ill-equipped in (a) resolving the volume and velocity of urban big data; (b) meeting the computing requirements for processing, analyzing, and visualizing these datasets; and (c) providing concurrent online access to such analytics. To tackle these challenges, we have developed a novel cyberGIS framework that includes computationally reproducible approaches to streaming urban analytics. This framework is based on CyberGIS-Jupyter, through integration of cyberGIS and real-time urban sensing, for achieving capabilities that have previously been unavailable toward helping cities solve challenging urban informatics problems.
The files included in this dataset functions as follows:
1) Spatial_interpolation.ipynb is a python based Jupyter notebook that enables users to conduct spatial interpolation with AoT data;
2) Urban_Informatics.ipynb is a Jupyter notebook that helps to explore the AoT dataset;
3) chicago-complete.weekly.2019-09-30-to-2019-10-06.tar includes all the high-frequency urban sensing data from AoT sensors from 2019 September 30th to 2019 October 6th collected in Chicago, US;
4) sensors.csv is a processed dataset including information about the temperature in Chicago, and it is used in Spatial_interpolation.ipynb.
keywords:
CyberGIS; Urban informatics; Array of Things
published:
2019-05-20
Lao, Yuyang; Schiffer, Peter
(2019)
This is the experimental data of tetris artificial spin ice. The islands are made of Permalloy materials with size of 170 nm by 470 nm by 2.5 nm. The systems are measured at a temperature where the islands are fluctuating around room temperature. The data is recorded as photoemission electron microscopy intensity. More details about the dataset can be found in the file Note.txt and Tetris_data_list.xlsx
Note:
2 files name bl11_teris600_033 and bl11_tetris600_2_135 are not recorded in the excel sheet because they are corrupted during the measurement. Any data that is not recorded in the excel sheet is either corrupted or of low quality.
From files *_028 to *_049, tetris is spelled with “t” while in the raw data folder without “t”. This is a typo. Throughout the dataset, tetris and teris are supposed to have the same meaning.
keywords:
artificial spin ice
published:
2020-01-20
Zhang, Jun; Wuebbles, Donald; Kinnison, Douglas; Saiz López, Alfonso
(2020)
This datasets provide basis of our analysis in the paper - Revising the Ozone Depletion Potentials for Short-Lived Chemicals such as CF3I and CH3I. All datasets here are from the model output (CAM4-chem). All the simulations (background and perturbation) were run to steady-state and only the last year outputs used in analysis are archived here.
keywords:
Illinois Data Bank; NetCDF; Ozone Depletion Potential; CF3I and CH3I
published:
2025-01-26
Liu, Shanshan; Vlachokostas, Alex; Kontou, Eleftheria
(2025)
Data and code supporting the paper titled "Leveraging electric vehicles as a resiliency solution for residential backup power during outages" by Shanshan Liu, Alex Vlachokostas, and Eleftheria Kontou. The data and the code enable spatiotemporal analytics and assessment of electric vehicle charging demand, remaining driving range, residential energy use, and vehicle-to-home (V2H) energy system resilience metrics.
keywords:
Electric vehicles; Power outages; Vehicle-to-home energy system; Residential loads; Bidirectional energy exchange
published:
2021-06-17
Dominguez, Francina; Yang, Zhao
(2021)
Model output dataset (6-hourly) from the Weather Research and Forecasting (WRF) model simulations over South America with the added capability of water vapor tracers to track the moisture that originates over the Amazon and the La Plata river basins. The simulations were performed for the period 2003-2013 at 20-km horizontal resolution fully coupled with the Noah-MP land surface model. Limited number of original output variables sufficient for reproducing the analyses in papers that cite this dataset are included here. The attached wrfout_southamerica_readme.txt contains detailed information about the file format and variables. For the complete model dataset, contact francina@illinois.edu.
keywords:
WRF; Amazon; La Plata; South America; Numerical tracers
published:
2024-10-12
Langeslay, Blake; Juarez, Gabriel
(2024)
Simulation data used to generate plots in the associated paper ("Strain rate controls alignment in growing bacterial monolayers").
published:
2017-08-11
Schiffer, Peter; Le, Brian L.
(2017)
Enclosed in this dataset are transport data of kagome connected artificial spin ice networks composed of permalloy nanowires. The data herein are reproductions of the data seen in Appendix B of the dissertation titled "Magnetotransport of Connected Artificial Spin Ice". Field sweeps with the magnetic field applied in-plane were performed in 5 degree increments for armchair orientation kagome artificial spin ice and zigzag orientation kagome artificial spin ice.
keywords:
Magnetotransport; artificial spin ice; nanowires
published:
2023-01-10
Ruess, Paul ; Konar, Megan ; Wanders, Niko; Bierkens, Marc
(2023)
Agriculture is the largest user of water in the United States. Yet, we do not understand the spatially resolved sources of irrigation water use by crop. The goal of this study is to estimate crop-specific irrigation water use from surface water withdrawals, total groundwater withdrawals, and nonrenewable groundwater depletion for the Continental United States. Water use by source is provided for 20 crops and crop groups from 2008 to 2020 at the county spatial resolution.
These results present the first national-scale assessment of irrigation by crop, county, water source, and year. In total, there are nearly 2.5 million data points in this dataset (3,142 counties; 13 years; 3 water sources; and 20 crops). This dataset supports the paper by Ruess et al (2023) in Water Resources Research, https://doi.org/10.1029/2022WR032804.
When using, please cite as:
Ruess, P.J., Konar, M., Wanders, N. , & Bierkens, M. (2023). Irrigation by crop in the Continental United States from 2008 to 2020, Water Resources Research, 59, e2022WR032804. https://doi.org/10.1029/2022WR032804
keywords:
Water use; irrigation; surface water; groundwater; groundwater depletion; counties; crops; time series
published:
2025-07-14
Hossain, Mohammad Tanver; Piorkowski, Dakota; Lowe, Andrew; Eom, Wonsik; Shetty, Abhishek; Tawfick, Sameh; Fudge, Douglas; Ewoldt, Randy
(2025)
Data accompanying the article "Physics of Unraveling and Micromechanics of Hagfish Threads".
Abstract of the article:
Hagfish slime is a unique biological material composed of mucus and protein threads that rapidly deploy into a cohesive network when deployed in seawater. The forces involved in thread deployment and interactions among mucus and threads are key to understanding how hagfish slime rapidly assembles into a cohesive, functional network. Despite extensive interest in its biophysical properties, the mechanical forces governing thread deployment and interaction remain poorly quantified. Here, we present the first direct in situ measurements of the micromechanical forces involved in hagfish slime formation, including mucus mechanical properties, skein peeling force, thread–mucus adhesion, and thread–thread cohesion. Using a custom glass-rod force sensing system, we show that thread deployment initiates when peeling forces exceed a threshold of approximately 6.8 nN. To understand the flow strength required for unraveling, we used a rheo-optic setup to impose controlled shear flow, enabling us to directly observe unraveling dynamics and determine the critical shear rate for unraveling of the skeins, which we then interpreted using an updated peeling-based force balance model. Our results reveal that thread–mucus adhesion dominates over thread–thread adhesion and that deployed threads contribute minimally to bulk shear rheology at constant flow rate. These findings clarify the physics underlying the rapid, flow-triggered assembly of hagfish slime and inform future designs of synthetic deployable fiber–gel systems.
keywords:
supplementary data; hagfish slime; unraveling skeins
published:
2022-03-20
Lee, Sangjun; Huang, Edwin W.; Johnson, Thomas A.; Guo, Xuefei; Husain, Ali A.; Mitrano, Matteo; Lu, Kannan; Zakrzewski, Alexander V.; de la Pena, Gilberto A.; Peng, Yingying; Huang, Hai; Lee, Sang-Jun; Jang, Hoyoung; Lee, Jun-Sik; Joe, Young Il; Doriese, William B.; Szypryt, Paul; Swetz, Daniel S.; Chi, Songxue; Aczel, Adam A.; MacDougall, Gregory J.; Kivelson, Steven A. ; Fradkin, Eduardo; Abbamonte, Peter
(2022)
Data for "Generic character of charge and spin density waves in superconducting cuprates".
- Neutron scattering data for SDW
- RSXS scans of CDW of LESCO x=0.10, 0.125, 0.15, 0.17, 0.20 at various temperatures.
- Temperature dependence of CDW peak intensity, correlation length, Qcdw (Lorentzian fit, S(q,T) fit, Landau-Ginzburg fit)
- XAS data of LESCO x=0.10, 0.125, 0.15, 0.17, 0.20
published:
2019-06-11
Wang, Wenrui; Wang, Tao; Amin, Vivek P.; Wang, Yang; Radhakrishnan, Anil; Davidson, Angie; Allen, Shane R.; Silva, T. J.; Ohldag, Hendrik; Balzar, Davor; Zink, Barry L.; Haney, Paul M.; Xiao, John Q.; Cahill, David G.; Lorenz, Virginia O.; Fan, Xin
(2019)
This dataset provides the raw data, code and related figures for the paper, "Anomalous Spin-Orbit Torques in Magnetic Single-Layer Films."
keywords:
spintronics; spin-orbit torques; magnetic materials
published:
2024-05-23
Xing, Yuqing; Bae, Seokjin; Ritz, Ethan; Yang, Fan; Birol, Turan; Salinas , Andrea N. Capa ; Ortiz, Brenden R.; Wilson , Stephen D.; Wang, Ziqiang; Fernandes, Rafael M.; Madhavan, Vidya
(2024)
This dataset consists of all the figure files that are part of the main text and supplementary of the manuscript titled "Optical manipulation of the charge density wave state in RbV3Sb5". For detailed information on the individual files refer to the readme file.
keywords:
kagome superconductor; optics; charge density wave
published:
2018-05-16
Lewis, Quinn; Bruce, Rhoads
(2018)
These data are for two companion papers on use of LSPIV obtained from UAS (i.e. drones) to measure flow structure in streams. The LSPIV1 folder contains spreadsheet data used in each case referred to in Table 1 in the manuscript. In the spreadsheets, there is a cell that denotes which figure was constructed with which data. The LSPIV2 folder contains spreadsheets with data used for the constructed figures, and are labeled by figure.
keywords:
LSPIV; drone; UAS; flow structure; rivers
published:
2023-08-24
Kim, Hyunchul; Zhao, Helin; van der Zande, Arend
(2023)
This data set includes all of data related to strain-resilient FETs based on 2D heterostructures including optical images of FETs, Raman characteristics data, Transport measurement data, and AFM topography data.
keywords:
2D materials; Stretchable electronics
published:
2016-12-18
Zhang, Qian; Li, Chunyan
(2016)
This dataset is the numerical simulation data of the computational study of the cold front-related hydrodynamics in the Wax Lake delta. The numerical model used is ECOM-si.
keywords:
Wax Lake delta; Hydrodynamics; Cold front
published:
2018-12-13
Xu, Zewei; Wang, Shaowen
(2018)
A 3D CNN method to land cover classification using LiDAR and multitemporal imagery
keywords:
3DCNN; land cover classification; LiDAR; multitemporal imagery
published:
2017-12-12
Zhang, Qian; Li, Chunyan
(2017)
This dataset includes both meteorology and oceanography data collected at stations (CSI03, CSI06, and CSI09) near the Gulf of Mexico from the LSU WAVCIS (Waves-Current-Surge Information System) lab. The associated data analysis visualization is also saved in separate directories.
keywords:
WAVCIS; Gulf of Mexico; Meteorology; Oceanography
published:
2016-12-12
Zhang, Qian; Li, Chunyan
(2016)
This dataset is the field measurements of water depth at the Wax Lake delta conducted in late 2012.
keywords:
Wax Lake delta; Bathymetry
published:
2016-12-12
Zhang, Qian; Li, Chunyan
(2016)
This dataset is the field measurements of currents at two stations (Big Hogs Bayou and Delta1) in the the Wax Lake delta in November 2012 and February 2013.
keywords:
Wax Lake delta; Currents
published:
2016-12-12
This dataset includes data of the the Wax Lake delta from four public agencies: NGDC, USGS, NDBC, and NOAA CO-OPS. Besides the original data, the processed data associated with analyzed figures are also shared.
keywords:
Wax Lake delta; NOAA CO-OPS; NGDC; USGS; NDBC