Illinois Data Bank Dataset Search Results
Results
published:
2020-06-06
Zaya, David N.; Leicht-Young, Stacey A.; Pavlovic, Noel B.; Ashley, Mary V.
(2020)
These data are from an observational study and small experiment investigating reproductive biology and hybridization between two plants, Celastrus scandens L. and Celastrus orbiculatus Thunb. (Celastraceae). These data were collected during the 2008 growing season from the Indiana Dunes National Park (formerly Indiana Dunes National Lakeshore), just east of the municipality of Ogden Dunes, Indiana, USA. The five data files provide information on floral output of the two species, fertilization rate, fruit set rate, hybridization rate at two scales (individual flowers in both species, individual maternal plants in C. scandens), and the results of a hand-pollination experiment that exchanged pollen between the two species.
There are six data files associated with this submission, five data files in comma-separated values format and one text file (‘readme.txt’) that includes detailed explanations of the data files.
keywords:
Celastrus; invasive species; hybridization; heterospecific pollen; hand pollination
published:
2019-07-26
Buckles, Brittany J; Harmon-Threatt, Alexandra
(2019)
Data used in paper published in the Journal of Applied Ecology titled " Bee diversity in tallgrass prairies affected by management and its effects on above- and below-ground resources"
Bee Community file contains info on bees sampled in each site. The first column contain the Tallgrass Prairie Sites sampled all additional columns contain the bee species name in the first row and all individuals recorded.
Plant Community file contains info on plants sampled in each site. The first column contain the Tallgrass Prairie Sites sampled all additional columns contain the plant species name in the first row and all individuals recorded.
Soil PC1 file contains the soil PC1 values used in the analyses. The first column contain the Tallgrass Prairie Sites sampled, the second column contains the calculated soil PC1 values.
keywords:
bee; community; tallgrass prairie; grazing
published:
2023-03-08
Majeed, Fahd; Khanna, Madhu
(2023)
A stochastic domination analysis model was developed to examine the effect that emerging carbon markets can have on the spatially varying returns and risk profiles of bioenergy crops relative to conventional crops. The code is written in MATLAB, and includes the calculated output.
See the README file for instructions to run the code.
keywords:
bioenergy crops; economic modeling; stochastic domination analysis model;
published:
2025-11-24
Mohebalhojeh, Matin; Frederick, Samuel; Riemer, Nicole; West, Matthew
(2025)
This dataset contains all the data and notebook files required to generate the figures presented in the manuscript “A metric for quantifying spatial heterogeneity in gridded atmospheric fields”, submitted to Earth and Space Science. The compressed folder Data.tar.gz contains the subdirectories "Emissions_data" and "Coagulation_simulation_data", which consist of netCDF files for EPA emissions and idealized coagulation simulation outputs, respectively. The compressed folder Notebooks contains three Python Jupyter notebooks used to generate the figures in Sections 3 and 4 of the manuscript, along with the necessary functions and classes.
keywords:
Spatial heterogeneity; Atmospheric Science; Aerosols
published:
2020-02-23
Ye, Di; Hill, Alison; Whitehorn (Fulton), Ashley; Schneider, Jodi
(2020)
Citation context annotation for papers citing retracted paper Matsuyama 2005 (RETRACTED: Matsuyama W, Mitsuyama H, Watanabe M, Oonakahara KI, Higashimoto I, Osame M, Arimura K. Effects of omega-3 polyunsaturated fatty acids on inflammatory markers in COPD. Chest. 2005 Dec 1;128(6):3817-27.), retracted in 2008 (Retraction in: Chest (2008) 134:4 (893) <a href="https://doi.org/10.1016/S0012-3692(08)60339-6">https://doi.org/10.1016/S0012-3692(08)60339-6<a/> ). This is part of the supplemental data for Jodi Schneider, Di Ye, Alison Hill, and Ashley Whitehorn. "Continued Citation of a Fraudulent Clinical Trial Report, Eleven Years after it was retracted for Falsifying Data" [R&R under review with Scientometrics].
Overall we found 148 citations to the retracted paper from 2006 to 2019, However, this dataset does not include the annotations described in the 2015. in Ashley Fulton, Alison Coates, Marie Williams, Peter Howe, and Alison Hill. "Persistent citation of the only published randomized controlled trial of omega-3 supplementation in chronic obstructive pulmonary disease six years after its retraction." Publications 3, no. 1 (2015): 17-26.
In this dataset 70 new and newly found citations are listed: 66 annotated citations and 4 pending citations (non-annotated since we don't have full-text).
"New citations" refer to articles published from March 25, 2014 to 2019, found in Google Scholar and Web of Science.
"Newly found citations" refer articles published 2006-2013, found in Google Scholar and Web of Science, but not previously covered in Ashley Fulton, Alison Coates, Marie Williams, Peter Howe, and Alison Hill. "Persistent citation of the only published randomised controlled trial of omega-3 supplementation in chronic obstructive pulmonary disease six years after its retraction." Publications 3, no. 1 (2015): 17-26.
NOTES:
This is Unicode data. Some publication titles & quotes are in non-Latin characters and they may contain commas, quotation marks, etc.
FILES/FILE FORMATS
Same data in two formats:
2006-2019-new-citation-contexts-to-Matsuyama.csv - Unicode CSV (preservation format only)
2006-2019-new-citation-contexts-to-Matsuyama.xlsx - Excel workbook (preferred format)
ROW EXPLANATIONS
70 rows of data - one citing publication per row
COLUMN HEADER EXPLANATIONS
Note - processing notes
Annotation pending - Y or blank
Year Published - publication year
ID - ID corresponding to the network analysis. See Ye, Di; Schneider, Jodi (2019): Network of First and Second-generation citations to Matsuyama 2005 from Google
Scholar and Web of Science. University of Illinois at Urbana-Champaign. <a href="https://doi.org/10.13012/B2IDB-1403534_V2">https://doi.org/10.13012/B2IDB-1403534_V2</a>
Title - item title (some have non-Latin characters, commas, etc.)
Official Translated Title - item title in English, as listed in the publication
Machine Translated Title - item title in English, translated by Google Scholar
Language - publication language
Type - publication type (e.g., bachelor's thesis, blog post, book chapter, clinical guidelines, Cochrane Review, consumer-oriented evidence summary, continuing education journal article, journal article, letter to the editor, magazine article, Master's thesis, patent, Ph.D. thesis, textbook chapter, training module)
Book title for book chapters - Only for a book chapter - the book title
University for theses - for bachelor's thesis, Master's thesis, Ph.D. thesis - the associated university
Pre/Post Retraction - "Pre" for 2006-2008 (means published before the October 2008 retraction notice or in the 2 months afterwards); "Post" for 2009-2019 (considered post-retraction for our analysis)
Identifier where relevant - ISBN, Patent ID, PMID (only for items we considered hard to find/identify, e.g. those without a DOI-based URL)
URL where available - URL, ideally a DOI-based URL
Reference number/style - reference
Only in bibliography - Y or blank
Acknowledged - If annotated, Y, Not relevant as retraction not published yet, or N (blank otherwise)
Positive / "Poor Research" (Negative) - P for positive, N for negative if annotated; blank otherwise
Human translated quotations - Y or blank; blank means Google scholar was used to translate quotations for Translated Quotation X
Specific/in passing (overall) - Specific if any of the 5 quotations are specific [aggregates Specific / In Passing (Quotation X)]
Quotation 1 - First quotation (or blank) (includes non-Latin characters in some cases)
Translated Quotation 1 - English translation of "Quotation 1" (or blank)
Specific / In Passing (Quotation 1) - Specific if "Quotation 1" refers to methods or results of the Matsuyama paper (or blank)
What is referenced from Matsuyama (Quotation 1) - Methods; Results; or Methods and Results - blank if "Quotation 1" not specific, no associated quotation, or not yet annotated
Quotation 2 - Second quotation (includes non-Latin characters in some cases)
Translated Quotation 2 - English translation of "Quotation 2"
Specific / In Passing (Quotation 2) - Specific if "Quotation 2" refers to methods or results of the Matsuyama paper (or blank)
What is referenced from Matsuyama (Quotation 2) - Methods; Results; or Methods and Results - blank if "Quotation 2" not specific, no associated quotation, or not yet annotated
Quotation 3 - Third quotation (includes non-Latin characters in some cases)
Translated Quotation 3 - English translation of "Quotation 3"
Specific / In Passing (Quotation 3) - Specific if "Quotation 3" refers to methods or results of the Matsuyama paper (or blank)
What is referenced from Matsuyama (Quotation 3) - Methods; Results; or Methods and Results - blank if "Quotation 3" not specific, no associated quotation, or not yet annotated
Quotation 4 - Fourth quotation (includes non-Latin characters in some cases)
Translated Quotation 4 - English translation of "Quotation 4"
Specific / In Passing (Quotation 4) - Specific if "Quotation 4" refers to methods or results of the Matsuyama paper (or blank)
What is referenced from Matsuyama (Quotation 4) - Methods; Results; or Methods and Results - blank if "Quotation 4" not specific, no associated quotation, or not yet annotated
Quotation 5 - Fifth quotation (includes non-Latin characters in some cases)
Translated Quotation 5 - English translation of "Quotation 5"
Specific / In Passing (Quotation 5) - Specific if "Quotation 5" refers to methods or results of the Matsuyama paper (or blank)
What is referenced from Matsuyama (Quotation 5) - Methods; Results; or Methods and Results - blank if "Quotation 5" not specific, no associated quotation, or not yet annotated
Further Notes - additional notes
keywords:
citation context annotation, retraction, diffusion of retraction
published:
2025-10-16
Yun, Danim; Zhang, Zhongyao; Flaherty, David W.
(2025)
Oxidative cleavage of alkenes and unsaturated fatty acids with hydrogen peroxide gives an efficient and sustainable process to obtain mono- and di-acids for polymers and lubricants with fewer safety risks and less environmental impact than processes that utilize ozone or other inorganic oxidizers (e.g., permanganate, dichromate, etc.). Guided by insight into the mechanisms for competing reaction pathways (i.e., epoxidation of alkene on W–(η2-O2) complexes vs. H2O2 decomposition) and the apparent kinetics derived from kinetic experiments, here, we postulate that W-based heterogeneous catalysts can provide high performance and stable operations at low H2O2 concentrations. Semi-batch reactors with continuous introduction of H2O2 solutions offer the means to maintain low H2O2 concentrations while providing sufficient quantities of H2O2 to satisfy the reaction stoichiometry. We derived simple kinetic model equations for the epoxidation, ring-opening, oxidative cleavage, and oxidation steps and fit theses equations to batch experimental data to obtain kinetic parameters. This kinetic model describes the concentration profiles of reactant, oxidant, and products well as shown by agreement with experimental data. Further predictions of the optimal H2O2 feed rate for semi-batch operation utilized by the proposed rate expressions and the reactor design equations suggest that low H2O2 feed rate increases selectivity towards oxidative cleavage products and selective use of H2O2 for oxidative cleavage pathway. Comparisons of oxidative cleavage of 4-octene in batch and semi-batch reactors show that semi-batch reactors with optimized molar feed rates of H2O2 increased oxidative cleavage product selectivities (76% to 99%; with an increase in butyric acid selectivity from 1% to 55%) and H2O2 selectivity (3% to 30%). In addition, semi-batch reaction conditions used avoid H2O2-mediated dissolution of W-atoms from the catalyst. Analysis of these findings suggest that solid oxide catalysts will be effective for continuous oxidative cleavage reactions if deployed within fixed-bed reactors that allow for distributed introduction of reactants and therefore low in situ concentrations of H2O2.
keywords:
Conversion;Catalysis
published:
2018-06-20
Lao, Yuyang; Caravelli, Francesco; Sheikh, Mohammed; Sklenar, Joseph; Gardeazabal, Daniel; Watts, Justin D. ; Albrecht, Alan M. ; Scholl, Andreas; Dahmen, Karin; Nisoli, Cristiano; Schiffer, Peter
(2018)
The dataset includes the data used in the study of Classical Topological Order in the Kinetics of Artificial Spin Ice. This includes the photoemission electron microscopy intensity measurement of artificial spin ice at different temperatures as a function of time. The data includes the raw data, the metadata, and the data cookbook. Please refer to the data cookbook for more information. Note: vertex_population.xlsx file in the meta_data_code folder can be disregarded.
keywords:
artificial spin ice; PEEM; topological order
published:
2024-08-11
Curtis, Jeffrey H.; Riemer, Nicole; West, Matthew
(2024)
This dataset contains all material required to produce the figures found within the manuscript submitted to Geoscientific Model Development entitled “Explicit stochastic advection algorithms for the regional scale particle-resolved atmospheric aerosol model WRF-PartMC (v1.0)”. The dataset consists of Python Jupyter notebooks and any applicable WRF-PartMC output. This dataset covers the three numerical examples of the manuscript, 1D advection by a uniform constant wind, a 2D rotational flow and a 3D time-evolving WRF simulated flow.
keywords:
Atmospheric chemistry; Atmospheric Science; Particle-resolved modeling; Numerical modeling; Advection;
published:
2022-11-28
Avrin, Alexandra; Pekins, Charles; Wilmers, Christopher; Sperry, Jinelle; Allen, Maximilian
(2022)
Detection data of carnivores and their prey species from camera traps in Fort Hood, Texas and Santa Cruz, California, USA. Non-carnivore and non-prey species (humans, domestic species, avian species, etc.) were excluded from this dataset. All detections of each species at a camera within 30 minutes have been combined to 1 detection (only first detection within that 30 minutes kept) to avoid pseudoreplication.
Variable Description:
Site= Study area data were collected
MonitoringPeriod= year in which data was collected (data were collected at each location over multiple monitoring periods)
CameraName= Unique name for each camera location
Date= calendar date of detection
Time= time of detection
-Fort Hood= Central Time USA
-Santa Cruz= Pacific Time USA
Species= Common name of species detected
keywords:
carnivore; community ecology; competition; interspecific interactions; keystone species; mesopredator; predation; trophic cascade
published:
2023-04-02
Lee, Yuanyao; Khanna, Madhu; Chen, Luoye
(2023)
Use of cellulosic biofuels from non-feedstocks are modeled using the BEPAM (Biofuel and Environmental Policy Analysis Model) model to quantifying the uncertainties about induced land use change effects, net greenhouse gas saving potential, and economic costs. The code is in GAMS, general algebraic modeling language.
NOTE: Column 3 is titled "BAU" in "merged_BAU.gdx", "merged_RFS.gdx", and "merged_CEM.gdx", but contains "RFS" data in "merged_RFS.gdx" and "CEM" data in "merged_CEM.gdx".
keywords:
cellulosic biomass; BEPAM; economic modeling
published:
2025-11-20
Ahmed, Md Wadud; Esquerre, Carlos A.; Eilts, Kristen; Allen, Dylan P.; McCoy, Scott M.; Varela, Sebastian; Singh, Vijay; Leakey, Andrew; Kamruzzaman, Mohammad
(2025)
NIR spectroscopy is a rapid and accurate green technology for high-throughput biomass characterization, including sorghum (Sorghum bicolor), a promising energy crop for the biofuel industry. This study assessed the influence of particle size on NIR spectroscopic analysis (wavelength range: 867–2535 nm) of sorghum biomass composition. Grown under field conditions, a total of 113 types of genetically diverse sorghum accessions were dried, ground, and sieved (<250, 250–600, 600–850, and > 850 µm particle size) for developing partial least square regression (PLSR) prediction models for moisture, ash, extractive, glucan, xylan, acid-soluble lignin (ASL), acid-insoluble lignin (AIL), and total lignin (ASL + AIL). Overall, smaller particle sizes provided better model performance, while no single particle size provided the best performance for all the selected components. With only 9 selected bands and 4 latent variables (LVs), the best PLSR model was obtained for moisture with particle size of 600–850 µm with the square root of the coefficient of determination (R) of 0.85, the ratio of prediction to deviation (RPD) of 2.2, and the root mean square error (RMSE) of 0.46 % in external validation. Similar model performances were also obtained for ash, extractive, glucan, and xylan. This study showed that size reduction could effectively improve NIR spectroscopic analysis for lipid-producing sorghum biomass for the biofuel industry.
keywords:
Conversion;Feedstock Production;Biomass Analytics;Modeling;Sorghum
published:
2020-08-22
Qiu, Haoran; Banerjee, Subho S.; Jha, Saurabh; Kalbarczyk, Zbigniew T.; Iyer, Ravishankar K.
(2020)
We are releasing the tracing dataset of four microservice benchmarks deployed on our dedicated Kubernetes cluster consisting of 15 heterogeneous nodes. The dataset is not sampled and is from selected types of requests in each benchmark, i.e., compose-posts in the social network application, compose-reviews in the media service application, book-rooms in the hotel reservation application, and reserve-tickets in the train ticket booking application.
The four microservice applications come from [DeathStarBench](https://github.com/delimitrou/DeathStarBench) and [Train-Ticket](https://github.com/FudanSELab/train-ticket). The performance anomaly injector is from [FIRM](https://gitlab.engr.illinois.edu/DEPEND/firm.git).
The dataset was preprocessed from the raw data generated in FIRM's tracing system. The dataset is separated by on which microservice component is the performance anomaly located (as the file name suggests). Each dataset is in CSV format and fields are separated by commas. Each line consists of the tracing ID and the duration (in 10^(-3) ms) of each component. Execution paths are specified in `execution_paths.txt` in each directory.
keywords:
Microservices; Tracing; Performance
published:
2022-03-31
Crawford, Reed D.; Dodd, Luke E.; Tillman, Frank E.; O'Keefe, Joy M.
(2022)
This dataset contains our bi-hourly temperature recordings from 40 rocket box style artificial roosts of 5 designs deployed in Indiana and Kentucky, USA from April through September 2019. This dataset also includes our endothermic and faculatively heterothermic daily energy expenditure datasets used in our bioenergetic analysis, which were calculated from the bi-hourly rocket box temperature data. Lastly, we include our overheating counts dataset which summarizes daily overheating events (i.e., temperatures > 40 Celsius) in each rocket box style bat box over the course of the study period, these daily summaries were also calculated from the bi-hourly rocket box temperature recordings.
keywords:
artificial roost; bat box; microcllimate; temperature
published:
2024-01-01
Christensen, Jacob; Bettler, Simon; Qu, Kejian; Huang, Jeffrey; Kim, Soyeun; Lu, Yinchuan; Zhao, Chengxi; Chen, Jin; Krogstad, Matthew; Woods, Toby; Mahmood, Fahad; Huang, Pinshane; Abbamonte, Peter; Shoemaker, Daniel
(2024)
Contains scattering data obtained for (TaSe4)2I at the Advanced Photon Source at Argonne National Laboratory. Beamline 6ID-D was used with a beam energy of 64.8 keV in a transmission geometry. Data was obtained at temperatures between 28 and 300 K. See the readme.txt file for more information.
keywords:
X-ray diffraction
published:
2022-11-09
Wang, Junren; Konar, Megan; Dalin, Carole; Liu, Yu; Stillwell, Ashlynn S.; Xu, Ming; Zhu, Tingju
(2022)
This dataset includes the blue water intensity by sector (41 industries and service sectors) for provinces in China, economic and virtual water network flow for China in 2017, and the corresponding network properties for these two networks.
keywords:
Economic network; Virtual water; Supply chains; Network analysis; Multilayer; MRIO
published:
2021-04-18
Lyu, Fangzheng; Kang, Jeon-Young; Wang, Shaohua; Han, Su; Li, Zhiyu; Wang, Shaowen; Padmanabhan, Anand
(2021)
This dataset contains all the code, notebooks, datasets used in the study conducted for the research publication titled "Multi-scale CyberGIS Analytics for Detecting Spatiotemporal Patterns of COVID-19 Data". Specifically, this package include the artifacts used to conduct spatial-temporal analysis with space time kernel density estimation (STKDE) using COVID-19 data, which should help readers to reproduce some of the analysis and learn about the methods that were conducted in the associated book chapter.
## What’s inside - A quick explanation of the components of the zip file
* Multi-scale CyberGIS Analytics for Detecting Spatiotemporal Patterns of COVID-19.ipynb is a jupyter notebook for this project. It contains codes for preprocessing, space time kernel density estimation, postprocessing, and visualization.
* data is a folder containing all data needed for the notebook
* data/county.txt: US counties information and fip code from Natural Resources Conservation Service.
* data/us-counties.txt: County-level COVID-19 data collected from New York Times COVID-19 github repository on August 9th, 2020.
* data/covid_death.txt: COVID-19 death information derived after preprocessing step, preparing the input data for STKDE. Each record is if the following format (fips, spatial_x, spatial_y, date, number of death ).
* data/stkdefinal.txt: result obtained by conducting STKDE.
* wolfram_mathmatica is a folder for 3D visulization code.
* wolfram_mathmatica/Visualization.nb: code for visulization of STKDE result via weolfram mathmatica.
* img is a folder for figures.
* img/above.png: result of 3-D visulization result, above view.
* img/side.png: result of 3-D visulization, side view.
keywords:
CyberGIS; COVID-19; Space-time kernel density estimation; Spatiotemporal patterns
published:
2022-11-28
Zhang, Na; Sharma, Bijay P.; Khanna, Madhu
(2022)
The compiled datasets include county-level variables used for simulating miscanthus and switchgrass production in 2287 counties across the rainfed US including 5-year (2012-2016) averaged growing season degree days (GDD), 5-year (2012-2016) averaged growing season cumulative precipitation, National Commodity Crop Productivity Index (NCCPI) values, regional dummies (only for miscanthus), the regional-level random effect of the yield response function, N price, land cash rent, the first year fixed cost (only for switchgrass), and separate datasets for simulating an alternative model assuming a constant N rate.
The GAMS codes are used to run the simulation to obtain the main results including the age-varying profit-maximizing N rate, biomass yields, and annual profits for miscanthus and switchgrass production across counties in the rainfed US. The STATA codes are used to merge and analyze simulation results and create summary statistics tables and key figures.
keywords:
Age; Miscanthus; Net present value; Nitrogen; Optimal lifespan; Profit maximization; Switchgrass; Yield; Center for Advanced Bioenergy and Bioproducts Innovation
published:
2023-09-13
Shen, Chengze; Liu, Baqiao; Williams, Kelly P.; Warnow, Tandy
(2023)
This upload contains one additional set of datasets (RNASim10k, ten replicates) used in Experiment 2 of the EMMA paper (appeared in WABI 2023): Shen, Chengze, Baqiao Liu, Kelly P. Williams, and Tandy Warnow. "EMMA: A New Method for Computing Multiple Sequence Alignments given a Constraint Subset Alignment".
The zipped file has the following structure:
10k
|__R0
|__unaln.fas
|__true.fas
|__true.tre
|__R1
...
# Alignment files:
1. `unaln.fas`: all unaligned sequences.
2. `true.fas`: the reference alignment of all sequences.
3. `true.tre`: the reference tree on all sequences.
For other datasets that uniquely appeared in EMMA, please refer to the related dataset (which is linked below): Shen, Chengze; Liu, Baqiao; Williams, Kelly P.; Warnow, Tandy (2022): Datasets for EMMA: A New Method for Computing Multiple Sequence Alignments given a Constraint Subset Alignment. University of Illinois at Urbana-Champaign. https://doi.org/10.13012/B2IDB-2567453_V1
keywords:
SALMA;MAFFT;alignment;eHMM;sequence length heterogeneity
published:
2022-03-30
Tiemann, Jeremy S.; Stodola, Alison P.; Douglass, Sarah A.; Vinsel, Rachel M.; Cummings, Kevin S.
(2022)
This dataset is associated with a larger manuscript published in 2022 in the Illinois Natural History Survey Bulletin to summarize all known records for nonindigenous aquatic mollusks in Illinois, and full sources are referenced within the manuscript. We examined museum holdings, literature accounts, publicly available databases sponsored by the U.S. Geological Survey (USGS) - Nonindigenous Aquatic Species program (http://nas.er.usgs.gov/.) and InvertEBase (invertebase.org). We also included sporadic field survey data of encounters of nonindigenous aquatic species from colleagues within the Illinois Natural History Survey, Illinois Department of Natural Resources, U.S. Fish and Wildlife Service, county forest preserve districts, and other natural resource agencies about their encounters with nonindigenous aquatic mollusk species. Lastly, we examined the role and utility of citizen-science data to document occurrences of nonindigenous aquatic mollusk species. We queried iNaturalist (www.inaturalist.org) for all available nonindigenous freshwater mollusk data for Illinois.
Table heading descriptions (if not intuitive) are: “INHS verified” is whether an INHS staff member verified the record by observing vouchered specimen or photograph; “Source” is where a record was accessed or obtained; “individualCount” is number collected or observed in a record; “MuseumCode” is standard museum abbreviation or acronym; “Institution” is source that housed or reported a record, and this also includes the spelled-out museum code; “Collectors” typically indicates who collected the specimen or voucher; “Lat_Long determined by” denotes whether collection coordinates were stated by the collector or by a curator (using inference from data available); “fieldNumber” typically indicates a unique field number that a collector may have used in the field; “identifiedBy” typically explains who identified a specimen or verified a specimen identification.
keywords:
Illinois; Exotic species; Non-native aquatic species; NAS; Aquatic Invasive Species; AIS; Mollusk
published:
2024-12-20
Stuchiner, Emily; Xu, Jiacheng; Eddy, William C.; DeLucia, Evan H.; Yang, Wendy
(2024)
All data presented in the manuscript published in the Journal of Geophysical Research-Biogeosciences by Stuchiner et al. 2025, "Hot or not? An evaluation of methods for identifying hot moments of nitrous oxide emissions from soils." This includes hourly N2O flux measurements from 20 autochambers from May 2022 to April 2023 in a maize field in central Illinois, and various metrics used to assess hot moments that are evaluated in the manuscript. Note that chamber 5 for each sampling node is sampled from a deep soil collar (50 cm depth) that excludes roots for the purpose of measuring heterotrophic respiration rates.
keywords:
nitrous oxide; maize; hot moments; outlier detection; soil emissions
published:
2024-07-12
Tejeda-Lunn, Daniel; Kannan, Baskaran; Germon, Amandine; Leverett, Alistair; Clemente, Tom; Altpeter, Fredy; Leakey, Andrew
(2024)
Data for each figure of the article "Greater aperture counteracts effects of reduced stomatal density on WUE: a case study on sugarcane and meta-analysis" published in J. Ex. Bot.
keywords:
stomatal density; water use efficiency; stomatal conductance; epidermal patterning factor; epidermal patterning
published:
2023-12-18
Johnson, Claire A.; Benson, Thomas J.
(2023)
Data in this publication were used to examine the effects of habitat and landscape-level covariates on occupancy and interannual dynamics and the effects of environmental factors on detection of Black-billed Cuckoos and Yellow-billed Cuckoos. Data were collected between 2019-2020 in northern Illinois, USA. Procedures were approved by the Illinois Institutional Animal Care and Use Committee (IACUC), protocol no. 19086.
keywords:
Black-billed Cuckoo; habitat use; multi-scale; occupancy dynamics; turnover; Yellow-billed Cuckoo
published:
2022-07-22
Johnson, Claire A.; Benson, Thomas J.
(2022)
Data in this publication were used to examine the effects of environmental and temporal covariates on detection probability, and the effects of habitat and landscape level covariates on occupancy and within season turnover of Black-billed Cuckoos and Yellow-billed Cuckoos. Data were collected between 2019-2020 in northern Illinois, USA. Procedures were approved by the Illinois Institutional Animal Care and Use Committee (IACUC), protocol no. 19086.
keywords:
Black-billed Cuckoo; call broadcast; Coccyzus americanus; Coccyzus erythropthalmus; detection probability; occupancy dynamics; rare and secretive species; Yellow-billed Cuckoo
published:
2024-12-17
Nesbitt, Stephen; Niescier, Robert
(2024)
This repository contains precipitation spectra from a Parsivel-2 disdrometer deployed at Lancaster High School, Lancaster, NY, as well as a MRR-2 radar deployed at the same site. The site was located at 42.9299° N, 78.6708° W. Parsivel data were converted to netCDF using the pyDSD python package. MRR-2 spectra are raw from the manufacturer's software. The Parsivel and MRR-2 data include periods collected during November 2022 as described in the paper.
keywords:
snowfall; disdrometer; spectra; micro rain radar; Doppler
published:
2021-02-25
Ferin, Kelsie; Chen, Luoye; Zhong, Jia; Heaton, Emily; Khanna, Madhu; VanLoocke, Andy
(2021)
Total nitrogen leaching rates were calculated over the Mississippi Atchafalaya River Basin (MARB) using an integrated economic-biophysical modeling approach. Land allocation for corn production and total nitrogen application rates were calculated for crop reporting districts using the Biofuel and Environmental Policy Analysis Model (BEPAM) for 5 RFS2 policy scenarios. These were used as input in the Integrated BIosphere Simulator-Agricultural Version (Agro-IBIS) and the Terrestrial Hydrologic Model with Biogeochemistry (THMB) to calculate the nitrogen loss.
Land allocation and total nitrogen application simulations were simulated for the period 2016-2030 for 303 crop reporting districts (https://www.nass.usda.gov/Data_and_Statistics/County_Data_Files/Frequently_Asked_Questions/county_list.txt). The final 2030 values are reported here. Both are stored in csv files. Units for land allocation are million ha and nitrogen application are million kg.
The nitrogen leaching rates were modeled with a spatial resolution of 5' x 5' using the North American Datum of 1983 projection and stored in NetCDF files. The 30-year average is calculated over the last 30 years of the 45 years being simulated. Leaching rates are calculated in kg-N/ha.
keywords:
nitrogen leaching, bioethanol, bioenergy crops