A Comprehensive Parcel-Level Dataset on Farmland Assessment: Addressing Grid-Cell Data Bias Estimation
Abstract
:1. Summary
2. Data Description
2.1. Greenbelt Status and the Eligibility Variables
2.2. Farmland Development and Its Potential Drivers
3. Methods
3.1. Data Collection
3.2. Data Processing
3.3. Computation of Development Metrics
3.4. Data Quality
4. Value of the Data
4.1. Key Insight from the Data
4.2. Potential Application of the Data
5. User Notes
6. Conclusions
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Column Label | Description | Type | Sources |
---|---|---|---|
ID | A unique parcel identifier | Categorical | Authors’ Calculation |
Parcel.ID08 | Parcel identifier that corresponds to the 2008 shapefile boundary | Categorical | Salt Lake County Assessor Office |
OwnID | Unique landowner identifier | Categorical | Authors’ Calculation |
Year | Year of the data | Categorical | Salt Lake County Assessor Office |
GB | Greenbelt indicates whether a parcel is enrolled in the tax break program | Dummy | Salt Lake County Assessor Office |
NoChange | Indicates whether there are any changes to the boundary between 2010 and 2018 | Dummy | Authors’ Calculation |
Zip | ZIP Code (a system of postal codes used by the US Postal Service) | Categorical | Automated Geographic Reference Center |
Area | Size of land in acres | Continuous | Authors’ Calculation |
AgAcre | Size of the agricultural land in acres | Continuous | Authors’ Calculation |
Ag | Number of 30 by 30 m pixel that is agricultural land | Continuous | USDA National Agricultural Statistics Service Cropland Data Layer |
G | Number of 30 by 30 m pixels that are grassland/ rangeland | Continuous | USDA National Agricultural Statistics Service Cropland Data Layer |
I | Number of 30 by 30 m pixels that are idle cropland | Continuous | USDA National Agricultural Statistics Service Cropland Data Layer |
D.o | Number of 30 by 30 m pixels that changed from AG, G, or I in the previous year to developed-open density in the current year | Continuous | USDA National Agricultural Statistics Service Cropland Data Layer |
D.l | Number of 30 by 30 m pixels that changed from AG, G, or I in the previous year to developed-low intensity in the current year | Continuous | USDA National Agricultural Statistics Service Cropland Data Layer |
D.m | Number of 30 by 30 m pixels that changed from AG, G, or I in the previous year to developed-medium intensity in the current year | Continuous | USDA National Agricultural Statistics Service Cropland Data Layer |
D.h | Number of 30 by 30 m pixels that changed from AG, G, or I in the previous year to developed-high intensity in the current year | Continuous | USDA National Agricultural Statistics Service Cropland Data Layer |
O | Number of 30 by 30 m pixels that are developed-open density | Continuous | USDA National Agricultural Statistics Service Cropland Data Layer |
L | Number of 30 by 30 m pixels that are developed-low density | Continuous | USDA National Agricultural Statistics Service Cropland Data Layer |
M | Number of 30 by 30 m pixels that are developed-medium density | Continuous | USDA National Agricultural Statistics Service Cropland Data Layer |
H | Number of 30 by 30 m pixels that are developed-high density | Continuous | USDA National Agricultural Statistics Service Cropland Data Layer |
Total | Number of pixels in the parcel | Continuous | USDA National Agricultural Statistics Service Cropland Data Layer |
EVI.elgb | Percent of the land that meets productivity criterion | Continuous | Authors’ Calculation |
Ag.elgb | Takes the value of one if the parcel was agricultural in use in the last two years and the parcel is either 5 acres or above or the same owner has other eligible land | Dummy | Authors’ Calculation |
AgUse | Takes the value of one if the parcel was in agricultural use in last two years based on whether there were pixels within the parcel in Ag, G, or I in the previous two years | Dummy | Authors’ Calculation |
Dist | Distance to the closest urban boundary in miles | Continuous | Authors’ Calculation |
UFAA | The Urban Farming Assessment Act (UFAA) takes the value of one if the parcels were in food crop production use in the last 2 years, the year is post-2013, and the food production acreage is larger than two acres but less than five, and zero otherwise. | Dummy | Authors’ Calculation |
Y | Rate of change from agricultural use to development at the parcel level | Continuous | Authors’ Calculation |
Variable | N | Mean | St. Dev | Min | Max |
---|---|---|---|---|---|
Y (%) | 183,940 | 32.60 | 45.50 | 0 | 100 |
GB (1 if yes) | 183,940 | 0.10 | 0.29 | 0 | 1 |
Area (acre) | 183,940 | 14.46 | 53.13 | 0 | 2147 |
AgAcre (acre) | 183,940 | 6.26 | 33.03 | 0 | 18,556 |
Dist (mile) | 183,940 | 0.28 | 0 | 0 | 7.52 |
EVI.elgb (%) | 183,940 | 26.90 | 37.20 | 0 | 100 |
Ag.elgb (1 if yes) | 183,940 | 0.26 | 0.434 | 0 | 1 |
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Siu, W.Y.; Li, M.; Caplan, A.J. A Comprehensive Parcel-Level Dataset on Farmland Assessment: Addressing Grid-Cell Data Bias Estimation. Data 2025, 10, 10. https://doi.org/10.3390/data10010010
Siu WY, Li M, Caplan AJ. A Comprehensive Parcel-Level Dataset on Farmland Assessment: Addressing Grid-Cell Data Bias Estimation. Data. 2025; 10(1):10. https://doi.org/10.3390/data10010010
Chicago/Turabian StyleSiu, Wai Yan, Man Li, and Arthur J. Caplan. 2025. "A Comprehensive Parcel-Level Dataset on Farmland Assessment: Addressing Grid-Cell Data Bias Estimation" Data 10, no. 1: 10. https://doi.org/10.3390/data10010010
APA StyleSiu, W. Y., Li, M., & Caplan, A. J. (2025). A Comprehensive Parcel-Level Dataset on Farmland Assessment: Addressing Grid-Cell Data Bias Estimation. Data, 10(1), 10. https://doi.org/10.3390/data10010010