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<otherCitDet>USDA Forest Service. 2025. West-wide Potential Control Location Suitability (PCL), version 2025. USDA Forest Service National Office, Fire and Aviation Management, Strategic Analytics Branch, Washington DC.</otherCitDet>
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<idAbs>&lt;div style='text-align:Left;'&gt;&lt;div&gt;&lt;div&gt;&lt;p&gt;&lt;span&gt;Potential Control Location Suitability (PCL) is an estimate of fire control likelihood or probability developed by relating observations of fire control and lack of control with landscape predictor variables thought to influence control likelihood (O’Connor et al. 2017). Observations of fire control success come from the perimeters of historical fires during the period 2002-2021 and observations of control failure come from the same fire interiors. PCL is modeled using the boosted regression tree method, which iteratively fits regression trees to random subsets of the data to minimize model deviance from the training data. Boosted regression is ideal for this application because the models can capture non-linear effects and variable interactions. Landscape predictor variables include road influence, barrier influence, cost distance, resistance to control, flat topography influence, valley topography influence, ridge topography influence, steep topography influence, Suppression Difficulty Index, modeled fire rate of spread, and prior burning extent and timing. PCL models were developed for 29 discrete ecoregions and then mosaicked into a single West-wide layer by averaging values among adjacent models in a 1-km width buffer zone along the ecoregion boundaries. See the full methods report for more details.&lt;/span&gt;&lt;/p&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;</idAbs>
<idPurp>The purpose of Potential Control Location Suitability (PCL) is to provide information about potential control opportunities and challenges for large fire containment strategy development, incident prioritization, and other broad scale fire and fuels management planning tasks. Data users are encouraged to access the methods report for more details.</idPurp>
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<useLimit>&lt;div style='text-align:Left;'&gt;&lt;div&gt;&lt;div&gt;&lt;p&gt;&lt;span&gt;The USDA makes no warranty, expressed or implied, including the warranties of merchantability and fitness for a particular purpose, nor assumes any legal liability or responsibility for the accuracy, reliability, completeness or utility of these geospatial data, or for the improper or incorrect use of these geospatial data. These geospatial data and related maps or graphics are not legal documents and are not intended to be used as such. The data and maps may not be used to determine title, ownership, legal descriptions or boundaries, legal jurisdiction, or restrictions that may be in place on either public or private land. Natural hazards may or may not be depicted on the data and maps, and land users should exercise due caution. The data are dynamic and may change over time. The user is responsible to verify the limitations of the geospatial data and to use the data accordingly.&lt;/span&gt;&lt;/p&gt;&lt;p style='margin:0 0 14 0;'&gt;&lt;span&gt;Additionally, the U.S. Forest Service waives copyright and related rights in the work worldwide through the CC0 (which can be found at &lt;/span&gt;&lt;a href='https://gcc02.safelinks.protection.outlook.com/?url=https%3A%2F%2Fcreativecommons.org%2Fpublic-domain%2Fcc0%2F&amp;amp;data=05%7C02%7Cmark.hammond%40usda.gov%7C8a6ff85e7fde4b57cd8108de15874b67%7Ced5b36e701ee4ebc867ee03cfa0d4697%7C1%7C0%7C638971867987744668%7CUnknown%7CTWFpbGZsb3d8eyJFbXB0eU1hcGkiOnRydWUsIlYiOiIwLjAuMDAwMCIsIlAiOiJXaW4zMiIsIkFOIjoiTWFpbCIsIldUIjoyfQ%3D%3D%7C0%7C%7C%7C&amp;amp;sdata=dirAelsY9FS7jvzx9jaCzFeb7ls4yOoKC3jdZ0G%2BWiI%3D&amp;amp;reserved=0' style='text-decoration:underline;'&gt;&lt;span style='text-decoration:underline;'&gt;https://creativecommons.org/public-domain/cc0/&lt;/span&gt;&lt;/a&gt;&lt;span&gt;). &lt;/span&gt;&lt;/p&gt;&lt;p style='margin:0 0 14 0;'&gt;&lt;span&gt;&lt;span&gt;In accordance with Federal civil rights law and U.S. Department of Agriculture (USDA) civil rights regulations and policies, the USDA, its Agencies, offices, and employees, and institutions participating in or administering USDA programs are prohibited from discriminating based on race, color, national origin, religion, sex, disability, age, marital status, family/parental status, income derived from a public assistance program, political beliefs, or reprisal or retaliation for prior civil rights activity, in any program or activity conducted or funded by USDA (not all bases apply to all programs). Remedies and complaint filing deadlines vary by program or incident.&lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;p style='margin:0 0 14 0;'&gt;&lt;span&gt;&lt;span&gt;Persons with disabilities who require alternative means of communication for program information (e.g., Braille, large print, audiotape, American Sign Language, etc.) should contact the State or local Agency that administers the program or contact USDA through the Telecommunications Relay Service at 711 (voice and TTY). Additionally, program information may be made available in languages other than English.&lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;p style='margin:0 0 14 0;'&gt;&lt;span&gt;&lt;span&gt;To file a program discrimination complaint, complete the USDA Program Discrimination Complaint Form, AD-3027, found online at &lt;/span&gt;&lt;/span&gt;&lt;a href='https://www.usda.gov/oascr/how-to-file-a-program-discrimination-complaint' style='text-decoration:underline;'&gt;&lt;span style='text-decoration:underline;'&gt;&lt;span&gt;How to File a Program Discrimination Complaint&lt;/span&gt;&lt;/span&gt;&lt;/a&gt;&lt;span&gt;&lt;span&gt; and at any USDA office or write a letter addressed to USDA and provide in the letter all of the information requested in the form. To request a copy of the complaint form, call (866) 632-9992. Submit your completed form or letter to USDA by: (1) mail: U.S. Department of Agriculture, Office of the Assistant Secretary for Civil Rights, 1400 Independence Avenue, SW, Mail Stop 9410, Washington, D.C. 20250-9410; (2) fax: (202) 690-7442; or (3) email: &lt;/span&gt;&lt;/span&gt;&lt;a href='mailto:program.intake@usda.gov' style='text-decoration:underline;'&gt;&lt;span style='text-decoration:underline;'&gt;&lt;span&gt;program.intake@usda.gov&lt;/span&gt;&lt;/span&gt;&lt;/a&gt;&lt;span&gt;&lt;span&gt;.&lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;p style='margin:0 0 14 0;'&gt;&lt;span&gt;&lt;span&gt;USDA is an equal opportunity provider, employer, and lender.&lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;</useLimit>
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<measDesc>A PCL model produces estimates of fire control likelihood or probability, but it is important to recognize that this implementation of PCL does not capture detailed weather, fire behavior, and suppression activities in either the training data or predictions. PCL provides useful models of how landscape factors such as fuels, topography, and accessibility influence potential for control under typical large fire conditions. The predictive performances of the individual boosted regression statistical models were evaluated with the Area Under the Receiver Operating Characteristic Curve (AUC) as calculated using 3-fold cross-validation. The individual model AUCs range between 0.657 and 0.768 with a mean of 0.701, PCL prediction accuracy also depends on the accuracy of source datasets and methods for mapping the predictor variables.</measDesc>
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<otherCitDet>LANDFIRE. 2024. LANDFIRE: fuels and topography. U.S. Department of Agriculture and U.S. Department of the Interior.</otherCitDet>
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</Data>
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