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<keyword>USFWS</keyword>
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<keyword>OSFM</keyword>
<keyword>private</keyword>
<keyword>Oregon</keyword>
<keyword>OR</keyword>
<keyword>Washington</keyword>
<keyword>WA</keyword>
<keyword>wildfire risk</keyword>
<keyword>quantitative wildfire risk assessment</keyword>
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<keyword>highly valued resources and assets</keyword>
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<idPurp>Corporate data contained within this raster is intended for spatial display and analysis purposes. This layer depicts the expected net value change (eNVC) across the agriculture highly valued resource and asset (HVRA) included in the Pacific Northwest's (PNW) quantitative wildfire risk assessment (QWRA) for 2025. The eNVC represents the expected fire impacts at any location based on which HVRAs are present, the expected fire behavior, and considers the annual likelihood of wildfire occurring. The fire hazard data used captures disturbance, fuel treatments, and fire history through calendar year 2024. HVRAs, relative importance, and response function are unchanged from the 2023 QWRA. Data finalized and released 10/31/2025.</idPurp>
<idAbs>&lt;div style='text-align:Left;'&gt;&lt;div&gt;&lt;div&gt;&lt;div style='font-size:12pt'&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;This dataset is a product of the PNW QWRA 2025. The purpose of the PNW QWRA 2025 is to provide foundational information about wildfire risk across the Pacific Northwest Region (which encompasses the states of Oregon and Washington). Analytics from the QWRA are used to guide vegetation management, fire response, and community planning at multiple scales.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;&lt;span&gt;A QWRA considers several different components, each resolved spatially across the region, including:&lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;ul&gt;&lt;li&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;&lt;span&gt; - likelihood of a fire burning, &lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;&lt;span&gt; - the intensity of a fire if one should occur,&lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;&lt;span&gt; - the exposure of assets and resources based on their locations, and &lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;li&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;&lt;span&gt; - the susceptibility of those assets and resources&lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;/li&gt;&lt;/ul&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span /&gt;&lt;/p&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;Data users are encouraged to refer to the PNW QWRA 2023 Methods Report for full details: &lt;/span&gt;&lt;a href='https://oe.oregonexplorer.info/externalcontent/wildfire/PNW_QWRA_2023Methods.pdf' style='text-decoration:underline;'&gt;&lt;span style='text-decoration:underline;'&gt;&lt;span&gt;https://oe.oregonexplorer.info/externalcontent/wildfire/PNW_QWRA_2023Methods.pdf&lt;/span&gt;&lt;/span&gt;&lt;/a&gt;&lt;/p&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span /&gt;&lt;/p&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;WildEST results were modified for risk calculations in the PNW QWRA 2025 using an irrigated agriculture mask to assign FLPs to pixels which are likely to be irrigated during fire season. An irrigated agriculture mask was created from LANDFIRE 2.2.0 Fire Behavior Fuel Models (where the model = “NB3”), and data collected from IrrMapper (Ketchum et al., 2020). All NB3 pixels as well as pixels that were classified as irrigated in three of the most recent five years in IrrMapper were included in the irrigated agriculture mask. Pixels in the irrigated agriculture mask were assigned an FLP of 0.75 for flame lengths between 0 – 2 feet, 0.25 for flame lengths 2 – 4 feet, and an FLP of 0 for all intensity values greater than 4 feet. Fire-effects flame-length probability rasters generated in WildEST were used for effects analysis in a landscape wildfire risk assessment, as described in USFS GTR-315.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;The PNW QWRA 2025 evaluated risk to eight HVRAs: People and Property, Infrastructure, Drinking Water, Timber, Ecological Integrity, Wildlife Habitat, Agriculture, and Recreation. This data layer, Agriculture eNVC represents risk integrated across all Agriculture sub-HVRAs. The Agriculture HVRA is intended to evaluate wildfire risk to cropland and associated infrastructure. We mapped the extent of croplands using the last five years of Cropscape data from the U.S. Department of Agriculture (USDA-NASS, 2022). All pixels that were considered cultivated were included in the HVRA extent and the most common crop type associated with each cultivated pixel was used to classify the sub-HVRA as either perennial or annual. Sub-HVRAs included:&lt;/span&gt;&lt;/p&gt;&lt;p style='text-indent:48;margin:0 0 0 0;'&gt;&lt;span&gt;&lt;span&gt;1. Perennial crops&lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;p style='text-indent:48;margin:0 0 0 0;'&gt;&lt;span&gt;&lt;span&gt;2. Annual crops&lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;&lt;span&gt;Risk is estimated within the QWRA framework by integrating wildfire hazard with HVRA susceptibility (Scott et al., 2013). Risk is calculated for each pixel separately based on the fire hazard data for that pixel and based on which HVRAs are present. Fire impacts to each HVRA are characterized by the estimated change in value, a unitless approximation of whether the HVRA is beneficially or adversely affected by fire and to what magnitude. Accordingly, risk is expressed as net value change (NVC). Net value change is first calculated for all pixels across a sub-HVRA. The NVC for each HVRA is then calculated by summing the NVC of all its constituent sub-HVRAs. Positive values indicate that wildfire is likely to have beneficial impacts on the HVRA while negative values indicate that the net outcomes are likely to be adverse. Risk is calculated based on a very wide range of plausible weather conditions, much wider than the range under which we have typically experienced large fires in the past. The specific conditions under which a wildfire occurs will determine the outcomes. When interpreting QWRA risk results, bear in mind that fire will not always be beneficial in areas with positive NVC values and, likewise, it may be possible to experience beneficial fire in areas with negative NVC values. &lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span style='font-weight:bold;'&gt;&lt;span&gt;Primary Data Contact:&lt;/span&gt;&lt;/span&gt;&lt;span&gt;&lt;span&gt; Ian Rickert, Regional Fire Planner, Forest Service R6/R10, ian.rickert@usda.gov&lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;&lt;span&gt;Citations:&lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;&lt;span&gt;USDA-NASS, 2022. USDA National Agricultural Statistics Service Cropland Layer (2022). &lt;/span&gt;&lt;/span&gt;&lt;a href='https://nassgeodata.gmu.edu/CropScape/' style='text-decoration:underline;'&gt;&lt;span style='text-decoration:underline;'&gt;&lt;span&gt;https://nassgeodata.gmu.edu/CropScape/&lt;/span&gt;&lt;/span&gt;&lt;/a&gt;&lt;/p&gt;&lt;p&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;&lt;span&gt;Ketchum, D., Jencso, K., Maneta, M.P., Melton, F., Jones, M.O., Huntington, J., 2020. IrrMapper: A Machine Learning Approach for High Resolution Mapping of Irrigated Agriculture Across the Western U.S. Remote Sensing 12, 2328. &lt;/span&gt;&lt;/span&gt;&lt;a href='https://doi.org/10.3390/rs12142328' style='text-decoration:underline;'&gt;&lt;span&gt;&lt;span&gt;https://doi.org/10.3390/rs12142328&lt;/span&gt;&lt;/span&gt;&lt;/a&gt;&lt;/p&gt;&lt;p&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;&lt;span&gt;Scott, J.H., Thompson, M.P., Calkin, D.E., 2013. A wildfire risk assessment framework for land and resource management (No. RMRS-GTR-315). U.S. Department of Agriculture, Forest Service, Rocky Mountain Research Station, Ft. Collins, CO. &lt;/span&gt;&lt;/span&gt;&lt;a href='https://doi.org/10.2737/RMRS-GTR-315' style='text-decoration:underline;'&gt;&lt;span&gt;&lt;span&gt;https://doi.org/10.2737/RMRS-GTR-315&lt;/span&gt;&lt;/span&gt;&lt;/a&gt;&lt;/p&gt;&lt;p&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;&lt;span&gt;Finney, M.A., McHugh, C.W., Grenfell, I.C., Riley, K.L., Short, K.C., 2011. A simulation of probabilistic wildfire risk components for the continental United States. Stoch Environ Res Risk Assess 25, 973–1000. &lt;/span&gt;&lt;/span&gt;&lt;a href='https://doi.org/10.1007/s00477-011-0462-z' style='text-decoration:underline;'&gt;&lt;span style='text-decoration:underline;'&gt;&lt;span&gt;https://doi.org/10.1007/s00477-011-0462-z&lt;/span&gt;&lt;/span&gt;&lt;/a&gt;&lt;/p&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;&lt;/p&gt;&lt;/p&gt;&lt;/p&gt;&lt;/p&gt;&lt;/p&gt;&lt;/p&gt;&lt;/p&gt;&lt;/p&gt;</idAbs>
<idCredit>This assessment was completed by Oregon State University in collaboration with the Oregon Department of Forestry, Washington State Department of Natural Resources, the U.S. Bureau of Land Management and the U.S. Forest Service.</idCredit>
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<useLimit>&lt;div style='text-align:Left;'&gt;&lt;div&gt;&lt;div&gt;&lt;p style='margin:0 0 14 0;'&gt;&lt;span&gt;&lt;span&gt;The USDA Forest Service 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 user is responsible to verify the limitations of the geospatial data and to use the data accordingly. As a work of the United States Government, these data are within the public domain of the United States.&lt;/span&gt;&lt;/span&gt;&lt;/p&gt;&lt;p style='margin:0 0 14 0;'&gt;&lt;span&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;/span&gt;&lt;a href='https://creativecommons.org/public-domain/cc0/' style='text-decoration:underline;'&gt;&lt;span style='text-decoration:underline;'&gt;&lt;span&gt;https://creativecommons.org/public-domain/cc0/&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='font-weight:bold;margin:0 0 14 0;'&gt;&lt;span&gt;&lt;span&gt;Non-Discrimination Statement&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). 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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 style='font-size:12pt'&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span /&gt;&lt;/p&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;Oregon State University 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 for verifying the limitations of the geospatial data and using the data accordingly.&lt;/span&gt;&lt;/p&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;</useLimit>
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