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Challenges of accommodating non-market values in evaluation of wildfire suppression in the United States
T.J. Venn1 and D.E. Calkin2
1. College of Forestry and Conservation, The University of Montana, Missoula, MT, 59812, USA. Email: tyron.venn@cfc.umt.edu
2. Rocky Mountain Research Station, USDA Forest Service, Missoula, MT, 59801, USA. Email: decalkin@fs.fed.us
Selected Paper prepared for presentation at the American Agricultural Economics Association Annual Meeting, Portland, OR, July 29-August 1, 2007
Copyright 2007 by Tyron Venn and David Calkin. All rights reserved. Readers may make verbatim copies of this document for non-commercial purposes by any means, provided that this copyright notice appears on all such copies.
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Abstract
Presently, implementing the 2001 Federal Wildland Fire Management Policy, which requires fire
management priorities to be set on the basis of maximising the market and non-market values to be
conserved or enhanced, is extremely challenging because those charged with implementing the policy
have limited information about the value that society places on non-market resources at risk. This paper
considers the problem of accommodating non-market values affected by wildfire in social benefit-cost
analysis. There are substantial gaps in scientific understanding about how the spatial and temporal
provision of non-market values are affected by wildfire, and considerable challenges in evaluating social
welfare change arising from specific wildfire events. This presents serious impediments to adapting price-
based decision-support tools, such as the National Fire Management Analysis System, to meaningfully
incorporate non-market values. An alternative decision-support framework is proposed that measures
departure from the historic range and variability of ecological conditions for those non-market values that
are particularly resistant to price-based analysis.
Keywords: non-market valuation, historic range and variability, bushfire, wildfire policy, wildfire
economics.
The Yellowstone fires of 1988 flagged the commencement of an era of large wildfires in the western
United States that have threatened lives, destroyed homes and stretched suppression resources thin.
Annual suppression expenditures by the United States Department of Agriculture Forest Service (Forest
Service) have dramatically increased in recent years and exceeded $1 billion in the fire seasons of 2000,
2002, 2003, and 2006 (NIFC, 2006). Several factors are believed to have contributed to the high level of
suppression expenditures, including: fuel accumulation due to past successful fire suppression activities; a
more complex fire fighting environment due to private development in the wildland-urban interface
(WUI); climate change; limited economic accountability among fire managers; and a fire management
incentive system that makes fire managers more risk averse than may be socially optimal (National
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Academy of Public Administration, 2002; USDA Forest Service et al., 2003; Calkin et al., 2005; Maguire
and Albright, 2005; Westerling et al., 2006). The United States Federal Government is concerned that fire
suppression resources are not being used efficiently and the Forest Service is under substantial pressure to
reduce fire suppression expenditures.
Managing fire-adapted forests to sustain ecologically viable and socio-economically feasible landscapes is
a complex undertaking requiring the active collaboration of a diverse group of professionals, including
planners, forest ecologists, biologists, economists and policy-makers. Economists and other analysts have
developed price-based wildfire management decision-support tools to assist allocation of wildfire
suppression resources. However, while non-marketed resources such as wildlife habitat and air quality are
increasingly of interest to the general public, they are poorly accounted for within existing models. This
paper evaluates the potential for accommodating the full range of non-market values enhanced or
diminished by wildfire in a social benefit-cost analysis (BCA) framework.
The paper continues with a brief review of federal wildfire policy and the application of economics to
support wildfire management in the United States. Next, six factors contributing to the failure of efforts to
evaluate welfare change arising from wildfire are discussed. We then argue that an alternative decision-
support framework that measures departure of current and post-fire ecological conditions from the historic
range and variability of ecological conditions may be suitable for accommodating many non-market
values in assessment of wildfire management.
Wildfire policy and economics in the United States
Federal forest-fire management in the United States began with U.S. Army patrols of newly created
National Parks in 1886. Suppression of forest fires dominated early forest policy, even as evidence
mounted during the first half of the twentieth century that fire suppression was producing forests with high
fire hazards and adversely affecting wildlife habitat (Leopold et al., 1963; Stephens and Ruth, 2005). The
National Park Service (NPS) revised its fire policy in the late 1960s to allow wildfire to burn when it met
particular resource management objectives, while continuing to suppress unwanted wildfires. The Forest
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Service revised its fire policy shortly after the NPS; however, with few exceptions, fire suppression
continued to dominate Forest Service policy in the following decades (Stephens and Ruth, 2005). The
dramatic changes in fire regimes, ecological patterns and processes, and species distribution and
abundance that have resulted from 100 years of fire suppression in forested landscapes of the western
United States are well documented (USDA and USDI, 2000; Keane et al., 2002; Hessburg and Agee,
2003).
Federal fire policy has been substantially modified since 1995 to recognise the beneficial role of fire as an
important ecological process and acknowledge the need for measures of economic efficiency of wildfire
suppression to accommodate non-market values, including ecosystem health, conservation of flora and
fauna, air quality, water quality, recreation opportunities and cultural heritage (USDI et al., 2001; 2005).
Management of fire suppression events for resource benefits is currently prohibited under the Interagency
Strategy for the Implementation of Federal Wildland Fire Policy (Wildland Fire Leadership Council,
2003); however, there is considerable interest in a new fire management paradigm known as Appropriate
Management Response (AMR). AMR permits particular fronts of a fire event to be suppressed to
minimise potential resource damage while allowing other fire fronts to burn for resource benefits (known
as wildland fire use) or because detrimental resource effects do not exceed potential suppression costs. An
audit of Forest Service fire suppression expenditure by the USDA Office of Inspector General (2006)
recommended that AMR be adopted as policy. To support AMR, fire managers need decision support
tools capable of prioritizing areas where resource value change due to fire suggests aggressive suppression
and those areas where beneficial fire effects or excessive suppression costs would suggest “let burn”
strategies.
Although wildfire policy has been modified over time, the least cost plus loss (LCPL) economic theory
applied to support wildfire management decision-making in the United States has changed little since the
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model was first illustrated by Sparhawk (1925)1. It is a price-based framework that can be used by fire
managers to assist development of fire management strategies that minimise the total cost of fire
prevention, presuppression and suppression activities, and fire damage. Past and present wildfire
management and planning tools used by the Forest Service, such as the National Fire Management
Analysis System (NFMAS) and Escaped Fire Simulation Analysis (EFSA), utilize the LCPL framework
(Donovan and Rideout, 2003; Schuster and Krebs, 2004).
The LCPL model served the Forest Service well when the primary focus of the agency was timber
production, society placed relatively low values on non-timber goods and services provided by forests,
human settlement in the WUI was relatively limited, and wildfire policy was to aggressively suppress all
fires. However, with the substantial reduction of the Forest Service timber harvest program, fire and fuels
management may now be the single largest anthropogenic disturbance on the ecological condition of
public land. There have been dramatic increases in human settlement in WUI areas and in public interest
in non-marketed forest resource values. There is also growing recognition among economists that, with a
fixed land base and increasing population, the value of non-traded outputs from forestlands is likely to
increase over time and that a high quality environment, not an abundance of extractible natural resources,
is perhaps the greatest economic asset that many western states have for sustaining their economic growth
(Power, 1998).
The Hubbard Report (Review Team, 2001) reviewed the suite of fire budget and planning models of
federal agencies, including NFMAS and EFSA, and found them to be inadequate for supporting decisions
consistent with the 2001 Federal Wildland Fire Management Policy. The Hubbard Report’s
recommendations guided the Fire Program Analysis (FPA) project, which was a major investment by the
Forest Service and other federal land management agencies to develop a wildfire management planning
and budgeting decision-support tool to accommodate the full range of market and non-market land
1 Donovan and Rideout (2003) identified some inherent flaws in the LCPL model and proposed a corrected LCPL
framework. In recognition of the fact that wildfires generate an array of positive and negative physical effects, the contemporary form of the LCPL model is sometimes referred to as cost plus net value change (C+NVC), where the fire damage schedule is replaced with a net value change schedule.
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management objectives in evaluation of alternative fire management strategies (FPA, c2006). The basis
for economic evaluation within FPA was termed the expert opinion weighted elicitation process
(EOWEP), with wildfire protection priorities estimated by querying fire management officials about the
relative importance of protecting different socio-economic and environmental attributes from wildfire
(Rideout and Ziesler, 2005). In effect, EOWEP is a price-based approach with expert judgement being
used to derive relative prices in place of economic analysis. In 2007, there was no peer reviewed literature
available describing the EOWEP process and the application of EOWEP within future developments of
the FPA system is unclear.
Challenges of evaluating welfare change from wildfire effects on non-marketed resources
To accommodate non-market values in price-based evaluations of wildfire management strategies,
analysts require information about the likely direct and indirect effects of fire on the spatial and temporal
provision of non-marketed resources, and information about how fire-induced marginal changes in the
quality and quantity of non-marketed resources will affect social welfare. It is apparent that information is
lacking in one or both of these areas for many of the types of non-traded resources that can be affected by
wildfire.
There are six major challenges to evaluating welfare change arising from wildfire that may cause non-
market valuation efforts to fail, namely:
1. scarcity of information about how non-marketed resources are affected by wildfire;
2. scarcity of estimates of welfare change as a consequence of wildfire;
3. limited amenability of many non-marketed resources affected by wildfire to valuation by benefit
transfer;
4. a dearth of studies that have estimated marginal willingness to pay (WTP);
5. violation of consumer budget constraints; and
6. valuation of indigenous cultural heritage is unlikely to be feasible.
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Several of these challenges are general problems in non-market valuation research, but they are
particularly prominent in non-market valuation of wildfire effects because of the large number and
diversity of resources potentially affected by wildfire, and the spatial and temporal variability of responses
of affected resources to wildfire.
Scarcity of information about how non-marketed resources are affected by wildfire
Wildfires affect many non-marketed resources that are valued by society, including air quality, soil, water
quality, flora, fauna and invasive species, recreation opportunities, cultural heritage and carbon. Each
resource exhibits a diverse range of potential responses to wildfire according to a complex set of natural
environment and human management factors. Generally, the more severe the wildfire (i.e. the higher the
proportion of biomass consumed), the greater the magnitude of negative effects on non-marketed natural
resources. Nevertheless, some ecosystems, such as high-elevation lodgepole pine forests, are adapted to
high-severity wildfire regimes. Table 1 summarises positive and negative effects of wildfire on non-
marketed forest values; however, there are substantial gaps in scientific understanding about how the
spatial and temporal provision of non-marketed resources are affected by wildfire.
<Insert Table 1 near here>
Currently, the most comprehensive guidelines in the United States for assessing the visibility implications
and human health risk of exposure to particulate matter (PM), including from wildfire smoke plumes, are
produced by the EPA (1999a, b). However, these guidelines are largely based on visibility and
epidemiological studies conducted over long periods in urban centres with urban pollution problems.
There is no evidence that PM pollution from cars and industry affect visibility and human health in the
same way as wildfire smoke, and Sandberg et al. (2002) warn that these guidelines may be of little value
for air quality regulators judging health risks of short-term exposure to high levels of wildfire smoke.
There is great need for research to estimate relationships between fuel types, smoke chemical
composition, topography and weather patterns, and the effects on human health and safety.
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The social value of soil is derived from the value of goods and services it can produce. On-site soil
damage costs associated with wildfire arise largely from reduced site productivity due to water repellency,
nutrient loss and soil erosion. Timber growth and yield models can be useful for estimating likely effects
of reduced site productivity on the growth of important timber species. However, timber production is
only one of many ecosystem services related to site productivity. For example, soil conditions will directly
and indirectly affect the habitat of non-timber flora and fauna, cultural heritage values and recreation
opportunities. But knowledge about the relationships between site productivity and the production of these
important ecosystem services is limited.
Landsberg and Tiedemann (2000) and Neary et al. (2005) identified several knowledge gaps that limit our
ability to predict water quality in post-fire environments. These include:
• lack of data on extreme water flow and erosion events that can follow wildfire, and the complex
interactions of variables that contribute to the extent of postfire flooding and erosion;
• limited data for estimating the likely effects of fire on the magnitude and duration of water quality
change in municipal watersheds;
• scarce information on the effects of fire on heavy metals in drinking water;
• a lack of understanding of how fire effects water quality at the landscape level as opposed to
burned stream reaches; and
• limited information about the effectiveness of potential mitigating factors in protecting water
quality, such as streamside buffers.
The Fire Effects Information System developed and maintained by the Forest Service (available at URL:
http://www.fs.fed.us/database/feis/), summarises from English-language literature the effects of fire on
about 100 North American animal species and 900 plant species, including many threatened and
endangered (T&E) species. A review of these descriptions revealed that, while fire effects information is
substantial for some species, scientific and anecdotal information is sparse for many. Most of what is
known about the effects of fire on fauna in the United States focuses on mammals and birds, with only
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sparse information available for aquatic fauna, herpetofauna and insects (Raphael et al., 2001; Rieman et
al., 2003; Bury, 2004). Lyon and Smith (2000) asserted that, at the landscape level, little is known about
the combination of vegetation mosaics and patterns best suited to specific wildlife populations, and how to
maintain landscapes for biodiversity conservation. Furthermore, while the likely impacts of fire of various
levels of severity on timber species in forests are relatively well-known, knowledge about the ecological
role and importance of fire for many other plant species and communities in the United States, particularly
those that are rare, is generally poor (Brown, 2000).
Forested landscapes of the United States have important cultural heritage values for indigenous and non-
indigenous Americans, which are expressed and evidenced in many ways, including as sources of food,
tools, arts and crafts, settings for stories, religious places, burial places, physical evidence of historical
occupation, battlegrounds and recreation areas. Literature about wildfire effects on cultural heritage,
particularly indigenous cultural heritage, is scarce. The authors hypothesise that, since indigenous
American cultures evolved in landscapes where fire is an important ecological process and was used by
tribes as a land management tool, wildfires that are consistent in size, severity and frequency with
historical fire regimes appear likely to maintain or even enhance indigenous cultural heritage values. For
example, many culturally important plant and animal food resources require fire to maintain suitable
habitat conditions. However, uncharacteristic wildfire is likely to be detrimental to or even destroy forms
of cultural heritage, including burial sites, ‘medicine’ and sacred trees, cultural relics, and archaeological
sites and structures (Arno and Fiedler, 2005; Keane et al., 2006a). Further research is required to examine
wildfire effects on cultural heritage.
Emissions of carbon from combustion of vegetation are social costs of wildfire. However, fire is
ultimately an unavoidable ecological process in many forests of the western United States. Irrespective of
the level of contemporary and future wildfire detection and suppression technology, forest managers are
not faced with the question of whether a forest will burn, but rather under what fire regime will the forest
burn?
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Brown and Bradshaw (1994) found that, although wildfires currently burn less forest area annually than
was the case under historic fire regimes, annual smoke emissions are higher because consumption of fuel
per unit area is greater due to the relatively high frequency of uncharacteristically severe, stand replacing
fires resulting from past forest management and fire suppression policies. The same emissions relationship
applies for carbon. More frequent wildfire will prevent the accumulation of surface and ladder fuels that
cause stand replacing conflagrations, and encourage vigorous vegetation regrowth that will sequester
carbon. Furthermore, simulations reported by Keane et al. (1997) revealed that respiration associated with
advancing succession in North American forests can release substantial volumes of carbon. It is
conceivable that more wildfire, not less, may reduce carbon emissions from North American forests in the
long-run. There is a need for net carbon emissions arising from alternative wildfire regimes to be
examined over long time horizons.
Complicating evaluation of potential fire effects on particular non-marketed resources is that the ultimate
positive or negative effects of a fire may only become apparent some time after the fire and depend on a
complex set of factors, including: pre-fire human management and infrastructure; topography; soils; pre-
burn composition and structure of the vegetation; time since the last burn; fire intensity, severity,
patchiness, and seasonality; the potential for demographic support or recolonization by particular plant
and animal communities; postfire weather; the nature of fire suppression; and post-fire management.
Consequently, in the context of aquatic ecosystems, Rieman et al. (2003) asserted that accurately
predicting the effects of fire on aquatic life at any particular site is impossible with the current level of
knowledge. This statement appears to be applicable to most non-marketed resources at risk of wildfire,
which presents serious impediments to predicting wildfire-related social value change.
Scarcity of estimates of welfare change as a consequence of wildfire
Price-based approaches to wildfire policy analysis require non-market valuation of the forest values
summarised in Table 1. While many studies have examined non-market values of forests, surprisingly few
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have been conducted to estimate welfare change as a consequence of wildfire in the United States or
internationally.
International evidence suggests that the health costs of wildfire smoke can be substantial (Glover and
Jessup, 1999; de Mendonça et al., 2004); however, only one preliminary published study has attempted to
quantify the pecuniary cost of wildfire smoke on public health in the United States (Butry et al., 2001).
Chestnut and Rowe (1990) estimated willingness to pay for guaranteed levels of visibility at national parks
in the United States. These estimates have been widely cited and employed by the EPA to estimate
visibility benefits associated with air quality programs (EPA, 1997, 1999a, b), but they overestimate the
value of visibility improvement by approximately 70% (Smith et al., 2005). Knowledge about the
economic effects of wildfire on soil and water is poor (Neary et al., 2005), with the research by Loomis et
al. (2003) and Lynch (2004) appearing to be the only published studies that have estimated the cost of
sedimentation in particular reservoirs following wildfire in the United States. No published studies have
evaluated the welfare effects of soiling, indigenous cultural heritage conservation or long-term carbon
benefits and costs of wildfire.
Only two published studies have estimated changes in social welfare arising specifically from the
responses of wildlife to wildfire. Loomis and González-Cabán (1998) estimated the national marginal
WTP nationally to protect critical northern spotted owl habitat in California and Oregon from wildfire.
They found the social value of preventing the first 1000 acres/year of old growth forest burning is greater
than the annual national fire suppression expenditure by the Forest Service in recent high cost fire fighting
years. The fact that the Forest Service is under enormous pressure to reduce wildfire suppression costs,
seems to indicate that Loomis and González-Cabán (1998) may have overestimated the national marginal
WTP to suppress fire to protect the northern spotted owl. In the other study, Loomis et al. (2002)
estimated how average deer hunter welfare increased following fire in the San Jacinto Ranger District
(SJRD) of the San Bernardino National Forest in southern California.
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Recent studies have combined the travel cost and contingent valuation (CV) methods to estimate how
recreation values change over time in response to wildfire. Englin et al. (2001) estimated consumer
surplus for hiking trips in Wyoming, Colorado and Idaho, and found an initial positive annual consumer
surplus response for hikers in the first few years following a fire. This was attributed to the novelty of the
burned landscape, and wildflower and wildlife viewing. Annual hiker surplus was then estimated to
slowly decrease until about 27 years after the fire, and then increase until steady-state values associated
with a mature forest were established.
Loomis et al. (2001) examined the temporal effects of crown and non-crown (including prescribed) fires
on the welfare hikers and bikers in Colorado and found that the annual surplus of hikers and bikers from
the year of the fire to 50 years post fire were much higher after a crown fire than following a non-crown
fire or for the existing (pre-fire) forest condition. Relative to the existing forest conditions in New Mexico,
Hesseln et al. (2003) found that hikers and bikers would experience decreases in annual consumer surplus
following either crown or prescribed fire (the decline in surplus was found to be less for prescribed fires)
from the year of the fire to 40 years post fire. In contrast, Montanan hiker and biker welfare was
unaffected by crown or prescribed fire (Hesseln et al., 2004).
The value of private property in the WUI is a function of many structural, neighbourhood and
environmental attributes, including perceived wildfire risk and natural amenities that may be enhanced or
diminished by wildfire. Employing the hedonic pricing technique, Huggett (2003) found that the 1994
fires in Wenatchee National Forest, Washington, decreased WTP to live near the burned area for only the
first six months after the fire, after which property prices rebounded. However, Loomis (2004) found that
property values in a town two miles from the Buffalo Creek Fire in Colorado were about 15% lower five
years after the fire than they would have been if the fire had not occurred. This was attributed to an
increase in perceived wildfire risk and lost amenity values.
Fried et al. (1999) and Huggett (2003) found that WUI households in the states of Michigan and
Washington respectively, had limited WTP for forest management activities such as prescribed fire or
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mechanical thinning (which would affect amenity values) to reduce fuels on adjacent public land.
However, Kim and Wells (2005), Loomis et al. (2005) and Walker et al. (2007) found households in
Arizona, California, Colorado, Florida and Montana were willing to pay hundreds of dollars annually for
fuel treatments that would protect forest health, public recreation values, down stream water quality and
forest dependent wildlife, in addition to reducing the number of homes threatened by wildfire. These
findings indicate that households in some states are willing to pay to protect natural amenities from
wildfire, but none of these studies separated the welfare effects of changes in perceived wildfire risk from
changes in natural amenity provision.
Limited amenability of many non-traded resources affected by wildfire to valuation by benefit transfer
Conducting stated and revealed preference studies to value non-traded resources affected by wildfire is a
costly exercise. Benefit transfer methods have arisen in response to this limitation, but economists are
divided about the usefulness of these techniques (Boyle and Bergstrom, 1992; Splash and Vatn, 2006).
Some believe the methods are valid, while others believe that it is impossible to apply results from one
study to another because of differences in the attributes being valued, the cause and effect relationships
that define responses of ecosystems to policy or natural environment change, and social preferences. In the
context of wildfire in the United States, there are at least three limitations associated with transferring non-
market benefit and cost information from previous studies to new study sites.
Heterogenous wildfire preferences of society
If non-demographic factors, such as specific social and cultural values that affect preferences, are
important in explaining non-market values, then benefit transfer is not appropriate for valuation at a new
study site (Splash and Vatn, 2006). The limited economic research that has estimated the effects of
wildfire on the welfare of recreationists and homeowners indicates that wildfire preferences of society
varies substantially throughout the United States. On the basis of existing studies, an economist would
have little confidence in interstate benefit transfer of welfare change arising from wildfire. In addition,
social preferences are likely to vary over time, contributing to temporal biases with benefit transfer. For
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example, do severe wildfires, and the resulting change in scenery and vegetation composition and
structure, still have the novelty value they purportedly did at the time of the Englin et al. (2001) and
Loomis et al. (2001) studies?
Heterogenous responses of ecosystems to wildfire
Scientific information transfer is a common and often essential part of benefit transfer, but goes largely
unnoticed and is rarely noted (Splash and Vatn, 2006). The underlying cause and effect relationships that
define the responses of ecosystems to wildfire will, in part, determine the estimated welfare effects of fire
at a particular site. These relationships often differ appreciably between sites, even for the same types of
resources. Therefore, biases are likely to arise when transferring estimates from one study site to another.
For example, Despain et al. (2000) found that the topography in critical Mexican spotted owl habitat in
Colorado means there is low risk that wildfire will destroy large areas of foraging and nesting habitat for
this species in that state. Thus, any given fire in Colorado is likely to only marginally affect Mexican
spotted owl habitat, and the resultant loss in social welfare will be correspondingly small. In contrast,
Jenness et al. (2004) reported that high continuity of fuel in forests in Arizona and New Mexico means
there is a relatively high risk of losing substantial areas of Mexican spotted owl habitat to wildfire in those
states, including cool microsites and rocky outcrops that may have served as fire refugia in historic times.
Therefore, there is a higher risk that any given wildfire event could have a large effect on conservation of
this species in those states, resulting in a relatively large loss of social welfare. The difference in cause and
effect relationships and risk of substantial loss of Mexican spotted owl habitat between the states indicates
that the expected value of wildfire suppression activities to protect owl habitat will also differ substantially
between the states. Under these circumstances, estimating the value of Mexican spotted owl habitat at risk
from fire in New Mexico from a previous study performed in Colorado would generate biased and
nonsensical estimates.
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Effects of wildfire on the spatial and temporal provision of ecosystem goods and services differs from the
effects of other disturbances
To overcome the scarcity of information on welfare effects of wildfire, it is tempting to transfer welfare
change estimates arising from non-fire disturbances. However, wildfire effects on non-marketed goods
and services associated with forest ecosystems are unique and will differ spatially and temporally from the
effects of other types of disturbances, such as severe storms, logging, land clearing and climate change
(DellaSala and Frost, 2001; Franklin et al., 2001; Kauffman, 2004). Consequently, findings of studies that
evaluate welfare change in the context of non-fire related disturbances are unlikely to be transferable to
the fire context.
Dearth of studies that have estimated marginal willingness to pay
There is a large and increasing volume of literature reporting estimates of society’s WTP to conserve
particular species and other non-traded goods and services provided by the natural environment. However,
most of these studies have estimated total or average WTP (van Kooten and Bulte, 2000; Rosenberger and
Loomis, 2001)2. Since any particular fire (and most other natural or anthropogenic disturbances) will
typically only affect the provision of non-market goods and services at the margin, these studies fail to be
useful for economic analysis of resource conservation strategies in response to a particular disturbance
event (Loomis and White, 1996; van Kooten and Bulte, 2000). Total and average WTP is only likely to be
appropriate for analysis where large fires are burning in ecosystems that provide unique services, such as
critical habitat for T&E species or locally rare, but non-T&E species, that have vulnerable, isolated
populations in the vicinity of the fire event. In response to scarce marginal data, linear relationships
between expected value and probability of species survival have been adopted in the literature to generate
marginal WTP schedules (Spring and Kennedy, 2005), but this is not supported by economic theory.
Violation of consumer budget constraints
2 Notable exceptions where marginal conservation benefits for wildlife have been estimated include Montgomery et
al. (1994) and Loomis and González-Cabán (1998).
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The focus of most non-market valuation studies is on valuing a particular characteristic of the
environment, such as spotted owls. A concern with this approach is that respondents may not recognise
that their WTP for the particular environmental good evaluated in the survey is only one of many
substitute and complementary goods that they can spend their money on, and that they face personal
budget constraints. For example, the sum of household willingness to pay to preserve several T&E species
of the western United States, namely the bald eagle, grizzly bear, bighorn sheep, northern spotted owl,
whooping crane, gray wolf, sea otter, gray whale and steelhead trout is $450 per annum in 2006 dollars
(adjusted by the consumer price index from estimates reported in van Kooten and Bulte (2000)). Is the
average household in the United States willing to make additional payments annually to preserve other
T&E species such as the white sturgeon, bull trout, Canada lynx and black-footed ferret?
In the western United States, a particular fire is unlikely to affect many T&E species, but will affect many
other non-marketed resources that have traditionally been evaluated in isolation by economists, such as
water, air and recreation quality. Summing WTP estimates from several non-market valuation studies that
have each evaluated a single environmental characteristic at risk from wildfire is unlikely to be valid,
because of the high likelihood that the budget constraints of respondents will be violated (van Kooten and
Bulte, 2000). Consequently, Loomis and White (1996) argued that studies valuing the protection of
habitats and ecosystems are likely to be much more useful for evaluating ecosystem management
strategies than valuing the conservation of individual species. To date, few such studies have been
published.
Valuation of indigenous cultural heritage is unlikely to be feasible
Even in the context of a developed market society, economists, ecologists and environmentalists have
expressed doubts about the degree to which non-market valuation techniques can estimate total economic
value (Diamond and Hausman, 1994; Nunes and van den Bergh, 2001). It is likely that members of
indigenous cultures hold many more non-use and indirect-use values than non-indigenous people. In this
context, sacred values are particularly important, and particularly resistant to price-based trade-offs. If the
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total economic value of indigenous cultural heritage cannot be captured by price-based valuation
approaches, then indigenous values will be systematically underrepresented relative to non-indigenous
values in price-based economic analyses of alternative resource management policies.
Adamowicz et al. (1998) and Venn and Quiggin (2007) found that, in addition to the traditionally
identified non-market valuation method biases, there are likely to be several areas where non-market
valuation efforts may fail in an indigenous context. These include: a lack of substitutability of other goods
for some types of indigenous cultural heritage; gender, generational and other demographic effects on
values that indigenous people attribute to cultural heritage; and systematic differences in income levels
between indigenous and non-indigenous people. Venn and Quiggin (2007) concluded that it is unlikely to
be feasible to achieve total economic valuation of indigenous cultural heritage using contemporary social
welfare theories and non-market valuation methods, which do not account for the social welfare concepts,
property rights regimes and political structures of indigenous communities.
An alternative to non-market valuation for accommodating effects of wildfire on non-marketed
resources
In light of the challenges associated with accommodating non-marketed resources at risk from wildfire
within a social BCA framework, it is little wonder that price-based approaches to supporting wildfire
management have been unsatisfactory in the modern wildfire policy environment. The authors do not
argue that it is impossible to assess wildfire-related resource value change, but rather that with the
exception of a few well-studied forest areas, total economic valuation of wildfire effects will require
extensive ecological and socio-economic research. In the meantime, however, wildfire managers must
continue to make resource allocation decisions. Until more estimates of social value change arising from
wildfire become available, alternative wildfire decision support frameworks should be considered.
A critical component of any wildfire decision-support framework is that resource effects information must
be made available within a ‘real-time’ environment, and represent important resource values and tradeoffs
without overloading the decision maker with information. Further, it must recognize that the Forest
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Service relies on local managers to develop wildfire suppression strategy, but is currently looking for
additional oversight and new performance measurement systems to inform national suppression cost
efficiency efforts (Strategic Issues Panel, 2004). Thus, the most useful and feasible fire management
decision support system may currently be a relatively simple proxy that identifies general trends for the
suite of values that cannot be easily incorporated within a monetary framework, while recognizing the
current Forest Service ecosystem management paradigm.
Ecosystem management has been touted as the new paradigm for public land management in the United
States (Gillis, 1990; Christensen et al., 1996; Brussard et al., 1998). Grumbine (1994, p. 31), defined
ecosystem management as the integration of ‘scientific knowledge of ecological relationships within a
complex sociopolitical and values framework toward the general goal of protecting native ecosystem
integrity over the long term’. Forest planners have used many approaches to evaluate areas for possible
management treatments and activities to support the ecosystem management paradigm. Sustainable
ecosystem approaches attempt to manage landscapes so there is no net loss of current ecosystem elements
(Lackey, 1998; Sessions et al., 1999), but this assumes that the landscape is currently healthy and fully
functioning. Some land management agencies have used the concept of desirable future conditions to
develop forest management plans, but there are many factors that are outside of the control of land
managers, such as wildfire, insect epidemics, and exotic invasions, that render a plan to achieve desired
conditions ineffective (Brussard et al., 1998; Allen et al., 2002; Platt et al., 2006). Maintaining ‘properly
functioning conditions’ is another strategy proposed for land management but it is difficult to define,
measure, and evaluate what is ‘properly functioning’ (Campbell Jr. and Bartos, 2001). These land
management strategies, while important and viable, appear to be missing a benchmark or baseline to
evaluate the health, status, and integrity of ecosystems.
Departure from historic range and variability
A central tenet of the expanding field of restoration ecology is that ecological reference conditions are
useful for developing ecologically justifiable goals for restoration programs and that resource management
19
should aim to retain ecosystems within the natural range and variation of that system to maintain their
resiliency (Covington et al., 1997; White and Walker, 1997; Landres et al., 1999). Consequently,
knowledge about natural ecological patterns and processes is increasingly being recognised as a
prerequisite ‘base datum’ for planning and management of wild landscapes (Cissel et al., 1999; Hann et
al., 2003; Keane et al., 2006a). Ecologists and other scientists have used several phrases to refer to past
ecological conditions and processes. The term historical range and variability (HRV) is adopted here.
For the purposes of ecological assessment in the western United States, USDA and USDI (2000) defined
HRV as the estimated natural fluctuation of ecological and physical processes and functions that would
have occurred during a specified period of time prior to settlement by Euro-Americans, i.e. pre 1850 to
1900. HRV is in reference to vegetation types, compositions and structures, fire regimes, fish and wildlife
habitats and populations, and does include the management practices of native Americans prior to
European settlement.
Keane et al. (2006a) described three approaches to quantifying HRV landscape dynamics and asserted that
simulation methods have the most promise for estimating disturbance and succession processes in the
western United States. Departure from HRV provides a way to measure how much disturbance regimes
and ecological systems have changed. The higher the departure from the HRV, the lower is a region’s
ecological integrity in terms of present and operating ecosystem processes and functions, and the less
desirable are the consequences for ecosystems (USDA and USDI, 2000). Keane et al. (2006b) described
statistical algorithm and simulation methods used to generate HRV and departure indices for the
LANDFIRE project, which appear suitable for modification and extension to many applications, including
non-marketed resources at risk from wildfire.
Although reducing departure of current landscapes from HRV has not yet been applied to support ‘real-
time’ wildfire management decisions, there is growing scientific consensus that the approach is suitable
for guiding long-term conservation of many non-marketed resources at risk from wildfire in the United
States (Covington et al., 1997; DellaSala and Frost, 2001; Keane et al., 2002; Hessburg and Agee, 2003;
20
Kauffman, 2004; Van Lear et al., 2005). In ponderosa pine ecosystems of the western United States, a
return to the historic fire regime of more frequent and less severe fires will create landscapes that will be
more similar to those that occurred historically, and these landscapes will contain lower and less
contiguous fuel accumulations that will reduce the chance of uncharacteristically severe, stand replacing
wildfires. Historic fire regimes will improve the ecological health, integrity, and resilience of these
ecosystems by thinning stands, reversing tree and shrub invasion of grasslands, and providing a shifting
mosaic of patches and habitats for flora and fauna that will facilitate biodiversity conservation and reduce
the potential for epidemic infestations of insects and disease (Mutch et al., 1993). Lower stand densities
will reduce transpiration and canopy interception of rain and snow, which is likely to increase streamflow
and soil water (DeBano et al., 1998). Less severe wildfires consuming less biomass per unit area are also
likely to be less damaging to soil physical properties, water quality and aquatic biota, and reduce PM and
carbon emissions per acre burned. Since native American culture evolved with and contributed to historic
fire regimes, it is probable that indigenous cultural heritage values will be better conserved under historic
fire regimes than contemporary fire regimes (Keane et al., 2006a). It can also be argued that, if historic
fire regimes better conserve many of the non-market attributes that recreationists value, then recreation
values may also be best conserved by historic fire regimes.
Measures of ecological departure from HRV could be used as a proxy for social value change arising from
wildfire for those resources where estimation of value change at the margin is challenging. A departure
index, or several departure indices representing different ecological characteristics, could be computed
from a statistical algorithm that compares ecosystem characteristics of the current landscape and simulated
post-fire landscape with the simulated characteristics of the historical landscape. If the post-fire landscape
is estimated to reduce departure from HRV relative to the current landscape, and market and other values
at risk are low, then this would support a management decision to let the fire burn. Alternatively, if the
post-fire landscape is estimated to increase departure from HRV relative to the current landscape, then
suppression may be warranted.
21
There is debate about the usefulness of historical conditions in ecosystem management. In particular, to
apply HRV in resource management it must be assumed that the record of historical conditions is
reflective of possible future landscape conditions. However, this may not be the case because of factors
such as climate change, exotic species introductions and human land use (Keane et al., 2006a; Westerling
et al., 2006). Some concerns about HRV appear to have arisen from a narrow conception of the departure
from HRV approach to natural resource management. Departure from HRV is not about attempting to
create an exact replica of historical conditions, but to study an ecosystem’s past disturbance history and
develop general intuitive models of a desired future condition for that ecosystem. Climate and other
ecological changes can and should be accommodated within the HRV framework. Also, departure from
HRV can be assessed in a way that accommodates many ecological criteria in addition to the fire regime
and vegetation characteristics, including populations of selected species (Hann et al., 2003).
Concluding comments
United States federal wildfire policy has been modified to recognise the beneficial ecological role of fire
and acknowledge the need for measures of economic efficiency of wildfire suppression to accommodate
non-market values. In this new policy environment, price-based models to support wildfire management
will be useful only if they can accommodate social benefit-cost analyses of wildfire events by accounting
for change in the total economic value (use and non-use value) of resources at risk from wildfire. Given
the current state of scientific and economic knowledge about wildfire effects on ecosystems and social
welfare, this appears unlikely.
Until fire effects on ecosystem functions and social welfare are more fully understood, measures of
departure of ecosystems from their historical range and variability (HRV) of ecological characteristics are
likely to provide one of the more useful sources of knowledge for predicting wildfire effects on ecological
conditions and welfare, and for supporting future management of fire-adapted ecosystems. However,
departure from HRV is not a panacea for wildfire decision-support – there will still be difficult tradeoffs
and decisions to make. Nevertheless, the method does appear to provide a framework useful for
22
considering potential fire effects on many non-market attributes for which estimating social welfare
change remains challenging. Further investigation of the departure from HRV method is required to
confirm which non-market values can be meaningfully accommodated, to develop departure indices for
non-market values that convey relative magnitudes of benefits and costs of wildfires, and to determine
how the non-pecuniary information generated can be best integrated with pecuniary benefit and cost
information to support wildfire management decisions. The authors are examining these issues as part of
continuing research on wildfire decision-support.
Acknowledgments
We are grateful to the Forest Service Wildland Fire Research Development and Application Program for
funding this research. The authors would also like to thank Bob Keane, Research Ecologist from the
Rocky Mountain Research Station Fire Sciences Laboratory for his critical and insightful comments on
earlier versions of this paper.
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Table 1. Positive and negative effects of wildfire on non-marketed forest values Non-market resource
Positive fire effects Negative fire effects Sources
Air quality • Human respiratory health • Reduced visibility at scenic vistas and on roadways • Soiling surfaces of objects
Sandberg et al., 2002
Soil • Short-term increased availability of nutrients for plant growth
• Soil structure is lost (reducing soil porosity) • Nutrients are volatised or made susceptible to loss through
leaching and surface runoff • Can make soils hydrophobic • Accelerates wind and rain erosion, and dry ravel
Ice et al., 2004; Neary et al., 2005
Water quality
• Increased peak flood flows, and increased sediment and debris washed into waterways can damage or reduce the effective life of infrastructure including bridges, dams, water distribution systems and hydroelectric power turbines
• Impair suitability of water for municipal and other purposes, which increases water treatment costs
Landsberg and Tiedemann, 2000; Scatena, 2000; Neary et al., 2005
Recreation • Improved wildflower and wildlife viewing • New scenic vistas may be revealed • Novelty of a burned forest • Improved ungulate habitat increasing hunting success • Improved fish habitat in the long-run increasing fishing
success
• Campsites destroyed • Debris on hiking, biking and four-wheel-drive trails • Burned forest may be aesthetically displeasing • Short to medium-term reduction in fishing success due to
stream habitat deterioration
Despain et al., 2000; Englin et al., 2001; Keane et al., 2002; Toman, 2006
Flora, fauna and invasive species
• Short-term increase in wildlife foods and habitat diversity often increases the numbers of individuals and species of birds, mammals, reptiles, terrestrial amphibians and insects
• Low severity fire will favour native plants adapted to wildfire and facilitate ecosystem restoration
• Conservation of locally rare plants is improved by diverse disturbance histories
• Diverse disturbance histories likely to reduce the potential for epidemic insect and disease infestations
• Long-term improvement of aquatic habitat quality
• Decades of fuel accumulation due to fire suppression means that contemporary wildfires have a greater probability of being large, severe and stand replacing. This may have long-lasting negative ecological consequences, particularly for threatened and endangered flora and fauna.
• Short-term highly negative impact on stream amphibians and fish
• Some exotic plant species are adapted to colonise post-fire landscapes
Hessl and Spackman, 1995; Hutto, 1995; Lyon and Smith, 2000; Keane et al., 2002; Rieman et al., 2003; Bury, 2004; Burton, 2005; Rinne and Jacoby, 2005
Cultural heritage
• Wildfire consistent with historical fire regimes is likely to maintain or enhance cultural heritage
• Uncharacteristic wildfire may be detrimental to or destroy cultural heritage
See text
Carbon • More frequent wildfire will limit fuel accumulation such that future wildfires will be less severe and emit less carbon
• Potentially large immediate release of sequestered carbon See text
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