INTRODUCTION
Adaptive management (AM) is natural resource management conducted in a manner that purposely and explicitly increases knowledge and reduces uncertainty (Holling Reference Holling1978; Walters Reference Walters1986). Developed by C.S. Holling and Carl Walters, and originally termed adaptive environmental assessment and management, AM emerged in the literature in the mid-1970s in response both to a realization of the extent of uncertainty involved in management (Holling Reference Holling1978; Walters & Hilborn Reference Walters and Hilborn1978), and a frustration with attempts to use modelling to integrate knowledge and make predictions (Walters Reference Walters2007). Holling and Walters’ concept directly linked experimentation in management with a formal process of hypothesis testing and assessment of system response. It also provided a role for wider stakeholder participation, reversing the traditional approach to management based on centralized planning, top-down decision-making and control, with its many limitations (including the exclusion of other interests), and often adverse ecological outcomes (Holling & Meffe Reference Holling and Meffe1996).
Numerous resource management agencies, multinational non-governmental organizations (NGOs) and international policy bodies embraced the idea (Williams & Johnson Reference Williams and Johnson1995; USEPA [United States Environmental Protection Agency] 2000, 2007; Salafsky et al. Reference Salafsky, Margoluis and Redford2001; CBD [Convention on Biological Diversity] 2004; Linkov et al. Reference Linkov, Satterstrom, Kiker, Batchelor, Bridges and Ferguson2006; CMP [Conservation Measures Partnership] 2007; Nature Conservancy 2007; WWF [World Wildlife Fund] 2007). AM is firmly established in natural resource management agency practice in the USA at all levels, even without much statutory, regulatory or judicial mandate (Ruhl Reference Ruhl2008). Many smaller projects and initiatives followed this trend (for example McCarthy & Possingham Reference McCarthy and Possingham2007), and the approach is widely cited in the academic literature as an aspiration for natural resource management (Johnson Reference Johnson1999). Indeed, AM has become ‘something of a mantra among conservation ecologists and natural resource managers’ (Karkkainen Reference Karkkainen2003) being included as one of the normative concepts in conservation (Callicott et al. Reference Callicott, Crowder and Mumford1999) With the surge of interest in AM, the concept has become increasingly commonly simplified, misrepresented or misunderstood (Parma et al. Reference Parma, Amarasekare, Mangel, Moore, Murdoch, Noonburg, Pascual, Possingham, Shea, Wilcox and Yu1998). Efforts have been made to clarify the core principles as originally stated, including a distinction made between active and passive AM (see for example Schreiber et al. Reference Schreiber, Bearlin, Nicol and Todd2004). Active AM (AAM) is described as management where options are viewed as hypotheses to be tested; experimentation is key and both formalized learning and management are objectives. In contrast, passive AM (PAM) implements a single preferred course of action based on the best available modelling and planning, which is then modified as experience grows (Bryan et al. Reference Bryan, Kandulu, Deere, White, Frizenschaf and Crossman2009; Owens Reference Owens2009; Benson & Garmestani Reference Benson and Garmestani2011).
Despite such efforts, significant misunderstanding and ambiguity persists. In many cases, AM is described as representing simply management ‘that incorporates past experience’ (Varley & Boyce Reference Varley and Boyce2006) or ‘learning by doing’ (Feldman Reference Feldman2008). Indeed, managers who use a trial-and-error approach to contend with changing resource systems argue that they are already using AM. These misperceptions confound an understanding of what AM requires, how it has been implemented to date, with what accomplishments, and with what future potential (Jacobson et al. Reference Jacobson, Hughey, Allen, Rixecker and Carter2009; Allen et al. Reference Allen, Fontaine, Pope and Garmestani2011). For example, two divergent perceptions about the use of AM exist in the literature. Some claim AM is a well-developed approach with a wide body of implementation experience, namely ‘. . .a well-established concept that has received significant theoretical attention’ (Eberhard et al. Reference Eberhard, Robinson, Waterhouse, Parslow, Hart, Grayson and Taylor2009), and ‘a concept that has been increasingly adopted in natural resource management’ (Mackenzie & Keith Reference Mackenzie and Keith2009). Others argue that examples of actual implementation are rare and instances of success even rarer, namely ‘. . .few successful practical applications of the adaptive management framework’ (Bryan et al. Reference Bryan, Kandulu, Deere, White, Frizenschaf and Crossman2009), and ‘documented failure rates are high’ (Eberhard et al. Reference Eberhard, Robinson, Waterhouse, Parslow, Hart, Grayson and Taylor2009).
In an attempt to highlight and resolve some of this ambiguity, we review the use of the term AM and the approach that it signifies in recently published natural resource management and conservation literature. We document the broad geographical locations, systems, and management contexts in which AM has been discussed or implemented; the components of AM that have been applied; and, where information permits, with what outcomes. Specifically we ask: how is the term AM being used? Does its use vary among published articles and what are the particular points of divergence? To what extent has the practice of AM developed in recent years? Finally, what lessons have been learnt from its application and what challenges remain in applying AM successfully?
METHODS
A search of ISI Web of Knowledge for 2009 generated 295 records that contained the words ‘adaptive management’ in their text, title, abstract or keywords. We chose 2009 as this was the most recent full year available to us when starting the study; time did not permit a multi-year review. Papers from 2008 (123 articles) were reviewed initially to test the protocol, following revisions the review was extended to 2009. For the sake of consistency, only the 2009 data are analysed here. Nevertheless, the patterns observed in the smaller 2008 set were similar to those of 2009, giving us confidence that our results reflect a broader pattern. Symposia introductions, response articles (which did not address the AM aspects of the original article) and foreign language publications were excluded. Once duplicate records and papers unrelated to natural resource management were removed, we were left with 187 papers. These were reviewed in two groups: those that discussed AM generally, and those that reported its application.
For both sets of papers we recorded the geographical location of the study, the natural resource of interest, and the scope or scale of management (both from an ecological perspective and from the standpoint of the stated management objectives). The broad management context of the study was also recorded, for example addressing climate change or managing invasive species. Where authors defined AM this was recorded, along with citations of seminal articles or more recently published work. Whereas papers typically cited AM references throughout, we focused only on those citations given in support of a definition of AM. We considered seminal articles to be: Holling (Reference Holling1978); Walters and Hilborn (Reference Walters and Hilborn1978); Walters (Reference Walters1986); Walters and Holling (Reference Walters and Holling1990); Lee (Reference Lee1993); Hilborn et al. (Reference Hilborn, Walters and Ludwig1995); Holling (Reference Holling1996); and Holling and Meffe (Reference Holling and Meffe1996). Although other important papers have been published subsequently, these seven encompass Holling's and Walters’ original ideas and the early studies that developed the concept further. Finally, we noted the context in which AM featured: for example, whether a paper advocated AM for tackling a specific management problem or where it made more passing reference to the approach.
AM, as originally stated, has both a formal definition (Walters & Hilborn Reference Walters and Hilborn1978; Walters Reference Walters1986; Walters & Holling Reference Walters and Holling1990) and specific requirements for application. As such, in the application papers, we assessed if the study adhered closely to the original concept, as reflected in our understanding of its key components based on elements outlined in Walters (Reference Walters1986, p. 9) and Holling (Reference Holling1978, p. 20):
(1) Participation of those outside the management institution in order to manage conflict and increase the pool of contributions to potential management solutions,
(2) Defining and bounding of the management problem, including the setting of management objectives,
(3) Representing existing understanding through system models that include assumptions and predictions as a basis for further learning,
(4) Identifying uncertainty and alternate hypotheses based on experience,
(5) Implementation of actions/policies to allow continued resource management or production while learning (reducing uncertainty),
(6) Monitoring of the effect of implementing new policies,
(7) Reflection on, and learning from, monitoring results, comparison with original expectation in order to revise models and/or management actions based on what has been learned, and
(8) Iterative repetition of this cycle (points 1–6 above) so that management reduces uncertainties and leads to improved management outcomes over time.
We assessed which of these was most commonly acknowledged or, conversely, omitted. The assessment was based only on explicit description of a completed activity, or of one planned but not yet implemented, within the paper, nevertheless this provided insights into the use of the concept.
DEFINITIONS AND APPLICATIONS
Of the 187 papers assessed, 56% advocated the use of AM. Most of these only briefly referred to AM, highlighting it as the preferred approach to management. None assessed its feasibility in the given context, nor did any explore other ‘non-adaptive’ options. Another 29% included AM in the abstract, conclusion or keywords with no elaboration in the paper or a clear link to the main research presented. Indeed, one paper contained ‘adaptive management’ in the title but without subsequent reference to the concept. Seven per cent critiqued AM in some way, either in theory or in its application. Only 8% (15 papers) actually reported having implemented AM.
Only 18% of papers defined AM. Three gave their own definitions; the rest (31 papers) paraphrased or cited existing definitions. Many of these were rather brief and did not make specific reference to stages or components of the process but rather focused on its underlying premise or ideology. Eleven quoted one or more of the seminal articles, 13 cited seminal articles along with new work, and seven only cited recent work. These recent works included reports from the Canadian Forest Service and The British Columbia Ministry of Forests (Canadian Forest Service 2011; Nyberg Reference Nyberg, Sit and Taylor1998) as well as discipline-specific journal articles (Kay & Alder Reference Kay and Alder2005), articles reporting on the application of AM (Nichols Reference Nichols2000) and those assessing its usefulness (Wilhere Reference Wilhere2002).
In looking at the geographic location in focus in the papers, the largest proportion notably related to North American systems, where AM was originally developed; Australia also featured prominently (Fig. 1). In contrast, Asia, South America and Africa were represented by only a small number of studies (Fig. 1). Nearly half the papers focused on terrestrial systems, more than twice the amount that considered marine systems (Fig. 1).Water and biodiversity were the two largest natural resource categories, each accounting for > 20% of papers. Fisheries, the focus of much early discussion of AM, accounted for only 7% of studies (Fig. 1). Studies with a landscape scope were most common, single species studies the least (Fig. 1). Studies where management focused on achieving a specific, usually narrow, conservation objective, or for the supply of a particular resource, were more common than integrated or multi-objective management objectives (Fig. 1). Although 24% of papers addressed contexts where the management problem encompassed multiple challenges, the broad context for most studies was the management process itself (for example data sharing or management appraisal), followed by climate change and sustainable use (Fig. 1).
A distinction between ‘active’ and ‘passive’ AM featured in several of the papers, yet was inconsistent among them (Table 1). Active AM was framed by some as a process in which different management actions designed to achieve a specified goal are tested simultaneously, akin to experimental treatments (see Bryan et al. Reference Bryan, Kandulu, Deere, White, Frizenschaf and Crossman2009; Dzus et al. Reference Dzus, Grover, Dyer, Cheyne, Pope, Schieck, Villard and Jonsson2009). Most did not specify the need to test a range of options simultaneously, but focused on learning as an explicit objective of management being the key differentiating feature (for example Bond & Loomis Reference Bond and Loomis2009; Lawler Reference Lawler2009; Owens Reference Owens2009). Others highlighted quantitative system modelling as the distinguishing feature of AAM (Jacobson et al. Reference Jacobson, Hughey, Allen, Rixecker and Carter2009). Wilson et al. (Reference Wilson, Carwardine and Possingham2009) suggested three options: passive, active and experimental AM, but their definitions for active and experimental AM both focus on deliberate learning and are not clearly distinguishable (that is, they contrast ‘manage optimally for learning’ with ‘manipulation of the system to maximize the speed of learning’; see Table 1).
APPLICATION OF ADAPTIVE MANAGEMENT
Taking those 15 papers which reported having applied AM, how does the management described in each correspond to the AM framework (see list of AM components in methods)? On average each paper included less than five of the eight components. Those most commonly omitted were participation and iteration of the management cycle (Table 2). In some cases this was a consequence of management still being in the assessment and planning phase; for others one cycle was completed but no indication given of the intention for an iterative process. Of the 15, assuming benefits can be obtained before completing a full management cycle, nine studies reported using AM successfully, one reported implementation as a failure (Norgaard et al. Reference Norgaard, Kallis and Kiparskya2009) and five provided no statement on the outcome.
Of those reporting success, this was either in terms of enhanced stakeholder involvement (Bryan et al. Reference Bryan, Kandulu, Deere, White, Frizenschaf and Crossman2009), progress towards achieving management objectives (Bryan et al. Reference Bryan, Kandulu, Deere, White, Frizenschaf and Crossman2009; Eberhard et al. Reference Eberhard, Robinson, Waterhouse, Parslow, Hart, Grayson and Taylor2009; Mackenzie & Keith Reference Mackenzie and Keith2009), or informative assessment and monitoring (Ascoli et al. Reference Ascoli, Beghin, Ceccato, Gorlier, Lombardi, Lonati, Marzano, Bovi and Cavellero2009; Blackstock Reference Blackstock2009; Bryan et al. Reference Bryan, Kandulu, Deere, White, Frizenschaf and Crossman2009; Castley et al. Reference Castley, Hill, Pickering, Hadwen and Worboys2009; Densmore & Karle Reference Densmore and Karle2009; Melzer et al. Reference Melzer, Twyford, Rowston and Augusteyn2009; Newlin & Johnson Reference Newlin and Johnson2009). Five studies had more than one objective in management, and five focused on management at a landscape scale. None included an assessment of success in relation to possible ‘non-AM’ alternatives. Several noted challenges to implementation (Table 3). We identified four categories of constraints amongst the studies (there may however be others that did not feature in the studies we reviewed): (1) logistical, financial and staffing constraints; (2) the need for a supportive institutional environment; (3) challenges relating to experimentation within a management framework; and (4) problems relating to spatial and temporal scale (Table 3). For example, Norgaard et al. (Reference Norgaard, Kallis and Kiparskya2009) highlighted the difficulties of identifying indicators to assess the state and trajectory of the system in the face of other drivers of change in addition to management interventions, often acting at larger scales. Which of these is specific to AM, as opposed to management generally, was, however, not always clear.
APPRAISING ADAPTIVE MANAGEMENT
In addition to papers describing applications of AM, 13 studies appraised the benefits and drawbacks of AM, including instances of premature assessment (Simberloff Reference Simberloff2009), benefits in relation to the integration of ecological research within management decision-making (Gosselin Reference Gosselin2009), collaborative governance (Kallis et al. Reference Kallis, Kiparsky and Norgaard2009; Sagoff Reference Sagoff2009), dealing with complex problems and uncertainty (Boyd & Svejar Reference Boyd and Svejcar2009; Prato Reference Prato2009a, Reference Pratob, c), evaluations of its utility through modelling (Bond & Loomis Reference Bond and Loomis2009; Martin et al. Reference Martin, Runge, Nichols, Lubow and Kendall2009, Rout et al. Reference Rout, Hauser and Possingham2009), and discussion of separate discourses (Jacobson et al. Reference Jacobson, Hughey, Allen, Rixecker and Carter2009; Owens Reference Owens2009). None assessed the benefits or costs of AM in the field, including in relation to possible alternatives.
Several modelling studies showed the benefits of deliberate learning, but only in relation to specific models and their parameterizations. Bond and Loomis (Reference Bond and Loomis2009) used numerical dynamic programming to estimate when to experiment, and by how much, thereby determining the trade-off between meeting short-term management goals and longer-term learning to improve management. They found a small benefit of active over passive learning, but how much to experiment depended critically on the level of uncertainty in the system and on the managers’ conception of this. Rout et al. (Reference Rout, Hauser and Possingham2009) also assessed the optimal balance between short-term management objectives and the longer-term benefits of learning. When uncertainty was high and there was time to benefit from new knowledge, the potential advantages to management (of an active approach) were significant. This was a simulation study, however, so actual success (or failure) could not be assessed. While these results are likely to be specific to the model and the parameters used, these studies illustrate two points. First, the actual benefit gained by experimentation depends on the true underlying ecosystem parameters about which there is uncertainty. For example, if management is concerned about crossing a threshold that would lead to undesirable consequences and there is uncertainty about this threshold, if the true value of the threshold is low, then despite expected benefits from experimentation passive learning can perform equally well. Second, they highlight the key role of the decision-makers’ inherently subjective beliefs in shaping values towards experimentation.
DISCUSSION
Definitions of adaptive management
Much ambiguity still surrounds AM. The term has been used to describe anything from formal natural resource management or conservation experiments (see for example Ascoli et al. Reference Ascoli, Beghin, Ceccato, Gorlier, Lombardi, Lonati, Marzano, Bovi and Cavellero2009), to modelling management options (see Newlin & Johnson Reference Newlin and Johnson2009), or encouraging participation and social learning (see Levrel et al. Reference Levrel, Etienne, Kerbiriou, Le Page and Rouan2009). Some variation is to be expected, either when a concept is defined in a specific context, or when elaborating it to accommodate new circumstances or particular needs as, for example, in concepts of adaptive comanagement or adaptive collaborative management (Pierce Colfer et al. Reference Pierce-Colfer2005). Different interpretations also reflect the diverse array of natural resources and management circumstances. Nevertheless, AM has both a formal definition and specific operational requirements. If used loosely, the concept risks being weakened, its core ideas obscured and its utility limited. Applying a concept effectively, including in environmental management, depends both on explicit definition of its core elements and on clearly framing that meaning in a given case (Pickett et al. Reference Pickett, Kolasa and Jones1994). Apart from providing clear direction, this promotes a common understanding of intentions, actions and both anticipated and actual outcomes, which fosters shared learning and promotes progress (Runge Reference Runge2011). Additionally this would aid more efficient policy formulation and the provision of incentives to overcome barriers to the implementation of AM, including technical challenges (see Moore et al. Reference Moore, Fonnesbeck, Shea, Lah, McKenzie, Ball, Runge and Alexander2011)
Many who use the term AM rarely define it clearly or specify just how to apply it. Too often it seems to be used as a buzzword: for example, we identified one paper where AM featured in the title but nowhere else in the paper. The ubiquitous use of the term creates the illusion of a large literature, when in reality its practical application and evaluation is not so extensive. Increasing reference to new literature might reflect development of the concept beyond Walters’ and Holling's original work, but we found that although several authors cited new work, most simply relied on seminal articles, even while sometimes misstating the core concepts. Greater attention needs to be given to adhering to the definition and description of AM by both the scientific and policy communities so that new ideas can develop, and the original concept evolve (Allen et al. Reference Allen, Fontaine, Pope and Garmestani2011; Runge Reference Runge2011). More specifically, for management to be considered as AM it must include a formalized process of learning, preferably combined with deliberate experimentation, a core concept of AM (Walters Reference Walters2007). By formalized learning we refer to comparison with original expectation in order to revise models and/or management actions based on what has been learned, this includes specific articulation of what information is being sought and precisely how it will change future decisions (Runge Reference Runge2011).
Active and passive adaptive management
The distinction between passive and active AM is a particular point of confusion. Walters and Holling (Reference Walters and Holling1990) emphasized a distinction between ‘active’ and ‘passive’ adaption in management. Their article suggested that most management is characterized by passive adaptation to change and they proposed AM as an alternative to this; rather than specifically presenting passive and active as two alternatives of AM. However, a general characterization of these two as alternative ‘versions’ of AM is common the literature (see Williams Reference Williams2011a). For example, McCarthy and Possingham (Reference McCarthy and Possingham2007) described PAM as that in which learning occurs serendipitously and is then incorporated into management plans; other authors give similar interpretations (Bond & Loomis Reference Bond and Loomis2009; Martin et al. Reference Martin, Runge, Nichols, Lubow and Kendall2009; Rout et al. Reference Rout, Hauser and Possingham2009; Williams Reference Williams2011a). To some extent, all managers change what they do in response to continuous learning about and interaction with the system in question. Reflecting on actions typically leads at some point to the revision of management decisions; a manager would normally make use of past experiences when making decisions. Hence, what specifically is novel about ‘passive’ AM as opposed to ‘normal’ or ‘best practice’ management? In many cases PAM is currently being used as a new label for conventional ways of managing. Using monitoring and reflection to improve outcomes and to ensure that management decision-making and policy implementation are more defensible can be considered good practice, but not specifically AM.
Williams (Reference Williams2011a) considered that it is the use of what is learned to adjust management strategy that distinguishes AM. We argue that, in fact, all management adjusts in response to learning; it is rather the formalization of the learning process, often combined with explicit experimentation in order to aid learning about the structure of the biological and ecological relationships that drive resource or system dynamics that are the defining characteristics of AM. PAM can then be contrasted from AAM as that which retains this formalized learning as a process underlying the adjustment of management decisions but which does not explicitly experiment (Jacobson et al. Reference Jacobson, Hughey, Allen, Rixecker and Carter2009). For example, The US Fish and Wildlife Service's Adaptive Harvest Management programme, while not involving experimentation as such, incorporates competing models of waterfowl population dynamics and harvest impacts together with model averaging to compute optimal strategies for regulating harvest (Johnson Reference Johnson2011; US Fish & Wildlife Service 2011). Here, the emphasis is on managing a dynamic system in the face of uncertainty, with reduction of uncertainty not occurring experimentally, but rather through ongoing management adjustments and monitoring of the system.
We suggest that coining of the term ‘active AM’ was an attempt to refocus on the experimentation element that Walters and Holling's work emphasized (Walters Reference Walters2007), an observation supported by Allen and Gunderson (Reference Allen and Gunderson2011). While subdivision of the AM concept into passive and active approaches has been useful, we believe that refocusing on deliberate experimentation as articulated by Walters and Hollings may also hold promise for further development of the AM concept. While AM in its entirety is certainly more than this (see list of AM components in Methods), one of its novelties lies in the idea that experimentation is necessary in order to learn about a system, a focus that has been lost (Walters Reference Walters2007; Walters & Holling Reference Walters and Holling1990).
The myths and realities of adaptive management
AM is claimed by some to be a well-developed approach (for example Eberhard et al. Reference Eberhard, Robinson, Waterhouse, Parslow, Hart, Grayson and Taylor2009). This is not necessarily the case. While the theory of AM is clear (if at times misunderstood or misrepresented), in many respects the approach remains little explored. Few studies presented a framework for a specific management problem or documented an application, and even fewer assessed relative costs and benefits. McFadden et al. (Reference McFadden, Hiller and Tyre2011) drew similar conclusions in their recent review, finding a comparable small percentage of implementation studies (13% in MacFadden et al. versus 11% in this study). Others claim examples of successful application are rare (Allen & Gunderson Reference Allen and Gunderson2011); again this is not necessarily the case. Although published examples of actual application of AM are certainly uncommon, we found as much evidence of its value (nine out of 15 articles in this review across a diverse set of contexts and management problems) as of its supposed shortcomings. Of course, this depends on what was implemented, and how success is defined, but if reported as having value to management then it is likely that the approach, or at least components of it, have something to offer. Indeed, McFadden et al. (Reference McFadden, Hiller and Tyre2011), in considering success in AM to be ‘a favourable or desired outcome’, recognized that there is a range of outcomes that could be considered successful in a given context. Given the varying interpretations of AM, we believe that conclusions about its effectiveness have been premature and further work is needed to evaluate the approach itself and what constitutes success when it is implemented, a need also recently highlighted by McFadden et al. (Reference McFadden, Hiller and Tyre2011).
There is also some misrepresentation in relation to the commonly-cited barriers to implementing AM. Supporters and critics alike have identified many potential problems, principally ones of cost, institutional barriers, and the capacity and conflicting priorities of stakeholders (McLain & Lee Reference McLain and Lee1996; Walters Reference Walters1997; Rogers Reference Rogers1998: Johnson Reference Johnson1999; Lee Reference Lee1999; Rogers et al. Reference Rogers, Roux and Biggs2000; Moir & Block Reference Moir and Block2001; Ladson & Argent Reference Ladson and Argent2002). Yet while these emerged in the critique papers, none figured prominently in the application papers we reviewed. For example, none reported that costs or stakeholder groups had proved to be stumbling blocks. Recently, Allen and Gunderson (Reference Allen and Gunderson2011) identified nine pathologies and challenges for AM, but perhaps just one of these (‘experiments are difficult’) could be considered to be specific to AM, a point Allen and Gunderson (Reference Allen and Gunderson2011) themselves highlighted when they stated ‘the pathologies we identify may be present in other forms of AM, or in any type of resource management, for that matter’.
There is a need to differentiate clearly between where AM failed to deliver management benefits (namely whether another management approach would have been better), as opposed to where the management system itself failed. For example, Sagoff (Reference Sagoff2009) raised concerns about whether AM could ensure the democratic political process required for making decisions in the context of management of the Kings Bay/Crystal River ecosystem. More specifically, he noted that ‘adaptive ecosystem management provides an academic blessing for this kind of ‘group grope’ - a way to institutionalize paralysis by analysis and to guarantee indecision over the long run’ (Sagoff Reference Sagoff2009). Such broad statements disparaging all AM overlook the fact that failure to implement AM may be a failure of managers and the systems within which they work rather than that of AM specifically. Cost, institutional barriers and difficulties with stakeholder engagement are not particular to AM and it would be more accurate to discuss these as barriers to effective management in general. While commonly cited as a barrier, to our knowledge no studies have compared the cost of AM with conventional management approaches (i.e. those in which explicit experimentation, or a formalized learning process does not feature) within a particular system. Such analyses would be most useful.
AM continues to be hailed as a panacea, and specifically as a solution for many large-scale management problems (see Johnson Reference Johnson1999; Owens Reference Owens2009). Indeed AM is often associated with large-scale applications and high complexity (Williams Reference Williams2011b). However, there have also been suggestions that large complex problems might not be the best context for AM implementation. Implementation at small scales, in simple systems in which existing data suggest the causal relationships, and where contrasting management regimes can be introduced to test the hypothesized relationships might be more applicable (Gregory et al. Reference Gregory, Ohlson and Arvai2006; Simberloff Reference Simberloff2009). For example, AM is frequently discussed as a valuable approach in relation to climate change (24 studies in our review), even though this could be characterized as a problem of intricate complexity, high external influences, long time spans, high structural uncertainty and with low confidence in assessments (Gregory et al. Reference Gregory, Ohlson and Arvai2006). Until AM is consistently defined and elaborated, it remains to be established in which management contexts it can most appropriately be applied.
Finally, some assume AM to be a valuable tool for climate change adaptation (Ogden & Innes Reference Ogden and Innes2009) and a valuable approach in ‘managing for resilience’ (for example Anderies et al. Reference Anderies, Walker and Kinzig2006; Benson & Garmestani Reference Benson and Garmestani2011). The theoretical basis of both these assumptions remains untested. A more inclusive management process may indeed enhance adaptive capacity and resilience to climate change (Tompkins & Adger Reference Tompkins and Adger2004), but AM has many other components that may be incompatible with these management perspectives. Some authors also confuse ‘management for adaptation’ with ‘adaptive management’, with AM being interpreted as management that adapts to change and has the flexibility to deal with new challenges (Pereira et al. Reference Pereira, Barreto and Pittock2009). It may indeed contribute to managing for adaptation but the two concepts are distinct, and AM's potential contribution will depend on the time required to learn and the ability to detect the effects of management against a broader background of change. Long lag times mean that the outcomes of management can only be assessed in the long term; yet with such time scales distinguishing the effects of management from those of other factors may be challenging. Management implemented at small scales, but influenced by a backdrop of change occurring at larger spatial and longer temporal scales, may similarly lead to changes in the system occurring before learning about dynamics can take place (Norgaard et al. Reference Norgaard, Kallis and Kiparskya2009; Tyre et al. Reference Tyre, Peterson, Converse, Bogich, Miller, van der Burg, Thomas, Thompson, Wood, Brewer and Runge2011). Moreover, AM includes an assumption of dynamic stability in the underlying environment and the structural features of the resource system (Williams Reference Williams2011b). Directional change in the environment (for example long-term decreases in average rainfall or increases in the range of ambient temperatures) is now often a feature of resource management decision making. This may be a significant challenge for AM's approach to decision making in the context of climate change (Norgaard et al. Reference Norgaard, Kallis and Kiparskya2009; Williams Reference Williams2011b).
CONCLUSIONS
AM has become a prominent concept in natural resource management and yet in reality is still a relatively undeveloped area of research. Many have commented that the major challenges facing AM are fundamentally institutional rather than technical (see Stankey et al. Reference Stankey, Clark and Bormann2005). Yet while management's greatest challenges may indeed be institutional, few of these are specific to AM. From a scientific and technical perspective many practical questions specific to AM remain.
Modelling shows that management tends to be precautionary in the short- to medium-term, rather than experimental (Hauser & Possingham Reference Hauser and Possingham2008; Moore Reference Moore2008); in essence, actions with known moderate benefits are preferred over actions with uncertain but marginally larger expected benefits. By itself, however, modelling cannot be a test of AM. Real-world assessments of the value of experimentation within a management framework are needed, specifically reconciling long- and short-term management priorities and the perceived risk of experimentation with the potential for long-term management benefit.
Proper evaluation of other identified pathologies and challenges are also needed. Logistical, financial and staffing constraints have been identified. To what extent AM places greater demands in these respects, and what specific trade-offs with management ‘success’ might be involved, are also uncertainties and are likely to be highly context specific. Spatial and temporal scale (for example lag times, inherent variability and cross-scale interactions) and the difficulty in establishing reliable indicators and experiments that result in strong inference are perhaps the biggest challenges for the future of AM. Norgaard et al. (Reference Norgaard, Kallis and Kiparskya2009) concluded ‘adaptive management faces an inherent tension between its acknowledgment of complexity, uncertainty, and emergence and its presumption that goals and system metrics can be established to assess and adapt interventions’. Other approaches may be required to deal with uncertainty and complexity in the management of natural resources.
AM arouses both much enthusiasm and much scepticism but there is a need to foster more analytical dialogue. Specifically we have several suggestions to revive the further assessment and development of AM: firstly, to address issues of definition (we suggest refocusing on a formalized learning process and/or deliberate experimentation as the defining features of AM); secondly, to evaluate the value of this approach more systematically in a real world context in order to determine prospects for both learning and its expected value for management, thirdly to make such assessments in comparison to other approaches, particularly with respect to implementation costs. AM is not an end in itself, nor will it be useful in every context but rather it is a tool that offers the potential to improve management outcomes over time in some contexts. Explicit formalized analyses are needed in assessing in which situations an AM approach is appropriate for tackling uncertainty and complexity in environmental management.
ACKNOWLEDGEMENTS
We are grateful to Carol Colfer, Terry Sunderland, participants from the CIFOR Lower Mekong Conservation and Development Project workshop, Kai Lee, Jaboury Ghazoul, Sofia Wennberg-di Gasper and Jon Moen for discussions that contributed to the development of this study. Beate Mahl provided valuable help with data collection. We are also grateful to two anonymous reviewers whose comments improved the manuscript. Part of the research was funded through Future Forests, a multidisciplinary research programme supported by the Foundation for Strategic Environmental Research (MISTRA), the Swedish Forestry Industry, the Swedish University of Agricultural Sciences (SLU), Umeå University and the Forestry Research Institute of Sweden.