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					Envisioning Future Landscape Trajectories An Alternative Futures Approach to Understanding Dynamics of Landscape Change John Bolte Biological & Ecological Engineering Department Oregon State University Today’s Discussion  Overview of alternative futures approach to understanding landscape dynamics  Description of one approach using Envision  Example applications  H.J. Andrews LTER  Puget Sound Alternative Futures Projects  Examine multiple scenarios of trends and assumptions about future conditions, generally using one or more models of change,  Assist in incorporating stakeholder interactions to define goals, constraints, trajectories, drivers, outcomes  Allow visualization of the results in a variety of types and formats  Ultimately are intended to assist in improving land management decision-making Approach: Multi-agent Modeling  Based on modeling behavior and actions of autonomous, adaptive agents (actors)  Our approach: spatially explicit, represents land management decisions of entities (actors) with authority over parcels of land  Actor decisions implemented through policies that guide & constrain potential actions  Autonomous processes (e.g. succession) simultaneously modeled Envision – Conceptual Structure Actors Decision-makers managing the landscape by selecting policies responsive to their objectives Landscape Production Models Landscape Feedbacks Multiagent Decision-making Scenario Definition Select policies and generate land management decision affecting landscape pattern Generating Landscape Metrics Reflecting Ecosystem Service Productions Landscape Spatial Container in which landscape changes, ES Metrics are Landscape depicted Feedbacks Policies Fundamental Descriptors of constraints and actions defining land use management decisionmaking Autonomous Change Processes Models of Non-anthropogenic Landscape Change ENVISION – Triad of Relationships Goals •Economic Services •Ecosystem Services •Socio-cultural Services Provide a common frame of reference for actors, policies and landscape productions Landscapes Metrics of Production Policy Definition Landscape policies are decisions or plans of action for accomplishing desired outcomes. from:  Lackey, R.T. 2006. Axioms of ecological policy. Fisheries. 31(6): 286-290. Policies in ENVISION  Policies are a decision or plan of action for accomplishing a desired outcome; they are a fundamental unit of computation in Evoland  Describe actions available to actors  Primary Characteristics:   Applicable Site Attributes (Spatial Query)  Effectiveness of the Policy (determined by evaluative models)  Outcomes (possible multiple) associated with the selection and application of the Policy Example: [Purchase conservations easement to allow revegetation of degraded riparian areas] in [areas with no built structures and high channel migration capacity] when [native fish habitat becomes scarce] Models in ENVISION  Models are “plug-ins” of two types: 1) Autonomous Processes: Represent processes causing landscape changes independent of human decision-making – e.g. climate change, vegetative succession, forest growth, fire, flooding, ??? 2) Evaluative Models – Generate production statistics and report back how well the landscape is doing a producing metrics of interest – e.g. carbon sequestration, habitat production, land availability, risk, ??? Models in ENVISION  A well-defined, relatively simple, yet robust interface specification is defined for both Autonomous Processes and Evaluative Models.  Models can expose input and output variables  Models have full access to the underlying spatial representation, policy sets, exposed variables, actor representation, and spatial engine  Models can make changes to the underlying landscape representation  Envision automatically manages all exposed model data Envision Andrews Application Data Sources Evaluative Models Parcels (IDU’s) Mean Age at Harvest Agent Descriptors Autonomous Process Models Rural Residential Expansion ENVISION Policy Set(s) Carbon Sequestration Forest Products Extraction Harvested Acreage Fish Habitat (IBI) Vegetative Succession Climate Change Resource Lands Protection Envision Andrews - Scenarios  Conservation - no Climate Change  Development - no Climate Change  Conservation - with Climate Change  Development - with Climate Change Envision Andrews Study Area Scenario Results – Forest Carbon Scenario Results – Forest Product Extraction Scenario Results – Fish IBI Envision Puget Sound Application Data Sources Evaluative Models IDU’s – GSU/LULC/… Impervious Surfaces Agent Descriptors Autonomous Process Models Rural/Urban Development ENVISION Policy Set(s) Water Quality/Loading (SPARROW) Nearshore Habitat (Controlling Factors Model) INVEST Tier 1 Carbon Expansion of Nearshore Modifications Resource Lands Protection Population Growth Residential Land Supply Envision Puget Sound- Scenarios  Status Quo – continue current trends  Managed Growth – adopt a suite of additional policies aimed at conserving/restoring habitats, protecting resource lands, emphasizing denser development pattern near urban areas  Unconstrained Growth – allow lower density patterns, less habitat protection, less resource land protection Puget Sound South Sound Bainbridge Island Ferry Terminal Area Lessons Learned  Alternative future assessments are fundamentally place-based and client-dependent: Each application is different.  Commonalities do exist and should be exploited within an extensible, adaptable DSS framework  Good software design is critical  Engagement with stakeholders is critical to define decision processes, desired outcomes endpoints  Defensible, place-specific models are critical more info at: http://envision.bioe.orst.edu
 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
                                             
                                             
                                             
                                             
                                             
                                             
                                             
                                             
                                            