Skip to main content

Abstract

Models are essential tools in landscape ecology, as they are in many scientific disciplines. Spatial models, in particular, play a prominent role in evaluating the consequences of landscape heterogeneity for ecological dynamics. Because we refer to models throughout this book—and because we are aware that many students have had little training in modeling or systems ecology—the first part of this chapter presents an elementary set of concepts, terms, and caveats for students to understand what models are, why they are used, and how models are constructed and evaluated. We also define what we mean by a spatial model and indicate the circumstances where spatial models will be most useful. The second part of this chapter introduces neutral landscape models (NLMs) and illustrates the utility of simple models for understanding landscape heterogeneity and testing hypotheses linking pattern with process. There are many excellent texts that address modeling issues in greater depth. Students interested in the modeling process are referred to the recommended readings at the end of the chapter.

This is a preview of subscription content, log in via an institution to check access.

Access this chapter

Chapter
USD 29.95
Price excludes VAT (USA)
  • Available as PDF
  • Read on any device
  • Instant download
  • Own it forever
eBook
USD 79.99
Price excludes VAT (USA)
  • Available as EPUB and PDF
  • Read on any device
  • Instant download
  • Own it forever
Softcover Book
USD 99.99
Price excludes VAT (USA)
  • Compact, lightweight edition
  • Dispatched in 3 to 5 business days
  • Free shipping worldwide - see info
Hardcover Book
USD 139.99
Price excludes VAT (USA)
  • Durable hardcover edition
  • Dispatched in 3 to 5 business days
  • Free shipping worldwide - see info

Tax calculation will be finalised at checkout

Purchases are for personal use only

Institutional subscriptions

References

  • Allen TFH, Starr TB (1982) Hierarchy: perspectives for ecological complexity. University of Chicago Press, Chicago

    Google Scholar 

  • Baker WL (1989a) A review of models of landscape change. Landsc Ecol 2:111–131

    Article  Google Scholar 

  • Baker WL (1989b) Landscape ecology and nature reserve design in the Boundary Waters Canoe Area, Minnesota. Ecology 70:23–35

    Article  Google Scholar 

  • Baker WL (1989c) Effect of scale and spatial heterogeneity on fire-interval distributions. Can J Forest Res 19:700–706

    Article  Google Scholar 

  • Barnsley MF, Devaney RL, Mandelbrot BB, Peitgen HO, Saupe D, Voss RF (1988) The science of fractal image. Springer, New York

    Book  Google Scholar 

  • Beven K (2002) Towards a coherent philosophy for modelling the environment. Proc R Soc Math Phys Eng Sci 458:2465–2484

    Article  Google Scholar 

  • Bowers MA, Matter SF, Dooley JL, Dauten JL, Simkins JA (1996) Controlled experiments of habitat fragmentation: a simple computer simulation and a test using small mammals. Oecologia 108:182–191

    Article  Google Scholar 

  • Box GEP (1979) Robustness in the strategy of scientific model building. In: Launer RL, Wilkinson GN (eds) Robustness in statistics: proceedings of a workshop. Academic, New York, pp 201–236

    Google Scholar 

  • Breckling B, Muller F (1994) Current trends in ecological modeling and the 8th ISEM conference on the state-of-the-art. Ecol Model 75:667–675

    Article  Google Scholar 

  • Brinkerhoff RJ, Haddad NM, Orrock JL (2005) Corridors and olfactory predator cues affect small mammal behavior. J Mammal 86:662–669

    Article  Google Scholar 

  • Burke IC, Kittel TGF, Lauenroth WK, Snook P, Yonker CM, Parto WJ (1991) Regional analysis of the central great plains. Bioscience 41:685–692

    Article  Google Scholar 

  • Burke IC, Lauenroth WK, Riggle R, Brannen P, Madigan B, Beard S (1999) Spatial variability of soil properties in the shortgrass steppe: the relative importance of topography, grazing, microsite, and plant species in controlling spatial patterns. Ecosystems 2:422–438

    Article  CAS  Google Scholar 

  • Caswell H (1976) Community structure: a neutral model analysis. Ecol Monogr 46:327–354

    Article  Google Scholar 

  • Chave J, Norden N (2007) Changes of species diversity in a simulated fragmented neutral landscape. Ecol Model 207:3–10

    Article  Google Scholar 

  • Cole LC (1951) Population cycles and random oscillations. J Wildl Manage 15:233–252

    Article  Google Scholar 

  • Cole LC (1954) Some features of random cycles. J Wildl Manage 18:107–109

    Article  Google Scholar 

  • Costanza R, Voinov A (2004) Landscape simulation modeling: a spatially explicit, dynamic approach. Springer, New York

    Book  Google Scholar 

  • Dale MRT, Zbigniewicz MW (1995) The evaluation of multi-species pattern. J Veg Sci 6:391–398

    Article  Google Scholar 

  • Feder J (1988) Fractals. Plenum Press, New York

    Book  Google Scholar 

  • Ferrari JR, Lookingbill TR, McCormick B, Townsend PA, Eshleman KN (2009) Surface mining and reclamation effects on flood response of watersheds in the central Appalachian Plateau region. Water Resour Res 45:W04407

    Google Scholar 

  • Fisher RA (1935) The design of experiments. Oliver and Boyd, London

    Google Scholar 

  • Fries C, Carlsson M, Dahlin B, Lamas T, Sallnas O (1998) A review of conceptual landscape planning models for multiobjective forestry in Sweden. Can J Forest Res 28:159–167

    Article  Google Scholar 

  • Gardner RH (1999) RULE: a program for the generation of random maps and the analysis of spatial patterns. In: Klopatek JM, Gardner RH (eds) Landscape ecological analysis: issues and applications. Springer, New York, pp 280–303

    Chapter  Google Scholar 

  • Gardner RH (2011) Neutral models and the analysis of landscape structure. In: Jopp F, Reuter H, Breckling B (eds) Modelling complex ecological dynamics. Springer, New York, pp 215–229

    Chapter  Google Scholar 

  • Gardner RH, Engelhardt KAM (2008) Spatial processes that maintain biodiversity in plant communities. Perspect Plant Ecol Evol Syst 9:211–228

    Article  Google Scholar 

  • Gardner RH, O’Neill RV (1990) Pattern, process and predictability: the use of neutral models for landscape analysis. In: Turner MG, Gardner RH (eds) Quantitative methods in landscape ecology. The analysis and interpretation of landscape heterogeneity. Springer, New York, pp 289–307

    Google Scholar 

  • Gardner RH, Urban DL (2007) Neutral models for testing landscape hypotheses. Landsc Ecol 22:15–29

    Article  Google Scholar 

  • Gardner RH, O’Neill RV, Mankin JB, Carney JH (1981) A comparison of sensitivity analysis and error analysis based on a stream ecosystem model. Ecol Model 12:177–194

    Article  Google Scholar 

  • Gardner RH, Cale WG, O’Neill RV (1982) Robust analysis of aggregation error. Ecology 63:1771–1779

    Article  Google Scholar 

  • Gardner RH, Milne BT, Turner MG, O’Neill RV (1987) Neutral models for the analysis of broad-scale landscape pattern. Landsc Ecol 1:19–28

    Article  Google Scholar 

  • Gardner RH, Turner MG, O’Neill RV, Lavorel S (1992) Simulation of the scale-dependent effects of landscape boundaries on species persistence and dispersal. In: Holland MM, Risser PG, Naiman RJ (eds) The role of landscape boundaries in the management and restoration of changing environments. Chapman and Hall, New York, pp 76–89

    Google Scholar 

  • Gardner RH, O’Neill RV, Turner MG (1993) Ecological implications of landscape fragmentation. In: Pickett STA, McDonnell MJ (eds) Humans as components of ecosystems: the ecology of subtle human effects and populated areas. Springer, New York, pp 208–226

    Chapter  Google Scholar 

  • Gardner RH, Romme WH, Turner MG (1999) Predicting forest fire effects at landscape scales. In: Mladenoff DJ, Baker WL (eds) Spatial modeling of forest landscapes: approaches and applications. Cambridge University Press, Cambridge, pp 163–185

    Google Scholar 

  • Gillman M, Hails R (1997) An introduction to ecological modeling. Blackwell Scientific, Oxford

    Google Scholar 

  • Gilmanov TG, Parton WJ, Ojima DS (1997) Testing the ‘CENTURY’ ecosystem level model on data sets from eight grassland sites in the former USSR representing a wide climatic/soil gradient. Ecol Model 96:191–210

    Article  Google Scholar 

  • Glenn SM, Collins SL (1993) Experimental-analysis of patch dynamics in tallgrass prairie plant-communities. J Veg Sci 4:157–162

    Article  Google Scholar 

  • Grant WE, Pedersen EK, Marin SL (1997) Ecology and natural resource management. Systems analysis and simulation. Wiley, New York

    Google Scholar 

  • Groffman PM, Pouyat RV, Cadenasso ML et al (2006a) Land use context and natural soil controls on plant community composition and soil nitrogen and carbon dynamics in urban and rural forests. For Ecol Manage 236:177–192

    Article  Google Scholar 

  • Groffman PM, Baron JS, Blett T, Gold AJ, Goodman I, Gunderson LH, Levinson BM, Palmer MA, Paerl HW, Peterson GD, Poff NL, Rejeski DW, Reynolds JF, Turner MG, Weathers KC, Wiens JA (2006b) Ecological thresholds: the key to successful environmental management or an important concept with no practical application? Ecosystems 9:1–13

    Article  Google Scholar 

  • Gustafson EJ, Parker GR (1992) Relationships between landcover proportion and indexes of landscape spatial pattern. Landsc Ecol 7:101–110

    Article  Google Scholar 

  • Haddad NM, Bowne DR, Cunningham A, Danielson BJ, Levey DJ, Sargent S, Spira T (2003) Corridor use by diverse taxa. Ecology 84:609–615

    Article  Google Scholar 

  • Haefner JW (1988a) Assembly rules for Greater Antillean Anolis lizards: competition and random models compared. Oecologia 74:551–565

    Article  Google Scholar 

  • Haefner JW (1988b) Niche shifts in Greater Antillean Anolis communities: effects of niche metric and biological resolution on null model tests. Oecologia 77:107–117

    Article  Google Scholar 

  • Haefner JW (2005) Modeling biological systems: principles and applications, 2nd edn. Springer, New York

    Google Scholar 

  • Hargrove WW, Pickering J (1992) Pseudoreplication: a sine qua non for regional ecology. Landsc Ecol 6:251–258

    Article  Google Scholar 

  • Higgins SI, Richardson DM (1999) Predicting plant migration rates in a changing world: the role of long-distance dispersal. Am Nat 153:464–475

    Article  Google Scholar 

  • Homan RN, Windmiller BS, Reed JM (2004) Critical thresholds associated with habitat loss for two vernal pool-breeding amphibians. Ecol Appl 14:1547–1553

    Article  Google Scholar 

  • Hubbell SP (2001) The unified neutral theory of biodiversity and biogeography. Princeton University Press, Princeton

    Google Scholar 

  • Hubbell SP (2006) Neutral theory and the evolution of ecological equivalence. Ecology 87:1387–1398

    Article  PubMed  Google Scholar 

  • Hunt RJ (2008) Using simplifications of reality in the real world: robust benefits of models for decision making

    Google Scholar 

  • Hurlbert SH (1984) Pseudoreplication and the design of ecological field experiments. Ecol Monogr 54:187–211

    Article  Google Scholar 

  • Imes RA, Rolstad J, Wegge P (1993) Predicting space use responses to habitat fragmentation: can foles Microtus oeconomus serve as an experimental model system (EMS) for capercaillie grouse in boreal forest. Biol Conserv 63:261–268

    Article  Google Scholar 

  • Istock CA, Scheiner SM (1987) Affinities and high-order diversity within landscape mosaics. Evol Ecol 1:11–29

    Article  Google Scholar 

  • Jackson DA, Somers KM, Harvey HH (1992) Null models and fish communities: evidence of nonrandom patterns. Am Nat 139:930–951

    Article  Google Scholar 

  • Jager HI, King AW (2004) Spatial uncertainty and ecological models. Ecosystems 7:841–847

    Article  Google Scholar 

  • Jantz CA, Goetz SJ, Shelley MK (2004) Using the SLEUTH urban growth model to simulate the impacts of future policy scenarios on urban land use in the Baltimore-Washington metropolitan area. Environ Plann B Plann Des 31:251–271

    Article  Google Scholar 

  • Johnson BL, Haddad NM (2011) Edge effects, not connectivity, determine the incidence and development of a foliar fungal plant disease. Ecology 92:1551–1558

    Article  PubMed  Google Scholar 

  • Johnson WC, Sharpe DM, DeAngelis DL, Fields DE, Olson RJ (eds) (1981) Modeling seed dispersal and forest island dynamics. Springer, New York

    Google Scholar 

  • Johnson AR, Milne BT, Wiens JA (1992) Diffusion in fractal landscapes: simulations and experimental studies of tenebrionid beetle movements. Ecology 73:1968–1983

    Article  Google Scholar 

  • Joshi J, Stoll P, Rusterholz HP, Schmid B, Dolt C, Baur B (2006) Small-scale experimental habitat fragmentation reduces colonization rates in species-rich grasslands. Oecologia 148:144–152

    Article  PubMed  Google Scholar 

  • Keane RE, Cary GF, Davies ID, Flannigan MD, Gardner RH, Lavorel S, Lenihan JM, Li C, Rupp TS (2007) Understanding global fire dynamics by classifying and comparing spatial models of vegetation and fire dynamics. In: Canadell J, Pataki D, Pitelka L (eds) Terrestrial ecosystems in a changing world. Springer, Berlin, pp 129–148

    Google Scholar 

  • Keitt TH (2000) Spectral representation of neutral landscapes. Landsc Ecol 15:479–493

    Article  Google Scholar 

  • Khan MS, Coulibaly P, Dibike Y (2006) Uncertainty analysis of statistical downscaling methods using Canadian Global Climate Model predictors. Hydrol Process 20:3085–3104

    Article  Google Scholar 

  • Kiester AR, Scott JM, Csuti B, Noss RF, Butterfield B, Sahr K, White D (1996) Conservation prioritization using GAP data. Conserv Biol 10:1332–1342

    Article  Google Scholar 

  • Kitching RL (1983) Systems ecology. University of Queensland Press, St. Lucia

    Google Scholar 

  • Kittel TG, Rosenbloom FNA, Painter TH, Schimel DS, Fisher HH, Grimsdell A, Participants V, Daly C, Hunt ER Jr (1996) The VEMAP Phase I database: an integrated input dataset for ecosystem and vegetation modeling for the conterminous United States. CDROM and World Wide Web. http://www.cgd.ucar.edu/vmap/

  • Lambin EF (1997) Modelling and monitoring land-cover change processes in tropical regions. Prog Phys Geogr 21:375–393

    Article  Google Scholar 

  • Lavorel S, Chesson P (1995) How species with different regeneration niches coexist in patchy habitats with local disturbances. Oikos 74:103–114

    Article  Google Scholar 

  • Lavorel S, Garnier E (2002) Predicting changes in community composition and ecosystem functioning from plant traits: revisiting the Holy Grail. Funct Ecol 16:545–556

    Article  Google Scholar 

  • Levins R (1966) The strategy of model building in population biology. Am Sci 54:421–431

    Google Scholar 

  • Li XZ, He HS, Wang XG, Bu RC, Hu YM, Chang Y (2004) Evaluating the effectiveness of neutral landscape models to represent a real landscape. Landsc Urban Plan 69:137–148

    Article  CAS  Google Scholar 

  • Li XZ, He HS, Bu RC, Wen QC, Chang Y, Hu YM, Li YH (2005) The adequacy of different landscape metrics for various landscape patterns. Pattern Recognit 38:2626–2638

    Article  Google Scholar 

  • Lookingbill TR, Gardner RH, Wainger LA, Tague CL (2008) Landscape modelling. In: Jorgensen SE, Fath BD (eds) Encyclopedia of ecology. Elsevier B.V., Oxford, pp 2108–2116

    Chapter  Google Scholar 

  • Lookingbill TR, Gardner RH, Ferrari JR, Keller CE (2010) Combining a dispersal model with network theory to assess habitat connectivity. Ecol Appl 20:427–441

    Article  PubMed  Google Scholar 

  • Lowe WH, McPeek MA (2014) Is dispersal neutral? Trends Ecol Evol 29:444–450

    Article  PubMed  Google Scholar 

  • Mabry KE, Barrett GW (2002) Effects of corridors on home range sizes and interpatch movements of three small mammal species. Landsc Ecol 17:629–636

    Article  Google Scholar 

  • Macilwain C (1996) Biosphere 2 begins fight for credibility. Nature 380:275

    CAS  PubMed  Google Scholar 

  • Mandelbrot BB (1983) The fractal geometry of nature. Freeman, New York

    Google Scholar 

  • Mankin JB, O’Neill RV, Shugart HH, Rust BW (1975) The importance of validation in ecosystem analysis. In: New directions in the analysis of ecological systems, part 1. Simulation councils proceedings series. Simulation Councils, LaJolla, pp 63–71

    Google Scholar 

  • May RM (1973) Stability and complexity in model ecosystems. Princeton University Press, Princeton

    Google Scholar 

  • McKenzie D, Hessl AE, Kellogg LKB (2006) Using neutral models to identify constraints on low-severity fire regimes. Landsc Ecol 21:139–152

    Article  Google Scholar 

  • Metzgar JN, Fjeld RA, Hammonds JS, Hoffman FO (1998) Evaluation of software for propagating uncertainty through risk assessment models. Hum Ecol Risk Assess 4:263–290

    Article  Google Scholar 

  • Milne BT (1991a) Lessons from applying fractal models to landscape patterns. In: Turner MG, Gardner RH (eds) Quantitative methods in landscape ecology. Springer, New York, pp 199–235

    Chapter  Google Scholar 

  • Milne BT (1991b) The utility of fractal geometry in landscape design. Landsc Urban Plan 21:81–90

    Article  Google Scholar 

  • Milne BT (1992) Spatial aggregation and neutral models in fractal landscapes. Am Nat 139:32–57

    Article  Google Scholar 

  • Minor ES, McDonald RI, Treml EA, Urban DL (2008) Uncertainty in spatially explicit population models. Biol Conserv 141:956–970

    Article  Google Scholar 

  • Miranda BR, Sturtevant BR, Yang J, Gustafson EJ (2009) Comparing fire spread algorithms using equivalence testing and neutral landscape models. Landsc Ecol 24:587–598

    Article  Google Scholar 

  • Mladenoff DJ, He HS (1999) Design, behavior and application of LANDIS, an object-oriented model of forest landscape disturbance and succession. In: Mladenoff DJ, Baker WL (eds) Spatial modeling of forest landscapes: approaches and applications. Cambridge University Press, Cambridge, pp 125–162

    Google Scholar 

  • Mladenoff DJ, Stearns F (1993) Eastern hemlock regeneration and deer browsing in the northern great-lakes region: a reexamination and model simulation. Conserv Biol 7:889–900

    Article  Google Scholar 

  • Naveh Z, Lieberman AS (1990) Landscape ecology, theory and application, 2nd edn. Springer, New York

    Book  Google Scholar 

  • Nesslage GM, Maurer BA, Gage SH (2007) Gypsy moth response to landscape structure differs from neutral model predictions: implications for invasion monitoring. Biol Invasions 9:585–595

    Article  Google Scholar 

  • Nitecki MH, Hoffman A (eds) (1987) Neutral models in biology. Oxford University Press, Oxford

    Google Scholar 

  • Nuttle T, Haefner JW (2007) Design and validation of a spatially explicit simulation model for bottomland hardwood forests. Ecol Model 200:20–32

    Article  Google Scholar 

  • O’Neill RV (1973) Error analysis of ecological models. In: Radionuclides in ecosystems. National Technical Information Service, Springfield, pp 898–908

    Google Scholar 

  • O’Neill RV (1989) Perspectives in hierarchy and scale. In: Roughgarden J, May RM, Levin SA (eds) Perspectives in ecological theory. Princeton University Press, Princeton, pp 140–156

    Google Scholar 

  • Okubo A (1980) Diffusion and ecological problems: mathematical models. Springer, Berlin

    Google Scholar 

  • Opdam P (1987) De metapopulatie, model van een populatie in een versnipperd landschap. Landschap 4:289–306

    Google Scholar 

  • Opdam P, Schotman A (1987) Small woods in rural landscape as habitat islands for woodland birds. Acta Oecol 8:269–274

    Google Scholar 

  • Orzack SH, Sober E (1993) A critical-assessment of Levins’s “The strategy of model-building in population biology” (1966). Q Rev Biol 68:533–546

    Article  Google Scholar 

  • Palmer MW (1992) The coexistence of species in fractal landscapes. Am Nat 139:375–397

    Article  Google Scholar 

  • Pan WW, Tatang MA, McRae GJ, Prinn RG (1998) Uncertainty analysis of indirect radiative forcing by anthropogenic sulfate aerosols. J Geophys Res Atmos 103:3815–3823

    Article  CAS  Google Scholar 

  • Parton WJ, McKeown B, Kirchner V, Ojima D (1992) Users guide for the CENTURY model. Colorado State University, Fort Collins

    Google Scholar 

  • Patten B (ed) (1971) Systems analysis and simulation in ecology. Academic, New York

    Google Scholar 

  • Pearson SM, Gardner RH (1997) Neutral models: useful tools for understanding landscape patterns. In: Bisonnette JA (ed) Wildlife and landscape ecology: effects of pattern and scale. Springer, New York, pp 215–230

    Chapter  Google Scholar 

  • Pearson SM, Turner MG, Gardner RH, O’Neill RV (1996) An organism-based perspective of habitat fragmentation. In: Szaro RC (ed) Biodiversity in managed landscapes: theory and practice. Oxford University Press, Covelo, pp 77–95

    Google Scholar 

  • Perez KT, Morrison GE, Davey EW, Lackie NF, Johnson RL, Murphy PG, Heltshe JF (1991) Influence of size on fate and ecological effects of kepone in physical models. Ecol Appl 1:237–248

    Article  Google Scholar 

  • Perry GLW, Enright NJ (2006) Spatial modelling of vegetation change in dynamic landscapes: a review of methods and applications. Prog Phys Geogr 30:47–72

    Article  Google Scholar 

  • Peters DPC, Herrick JE, Urban DL, Gardner RH, Breshears DD (2004a) Strategies for ecological extrapolation. Oikos 106:627–636

    Article  Google Scholar 

  • Peters DPC, Pielke RA Sr, Bestelmeyer BT, Allen CD, Munson-McGee S, Havstad KM (2004b) Cross-scale interactions, nonlinearities, and forecasting catastrophic events. Proc Natl Acad Sci U S A 101:15130–15135

    Article  PubMed Central  CAS  PubMed  Google Scholar 

  • Petersen JE, Kemp WM, Boynton WR, Chen CC, Cornwell JC, Gardner RH, Hinkle DC, Houde ED, Malone TC, Mowitt WP, Murray L, Roman MR, Sanford LP, Stevenson JC, Sundberg KL, Suttles SE (2003) Multi-scale experiments in coastal ecology: improving realism and advancing theory. Bioscience 53:1181–1197

    Article  Google Scholar 

  • Philips JD (2007) The perfect landscape. Geomorphology 84:159–169

    Article  Google Scholar 

  • Platt JR (1964) Strong inference. Science 146:347–353

    Article  CAS  PubMed  Google Scholar 

  • Plotnick RE, Gardner RH (1993) Lattices and landscapes. In: Gardner RH (ed) Lectures on mathematics in the life sciences: predicting spatial effects in ecological systems. American Mathematical Society, Providence, pp 129–157

    Google Scholar 

  • Plotnick RE, Prestegaard KL (1993) Fractal analysis of geologic time series. In: Lam N, DeCola L (eds) Fractals in geography. Prentice Hill, New York, pp 207–224

    Google Scholar 

  • Quinn JF, Dunham AE (1983) On hypothesis testing in ecology and evolution. Am Nat 122:602–617

    Article  Google Scholar 

  • Risch AC, Heiri C, Bugmann H (2005) Simulating structural forest patterns with a forest gap model: a model evaluation. Ecol Model 181:161–172

    Article  Google Scholar 

  • Rose KA, Smith EP, Gardner RH, Brenkert AL, Bartell SM (1991) Parameter sensitivities, Monte Carlo filtering, and model forecasting under uncertainty. J Forecast 10:117–133

    Article  Google Scholar 

  • Rykiel EJ (1996) Testing ecological models: the meaning of validation. Ecol Model 90:229–244

    Article  Google Scholar 

  • Saupe D (1988) Algorithms for random fractals. In: Petigen H-O, Saupe D (eds) The science of fractal images. Springer, New York, pp 71–113

    Chapter  Google Scholar 

  • Scheller RM, Mladenoff DJ (2004) A forest growth and biomass module for a landscape simulation model, LANDIS: design, validation, and application. Ecol Model 180:211–229

    Article  Google Scholar 

  • Scheller RM, Mladenoff DJ (2007) An ecological classification of forest landscape simulation models: tools and strategies for understanding broad-scale forested ecosystems. Landsc Ecol 22:491–505

    Article  Google Scholar 

  • Scheller RM, Domingo JB, Sturtevant BR, Williams JS, Rudy A, Gustafson EJ, Mladenoff DJ (2007) Design, development, and application of LANDIS-II, a spatial landscape simulation model with flexible temporal and spatial resolution. Ecol Model 201:409–419

    Article  Google Scholar 

  • Schumaker NH (1996) Using landscape indices to predict habitat connectivity. Ecology 77:1210–1225

    Article  Google Scholar 

  • Scott JM, Davis F, Csuti B, Noss R, Butterfield B, Groves C, Anderson H, Caicco S, Derchia F, Edwards TC, Ulliman J, Wright RG (1993) GAP analysis: a geographic approach to protection of biological diversity. J Wildl Manage 57:U673

    Article  Google Scholar 

  • Siemann E, Brown JH (1999) Gaps in mammalian body size distributions reexamined. Ecology 80:2788–2792

    Article  Google Scholar 

  • Simberloff D (1974) Equilibrium theory of island biogeography and ecology. Annu Rev Ecol Syst 5:161–182

    Article  Google Scholar 

  • Sisk TD, Haddad NM, Ehrlich PR (1997) Bird assemblages in patchy woodlands: modeling the effects of edge and matrix habitats. Ecol Appl 7:1170–1180

    Article  Google Scholar 

  • Sklar FH, Costanza R (1990) The development of dynamic spatial models for landscape ecology: a review and prognosis. In: Turner MG, Gardner RH (eds) Quantitative methods in landscape ecology. Springer, New York, pp 239–288

    Google Scholar 

  • Smuts JC (1926) Holism and evolution. Macmillan, New York

    Google Scholar 

  • Stauffer D, Aharony A (1992) Introduction to percolation theory. Taylor & Francis, London

    Google Scholar 

  • Stewart RIA, Dossena M, Bohan DA, Jeppesen E, Kordas RL, Ledger ME, Meerhoff M, Moss B, Mulder C, Shurin JB, Suttle B, Thompson R, Trimmer M, Woodward G (2013) Mesocosm experiments as a tool for ecological climate-change research. In: Woodward G, Ogorman EJ (eds) Advances in ecological research: global change in multispecies systems, Pt 3, pp 71–181

    Google Scholar 

  • Strayer DL, Ewing HA, Bigelow S (2003a) What kind of spatial and temporal details are required in models of heterogeneous systems? Oikos 102:654–662

    Article  Google Scholar 

  • Strayer DL, Beighley RE, Thompson LC, Brooks S, Nilsson C, Pinay G, Naiman RJ (2003b) Effects of land cover on stream ecosystems: roles of empirical models and scaling issues. Ecosystems 6:407–423

    Article  Google Scholar 

  • Strong DR (1980) Null hypotheses in ecology. Synthese 43:271–285

    Article  Google Scholar 

  • Sturtevant BR, Miranda BR, Yang J, He HS, Gustafson EJ, Scheller RM (2009) Studying fire mitigation strategies in multi-ownership landscapes: balancing the management of fire-dependent ecosystems and fire risk. Ecosystems 12:445–461

    Article  Google Scholar 

  • Sullivan LL, Johnson BL, Brudvig LA, Haddad NM (2011) Can dispersal mode predict corridor effects on plant parasites? Ecology 92:1559–1564

    Article  PubMed  Google Scholar 

  • Swartzman GL, Kaluzny SP (1987) Ecological simulation primer. Macmillan, New York

    Google Scholar 

  • Tilman D, May RM, Lehman CL, Nowak MA (1994) Habitat destruction and the extinction debt. Nature 371:65–66

    Article  Google Scholar 

  • Turner MG, Ruscher CL (1988) Changes in landscape patterns in Georgia, USA. Landsc Ecol 1:241–251

    Article  Google Scholar 

  • Turner MG, Romme WH, Gardner RH (1994b) Landscape disturbance models and the long-term dynamics of natural areas. Nat Areas J 14:3–11

    Google Scholar 

  • Van Dyne GM (1969) The ecosystem concept in natural resource management. Academic, New York

    Google Scholar 

  • Von Bertalanffy L (1968) General system theory, foundations, development and applications. George Braziller, New York

    Google Scholar 

  • Von Bertalanffy L (1969) Change or law. In: Koestler A, Smythies JR (eds) Beyond reductionism: the Alpbach symposium. George Braziller, New York, pp 56–84

    Google Scholar 

  • Walters S (2007) Modeling scale-dependent landscape pattern, dispersal, and connectivity from the perspective of the organism. Landsc Ecol 22:867–881

    Article  Google Scholar 

  • Wang Q, Malanson GP (2007) Patterns of correlation among landscape metrics. Phys Geogr 28:170–182

    Article  Google Scholar 

  • Warren DL (2012) In defense of ‘niche modeling’. Trends Ecol Evol 27:497–500

    Article  PubMed  Google Scholar 

  • Watt KEF (1968) Ecology and resource management. McGraw-Hill, New York

    Google Scholar 

  • Wiens JA (1995) Landscape mosaics and ecological theory. In: Hansson L, Fahrig L, Merriam G (eds) Mosaic landscapes and ecological processes. Chapman and Hall, London, pp 1–26

    Chapter  Google Scholar 

  • Wiens JA, Crist TO, With KA, Milne BT (1995) Fractal patterns of insect movement in microlandscape mosaics. Ecology 76:663–666

    Article  Google Scholar 

  • Wilson JB (1995) Null models for assembly rules—the Jack Horner effect is more insidious than the narcissus effect. Oikos 72:139–144

    Article  Google Scholar 

  • Wimberly MC (2006) Species dynamics in disturbed landscapes: when does a shifting habitat mosaic enhance connectivity? Landsc Ecol 21:35–46

    Article  Google Scholar 

  • With KA (1997) The application of neutral landscape models in conservation biology. Conserv Biol 11:1069–1080

    Article  Google Scholar 

  • With KA (2002) The landscape ecology of invasive spread. Conserv Biol 16:1192–1203

    Article  Google Scholar 

  • With KA (2004) Assessing the risk of invasive spread in fragmented landscapes. Risk Anal 24:803–815

    Article  PubMed  Google Scholar 

  • With KA, King AW (1997) The use and misuse of neutral landscape models in ecology. Oikos 79:219–229

    Article  Google Scholar 

  • With KA, King AW (2004) The effect of landscape structure on community self-organization and critical biodiversity. Ecol Model 179:349–366

    Article  Google Scholar 

  • With KA, Gardner RH, Turner MG (1997) Landscape connectivity and population distributions in heterogeneous environments. Oikos 78:151–169

    Article  Google Scholar 

  • With KA, Cadaret SJ, Davis C (1999) Movement responses to patch structure in experimental fractal landscapes. Ecology 80:1340–1353

    Article  Google Scholar 

  • Wu JG, David JL (2002) A spatially explicit hierarchical approach to modeling complex ecological systems: theory and applications. Ecol Model 153:7–26

    Article  Google Scholar 

  • Yang J, He HS, Sturtevant BR, Miranda BR, Gustafson EJ (2008) Comparing effects of fire modeling methods on simulated fire patterns and succession: a case study in the Missouri Ozarks. Can J Forest Res 38:1290–1302

    Article  Google Scholar 

  • Zonneveld IS (1995) Land ecology. SPB Academic, Amsterdam

    Google Scholar 

Download references

Author information

Authors and Affiliations

Authors

Appendices

Appendix: Classification of Models

Models may be described or classified in various ways, and it is helpful to understand some commonly used terms. We review the terms often used to describe ecological models; similar distinctions are also presented by Grant et al. (1997).

Deterministic vs. stochastic. A model is deterministic if the outcome is always the same once inputs, parameters, and variables have been specified. In other words, deterministic models have no uncertainty or variability, producing identical results for repeated simulations of a particular set of conditions. However, if the model contains an element of uncertainty (chance), such that repeated simulations produce somewhat different results, then the model is regarded as stochastic. In practice, the heart of a stochastic simulation is the selection of random numbers from a suitable generator. For example, suppose that periodic movements of an organism are being simulated within a specified time interval. It may be likely that the organism will move, but it is not certain when this event will occur. One solution is to represent the movement event as a probability, say 0.75, and the probability of not moving as (1.0–0.75) = 0.25. Selection of a random number between 0.0 and 1.0 is done to “decide” randomly if movement occurs during a specific time interval. If the simulation is repeated, the time-dependent pattern of movement will be different, although the statistics of many movement events will be quite similar. Inclusion of stochastic events within a model produces variable responses across repeated simulations – a result that is quite similar to our experience of repeated experiments.

Analytical vs. simulation. These terms refer to two broad categories of models that either have a closed form mathematical solution (an analytical model) or lack a closed form solution and therefore must rely on computer methods (a simulation model) to obtain model solutions. For analytical models, mathematical analysis reveals general solutions that apply to a broad class of model behaviors. For instance, the equation that describes exponential growth in a population is an example of an analytical model (Table 1), as are many of the model formulations used in population ecology (May 1973; Hastings 1996).

In contrast, the complexity of most simulation models means that these general solutions may be difficult or impossible to obtain. In these cases, model developers rely on computer methods for system solution. Simulation is the use of a model to mimic, step by step, the behavior of the system we are studying (Grant et al. 1997). Thus, simulation models are often composed of a series of complex mathematical and logical operations that represent the structure (state) and behavior (change of state) of the system of interest. Many ecological models, especially those used in ecosystem and landscape ecology, are simulation models.

Dynamic vs. static. Dynamic models represent systems or phenomena that change through time, whereas static models describe relationships that are constant (or at equilibrium) and often lack a temporal dimension. For example, a model that uses soil characteristics to predict vegetation type depicts a relationship that remains the same through time. A model that predicts vegetation changes through time as a function of disturbance and succession would be a dynamic model. Simulation models are dynamic.

Continuous vs. discrete time. If the model is dynamic, then change with time may be represented in many different ways. If differential equations are used (and numerical methods available for the solution) then change with time can be estimated at arbitrarily small time steps. Often models are written with discrete time steps or intervals. For instance, models of insects may follow transitions between life stages; vegetation succession may look at annual changes, etc. Models with discrete time steps evaluate current conditions and then “jump” forward to the next time while assuming that condition remains static between time steps. Time steps may be constant (i.e., a solution every week, month, or year) or event-driven, resulting in irregular intervals between events. For example, disturbance models (e.g., hurricane or fire effects on vegetation) may be represented as a discrete time-step, event-driven model.

Mechanistic, process-based, empirical models. These three terms are frequently confusing. A “mechanism” is “…the arrangement of parts in an instrument.” When used as an adjective to describe models (i.e., a mechanistic model) the term implies a model with “parts” arranged to explain the “whole.” In the best sense of the term, a “mechanistic” model attempts to represent dynamics in a manner consistent with real-world phenomena (e.g., mass and energy conservation laws, the laws of chemistry, etc.). Although there has been waning support for mechanistic approaches to ecological modeling (Breckling and Muller 1994), the use of “mechanistic” in the strictest sense distinguishes these models from “black box” models which grasp at any formulation which might satisfactorily represent system dynamics. Confusion arises when the term “mechanistic” is loosely applied to distinguish less detailed models from more detailed ones. Often the implication is that mechanistic models are more desirable than less mechanistic(less detailed) models. Unfortunately, the assertion that additional detail produces a more reliable model must be demonstrated on a case-by-case basis (Gardner et al. 1982).

A “process-based” model implies that model components were specifically developed to represent specific ecological processes—e.g., equations for birth, death, growth, photosynthesis, and respiration are used to estimate biomass yields rather than simpler, more direct estimates of yields from the driving variables of temperature, precipitation, and sunlight. Although this concept seems clear, there is no a priori criterion defining formulations which qualify (or conversely do not qualify) as process models. Thus, depending on the level of detail, it is possible to have a “mechanistic process-based” model or an “empirical process-based” model.

An “ empirical” model usually refers to a model with formulations based on simple, or correlative, relationships. This term also implies that model parameters may have been derived from data (the usual case for most ecological models). Regression models (as well as a variety of other statistical models) are typically empirical because the equation was fitted to the data.

The problem of distinguishing between types of model is illustrated by the simulation of diffusive processes based on well-defined theoretical constructs (Okubo 1980). These formulations of diffusion allow simple empirical measurements to define the coefficients estimating diffusive spread. Thus, there is a strong theoretical base along with empirically based parameters. Is such a model considered empirical or theoretical? Should complex formulations always be considered more theoretical or simply harder to parameterize?

The essential quarrel with each of these three terms is that most ecological models are a continuum of parts, processes, and empirical estimations. Separating models into these arbitrary and ill-defined classifications lacks rigor and repeatability. One person’s mechanistic model is the next person’s process-based model, etc. There does not appear to be a compelling reason to use these vague and often confusing terms to distinguish between alternative model formulations.

Table 3.3. Terminology for model components and common procedures.

Further Reading

Ecological Modeling: General References

  • Ellner SP, Guckenheimer J (2006) Dynamic models in biology. Princeton University Press, Princeton

  • Haefner JW (2005) Modeling biological systems: principles and applications. Springer, New York

  • Kot M (2001) Elements of mathematical ecology. Cambridge University Press, Cambridge

Spatial Modeling

  • O’Sullivan D, Perry GLW (2013) Spatial simulation: exploring pattern and process. Wiley, Chichester

  • Perry GLW, Enright NJ (2007) Contrasting outcomes of spatially implicit and spatially explicit models of vegetation dynamics in a forest-shrubland mosaic. Ecol Model 207:327–338

  • Sklar FH, Costanza R (1990) The development of spatial simulation modeling for landscape ecology. In: Turner MG, Gardner RH (eds) Quantitative methods in landscape ecology. Springer, New York, pp 239–288

  • Tilman D, Kareiva P (1997) Spatial ecology: the role of space in population dynamics and interspecific interactions, Monographs in population biology. Princeton University Press, Princeton, p 367

Neutral Models

  • Gardner RH (2011) Neutral models and the analysis of landscape structure. In: Jopp F, Reuter H, Breckling B (eds) Modelling complex ecological dynamics. Springer, New York, pp 215–229

  • Gardner RH, Milne BT, Turner MG, O’Neill RV (1987) Neutral models for the analysis of broad-scale landscape pattern. Landsc Ecol 1:5–18

  • Hagen-Zanker A, Lajoie G (2008) Neutral models of landscape change as benchmarks in the assessment of model performance. Landsc Urban Plan 86:284–296

  • With KA, King AW (1997) The use and misuse of neutral landscape models in ecology. Oikos 79:219–229

Rights and permissions

Reprints and permissions

Copyright information

© 2015 Springer-Verlag New York

About this chapter

Cite this chapter

Turner, M.G., Gardner, R.H. (2015). Introduction to Models. In: Landscape Ecology in Theory and Practice. Springer, New York, NY. https://doi.org/10.1007/978-1-4939-2794-4_3

Download citation

Publish with us

Policies and ethics