EMDS 3.0: A modeling framework for coping with complexity in environmental assessment and planning

Keith M. Reynolds1
1U.S. Dept. Agriculture, Forest Service, Pacific Northwest Research Station, Corvallis, USA

Tóm tắt

The Ecosystem Management Decision Support (EMDS) system is an application framework for knowledge-based decision support of ecological assessments at any geographic scale. The system integrates state-of-the-art geographic information system (GIS) as well as knowledge-based reasoning and decision modeling technologies to provide decision support for a substantial portion of the adaptive management process of ecosystem management. EMDS 3.0 is implemented as an ArcMap® extension and integrates the logic engine of NetWeaver® to perform landscape evaluations, and the decision modeling engine of Criterium DecisionPlus® for evaluating management priorities. Key features of the system’s evaluation component include abilities to (1) reason about large, abstract, multi-faceted ecosystem management problems, (2) perform useful evaluations with incomplete information, (3) evaluate the influence of missing information, and (4) determine priorities for missing information. A key feature of the planning component is the ability to determine priorities for management activities, taking into account not only ecosystem condition, but also criteria that account for the feasibility and efficacy of potential management actions. Both components include powerful and intuitive diagnostic features that facilitate communicating the explanation of modeling results to a broad audience.

Tài liệu tham khảo

Reynolds K M. EMDS users guide (version 2.0): knowledge-based decision support for ecological assessment, Gen. Tech. Rep. PNW-GTR-470, Portland, Oregon: U.S. Department of Agriculture, Forest Service, Pacific Northwest Research Station, 1999 Reynolds K M, Rodriguez S, Bevans K. User guide for the Ecosystem Management Decision Support System, version 3.0, Redlands, California: Environmental Systems Research Institute, 2003 Saaty T L. Multicriteria Decision Making: The Analytical Hierarchy Process, Pittsburgh, Pennsylvania: RWS Publications, 1992 Saaty T L. Fundamentals of decision making and priority theory with the Analytic Hierarchy Process, Pittsburgh. Pennsylvania: RWS Publications, 1994 Zadeh L A. Fuzzy sets. Inf Cont, 1965, 8: 338–353 Zadeh L A. Probability measures of fuzzy events. J. Math Anal Appl, 1968, 23: 421–427 Zadeh L A. The concept of a linguistic variable and its application to approximate reasoning, Part I. Information Science, 1975, 8: 199–249 Zadeh L A. The concept of a linguistic variable and its application to approximate reasoning, Part II. Information Science, 1975, 8: 301–357 Zadeh L A. The concept of a linguistic variable and its application to approximate reasoning, Part III. Information Science, 1976, 9: 43–80 Kaufmann A. Introduction to the theory of fuzzy subsets, Volume 1, Fundamental Theoretical Elements. New York: Academic Press, 1975 Blonda P, Bennardo A, Satalino G, et al. Fuzzy logic and neural techniques integration: an application to remotely sensed data. Pattern Recognit Lett, 1996, 17: 1343–1349 Holland J M. Using fuzzy logic to evaluate environmental threats. Sensors, 1994, 11: 57–61 Moraczewski I R. Fuzzy logic for phytosociology 1: Syntaxa as vague concepts, Vegetatio, 1993, 106: 1–12 Moraczewski I R. Fuzzy logic for phytosociology 2: Generalizations and prediction, Vegetatio, 1993, 106: 13–25 Openshaw S. Fuzzy logic as a new scientific paradigm for doing geography, Environment & Planning A, 1996, 28: 761–766 Salski A, Sperlbaum C. Fuzzy logic approach to modelling in ecosystem research. Lect Notes Comp Sci, 1991, 20: 520–527 Smith P N. A fuzzy logic evaluation method for environmental assessment, J Environ Syst, 1995, 24: 275–285 Smith P N. Environmental project evaluation: a fuzzy logic based method. Int J Syst Sci, 1997, 28: 467–474 Anonymous, Fuzzy logic applied to catchment modeling, Water & Wastewater International, 1994, 9: 40–43. Baum B A, Tovinkere V, Titlow J, et al. Automated cloud classification of global AVHRR data using a fuzzy logic approach. J Appl Meteorol, 1997, 6: 1519–1523 Hahn A, Pfeiffenberger P, Wirsam B, et al. Evaluation and optimization of nutrient supply by fuzzy logic, Ernahrungs-Umschau, 1995, 42: 367–375 Mays M D, Bogardi I, Bardossy A. Fuzzy logic and risk-based soil interpretations, Geoderma, 1997, 77: 299–303 McBratney A B, Odeh I O A. Application of fuzzy sets in soil science: Fuzzy logic, fuzzy measurements and fuzzy decisions. Geoderma, 1997, 77: 85–89 Ranst E Van, Tang H, Groenemans R, et al. Application of fuzzy logic to land suitability for rubber production in peninsular Thailand. Geoderma, 1996 70: 1–9 Ray D, Reynolds K, Slade J, et al. A spatial solution to ecological site classification for british forestry using ecosystem management decision support. In: Proceedings of Third International Conference on GeoComputation Conference. Bristol, UK, September 17–19, 1998, published on CD-ROM, 1998 Reynolds K, Jensen M, Andreasen J, et al. Knowledge-based assessment of watershed condition. Comput Electron Agric, 1999, 27: 315–333 Bourgeron P S, Humphries HC, Reynolds K M. Conducting large-scale conservation evaluation and conservation area selection using a knowledge-based system. In: Proceedings of the 4th International Conference on Integrating GIS and Environmental Modeling, 2–8 September 2000, Banff, Alberta, 2000 Schmoldt D L, Rauscher H M. Building Knowledge-Based Systems for Natural Resource Management. New York: Chapman & Hall, 1995 Saunders M C, Coulson R N, Folse J. Applications of artificial intelligence in agriculture and natural resource management. In: Kent A, Willeams J, eds. Encyclopedia of Computer Science and Technology. Volume 25, Supplement 10, New York: Marcel Dekker Inc., 1990, 1–14 Stone N D, Coulson R N, Frisbie R E, et al. Expert systems in entomology: three approaches to problem solving. Bull Entomol Soc Am, 1986, 32: 161–66 Edwards W. How to use multi-attribute utility measurement for social decision making. IEEE Trans Syst Man Cybern, 1977, 7: 326–340 Edwards W, Newman J R. Multi-attribute Evaluation, Beverly Hills, California: Sage, 1982 Kamenetzky R. The relationship between the analytical hierarchy process and the additive value function. Decis Sci, 1982, 13: 702–716 Maser C, Bormann B T, Brookes M H, et al. Sustainable forestry through adaptive ecosystem management is an open-ended experiment. In: ed. C Maser, Sustainable Forestry: Philosophy, Science, and Economics, Delray Beach, Florida: St. Lucie Press, 1994, 303–340 Davis L S, Johnson K N, Bettinger P S, et al. Forest Management to Sustain Ecological, Economic, and Social Values, 4th ed. Boston: McGraw-Hill, 2001