Multiyear Discrete Stochastic Programming with a Fuzzy Semi-Markov Process ()
Affiliation(s)
1Economic Research Service, U.S. Department of Agriculture, Washington, DC, USA.
2Department of Applied Economics, Oregon State University, Corvallis, OR, USA.
3Department of Agricultural and Applied Economics, University of Wyoming, Laramie, WY, USA.
ABSTRACT
Drought conditions at a given location evolve randomly through time and are typically characterized by severity and duration. Researchers interested in modeling the economic effects of drought on agriculture or other water users often capture the stochastic nature of drought and its conditions via multiyear, stochastic economic models. Three major sources of uncertainty in application of a multiyear discrete stochastic model to evaluate user preparedness and response to drought are: (1) the assumption of independence of yearly weather conditions, (2) linguistic vagueness in the definition of drought itself, and (3) the duration of drought. One means of addressing these uncertainties is to re-cast drought as a stochastic, multiyear process using a “fuzzy” semi-Markov process. In this paper, we review “crisp” versus “fuzzy” representations of drought and show how fuzzy semi-Markov processes can aid researchers in developing more robust multiyear, discrete stochastic models.
Share and Cite:
Kim, C. , Adams, R. and Peck, D. (2016) Multiyear Discrete Stochastic Programming with a Fuzzy Semi-Markov Process.
Applied Mathematics,
7, 482-495. doi:
10.4236/am.2016.76044.
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