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Published byHomer Green Modified over 9 years ago
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Fuzzy Applications by W. Silvert, IPIMAR, Portugal
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Application to NAFO model The NAFO model presented by Bill Brodie in his talk uses the following simplified scheme: We can make a fuzzy representation of this as follows:
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Region 1 Region 1 can be described as follows: If F is low and B is high
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Region 2 Region 2 can be described as follows: If F is high and B is high
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Region 3 Region 3 can be described as follows: If F is high and B is low
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Region 4 Region 4 can be described as follows: If B is very low
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Quantification We quantify the model by saying that: F is 100% low if F < 0.1 F is 100% high if F > 0.2 For 0.1 < F < 0.2 interpolate For example F=0.15 is 50% high, 50% low We do the same for biomass Now let us take a look at the more complex figure from the written documentation Brodie submitted...
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More Detailed Analysis
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Fuzzy Zones The regions between B lim and B buf, and between F lim and F buf, are fuzzy zones. These are the zones where B and F are in both HIGH and LOW sets
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Rules for Action Typical rules are: IF B high and F low (#1) THEN continue IF B high and F high (#2) THEN reduce F etc. Corresponding fuzzy rules are IF B high and F low (#1) THEN continue IF B high and F high (#2) THEN reduce F drastically, where we might specify a rate of fishing reduction
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Implementation The fuzzy rules get rid of the sharp line between regions. Assume biomass is high (regions #1 and #2) – then the rules are interpreted as follows: IF F = 0.1 THEN mortality is 100% low and we continue IF F = 0.2 THEN mortality is 100% high and we reduce fishing drastically IF F = 0.15 THEN mortality is 50-50 and we reduce fishing moderately (drastic/2)
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More Complexity We can apply the same reasoning to more complicated ranges, such as in this area: Here we have biomass and mortality both in the fuzzy area between high and low, and we have a continuous management policy
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General Procedure Identify states of the system for which you want to assign actions. In this case the states are visualised as areas on the Biomass-Mortality phase diagrams The areas do not cover the entire diagram For example, (F 0.2)=HIGH Interpolate to find fuzzy mixed state Assign action on basis of memberships Example: if F=0.15, the state is 50% LOW and 50% high and the action is half-way in between
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Summary In any situation where we have different management regimes associated with the values of various variables (Indicators or Characteristics), we can describe fuzzy sets that give us a continuous and more flexible management policy without sharp cutoffs and discontinuities.
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