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Fuzzy Traffic Light Methods
byW. Silvert, IPIMAR, Portugal
andP. Fanning, R. Halliday,
and R. Mohn DFO, Canada
Why are we doing this?
The first question to be asked about any approach is why it is needed.
SGPA Term of Reference D is to revise the description of PA concepts to make them more intelligible for non-fishery users.
The Traffic Light Approach is one of the types of descriptions currently under investigation to simplify the process of management decision-making.
The Traffic Light Method
The Precautionary Approach (and Risk Management in general, not just for fisheries) requires that masses of complex data be presented clearly to managers, fishermen and other stakeholders.
The Traffic Light Method is an easily understood way of presenting information about stock conditions.
Indicators & Characteristics
We speak of Indicators, which are basic properties of the system, and Characteristics, which are integrated variables representing several Indicators.
Abundance is a typical Characteristic, since it represents the result of combining several Indicators, such as:Research Trawl dataVPA analysisCatch per Unit Effort
Standard Traffic Lights
Each Indicator or Characteristic is represented by a single traffic light, red, yellow or green in the standard traffic light representation.
There is no smooth transition, just two sharp lines separating red-yellow and yellow-green.
The meaning of the lights can be very sensitive to the location of these cuts.
Example: 4VsW Cod
A “crisp” traffic light indicatorsharp transitions between colours make
positioning the boundaries very criticalA lot of information is lost
Criteria for Improvement
The objective is to develop a more general approach with the following characteristics:
ResolutionUncertaintyWeighting
Resolution
The most serious problem with the standard traffic light method is the way that the lights change discontinuously when the Indicators change smoothly.
There is general agreement that there must be a more gradual representation of the significance of changing indicators.
Uncertainty
A less obvious point, but one which is clearly relevant to fisheries management, is the need to represent the degree of uncertainty in the interpretation of Indicators, and to provide a mechanism for expressing conflicting evidence or interpretation.
Weighting
It is also clear that not all Indicators are equally significant. They can be:
Of varying accuracyOf different relevanceOf dubious valueNew and untested
Alternative Approaches
Most alternatives to the standard traffic light method use some sort of averaging to show that an Indicator is on the border between red and yellow or between yellow and green.
One example is using intermediate colours, such as orange between red and yellow.
Fuzzy Traffic Lights
Fuzzy Sets offer one way to improve the standard traffic light method.
With fuzzy traffic lights an Indicator can correspond to more than one light.
For example, instead of using orange to show that an Indicator is on the red-yellow boundary, we can simply show both red and yellow lights.
Advantages of Fuzzy
Fuzzy traffic lights are continuous, we can switch between colours gradually to achieve higher resolution.
Fuzzy traffic lights show uncertainty if we illuminate several lights at once.
Fuzzy traffic lights can be weighted to show relative importance of indicators.
Memberships
The key idea behind Fuzzy Set Theory is that something can belong to more than one set at a time.
When we say that a light is red, that means that it belongs to the set “red”.
With fuzzy sets we can have a light that is 50% in set red and 50% in yellow.
Membership Example
Let the amount of each light displayed vary with the level of the indicatorTraffic Light Fuzzy Set
0
0.25
0.5
0.75
1
1.25
0 5000 10000 15000 20000 25000 30000 35000
Indicator
Deg
ree
Mean0.6*Mean
Strict Default Rules
Fuzzy Indicators
Use a combination of coloursgradual transitions show uncertainty and
contain more information than solid colour bars
Note that some bars have multiple colours
Application to Haddock
Note how much data is included on this figure, and how easy it is to see a pattern
Char Weight
Cod SSB Mana 1.0 Fraction over 42 Mana 1.0
Exploitation (%)(ages 5-10) Fish 1.0 Misaine Temperature Prod 0.5
Spring RV condition Prod 0.5 Spring RV 50% mat Prod 1.0
Summer RV growth age7(len) Prod 1.0 Summer RV Condition Prod 0.5
VPA Rec Prod 1.0 Density(1-29cm) Prod 0.5
Area occupied(1-29cm) Prod 1.0 VPA SSB Abun 1.0
Density(30cm+) Abun 0.5 Area occupied(30cm+) Abun 1.0
Sentinel (kg/set) Abun 1.0 Summer RV #/tow(42cm+) Abun 1.0
Summer RV #/tow(26-41cm) Abun 1.0
4TVW Haddock Summer RV #/tow(26-41cm)
0
15
30
45
60
75
1970 1975 1980 1985 1990 1995 2000
ManagementFishingM Production
Abundance
C:/1paulf/PA/hadd6c_fuzzy_traffic.txt
Application to White Hake
We have no VPA results, but we still can present an assessment
Current Developments
Char Weight
Temperature (Area >6C) Envi 1.0 Relative F Fish 1.0
Condition Factor Prod 0.5 July Area Occupied (<45cm) Prod 0.5
July Survey numbers (<45) Prod 1.0 July Survey Z Prod 1.0
July Survey mean weight Abun 0.5 July Area Occupied (>45cm) Abun 0.5 Halibut Survey numbers/set Abun 1.0
ITQ Survey numbers/set Abun 1.0 July Survey numbers (>45) Abun 1.0
4X/5 white hake July Survey numbers (>45)
0
6000
12000
18000
24000
1970 1975 1980 1985 1990 1995 2000
3 year trend
Environment Fishing Mortality
Production Abundance
C:/1paulf/PA/TLwhhakesimple4x_2.txt
Uncertain Reference LevelsWide yellow zone reflects uncertainty
Char Weight
Temperature (Area >6C) Envi 1.0 Relative F Fish 1.0
Condition Factor Prod 0.5 July Area Occupied (<45cm) Prod 0.5
July Survey numbers (<45) Prod 1.0 July Survey Z Prod 1.0
July Survey mean weight Abun 0.5 July Area Occupied (>45cm) Abun 0.5 Halibut Survey numbers/set Abun 1.0
ITQ Survey numbers/set Abun 1.0
4X/5 white hake ITQ Survey numbers/set
1.9
3.8
5.7
7.6
9.5
July Survey numbers (>45) Abun 1.0
1970 1975 1980 1985 1990 1995 2000
3 year trend
Environment Fishing Mortality
Production Abundance
C:/1paulf/PA/TLwhhakesimple4x_2.txt
Fuzzy Rules
The use of Fuzzy Traffic Lights to represent stock status means that we also use fuzzy rules to make management decisions.
Some typical (and familiar) fuzzy rules:IF it feels cold THEN light a fireIF you are hungry THEN eat something
Fuzzy rules are like crisp rules:IF the temperature falls below 14.7º C THEN
switch on the heater
Fuzzy Control of Fisheries
Fuzzy rules are of the form: IF (condition) THEN (act)
IF management= green AND production= green AND abundance= green
THEN tac_increment is large positive
IF production= green AND abundance= green THEN tac_increment is small positive
IF production= green AND abundance=yellow THEN tac_increment is no change
IF production=green AND abundance=red THEN tac_increment is small negative
IF production=yellow AND abundance=green THEN tac_increment is no change
IF production=yellow AND abundance=yellow THEN tac_increment is small negative
IF production=yellow AND abundance=red THEN tac_increment is large negative
IF production=red AND abundance=green THEN tac_increment is small negative
IF production=red AND abundance<>green THEN tac_increment is large negative
Displaying Fuzzy Lights
There are several ways to show a fuzzy traffic light:
Bubble charts, which look a lot like real traffic lights
Pie charts, which display information more quantitatively
Stacked bar graphs, which are less familiar but very effective
Bubble Charts
A Bubble Chart looks like a regular traffic light, but the sizes of the ”lights” are proportional to the membership in each of the three sets, red yellow & green.
Pie Charts
A pie chart looks less like a traffic light, but it gives a more quantitative picture of how much of each light is lit,
The area of each slice represents the fuzzy membership.
Stacked Bar Graphs
A stacked bar graph is somewhat like a traffic light with rectangular bulbs.
The area of each part of the bar represents the membership in the corresponding set.
Choosing the Display
The bubble chart resembles traffic lights most, but it does not give a good sense of the quantitative information about memberships.
The pie chart and the stacked bar graph both represent the relative memberships clearly.
Displaying Weighting
The bubble graph does not give a good idea of the relative weights of the different Indicators.
By varying the diameter of the pie charts or the width of the bar graphs we can show the relative importance of different indicators.
At present weighting has not been well implemented in trial applications and it is difficult to achieve agreement on it.
Comparison of Pie Charts
Comparison of Bar Graphs
Conclusions
Traffic Lights offer a clear way to present complex fisheries data.
Fuzzy Traffic Lights provide more information with little loss of clarity.