Java StarLogo 2.0 english `turtle` breeds [female male] turtles-own [A1 A2 age coupleID] to go wiggle die-of-old-age end to wiggle fd 1 rt random 25 lt random 25 set age (age + 0.01) match2 end to match2 if breed = female [grab one-of-male-here [set coupleID partner set coupleID-of partner (who) if (age > 18 and age < 100) and ((age-of partner) > 18 and (age-of partner) < 100) [reproduce who partner] ] ] end to reproduce :mom :dad ; parameters passed in the reproduce call if (age > 19 and age < 40) [ifelse (random 2) = 0 [let [:gA1 A1-of :mom]] [let [:gA1 A2-of :mom]] ifelse (random 2) = 0 [let [:gA2 A1-of :dad]] [let [:gA2 A2-of :dad]] hatch [set age 0 set A1 :gA1 set A2 :gA2 ifelse (random 2) = 0 [set breed male setshape 12 setc 107] [set breed female setshape 13 setc 17] if (random 400) = 0 [mutation] ] ] end to mutation if (age > 30 and age < 39) and (random 1000) <= 15 [die] if (age > 40 and age < 49) and (random 1000) <= 48 [die] if (age > 50 and age < 59) and (random 1000) <= 92 [die] if (age > 60 and age < 69) and (random 1000) <= 128 [die] if (age > 70 and age < 79) and (random 1000) <= 150 [die] if (age > 80 and age < 100) and (random 1000) <= 154 [die] end to die-of-old-age if age > 100 [die] end `observer` to setup ca create-female-and-do number [setc red setshape 13 set age random 80] create-male-and-do number2 [setc blue setshape 12 set age random 80] ask-turtles [setx random 50 sety random 50] ask-turtles [ifelse (random 400) < 1 [set A1 0 set A2 0] [set A2 1 set A1 0] ifelse (random 3) = 1 [set A1 1 set A2 1] [set A2 1 set A1 0] ] end `information` `interface` SLCanvas top-left 21 249 SLLineWidget top-left 176 5 width-height 231 135 id 2 order 2 type 1 title "Plot 2" delay-string "1.0" xlabel "" ylabel "" grid false connected true autoscaletrue location 0 0 whichip 19 onewhichip 20 wizard-on true lineset-id 1 lineset-name "female" lineset-order 2 lineset-type 1 lineset-color -65536 lineset-displayed? true lineset-instruction "( count-female) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "female" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 1 lineset-id 2 lineset-name "male" lineset-order 2 lineset-type 1 lineset-color -16776961 lineset-displayed? true lineset-instruction "( count-male) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "male" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 2 lineset-id 3 lineset-name "couple" lineset-order 2 lineset-type 1 lineset-color -16777216 lineset-displayed? false lineset-instruction "( count-couple) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "couple" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 3 lineset-id 4 lineset-name "couple" lineset-order 2 lineset-type 1 lineset-color -256 lineset-displayed? false lineset-instruction "( count-turtles) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 4 lineset-id 5 lineset-name "" lineset-order 2 lineset-type 1 lineset-color -11418368 lineset-displayed? false lineset-instruction "( count-turtles) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 5 lineset-id 6 lineset-name "" lineset-order 2 lineset-type 1 lineset-color -16711936 lineset-displayed? false lineset-instruction "( count-turtles) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 6 lineset-id 7 lineset-name "" lineset-order 2 lineset-type 1 lineset-color -16711738 lineset-displayed? false lineset-instruction "( count-turtles) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 7 lineset-id 8 lineset-name "male" lineset-order 2 lineset-type 1 lineset-color -16711681 lineset-displayed? false lineset-instruction "( count-male) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "male" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 8 lineset-id 9 lineset-name "" lineset-order 2 lineset-type 1 lineset-color -16744449 lineset-displayed? false lineset-instruction "( count-turtles) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 9 lineset-id 10 lineset-name "" lineset-order 2 lineset-type 1 lineset-color -7434610 lineset-displayed? false lineset-instruction "( count-turtles) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 10 SLLineWidget top-left 37 1 width-height 229 133 id 4 order 4 type 2 title "Plot 4" delay-string "1.0" xlabel "" ylabel "" grid false autoscaletrue location 0 0 whichip 21 onewhichip 22 wizard-on true lineset-id 1 lineset-name "" lineset-order 4 lineset-type 2 lineset-color -65536 lineset-displayed? true lineset-instruction " ask-turtles [ %ptolemy-plot 4 1 (age) ]" extrainfo-extra? true extrainfo-instruction "histogram" extrainfo-breed "turtles" extrainfo-var "age" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 1 lineset-id 2 lineset-name "" lineset-order 4 lineset-type 2 lineset-color -43776 lineset-displayed? false lineset-instruction " ask-turtles [ %ptolemy-plot 4 2 (Xcor) ]" extrainfo-extra? true extrainfo-instruction "histogram" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 2 lineset-id 3 lineset-name "" lineset-order 4 lineset-type 2 lineset-color -6262704 lineset-displayed? false lineset-instruction " ask-turtles [ %ptolemy-plot 4 3 (Xcor) ]" extrainfo-extra? true extrainfo-instruction "histogram" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 3 lineset-id 4 lineset-name "" lineset-order 4 lineset-type 2 lineset-color -256 lineset-displayed? false lineset-instruction " ask-turtles [ %ptolemy-plot 4 4 (Xcor) ]" extrainfo-extra? true extrainfo-instruction "histogram" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 4 lineset-id 5 lineset-name "" lineset-order 4 lineset-type 2 lineset-color -11418368 lineset-displayed? false lineset-instruction " ask-turtles [ %ptolemy-plot 4 5 (Xcor) ]" extrainfo-extra? true extrainfo-instruction "histogram" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 5 lineset-id 6 lineset-name "" lineset-order 4 lineset-type 2 lineset-color -16711936 lineset-displayed? false lineset-instruction " ask-turtles [ %ptolemy-plot 4 6 (Xcor) ]" extrainfo-extra? true extrainfo-instruction "histogram" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 6 lineset-id 7 lineset-name "" lineset-order 4 lineset-type 2 lineset-color -16711738 lineset-displayed? false lineset-instruction " ask-turtles [ %ptolemy-plot 4 7 (Xcor) ]" extrainfo-extra? true extrainfo-instruction "histogram" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 7 lineset-id 8 lineset-name "" lineset-order 4 lineset-type 2 lineset-color -16711681 lineset-displayed? false lineset-instruction " ask-turtles [ %ptolemy-plot 4 8 (Xcor) ]" extrainfo-extra? true extrainfo-instruction "histogram" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 8 lineset-id 9 lineset-name "" lineset-order 4 lineset-type 2 lineset-color -16744449 lineset-displayed? false lineset-instruction " ask-turtles [ %ptolemy-plot 4 9 (Xcor) ]" extrainfo-extra? true extrainfo-instruction "histogram" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 9 lineset-id 10 lineset-name "" lineset-order 4 lineset-type 2 lineset-color -7434610 lineset-displayed? false lineset-instruction " ask-turtles [ %ptolemy-plot 4 10 (Xcor) ]" extrainfo-extra? true extrainfo-instruction "histogram" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 10 SLMonitor top-left 314 8 width-height 80 36 name "monitor5" list-to-run "count-female" digits 0 delay 0.1 monitor-number 5 show-name? false whichip 9 onewhichip 10 SLMonitor top-left 314 103 width-height 64 36 name "monitor2" list-to-run "count-male" digits 0 delay 0.1 monitor-number 2 show-name? false whichip 11 onewhichip 12 SLMonitor top-left 95 644 width-height 174 36 name "With Breast Cancer [(A1 + A2) = 0]" list-to-run "count-turtles-with [(A1 + A2) = 0]" digits 0 delay 0.1 monitor-number 7 show-name? true whichip 13 onewhichip 14 SLMonitor top-left 9 643 width-height 173 36 name "monitor9" list-to-run "count-turtles-with [(A1 + A2) = 2]" digits 0 delay 0.5 monitor-number 9 show-name? false whichip 15 onewhichip 16 SLMonitor top-left 52 642 width-height 174 36 name "monitor8" list-to-run "count-turtles-with [(A1 + A2) = 1]" digits 0 delay 0.5 monitor-number 8 show-name? false whichip 17 onewhichip 18 SLButton turtle-or-observer? turtle top-left 5 85 width-height 40 30 name "button2" line-to-run "go" forever? true button-number 2 show-name? false whichip 7 SLLineWidget top-left 251 646 width-height 287 163 id 5 order 5 type 1 title "Plot 5" delay-string "1.0" xlabel "Time Passed" ylabel "Amount of Turtles" grid false connected true autoscaletrue location 0 0 whichip 23 onewhichip 24 wizard-on true lineset-id 1 lineset-name "With A1+A2=0" lineset-order 5 lineset-type 1 lineset-color -65536 lineset-displayed? true lineset-instruction "( count-turtles-with [ A1 + A2 = 0] )" extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with? true extrainfo-with-text " A1 + A2 = 0" extrainfo-xy? false extrainfo-xval? false lineset-end 1 lineset-id 2 lineset-name "With A1+A2=1" lineset-order 5 lineset-type 1 lineset-color -16776961 lineset-displayed? true lineset-instruction "( count-turtles-with [ A1 + A2 = 1] )" extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with? true extrainfo-with-text " A1 + A2 = 1" extrainfo-xy? false extrainfo-xval? false lineset-end 2 lineset-id 3 lineset-name "With A1+A2=2" lineset-order 5 lineset-type 1 lineset-color -8453889 lineset-displayed? true lineset-instruction "( count-turtles-with [ A1 + A2 = 2] )" extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with? true extrainfo-with-text " A1 + A2 = 2" extrainfo-xy? false extrainfo-xval? false lineset-end 3 lineset-id 4 lineset-name "" lineset-order 5 lineset-type 1 lineset-color -256 lineset-displayed? false lineset-instruction "( count-turtles) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 4 lineset-id 5 lineset-name "" lineset-order 5 lineset-type 1 lineset-color -11418368 lineset-displayed? false lineset-instruction "( count-turtles) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 5 lineset-id 6 lineset-name "" lineset-order 5 lineset-type 1 lineset-color -16711936 lineset-displayed? false lineset-instruction "( count-turtles) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 6 lineset-id 7 lineset-name "" lineset-order 5 lineset-type 1 lineset-color -16711738 lineset-displayed? false lineset-instruction "( count-turtles) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 7 lineset-id 8 lineset-name "" lineset-order 5 lineset-type 1 lineset-color -16711681 lineset-displayed? false lineset-instruction "( count-turtles) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 8 lineset-id 9 lineset-name "" lineset-order 5 lineset-type 1 lineset-color -16744449 lineset-displayed? false lineset-instruction "( count-turtles) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 9 lineset-id 10 lineset-name "" lineset-order 5 lineset-type 1 lineset-color -7434610 lineset-displayed? false lineset-instruction "( count-turtles) " extrainfo-extra? true extrainfo-instruction "number of" extrainfo-breed "turtles" extrainfo-var "Xcor" extrainfo-with false extrainfo-xy? false extrainfo-xval? false lineset-end 10 SLSlider top-left 397 47 width-height 118 25 name "Males" variable "number2" min-value 0 max-value 1000 current-value 564 slider-number 1 show-name? true SLSlider top-left 364 47 width-height 120 25 name "Females" variable "number" min-value 0 max-value 1000 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