Traffic Scireports Dig

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Congestion in confined ant traffic Nick Gravish*, Gregory Gold, and Andrew Zangwill School of Physics, Georgia Institute of Technology, Atlanta, GA 30332, USA * Michael A.D. Goodisman School of Biology, Georgia Institute of Technology, Atlanta, GA 30332, USA Daniel I. Goldman School of Physics and School of Biology, Georgia Institute of Technology, Atlanta, GA 30332, USA (Dated: July 30, 2014) Many social animals construct subterranean nests where they collectively live and move. In these environments the physical constraints imposed by the confined, crowded nest tunnels may present challenges for mobility. To understand how organisms mitigate traffic jams in subterranean environments we study traffic in the fire ant Solenopsis invicta. We monitor foraging traffic of fire ant workers in laboratory tunnels of varied diameter 2, 3, 4, 6 mm. We observe that head-on interactions in bi-directional traffic occurred frequently between oncoming ants and often led to sustained traffic jams. Traffic jams persisted for a time that increased linearly with the number of participating ants. The slope of traffic jam duration versus group size increased as tunnel diameter decreased and diverged at a minimum diameter, Dc=1.47 mm. These results give a measure of traffic flow sensitivity as a function of tunnel diameter and predict the minimum tunnel diameter within which two-way traffic can occur in fire ant nests. Further, we compare the traffic flow sensitivity observed in experiment with the range of tunnel sizes constructed in nature and observe that fire ants always construct tunnels outside the range of traffic jam sensitivity. To understand how important behavioral rules are in controlling traffic flow within tunnels we construct a minimal null model for bi-directional traffic in confined space. Our minimal model reproduces experimental observations and indicates that ant-tunnel traffic dynamics are due in part to the physical constraints of subterranean life. INTRODUCTION Traffic within crowded spaces is observed across a range of size scales from intracellular [1–4] to inter- state traffic [5–7]. Motor proteins transport cargo along crowded microtubules [1–3, 8], aggregations of cells col- lectively migrate through the extra-cellular matrix [9, 10], and animals navigate through crowded aerial, aquatic, and terrestrial environments [11]. Many social animals live in centralized, enclosed envi- ronments such as ant nests, termite mounds, and prairie dog nests. Social animals rely on the rapid movement of resources, information, and individuals within the nest for survival [12, 13]. However, in confined nest envi- ronments, the constraints of sensory deprivation, phys- ical crowding, and environmental perturbations all hin- der mobility and challenge effective movement. Recent experiments have explored how individual ants [14], cock- roaches [15], and ferrets [16] traverse confined spaces. However, little is known about the collective locomotion of subterranean organisms in their natural environments. Social insects such as ants [12] and termites [17] con- struct nests in which they collectively live and move (Fig. 1a). Many features of nest morphology (tunnel size, shape, branching) are conserved across different nests within species [18]. Thus, an open biological question is whether these nest morphologies are adaptations for ef- fective subterranean life, or simply related to other mor- phological or behavioral traits, such as body-size [19] or interaction dynamics. In red imported fire ant (Solenopsis invicta) colonies the approximately 3.5 mm long workers create subter- ranean foraging tunnels of diameter 3 14 mm and up to 50 m in length (Fig. 1b, c). Foraging tunnels extend horizontally away from the central nest and pro- vide a path along which workers move back and forth from the nest to the external environment. Foraging typ- ically incurs the highest mortality among ant workers [12] and thus construction of foraging tunnels are an effective strategy to minimize worker mortality [20]. However, for- aging tunnels restrict foraging traffic to the confines of the nest and thus tunnel dimensions may limit resource transport capabilities. In excavations of S. invicta forag- ing tunnel networks, Tschinkel [21] discovered that the diameter of tunnels decreased with an increase in the distance from the nest center. This suggests that traffic demands may play a role in fire ant nest construction and design. Laboratory and field experiments have shed light on the mechanisms by which ants manage traffic on ant sur- face foraging trails (see [19] for a review). For example, lane formation during bi-directional traffic of the army ant Eciton burchelli [22], trail widening by leaf cutter ants (Atta colombica) [19, 23], and priority rules for pass- ing [24] are examples of self-organized process that min- imize traffic jams along trails. In bi-directional foraging

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Transcript of Traffic Scireports Dig

CongestioninconnedanttracNickGravish*, GregoryGold, andAndrewZangwillSchool of Physics, GeorgiaInstituteof Technology, Atlanta, GA30332, USAMichael A.D. GoodismanSchool of Biology, GeorgiaInstitute of Technology, Atlanta, GA30332, USADaniel I. GoldmanSchool of PhysicsandSchool of Biology, GeorgiaInstituteof Technology, Atlanta, GA30332, USA(Dated: July30,2014)Manysocial animals construct subterraneannests where theycollectivelylive andmove. Intheseenvironments thephysical constraints imposedbytheconned, crowdednest tunnels maypresentchallengesformobility. Tounderstandhoworganismsmitigatetracjamsinsubterraneanenvironments we studytrac inthe re ant Solenopsis invicta. We monitor foragingtrac ofreantworkersinlaboratorytunnelsof varieddiameter2, 3, 4, 6mm. Weobservethathead-oninteractions inbi-directional tracoccurredfrequentlybetweenoncomingants andoftenledtosustainedtracjams. Tracjamspersistedforatimethatincreasedlinearlywiththenumberofparticipatingants. Theslopeoftracjamdurationversusgroupsizeincreasedastunneldiameterdecreasedanddivergedat aminimumdiameter, Dc=1.47mm. Theseresults giveameasureoftracowsensitivityasafunctionof tunnel diameterandpredicttheminimumtunnel diameterwithinwhichtwo-waytrac canoccur inre ant nests. Further, we compare the trac owsensitivityobservedinexperimentwiththerangeoftunnelsizesconstructedinnatureandobservethatreantsalwaysconstructtunnelsoutsidetherangeof tracjamsensitivity. Tounderstandhow important behavioral rules are in controlling trac ow within tunnels we construct a minimalnullmodelforbi-directionaltracinconnedspace. Ourminimalmodelreproducesexperimentalobservations and indicates that ant-tunnel trac dynamics are due in part to the physical constraintsofsubterraneanlife.INTRODUCTIONTrac within crowded spaces is observed across arange of size scales fromintracellular [14] to inter-statetrac[57]. Motorproteinstransportcargoalongcrowdedmicrotubules[13, 8], aggregationsofcellscol-lectively migrate through the extra-cellular matrix [9, 10],andanimals navigate throughcrowdedaerial, aquatic,andterrestrialenvironments[11].Manysocialanimalsliveincentralized,enclosedenvi-ronmentssuchasantnests,termitemounds,andprairiedognests. Socialanimalsrelyontherapidmovementofresources, information, andindividuals withinthenestfor survival [12, 13]. However, inconnednest envi-ronments, theconstraintsof sensorydeprivation, phys-ical crowding, andenvironmental perturbationsall hin-dermobilityandchallengeeectivemovement. Recentexperiments have explored how individual ants [14], cock-roaches [15], andferrets [16] traverse connedspaces.However,littleisknownaboutthecollectivelocomotionof subterranean organisms in their natural environments.Social insectssuchasants[12] andtermites[17] con-struct nests in which they collectively live and move (Fig.1a). Many features of nest morphology (tunnel size,shape, branching) are conservedacross dierent nestswithinspecies[18]. Thus,anopenbiologicalquestioniswhetherthesenestmorphologiesareadaptationsforef-fectivesubterraneanlife,orsimplyrelatedtoothermor-phologicalorbehavioraltraits,suchasbody-size[19]orinteractiondynamics.Inredimportedreant(Solenopsis invicta)coloniestheapproximately3.5mmlongworkers createsubter-raneanforagingtunnelsof diameter3 14mmandupto50minlength(Fig. 1b, c). Foragingtunnelsextendhorizontallyawayfromthecentralnestandpro-videapathalongwhichworkers movebackandforthfrom the nest to the external environment. Foraging typ-ically incurs the highest mortality among ant workers [12]and thus construction of foraging tunnels are an eectivestrategy to minimize worker mortality [20]. However, for-agingtunnelsrestrictforagingtractotheconnesofthenestandthustunnel dimensionsmaylimitresourcetransport capabilities. In excavations ofS.invicta forag-ingtunnel networks, Tschinkel [21] discoveredthatthediameter of tunnels decreasedwithanincrease inthedistancefromthenestcenter. Thissuggeststhattracdemands may play a role in re ant nest construction anddesign.Laboratoryandeldexperiments haveshedlight onthe mechanisms by which ants manage trac on ant sur-faceforagingtrails(see[19] forareview). Forexample,laneformationduringbi-directional tracof thearmyant Ecitonburchelli [22], trail wideningbyleaf cutterants (Attacolombica) [19, 23], and priority rules for pass-ing[24]areexamplesofself-organizedprocessthatmin-imizetracjamsalongtrails. Inbi-directionalforaging2L (mm)PP0.300.205 0 10 151 mma)c)b)Foraging tunnel networkMound5 m Foraging VerticalFIG. 1. a)Imagesofreantswithinexcavatednesttunnelsinaquasi-2Denvironment (see [26] for details). b) Over-headviewofanaturalsubterraneanforagingtunnelnetworkconstructedbyanS. invictacolony. DatareproducedfromMarkin[27]. c)Sizedistributionsof anttunnel diameterinlaboratoryvertical tunnels andnatural horizontal foragingtunnels. VerticaltunneldatacollectedbyGravishetal. [14]andhorizontal tunnel datacollectedbyTschinkel [21]. Bot-tomshowsbodylengthdistributionof S. invictaworkersre-producedfrom[14].tracofAttacolombica, workersdonotformlanesandinsteadfrequentlypausetoengageinhead-onencoun-ters. Counter-intuitively, the rate of trac ow was max-imal inAttacolombicatrac whenhead-onencounterfrequency was maximum [25]. To explain this it was sug-gestedthatantinteractionsmayhaveapositiveimpactontracbybreakinguptheowandinhibitingjamsofgroupsmovinginthesamedirection.Tactile interactions areanimportant modeof infor-mationacquisitionandresourcetransferinthenesten-vironment and along foraging tunnels. For instance, suchinteractionsallowreantstoidentifyinvaders[12, 13],exchange food or water, or be recruited to a new foragingsite [2830]. While tactile interactions along surface trailsmayinhibit trac jams bybreakingupthe ow[25],insubterraneantunnels workers are connedinspaceand the tactile interactions will inhibit ow. Thus tracandtactileinteractions areat odds: workersthat stoptointeractpresentphysicalobstaclestotheowoftraf-cwhichmaycausetemporarytracjams. Resourcesandinformationmovewiththeowoftracwithinthenest,andthussmoothtracowislikelyimportantforsuccessfulsubterraneanlife.Inthisstudywetesttheabilityofreantcoloniestomaintainbi-directionalforagingtracwithintunnelsofnatural and reduced diameter. From a biological perspec-tive, weseektounderstandhowantscollectivelymovewithinsubterraneantunnels andhowdiameter aectsthis motion. Fromaphysical perspective, we seektounderstandhowsimplerulesofcollectivemotionwithinconnementrelatetotheoveralltracowofantsinacolony. Toaddressthesequestionsweperformbiologi-cal experiments and computer simulations to explore thedynamicsofreantforagingtracinconnedtunnels.METHODSExperimentFireantcolonies(Solenopsisinvicta)werecollectedinGeorgiain2011-2012. Colonieswereseparatedfromsoilusingthewaterdripmethodandwerehousedinplasticbins that contained an enclosed nest area made from petridishesandanopenforagingarena. Weprovidedinsectstothecoloniesasfoodandwateradlibitum.Wemonitoredunperturbedtracbetweenalabora-torynest andanopenforagingarena(Fig. 2a). Theforagingarenaconsistedofa27cm17cmplasticbinwithFluoncoatedwallsinwhichweplacedaconstantsupply of water and food. A lamp placed above the arenailluminated and heated the foraging zone. A plastic tubeconnectedtheforagingarenatoaglasstunnel orientedhorizontallywithvarieddiameter (D=2, 3, 4, 6 mm)andlengthof 11cm(Fig. 2b). Theglass tunnel wasconnectedtoanenclosedplasticnestwhichwaspaintedblackandcontainedamoistplaster-of-parisoor.Fiveseparategroups of 500-2000worker reants ofbody length 3.50.5 were removed from their host colonyandplacedintheforagingarena. Weexcludedqueens,males, and brood from the group. The ve worker groupsweredrawnfromthreecoloniesandweremonitoredinindependent experiments over the course of three months.Withinseveral hoursof beingrelocatedtotheforagingarena the workers migrated to the nest and maintained acontinuousowofbi-directional tracfromthenestto3ForagingarenaCameraTunnelNest11 cma)b)3 mmc)xyFIG. 2. Experimental apparatus to monitor trac in dierentdiametertunnels. a)Experimentshowingnestandforagingarenaseparatedby11cmlongglasstubeof diameter D[2, 3, 4, 6] mm. b) Size relationship between laboratory tunneldiameterandtypicalworkerbodysize. c)Imageoftwoantsin a 2 mm diameter tunnel (top) and a 6 mm tunnel (bottom).Plotsaboveeachimageshowataxedtime.theforagingarenaandback. Wemonitoredtheforagingtracof worker groups for 24-72hours withineachofthe four tunnel sizes. The order of tunnel presentation totheworkergroupwasrandomizedacrossdierentgrouptrials.Werecordedvideosequencesof trac, 40secondsinduration at a rate of 100 Hz, and resolution of 100 x 1328pixels(120pixelswasequal to1cm). Afterthecollec-tionofeachvideoweperformedpost-processinginMat-lab which consisted of dividing each video frame by a sta-tionary background image and thresholding the resultantimage togenerate abinaryimage time-series, It(x, y),containingonlyants. Followingimageprocessinganewvideowascaptured. Thetimeinterval betweensucces-sivevideoswas2minutes. Ourexperimentconsistedofover10,000videoseachwith4,000framesoftrac.We analyzed spatio-temporal trac dynamics as a one-dimensional owof density, (x, t) alongthelengthofthetunnel, x(Fig. 2candFig. 3). (x, t)isdenedas(x, t)=

y It(x, y)whereIt(x, y)istheexperimentalimageattimet. Wedenethenumberofantswithinatunnelasn(t) =1C

x (x, t)where

xisthesumovertheentirelengthofthetunnel,andCisanormalizationconstantson(t) = 1whenoneantisinthetunnel.We analyzedthe spatial clustering of ants that oc-curredwithinthetunnel byndingspatiallyconnectedregionswhere(x, t)isnon-zero. Foreachclusterofsizen (binned in increments of 0.5) we computed the densitycorrelationfunctionQn() =(x, t0)(x, t0 + ) (x, t0)2(x, t0)2 (x, t0)2(1)(introducedin[31]). Qn() is afunctionwhichvariesfrom 0 to 1 with time interval,,and measures how cor-related an ants position is over time. Ants in trac jamsmoveslowlyandthusQn()remainslarge(highcorre-lation) for longer time durations thanwhencomparedtofree-ow. Thebrackets...arethespatio-temporalaverageofthefunctionovertheclustersizeandtimein-terval [0, 13s]. For the calculation of Qn() we evalu-atedeveryfourthvideoframetospeedupcomputation.Thecorrelationfunctioninterval waschosentobelongenoughsuchthatQ() = 0forlongtimeintervals.Totrackant motionwithinthe tunnel we usedtwotechniques. Todeterminethespeed-densityrelationshipwemanuallytrackedthedistanceants traveledduring1.2secondtimeintervalswhichcorrespondedtoafree-owtravel distanceofapproximately7bodylenghts. Inadditionwe measuredthe local densityof ants within2bodylengthsof thetrackedant at thebeginningofmotion. Wealsousedanautomatedtracker whichlo-catedall antclustersbetweenadjacentframesandcor-relatedsimilarclustersamongtheframesbyminimizingthe traveled distance and cluster size. From the distanceeachclustermovedwedeterminedthespeedoftheclus-ter.To study the interaction behavior of ants we handtrackedantsduringantennaecontactandmeasureddu-ration. Wedenetheinteractiontime,Tint,asthetimefrom rst antennae contact between two ants to the timewhentheyhavepassedandtherepetiolesarealigned.SimulationWe seek to understand how and if ant trac in tunnelsdepends on the details of ant-ant interactions. To explorethisquestionweimplementeda2Dcellularautomatainwhichweinputtherulesof interactionandstudiedtheresultant ant trac (Fig. 4). In our model ants occupiedlatticesitesandmovedbi-directionallyalongthetunnellength. Ants enteredthetunnel fromtheleft or rightatrandomandadvancedalongadirectionofmotionto-wardstheoppositetunnel end. Antsadvancedforwardbyonelatticesiteduringeachiteration; howeveronlyasingleant occupiedalatticesiteat atime. Twoants410 5Position (cm)10 5Position (cm)0 40 Time (s)10 30 0 40 Time (s)10 30 b)c)d)a)FIG. 3. Space-time representation of ant-trac in dierent diameter tunnels. a) Image sequence of ants moving bi-directionallyin a 6 mm tunnel. Images are separated by 14 ms and tunnel length is 10 cm. b) Plot of(x, t) with individual times separatedvertically. Imagesequenceistakenfromthehighlightedsectioninthemiddle. c)Imagesequenceof tracowfrom2mmtunnel. d)Plotof(x, t)ina2mmtunnelwithindividualtimesseparatedvertically.Deffa)b)x (cm) 9 0012Time (s)FIG. 4. Simulation of bi-directional tunnel trac. a)Schematic of cellular automata simulation. Orange ants moveleftandblackantsmoveright. b)Space-timeplotof(x, t).adjacent to each other in the head-on direction were per-mitted to move only by jumping to an open lateral latticesitewithprobabilityp.ByvaryingpwecouldvaryTintinsimulationtoex-plore how head-on encounters inuence trac. The prob-ability for a head-on encounter to end is given by the com-binedprobabilityofeitherantjumpingpasteachother,2p p2. Thestatistics of head-onencounters followaPoissonprocess andthus theinteractiontimebetweentwoantsinsimulationwasdeterminedfromthemedianvalueoftheexponential distributionfunction. Theme-dian interaction time of ants in simulation with time-stepdt is

ln(2)/

2p p2

dt. We xed the length of the sim-ulatedtunneltomatchthatoftheexperimentwithtun-nel lengthl =31Landgrid-lengthof onebodylength.The time step of the simulation (dt =0.175 s) waschosensuchthat thefree-speedwas 2cm/s, matchingexperiment. We variedthe widthof the tunnel fromDeff= 3 100latticespaces.Tocomputeow-densitycurvesinsimulationwemea-sured the distance traveled by each ant over 7 time-steps(a1.225s time interval chosentomatchexperiment).Similartoexperiment, thelocal densitywascalculatedas thenumber of ants withina2latticespacingdis-tanceaheadandbehindthe focalant. We computedthemeanvalueofantspeedindensityintervalsof1ant/cmand scaled the simulation speed to match the experimentatasinglevalue,thefreeowcondition(1ant/cm). Wescaled the simulation for comparison because our simula-tionparametersweresettomatchtheaveragefree-owspeed of ants in experiment but speed-density results arebasedonmaximumsspeedsachieved(theupperboundcurvesinexperiment).5024Speed (cm/s)0 10 0 102 mm6 mmDensity (ants/cm)0 10 0 5 10FIG.5. Fundamentaldiagramofbi-directionaltracowintunnels. Tunneldiameterincreasesfromlefttoright. Solidlinesareestimatesof theboundingcurvesforthespeed-densityrelationship. Dashedlineinleftpanel isforcomparisonbetween2 mm and 6 mm tunnels. Black and white circles are results from simulation for simulated tunnel diameters ofDeff= 2, 3, 4, 6fromlefttoright.RESULTSExperimental resultsAntinteractiontimeAntsmovedbi-directionallythroughtheforagingtun-nel (Fig. 3). Often, twoantsmeetinghead-onbrushedtheir antennae against one anothers head and body (Fig.2b and SI Movies 1,2). We measured the interaction time,Tint, between inbound and outbound ants in the four tun-nel diameter treatments and found that Tint diered onlyinthesmallesttunnel(SeeSIFig. 2). InD = 3 6mmtunnelsTint= 0.45 0.26s,inthe2mmtunnelinterac-tiontimeswereskewedtolongerdurationswithameanvalueofTint= 1.13 1.30.From automated tracking of the velocity of ant clusterswithinthetunnel, wecomputedspeeddistributionsforscenarios inwhichants movedintrac, andinwhichthey moved freely through the tunnel. We observedthat the free speed distribution was roughly gaussian dis-tributedwithvfree =1.930.63cm/s. The speeddistributionintracwasskewedtotherightwiththemajorityofspeedsnearzero(SeeSI).Weobservedthattheseinstancesof lowspeedcorrespondedtosituationswhereantennationoccurredinthetunnel.BulktracowInall tunnels, ant interactions impactedthe owoftracnearbycreatinglocal trac-jams(Fig. 3). Todetermine if trac owwas relatedtoant densitywemeasuredthespeed-densityrelationshipwithinthefourtunnels fromexperiment. Weobservedthat withinalltunnel sizes, theupperboundof speedvs. densityde-creasedwithincreasingdensity(Fig. 5). Comparisonoftheupperboundcurvesofspeedvs. densitybetweenlargeandsmall diametertunnelsillustratedthatspeeddecreasedwithincreasingdensitymorerapidlyinlargertunnelsthaninsmaller(Fig. 5 left,solidline2 mm,anddashedline6mm).Afundamental measure of trac throughput is thetrac ow, F, which is the product of speed and density(Fig. 6a) [32]. Fis theproduct of speedanddensityand is the number of ants that pass a point in space overtime within the tunnel. At zero density, no ants are in thetunnel and F= 0. At large density ants become jammedtogetherandspeedapproacheszero,inwhichcaseagainF=0. ThustheowismaximizedwithavalueFmaxatanintermediatedensitycalledthecarryingcapacity.Flow curves constructed from the upper bound curves ofspeed vs. density increased in size with increasing tunneldiameter (Fig. 6a). Themaximumowachievableintunnels of varied diameter increased with tunnel diameter(Fig. 6c).Spatio-temporal tracuctuationsTo gain insight into the process of formation and break-up of trac jams, we measured spatial and temporal uc-tuations of the tunnel density, (x, t). Temporal statisticsweredeterminedbyevaluating(x, t)atdierentxedpointsinspaceovertime. Spatial statisticsweredeter-minedbyevaluating(x, t)inspaceatxedtimes. Thetime interval between ants crossing a point in spacethewait timeapproximately followed an exponential distri-bution(Fig. 7a)withatimeconstantthatwassimilaramongthefourtunnels. Anexponential waittimedis-tributionindicatesthatmotionwithinthetunnelcanbeconsideredasarandomprocess.We dene the occupation time as the time an ant occu-pies a point in space (Fig. 7c). The distribution of occu-pationtimesamongalltunnelsweresimilarinthattheywerepeakedatatimeofbodylengthvfree0.35cm1.9cm/s 0.18stheoccupationtimeof freelymovingantsandhada60 5 10Density (ants/cm)F (ants/s)F (ants/s)15015a)c)b)d)D0 20 40 60Density (ants/cm)030Experiment0 2 4 6 804812D (mm)Fmax (ants/s)ExperimentSimulationSimulation0 2 4 6 804812DeffFmax (ants/s)FIG. 6. Flowvs. densityintunnelsofvaryingD. a-b)Flowcurves in experiment (a) and simulation (b). Experiment owareofincreasingdiameterasshownbyarrow. Dashedboxin(b) shows the axis range of (a). c-d) Maximum ow vs. tunneldiameterinexperiment(c)andsimulation(d).powerlawtail withaslope3forall fourtunnel di-ameters(Fig. 7c).Finally, we measuredthe typical size (linear dimen-sion) of interaction clusters. The cluster size of ant inter-actionswaspeakedatavalueofasingleantbodylengthandhadanexponential tail withslopethatvariedwithtunnel diameter. The magnitude of the exponentiallength constant increased with Dindicating that themeanclustersizeincreasedastunnelsizeddecreased.TracjamdurationsWeobservedthat thetimedurationof similar sizedjams (clusters) was sensitive toD(Fig. 5). Inspiredbystudiesof mobilityinnon-biological soft-mattersys-tems like granular materials [31, 37, 38], we measuredthecorrelationfunctionfordensityuctuations, Qn(),associatedwithtracjams of sizen. Qn() measureshowquicklyhighdensitytrac-uctuationsreturnedtosteadyow. WeobservedthatQn()curvesdecreasedfrom 1 to 0 over a characteristic time scale which var-iedover dierent tunnel diameters andjamsizes (Fig.8a, 9a). For xedtunnel diameter, curves of larger nwere shiftedto the right indicating that increasedwithcluster size. Comparing Qn() curves of similarnacrossDindicatesthatincreasedwithdecreasingD. We measuredby tting anempirical functionQn() =e[( )]whereis at parameter of orderunity.The correlation time of ant aggregations, , increasedapproximatelylinearlywithincreasingn(Fig. 9a) forall tunnel sizes. Theslopeof asafunctionof nisaa)b) P0 2010-310-110-510-7P10-310-110-510-7Wait time (s)0 20 40 40Wait time (s)c)d) 10-2100Occupation time (s)L / vfree10-2100102102Occupation time (s)Experiment SimulationFIG. 7. Probabilitydistributionfunctions for ant stoppingandmovingfromexperimentandsimulation. a)Histogramofwaittimefromthefourtunnelsinexperiment. b)Distri-butionof wait times fromvariedtunnel diameters insimu-lation. Dierentcolorcurvescorrespondtovarieddiametersimulations whichincrease fromupper tolower curves. c)Distributionof site-occupationtimefromexperiment. Notelog-logaxes. Dashedlineiscurveformt3. d)Distributionof site-occupation times from simulation. Dashed line is sameasinc)forcomparison.measureofhowsensitivetracowistotheformationof jams fromintermittent densityuctuations. We tlinestovs. nandobservedthatthenormalizedslopeof (n)(normalizedsuchthatlimD=1)in-creasedwithdecreasingtunneldiameter(Fig. 10a). Wetvs. nwithafunctionof theformA(DDC) + 1(chosentomatchsimulationresultswhichwediscussinthenextsection). Thistshowsthattracsensitivitydivergesat atunnel diameter of 1.47 0.2mmtunneldiameterwithinwhichbi-directionaltracoccurs.SimulationofanttracWait time(Fig. 7b) andoccupationtime(Fig. 7d)probabilitydistributions fromour simulations qualita-tively matched the experimental results across a range ofD. Waittimedistributionsfromthesimulationshadamixed shape that was not well described by either an ex-ponential or a power law distribution. However the rangeofvaluesobservedinexperimentandsimulationwereinaccord. Occupationtimeprobabilitydistributions(Fig.7d) fromthesimulations matchedtheexperiment welland were roughly power-law in shape with a slope 3,similartoexperiment.7We performed similar measurements of the density cor-relationfunctioninour cellular automata simulations(Fig. 8b). Thesimulations reproducedfeatures of theexperiment: ((n)increasedwithn(Fig. 9b), anddiverged with decreasing tunnel diameter (Fig. 10b). Toquantifytheeects of tunnel diameter andinteractiontime on trac ow we t curves from simulation andexperiment to the empirical function =A(DDc)+1(solidlinesinFig. 10b).DISCUSSIONPhysical aspectsofconnedtracWestudiedreantforagingtracwithintunnelsofdiameterrangingfrom2-6mm. Weobservedthatantcolonies were able to maintain bi-directional trac in alltunneldiameters(SIMovie2)andtunneldiameteronlyappearedtonegativelyimpacttracowinthe2mmtunnel. Head-onencountersfrequentlyoccurredwithinthetracowandresultedintracjamsthatblockedowlocally. Head-onencounters consistedof antenna-tion, aprimarymechanismoftactileinformationacqui-sitionbyants[12]. WeobservedthatTintwaslargerin2mmtunnelscomparedtotheotherdiameters. Thisislikelyduetothereducedlateralspacewhichalteredthedurationoverwhichantscrossedpaths.Wecapturedthebasicfeaturesof bi-directional traf-cowandtracjams that occur withintubular anttunnel trac through a simple cellular automata simula-tion. Thetracdynamicsinthecellularautomataareconsistent withmanyof our experimental observations(Fig. 5-10)givenonlythreevariableparameters. Traf-cowinthesimulationatvariedDeffexhibitedsimi-larspeed-densityscalingwhenthefree-speedwassettomatchthatoftheexperiment(SeemethodsandFig. 5).The upper bound curves of speed vs. density in ant traf-cwerequalitativelysimilartomeasurementsfromve-hicular,andpedestriantrac[32,33],andfromsurfaceforagingant trac [34]. The density-owrelationshipinsimulationacrossvariedtunneldiametersexhibitedasimilarshapeforlowerdensitiesasinexperiment(Fig.6b), however a plateau in ow was observed for high den-sities in simulation that was not observed in experiment.Flow-densitycurvespredictedthatFmaxshouldalsoin-creasewithDeff(Fig. 6d) andweobservedasimilarpositivetrendinexperiment.One goal of our simulations was to determine how tac-tileinteractionsorpossiblytracjamavoidancestrate-giesmayfactorintotheresultanttracdynamicsoftheantcolony. Anothergoalwastodeterminehowthecon-straintsof movementinconnedtunnelslimitthetraf-cowof theant colony. Theagreement betweenthesimulationandexperimentindicatesthattracowinsubterraneanenvironmentsislargelyconstrainedbythe10-1101 (s)01Qn(t)01Qn(t)nnExperimentSimulationa)b)FIG. 8. Correlationfunctionversustimeforthe2mmtun-nel inexperiment(a)andatracsimulation(b). Curvesofdierent color correspondtodierent sizetracjams withincreasingn [2 15]shownbythearrowfromlefttorightforboth(a)and(b).physics of collectiveinteractions inconnedspaces. Itisnotnecessarytoincludecomplexbehavioral rulesforinteractionstoreproducetheobservedtracdynamics.Therelevantfeaturestothisprocessarethattheoccu-pants of a tunnel exclude volume and halt to interact forshortperiodsoftime. Inthiswaythetracowofreants within their nest may be similar to the bi-directionaltrac of termites [36, 40, 41], molecular motors along mi-crotubules [1], or human pedestrians in crowded hallways[4244].Tracinnatural nestsFieldobservations of excavatedtunnel diameters innaturalforagingtunnels, foragingtunnelentrances, andlaboratoryexcavatedtunnelsshowthattunneldiameterinanest varies from3-14mmindiameter withsometunnels exceeding this range [14, 21, 27] (Fig. 1c). Exca-vatedhorizontalforagingtunnelsare6-14mmindiame-ter [21, 27] and vertical nest entrance tunnels are slightlysmallerwith3-4mmdiameter[14, 27]. Arecentstudyhasshownthat smaller tunnel diameter nest entrancesenhanceclimbingperformance[14]andadditionally,thesmallernestentrancesizemayenhancesecurity[12].Thetunnel diameterof horizontal foragingtunnels8where a majority of the colony trac occurslikely playsseveral importantrolesintracdynamics. Ourexper-imentsshowthatthecarryingcapacityof atunnel andthemaximumowof workersincreaseslinearlywithD(Fig. 6c)indicatingthatweexpecttondlargerdiame-tertunnelswheretracowishigher. Oursimulationsalsoexhibitthisresult(Fig. 6d)andfurthermorestud-iesofroadtracincitycentersshowthatvehiclesobeythe same linear relationship between ow and road width[35]. Innatural systemsthereisobservational evidencethat tunnel diameter increases in regions of higher tracinreantforagingtunnels[21], andtermiteshavebeenobservedtomodifyarticial tunnels inregions of hightrac[36]suggestingthatsocialorganismscontroltheirtunneldiameterbasedonlocaltracdemands.The simulation results have implications for tunnelconstructionenergetics. The throughput of workersand thus resource and information throughputincreaseslinearlywithD. However, foracircularcross-section tunnel, D2soil must be excavated per unit lengthandthustherelativeenergeticcosttotracowgainsfollowsasurfaceareatovolumescalinglaw. Thescal-ingofresourcethroughputperenergeticcostofthetun-nel suggests that larger tunnels arenot always better.These results present two hypothesis for the shape ofnatural foragingtunnels: 1)antsshouldconstructnon-circularcrosssectionswhichhavelargeperimeter(walk-ingpath) andsmall area(excavationvolume), 2) antsshould construct many smaller tunnels which would pro-videthesamenetthroughputasonelargertunnel butat a lower energetic cost. There is evidence that re antshave adopted both strategies to manage eective resourcetransport whileminimizingenergeticcostsof construc-tion. From excavations of foraging tunnels Tschinkel [21]determinedthat the cross-sections of re ant foragingtunnels areelliptical inshapewithaspect ratio2(themajoraxisishorizontal totheground), thusprovidingalargerperimeterforthesamecross-sectionalarea. Ad-ditionally, reant foragingtunnel networks beginas asingletunnelthatbranchesmanytimesalongitslengthintosmaller tunnels (Fig. 1b) [27]. The reductionoftunnel diameteratbranches[21] maycorrespondtoanexcavationstrategytomaximizeperimeter whilemini-mizingenergeticcostsofexcavation.Wecanaddressthequestionof whetherreanttraf-cis susceptibletotracjams byexaminingthecurveinrelationtothesizeof tunnelsinnatural nests(Fig. 10a). Frommeasurements of thecross-sectionalareaofreantforagingtunnelsin[21], weestimatetheeectivediametertobeintherange,D= 7.8 1.9mm(tunnels areelliptical incross-sectionwitheccentricityof 2 [27]). Vertical nest entrance tunnels in naturalnests were reportedinthe range of 3-4 mmindiam-eter anda laboratoryx-raystudyfoundthat verticaltunnels were D=3.70.8[14]. is adivergingfunctionwithdecreasingdiameterandpredictsthatbi-ExperimentSimulation0 5 10n* (s)102* (s)102a)b)FIG.9. Tracjamcorrelationtimevs. jamsizefordierentdiameter tunnels. a) Trac-jam correlation time as a functionofn for increasingtunnel diameter(arrow) inexperiment. b)Trac-jamcorrelationtimevs. ninsimulationforrangesofDeff [2, 100].directional trac should be impossible in tunnels smallerthanDc=1.47mm. Thisminimumtunnel diameterisconsistentwithapreviouslocomotionstudyofclimbingintunnels inwhichvelocitydroppedtozeronear thistunnel size[14]. However, overtherangeofnatural tun-nel diameters is fairly at (Fig. 10a). This suggeststhatinnatural nesttunnelsreanttracisnotsensi-tivetouctuations indensity. Theseobservations aresimilartothoseof abovegroundforagingtracintheant Leptogenys processionalisinwhichanabsenceof ajammed-phasewasobserved[39]. Thuswehavefoundthat inadditiontobehavioral adaptations whichsomeant species posses tomitigate trac jams alongtrails(See[19] for review), ants mayalsomodifytheir envi-ronment toallowfor smoothtrac owandresourceacquisition.Byvaryingtheinteractiontimebetweenantsweareable tomodifythe curve inour simulation(Fig.10b). Increasing Tintresults in a shift of to the rightwhichmeansthattracowbecomesincreasinglysen-sitivetotracjamformationinlargertunnels. Thisin-crease in jam sensitivity is due to ants forming blockagesinthetunnelsforlongerperiodsof time. WendthattheincreaseinjamsensitivityislinearlyproportionaltoTint. Thissuggeststhattomaintainstabletracow90 5 10 150123D (mm) ForagingtunnelsEntrancetunnels0 10 20 30Deff (mm)0123* ExperimentSimulationTinta)b)FIG. 10. Sensitivityof theslopeof asafunctionof tun-nel diameter. a)Resultsfromexperiment. RedcurveistfunctionA(DDc)+1 describedintext. Redpoints withbars showdiameter of foragingandentrance tunnels (For-aging tunnels from [21],entrance tunnels in lab from [14] andeldfrom[27]). b) Results insimulation. Dierent pointsandcurvescorrespondtosimulationswithdierentinterac-tiontimes. ArrowindicatesincreasingTint.ifantinteractiontimeincreases,tunneldiametershouldincreaseaswell.CONCLUSIONWestudiedthebi-directionaltracofreantworkergroupstodeterminehowmodulationoftunneldiameterandantinteractionbehaviormayinuencetracow.We foundthat the resultant trac dynamics are inalargepartgovernedbythephysical mechanicsofcollec-tiveinteractionsinconnedspace. Throughsimulationwe nd that by modulating the characteristic interactiontime between worker ants, we may vary the sensitivity ofthecolonyasawholetotheformationandlongevityoftracjams.Eectivetracowandtransportofresourceswithinanant nest areimportant for thesurvival andsuccessofacolony. Therelationshipbetweenthebehaviorsandnestmorphologyofsocialorganismsisanopenquestionin organismal dynamics. Conserved features of nest mor-phology such as tunnel size or shape [18] are examples ofanorganismsextendedphenotype. Whetherfeaturesofthisextendedphenotypethenestareadaptationsforsubterraneanlifeareunknown. Ourresultshaveimpli-cationsfortheeectivedesignof jam-freesubterraneanenvironments. Observationof thesizes of natural andlaboratoryexcavatedtunnelsshowsthatreantgroupsconstruct tunnels outsidethesizerangeinwhichtraf-cowbecomessensitivetotracjams. Thusmobilitywithinnatural foragingtunnels is likelynot subject tolargescaletracjams.Our trac model consists of simple interactions in con-ned space and the resultant dynamics may be applicabletoabroadrangeof organismsthatliveandinteractinsubterraneanenvironments. The approachof generat-ing predictions from a simple single parameter computa-tionalmodelallowsforthesensitivevariationofanindi-vidual behavior(interactiontime)andexploreitsresul-tanteectonthecomplex,collectiveprocessofforagingtrac. 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