Presentation is loading. Please wait.

Presentation is loading. Please wait.

Predicting the growth of fractal particle agglomeration networks with graph theoretical methods Joseph Jun and Alfred Hübler Center for Complex Systems.

Similar presentations


Presentation on theme: "Predicting the growth of fractal particle agglomeration networks with graph theoretical methods Joseph Jun and Alfred Hübler Center for Complex Systems."— Presentation transcript:

1 Predicting the growth of fractal particle agglomeration networks with graph theoretical methods Joseph Jun and Alfred Hübler Center for Complex Systems Research University of Illinois at Urbana-Champaign Research supported in part by the National Science Foundation (PHY-01-40179 and DMS-03725939 ITR)

2 Growth of a ramified transportation network. Experiment: Agglomeration of conducting particles in an electric field 1) We focus on the dynamics of the system 2) We explore the topology of the networks using graph theory. 3) We explore a variety of initial conditions. Results: 1) three growth stages: strand formation, boundary connection, and geometric expansion. 2) networks are open loop 3) statistically robust features: number of termini, number of branch points, resistance, initial condition matters somewhat 4) Minimum spanning tree growth model predicts emerging pattern random initial distributioncompact initial distribution

3 Description of experimental setup Basic experiment consists of two electrodes, a source electrode and a boundary electrode connected to opposite terminals of a power supply. source electrode boundary electrode battery

4 Description of experimental setup Basic experiment consists of two electrodes, a source electrode and a boundary electrode connected to opposite terminals of a power supply. The boundary electrode lines a dish made of a dielectric material such as glass or acrylic. The dish contains particles and a dielectric medium (oil) source electrode boundary electrode oil battery particle

5 Description of experimental setup 20 kV battery maintains a voltage difference of 20 kV between boundary and source electrodes

6 Description of experimental setup 20 kV source electrode sprays charge over oil surface

7 Description of experimental setup 20 kV source electrode sprays charge over oil surface air gap between source electrode and oil surface approx. 5 cm

8 Description of experimental setup 20 kV source electrode sprays charge over oil surface air gap between source electrode and oil surface approx. 5 cm boundary electrode has a diameter of 12 cm

9 Description of experimental setup 20 kV needle electrode sprays charge over oil surface air gap between needle electrode and oil surface approx. 5 cm boundary electrode has a diameter of 12 cm oil height is approximately 3 mm, enough to cover the particles castor oil is used: high viscosity, low ohmic heating, biodegradable

10 Description of experimental setup 20 kV needle electrode sprays charge over oil surface air gap between needle electrode and oil surface approx. 5 cm ring electrode forms boundary of dish has a radius of 12 cm oil height is approximately 3 mm, enough to cover the particles castor oil is used: high viscosity, low ohmic heating, biodegradable particles are non-magnetic stainless steel, diameter D=1.6 mm particles sit on the bottom of the dish

11 Phenomenology The growth of the network proceeds in three stages:I) strand formation II) boundary connection III) geometric expansion

12 Phenomenology Overview 12 cm t=0s10s5m 13s14m 7s stage I: strand formation

13 Phenomenology Overview 12 cm t=0s10s5m 13s14m 7s 14m 14s stage I: strand formation stage II: boundary connection

14 Phenomenology Overview 12 cm t=0s10s5m 13s14m 7s 14m 14s14m 41s15m 28s stage I: strand formation stage II: boundary connection stage III: geometric expansion

15 Phenomenology Overview 12 cm t=0s10s5m 13s14m 7s 14m 14s14m 41s15m 28s77m 27s stage I: strand formation stage II: boundary connection stage III: geometric expansion stationary state

16 Motion of the strands The motion of the lead particles of the six largest strands from a single experiment.

17 Motion of the strands The motion of the lead particles of the six largest strands from a single experiment. Distance of lead particle of a strand correlates well with number of particles in strand.

18 N=1044 N=591N=784 Comparing for different numbers of particles, N. The growth of the strands still tend to correlate for higher N.

19 Phenomenology: stage II (boundary connection) Stage II begins when the “winning” strand connects to the boundary. It is brief in duration, and is best characterized by the particles binding to the boundary.

20 Phenomenology: stage III (geometric expansion) After all the particles bind together, they will now be like charged and spread apart. This expansion into the available space is the main characteristic of stage III.

21 Adjacency defines topological species of each particle Termini = particles touching only one other particle Branching points = particles touching three or more other particles Trunks = particles touching only two other particles Particles become one of the above three types in stage II and III. This occurs over a relatively short period of time.

22 Graph theory measures for trees We allow the physical locations of the particles to define the adjacency. c=5 c=3 The particles’ positions are digitized. Each particle is considered a node. When the distance between two particles is shorter than a cutoff length, they are considered adjacent; we put a link between them. red circles indicate cutoff length yellow lines indicate distance between centers of particles

23 Adjacency (number of neighbors) We can define the average adjacency mathematically as: c i is the adjacency of particle i Θ is the Heaviside step function N is the total number of particles r i & r j are the positions of particles i & j respectively r cut is the cutoff length Ideally, r cut = D, where D is the diameter of a particle. But because of the noise in digitizing the position of the particles, we use a slightly larger value, usually 1.16 ≤ r cut /D ≤ 1.28. Also ideally, 0 ≤ c i ≤ 6; we impose this by hand in the algorithm.

24 Adjacency algorithm Digitize the positions of each particle from the photos. photos from experiment

25 Adjacency algorithm Digitize the positions of each particle from the photos. Run the adjacency algorithm on the list of particle positions. photos from experimentdigitization of positions

26 Adjacency algorithm Digitize the positions of each particle from the photos. Run the adjacency algorithm on the list of particle positions. The algorithm picks up how particles are connected. It identifies holes and grain boundaries. *Graphs from algorithm were visualized using the Combinatorica package in Mathematica. r cut = 1.25D photos from experimentoutput from algorithm*

27 Visualizing the stages with the adjacency By looking at as a function of time from the digitization of the photos, we can see this measure naturally segregates the stages. The average adjacency versus time.

28 Visualizing the stages with the adjacency By looking at as a function of time from the digitization of the photos, we can see this measure naturally segregates the stages. The top dashed lines is an estimate of at t=0 s, given by (circle): The bottom dotted line is the value of in the steady- state (single strand): The average adjacency converges rapidly.

29 Visualizing the stages with the adjacency By looking at as a function of time from the digitization of the photos, we can see this measure naturally segregates the stages. The top dashed lines is an estimate of at t=0 s, given by (circle): The bottom dotted line is the value of in the steady- state (single strand): The inset shows the same plot for several values of the cutoff length. The average adjacency converges rapidly.

30 Visualizing the stages with the adjacency A look at the differences in stages between different particle numbers. The average adjacency converges rapidly for all cases. We conclude that the topology of the network establishes in a relatively short amount of time following stage II.

31 Relative number of each species is robust Graphs show how the number of termini, T, and branching points, B, scale with the total number of particles in the tree.

32 Branching point subspecies Subspecies b 5 and b 6 have never been observed in the experiment. b3b3 b4b4 b5b5 b6b6

33 Branching point subspecies Percentage of branching points that connect to four other particles as a function of particle number.

34 Most networks are trees. Only a few rare cases contain loops (cycles).

35 Loops (cycles) are unstable Insets on the left show two particles artificially placed into a loop separate from one another. The graph on the right shows the separation between the two particles as a function of time.

36 Fractal Dimension of Particles N = 792 T = 159 B = 153 N = 791 T = 170 B = 164 N = 794 T = 170 B = 162 N = 784 T = 166 B = 161 The mass dimension, d m, is defined by Σ ρ(r) = N ~ r d m

37 Fractal Dimension of Particles N = 792 T = 159 B = 153 N = 791 T = 170 B = 164 N = 794 T = 170 B = 162 N = 784 T = 166 B = 161 d m ~ 1.74─1.83d m ~ 1.76─1.82d m ~ 1.75─1.91d m ~ 1.79─1.90 The mass dimension, d m, is defined by Σ ρ(r) = N ~ r d m

38 Fractal Dimension Particles arrange themselves similarly in different experiments.

39 Spatial distribution in time The radial distribution of particles for different times in the experiment. The system entered stage II after t=847s. The fractal dimension decreases from D m =2 to D m =1.8.

40 Spatial distribution of termini is almost homogeneous, except for small particle numbers The radial distribution of termini for similar number of particles and different number of particles.

41 Initial conditions

42 Qualitative effects of initial distribution

43 N = 752 T = 131 B = 85 N = 720 T = 122 B = 106 N = 785 T = 200 B = 187 N = 752 T = 149 B = 146 Initial conditions are a strong constraint on the final form of tree(s).

44 Qualitative effects of initial distribution Will this initial configuration produce a spiral? ?

45 Qualitative effects of initial distribution No, system is unstable to ramified structures.

46 Perimeter effects (cheat experiments) Eliminating stage I by artificially placing a connecting strand to the boundary; we call these “cheat” experiments.

47 Perimeter effects (cheat experiments) Eliminating stage I by artificially placing a connecting strand to the boundary; we call these “cheat” experiments. In this case, there are no losing strands that become long termini at the perimeter.

48 Perimeter effects Consequently, there are more termini and branching points for the cheat cases. Initial conditions directly preceding stage II are important to determining the relative number of topological species.

49 Review of experimental results Growth of trees occurs in three stages. Average adjacency captures the three stages. Topology of network forms relatively quickly. Particles become one of three species. The relative abundance of each species is statistically reproducible. Initial conditions are a strong constraint to formation of networks.

50 Artificially generated networks How does the state of the system directly preceding stage II affect the topology of the trees? Can we predict the final tree at this stage?

51 Artificially generated networks Since topology of the networks is established relatively quickly, particles connect to one another before they have moved far. Thus, we attempt to model the connections formed by the system using only the local information for each particle—it’s neighborhood.

52 Artificially generated networks Since topology of the networks is established relatively quickly, particles connect to one another before they have moved far. Thus, we attempt to model the connections formed by the system using only the local information for each particle—it’s neighborhood. We use data from the experiments: a snapshot of the particles directly preceding stage II.

53 Artificially generated networks Since topology of the networks is established relatively quickly, particles connect to one another before they have moved far. Thus, we attempt to model the connections formed by the system using only the local information for each particle—it’s neighborhood. We take data from the experiments: a snapshot of the particles directly preceding stage II. Digitize the positions. Run the adjacency algorithm to obtain a base neighborhood. cutoff length = 3  particle diameter

54 Artificially generated networks From the base neighborhood, we apply algorithms to generate trees. In other words, particles can only connect to particles that neighbor it. All the links shown on the left are potential connections for the final tree. Algorithms run until all available particles connect into a tree. Some particles will not connect to any others (loners). They commonly appear in experiments. loner

55 Artificially generated networks From the base neighborhood, we apply algorithms to generate trees. In other words, particles can only connect to particles that neighbor it. All the links shown on the left are potential connections for the final tree. Algorithms run until all available particles connect into a tree. Some particles will not connect to any others (loners). They commonly appear in experiments. We chose three algorithms to implement:1) random (RAN) 2) minimum spanning tree (MST) 3) propagating front model (PFM) loner

56 Random The random algorithm randomly selects a link from the neighborhood graph and determines whether to connect the two particles based on whether the link maintains or violates a tree structure. In practice, we do this by tracking a “tree label” for each particle. If two particles in a potential connection have the same label, the connection would produce a cycle, and consequently it is rejected. PARTICLE STATE unconnected connected to tree i unconnectedaccept connected to tree j acceptreject if i=j particle 1 particle 2 summary of RAN connection rule

57 RAN movie of random algorithm

58 RAN Typical connection structure from RAN algorithm. Distribution of termini produced from 10 5 permutations run on a single experiment. Number of termini produced for all experiments, plotted as a function of N.

59 Minimum Spanning Tree Uses the identical acceptance/rejection criterion as RAN. The difference between the two is in how the potential connections are chosen. MST picks shortest links first (particles that are closest to one another). Since there are degeneracies in links, we run the algorithm through 10 5 permutations of degenerate ordering. graph (non-tree)tree (non-minimal)tree (minimal)

60 MST movie of minimum spanning tree algorithm

61 MST Typical connection structure from MST algorithm. Distribution of termini produced from 10 5 permutations run on a single experiment. Number of termini produced for all experiments, plotted as a function of N.

62 Propagating Front Model Since only one strand reaches the boundary, the connections should propagate from a particular direction. To capture this, we propose a model where particles link in order by their geographic location. Particles can connect only when they are adjacent to a particle that already belongs to the boundary.

63 Propagating Front Model Since only one strand reaches the boundary, the connections should propagate from a particular direction. To capture this, we propose a model where particles link in order by their geographic location. Particles can connect only when they are adjacent to a particle that already belongs to the boundary. grey thatched particles are already in the network, connections are shown in black lines white particles are available to connect dotted particles are not allowed to connect because they are not yet adjacent to a particle in the network

64 Propagating Front Model Since only one strand reaches the boundary, the connections should propagate from a particular direction. To capture this, we propose a model where particles link in order by their geographic location. Particles can connect only when they are adjacent to a particle that already belongs to the boundary. the grey filled particle was randomly chosen it must now randomly select one of its neighbors that are already in the network

65 Propagating Front Model Since only one strand reaches the boundary, the connections should propagate from a particular direction. To capture this, we propose a model where particles link in order by their geographic location. Particles can connect only when they are adjacent to a particle that already belongs to the boundary. the chosen particle joined the network any particles adjacent to it are now added to the list of particles that may connect

66 Propagating Front Model Since only one strand reaches the boundary, the connections should propagate from a particular direction. To capture this, we propose a model where particles link in order by their geographic location. Particles can connect only when they are adjacent to a particle that already belongs to the boundary. the process repeats until all particles join the boundary.

67 PFM movie of propagating front model

68 PFM Typical connection structure from PFM algorithm. Distribution of termini produced from 10 5 permutations run on a single experiment. Number of termini produced for all experiments, plotted as a function of N.

69 Comparison of all models to experiments The number of termini and branching points for all three models and the natural experiments. MST produces the closest match with experiments.

70 Comparison of all models to experiments cheat initial condition (without stage I) and natural initial condition

71 - - =1+b 4 +2b 5 +3b 6 - is independent of b 3 subspecies Thus, PFM and RAN are not only generating more branching points, they are generating higher order branching points. naturalcheat

72 Review of simulations We applied three algorithms to produce trees using local connection rules. We found that the algorithm which uses the interparticle spacing but neglects the direction of connection produces the best match to the experiments.

73 Predicting the growth of a fractal network. Experiment: J. Jun, A. Hubler, PNAS 102, 536 (2005) 1) Three growth stages: strand formation, boundary connection, and geometric expansion; 2) Networks are open loop; 3) Statistically robust features: number of termini, number of branch points, resistance, initial condition matters somewhat; 4) Minimum spanning tree growth model predicts emerging pattern. 5) To do: derive result from first principles, random initial condition, predict other observables, control network growth Applications: Hardware implementation of neural nets, nano neural nets M. Sperl, A Chang, N. Weber, A. Hubler, Hebbian Learning in the Agglomeration of Conducting Particles, Phys.Rev.E. 59, 3165 (1999) random initial distributioncompact initial distribution


Download ppt "Predicting the growth of fractal particle agglomeration networks with graph theoretical methods Joseph Jun and Alfred Hübler Center for Complex Systems."

Similar presentations


Ads by Google