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This document provides an introduction to the use of
particles
and the underlying algorithm it gives the users
access to. particles
is an R implementation of The
d3-force
algorithm developed by Mike Bostock and can be
used to simulate many different types of interactions between particles
and the world. While particles
can be used as a simple
physics engine it has not been developed with this in mind and accuracy,
in terms of how well it behaves like the physical world, has not been a
main priority during development.
In it’s essence particles
provides a way of defining a
set of spherical or dimensionless object, potentially connected with
each other, a world governed by a set of rules, and then set the objects
free in the world and see how they behaves. The use cases for this are
many, and include network visualisation, generative art, animation, and
- most importantly - fun!
particles
is build on top of tidygraph
and
uses it as the main representation of the particles and their relations.
Even so, there is no need to be experienced in network analysis and
manipulation. particles
can easily be used without any of
the objects being connected with each other and the objects can thus be
thought of as stored in a simple data frame.
Central to the use of particles
is the simulation, that
is, setting the objects free in the world you’ve defined. There are
several parts to a simulation:
All of these steps can be specified using dedicated verbs and piped together. Let’s look at an example:
library(particles)
library(tidygraph)
sim <- create_ring(10) |>
simulate(velocity_decay = 0.6, setup = petridish_genesis(vel_max = 0)) |>
wield(link_force) |>
wield(manybody_force) |>
impose(polygon_constraint,
polygon = cbind(c(-100, -100, 100, 100), c(-100, 100, 100, -100))) |>
evolve(100)
So what’s going on here? First we create a tbl_graph
using the create_ring()
function from
tidygraph
, which basically creates a circular graph. Then
we use it to create a simulation using the simulate()
function. In there we can set how fast the velocity decays over time, as
well how particles should be initialised. We use the
petridish_genesis()
to place the particles randomly on a
disc. Then we begin to define the forces that makes up the simulation
using the wield()
function. We first add a link force that
makes connected particles attract each other, and then a manybody force
that pushes particles away from each others (unless the strength is set
to a positive value in which case it works like gravity, attracting
particles to each other). We also adds a constraint to the system using
the impose()
function. Here we defines that particles must
remain inside a 200x200 square.
The distinction between forces and constraints are a bit vague but generally forces will adjust the velocity of particles while constraints defines hard boundaries for the position and velocity of the particles.
Lastly we set the simulation to run for 100 iterations. If we did not specify a number of iterations the simulation would run until it had cooled down (which happens after 300 iterations using the default settings). We now have a simulation that has progressed a bit:
sim
#> A particle simulation:
#> * 10 particles
#> * 2 Forces
#> - link_force
#> - manybody_force
#> * 1 Constraints
#> - polygon_constraint
#> * 100 Evolutions
We could say that that was it and maybe plot it:
library(ggraph)
ggraph(as_tbl_graph(sim)) +
geom_edge_link() +
geom_node_point() +
theme_void()
#> Warning: Existing variables `x` and `y` overwritten by layout variables
(as we can see the simulation has the ring from its initial random state)
We could also change the simulation somehow and iterate some more on it:
sim <- sim |>
unwield(2) |>
wield(manybody_force, strength = 30) |>
reheat(1) |>
evolve()
ggraph(as_tbl_graph(sim)) +
geom_edge_link() +
geom_node_point() +
theme_void()
#> Warning: Existing variables `x` and `y` overwritten by layout variables
Let’s unpack this. First we remove the second force (the repulsive manybody force) and then we add a new manybody force that attracts instead. Then we heat up the system again (setting alpha back to the original value) and let it evolve until it has cooled down. The result is a struggle between the link force and the manybody force over dominance of the system.
Many of the different forces and constraints let you set parameters
on a per particle or per connection basis - e.g. for the link force
discussed above we could let the strength of the force be related to the
weight of the edge. particles
let you reference node and
edge variables directly when specifying the force or constraint,
e.g.
sim <- play_islands(3, 10, 0.6, 3) |>
mutate(group = group_infomap()) |>
activate(edges) |>
mutate(weight = ifelse(.N()$group[to] == .N()$group[from], 1, 0.25)) |>
simulate() |>
wield(link_force, strength = weight, distance = 10/weight) |>
evolve()
ggraph(as_tbl_graph(sim)) +
geom_edge_link(aes(width = weight), alpha = 0.3, lineend = 'round') +
geom_node_point() +
theme_void() +
theme(legend.position = 'none')
#> Warning: Existing variables `x` and `y` overwritten by layout variables
#> Warning: The `trans` argument of `continuous_scale()` is deprecated as of ggplot2 3.5.0.
#> ℹ Please use the `transform` argument instead.
#> This warning is displayed once every 8 hours.
#> Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
#> generated.
The nice thing about using node and edge variables is that
particles
keeps track of them and if you change them the
force will get retrained:
sim <- sim |>
activate(edges) |>
mutate(weight = 1) |>
reheat(1) |>
evolve()
ggraph(as_tbl_graph(sim)) +
geom_edge_link(aes(width = weight), alpha = 0.3, lineend = 'round') +
geom_node_point() +
theme_void() +
theme(legend.position = 'none')
#> Warning: Existing variables `x` and `y` overwritten by layout variables
Consult the documentation of each force and constraint to see which parameters that are tidy evaled.
Sometimes you are more interested in the process than the end point.
In that case you might want to look at the state of the simulation at
each step it goes through. Luckily, the evolve()
function
comes with a powerful callback mechanism that allows you to do all sorts
of things. If the callback function returns a simulation object it will
replace the current simulation, otherwise the return value will be
discarded and the side-effects, such as plots, will be the only effect
of it. As you can imagine you can do many things with this capability,
such as removing or adding new particles and connections, or changing
forces midway. If the callback plots the current state it can be used
directly with the animation
package to produce animated
views of your simulation. Lastly, it can be used to record the state so
the it can easily be retrieved later on. For this you can use the
predefined record()
function:
volcano_field <- (volcano - min(volcano)) / diff(range(volcano)) * 2 * pi
sim <- create_empty(1000) |>
simulate(alpha_decay = 0, setup = aquarium_genesis(vel_max = 0)) |>
wield(reset_force, xvel = 0, yvel = 0) |>
wield(field_force, angle = volcano_field, vel = 0.1, xlim = c(-5, 5), ylim = c(-5, 5)) |>
evolve(100, record)
traces <- data.frame(do.call(rbind, lapply(sim$history, position)))
names(traces) <- c('x', 'y')
traces$particle <- rep(1:1000, 100)
ggplot(traces) +
geom_path(aes(x, y, group = particle), size = 0.1) +
theme_void() +
theme(legend.position = 'none')
#> Warning: Using `size` aesthetic for lines was deprecated in ggplot2 3.4.0.
#> ℹ Please use `linewidth` instead.
#> This warning is displayed once every 8 hours.
#> Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
#> generated.
In this example we define a field force based on our beloved volcano
data set. The field force applies a velocity based on a given vector
field. We define that the simulation has no cooling
(alpha_decay = 0
) and that the particles should be placed
randomly in a rectangle. Besides the field force we also add a reset
force that sets the velocity to zero in each iteration so that the
vector field does not accumulate. When all this is done we run the
simulation for 100 iterations and saves each state with the
record()
function.
To get the plot we extract the positions from each iteration and simply plots the trajectory of each particle.
Hopefully you have gotten a taste of what is possible with
particles
, but there are many more options and
possibilities. The package is developed both for practical use and for
having fun — with luck you can do both simultaneously.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.