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Here we go through how the presented workflows can be generalized and expanded upon.
In the examples, we used age-depth models from a carbonate platform simulated with CarboCAT lite (Burgess 2013, Burgess 2023). This can easily be expanded to any other sedimentary forward model (be it marine or terrestrial, siliciclastic, mixed, or carbonate system).
For this, age-depth information needs to be extracted from the
forward model. The vectors of elapsed model time vs. accumulated height
can then be handed over to tp_to_adm
to define age-depth
model objects. These can then be used in the pipelines as in the
examples.
If the forward model included erosion, you need to first account for
time intervals where sediment is first deposited and later removed. For
this, first define a sediment accumulation curve using
admtools::tp_to_sac
, and pass it to
admtools::sac_to_adm
to turn it into an age-depth model.
You can then use the resulting age-depth model for your analysis
pipeline.
Of course you can use empirical age-depth models in your pipeline.
You can create them from tie points using tp_to_adm
just as
in the case with forward models.
The workflow in StratPal
does not work with
multiadm
objects as defined by admtools
. These
objects store multiple age-depth models to account for uncertainty. You
can however reduce their complexity, e.g. via
admtools::median_adm
, and use the resulting age-depth
model.
In the examples we used water depth as ecological gradient. The
approach for niche modeling used in StratPal
works for all
types of niches and gradient. Potentially relevant gradients that can be
extracted from forward models are for example substrate consistency,
temperature, or water energy.
We used a simple niche definition based on a probability density
function of a normal distribution implemented in snd_niche
.
This can be expanded to arbitrary niche definitions along a gradient.
For integration with apply_niche
, niche definitions must
meet the following criteria:
Similar criteria hold for the definitions of gradient change
gc
:
gc
must be a function that takes time (or position) as
input, and returns gradient values as outputs.As long as these conditions for gc
and
niche_def
are met, arbitrary niche preferences along any
gradient can be modeled using apply_niche
.
Other types of phenotypic evolution in the time domain can easily be incorporated. For seamless integration, they need to meet the following criteria:
They take a vector of times as first argument
The implementation is for a continuous time version of the mode of interest, as the time domain is generally sampled at irregular times (see methods section in Hohmann et al. (2024) for details). More specifically, the implementation must be able to deal with heterodistant sampling in time.
They return a list with two elements: One named t
that is a duplicate of the first argument handed to the function. The
second one should be named y
and contain the simulated
trait values.
The output list l
should be assigned both the class
“list” and “timelist” via the command
class(l) = c("timelist", "list")
, see the source code of
random_walk
for an example.
The last two points make sure plotting via
admtools::plot.timelist
and
admtools::plot.stratlist
works seamlessly.
We used (constant and variable rate) Poisson point processes to simulate event type data. Any model of event-type data can be used (e.g., one with temporal correlation), as long as it returns a vector with the timing/position of the events.
Much of the explanations here focus on forward modeling, i.e.,
modeling the time domain and examining how it is expressed in the
stratigraphic domain. The reverse direction (from the stratigraphic
domain to the time domain) can be modeled using
strat_to_time
.
Taphonomic effects can be incorporated using using the
apply_taphonomy
function. This is based on the same
principle as niche modeling, and makes use of the thin
function, but was not shown in the examples. For
pres_potential
(resp. ctc
), the same logical
constraints apply as to niche_def
(resp. gc
).
This works for event-type data and pre_paleoTS
objects (see
vignette("paleoTS_functionality")
for details).
strat_to_time
and time_to_strat
are generic
functions of the admtools
package that can transform
different types of data. Currently they transform paleontological time
series of individual specimens (pre_paleoTS
objects),
phylogenetic trees (phylo
objects), lists
(list
class), and numeric data such as the event type data
(class numeric
).
In general, any type of temporal (resp. stratigraphic) data can be
transformed. For this, you need define a S3
class for the
object you would like to transform (if it does not already have a S3
class), and then implement the transformation of this class for
time_to_strat
and strat_to_time
.
If you would like to add transformations for new S3 classes to the
admtools
package, please see the contribution guidelines
(CONTRIBUTING.md file) of the admtools
package for details
on how to contribute code.
Burgess, Peter. 2013. “CarboCAT: A cellular automata model of heterogeneous carbonate strata.” Computers & Geosciences. https://doi.org/10.1016/j.cageo.2011.08.026.
Burgess, Peter. 2023. “CarboCATLite v1.0.1.” Zenodo. https://doi.org/10.5281/zenodo.8402578
Hohmann, Niklas; Koelewijn, Joël R.; Burgess, Peter; Jarochowska, Emilia. 2024. “Identification of the mode of evolution in incomplete carbonate successions.” BMC Ecology and Evolution 24, 113. https://doi.org/10.1186/s12862-024-02287-2.
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They may not be fully stable and should be used with caution. We make no claims about them.
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