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litterfitter

This vignette provides an overview of the main functions in litterfitter

Getting started

library(litterfitter)

At the moment there is one key function which is fit_litter which can fit 6 different types of decomposition trajectories. Note that the fitted object is a litfit object

fit <- fit_litter(time=c(0,1,2,3,4,5,6),
                  mass.remaining =c(1,0.9,1.01,0.4,0.6,0.2,0.01),
                  model="weibull",
                  iters=500)

class(fit)

You can visually compare the fits of different non-linear equations with the plot_multiple_fits function:

plot_multiple_fits(time=c(0,1,2,3,4,5,6),
                   mass.remaining=c(1,0.9,1.01,0.4,0.6,0.2,0.01),
                   model=c("neg.exp","weibull"),
                   iters=500)

Calling plot on a litfit object will show you the data, the curve fit, and even the equation, with the estimated coefficients:

   plot(fit)

The summary of a litfit object will show you some of the summary statistics for the fit.

#> Summary of litFit object
#> Model type: weibull 
#> Number of observations:  7 
#> Parameter fits: 4.19 
#> Parameter fits: 2.47 
#> Time to 50% mass loss: 3.61 
#> Implied steady state litter mass: 3.71 in units of yearly input 
#> AIC:  -3.8883 
#> AICc:  -0.8883 
#> BIC:  -3.9965

From the litfit object you can then see the uncertainty in the parameter estimate by bootstrapping

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.