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simecol (version 0.5-5)

ssqOdeModel: Sum of squares between odeModel and data

Description

Compute the sum of squares between a given data and an odeModel object

Usage

ssqOdeModel(p, simObj, obstime, yobs, 
  sd.yobs = as.numeric(lapply(yobs, sd)), 
  initialize = TRUE, lower. = -Inf, upper. = Inf,
  debuglevel = 0, ...)

Arguments

p
Vector of named parameter values of the model (can be a subset).
simObj
a valid object of class odeModel
obstime
vector with time steps for which observational data are available
yobs
data frame with observational data for all or a subset of state variables. Their names must correspond exacly with existing names of state variables in the odeModel.
sd.yobs
vector of given standard deviations for all observational variables given in yobs. If no standard deviations are given, these are estimated from yobs.
initialize
optional boolean value whether the simObj should be re-initialized after the assignment of new parameter values. This can be necessary in certain models to assign consistent values to initial state variables if they depend on parameters.
lower., upper.
named vectors with lower and upper bounds used in the optimisation.
debuglevel
a positive number that specifies the amount of debugging information printed
...
additional parameters passed to the solver method (e.g. lsoda)

Value

  • The sum of squared differences between yobs and simulation, weighted by the inverse of the standard deviations of the respective variables.

Details

This is the default function called by function fitOdeModel. The source code of this function can be used as a starting point to develop user-defined optimization criteria.

See Also

fitOdeModel, optim, p.constrain

Examples

Run this code
data(chemostat)
cs1 <- chemostat

## generate some noisy data
parms(cs1)[c("vm", "km")] <- c(2, 10)
times(cs1) <- c(from=0, to=20, by=2)
yobs <- out(sim(cs1))
obstime <- yobs$time
yobs$time <- NULL
yobs$S <- yobs$S + rnorm(yobs$S, sd= 0.1 * sd(yobs$S))*2
yobs$X <- yobs$X + rnorm(yobs$X, sd= 0.1 * sd(yobs$X))

## SSQ between model and data
ssqOdeModel(NULL, cs1, obstime, yobs)

## SSQ between model and data, different parameter set
ssqOdeModel(p=c(vm=1, km=2), cs1, obstime, yobs)

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