Fit a Temperature Response Curve (TRC) by an index to get a parameter file
Source:R/TRC_PARMS_05.R
TRC_PARMS_05.Rd
This function uses the equation: $$\text{NEE} \sim a * \exp \left(b*T\right)$$
The equation requires air temperature (TA) in degrees Celsius, photosynthetically active radiation (PAR) in \(\mu\)mol m-2 s-1, and net ecosystem exchange (NEE) in \(\mu\)mol m-2 s-1.
Arguments
- data.frame
(dataframe) A dataframe that contains net ecosystem exchange (NEE), an index, air temperature (TA), and photosynthetically active radiation (PAR).
- iterations
(numeric) The number of iterations to run
brms::brm()
.- priors.trc
(brmsprior dataframe) The priors for
brms::brm()
to use. Default priors are as follows:- idx.colname
(character) The name of the column containing the index.
- NEE.colname
(character) The name of the column containing NEE.
- PAR.colname
(character) The name of the column containing PAR.
- TA.colname
(character) The name of the column containing air temperature.
Details
Model parameters are fit using the R package brms
.
Rhat (Potential Scale Reduction Factor): Indicates how well the different Markov chains in your analysis have converged to the same posterior distribution. Ideally, Rhat should be close to 1 for all parameters. A high Rhat value suggests potential convergence issues and the need to run the chains longer.
Bulk ESS (Effective Sample Size - Bulk): Estimates the effective number of independent samples from the central part of the posterior distribution.
Tail ESS (Effective Sample Size - Tail): Estimates the effective number of independent samples from the tails of the posterior distribution. Important for assessing the reliability of quantile estimates (e.g., 95% confidence intervals).
Key points to remember: Aim for Rhat close to 1 and high values for both Bulk ESS and Tail ESS.
Examples
# Import flux tower data
tower.data <- read.csv(system.file("extdata", "AMF_US-Skr_BASE_HH_2-5_Formatted.csv",
package = "CarbonExchangeParameters"))
# Fit curve parameters for each YearMon:
Example_TRC_PARMS_05 <- TRC_PARMS_05(data.frame = tower.data,
iterations = 5000,
priors.trc = brms::prior("normal(0.2 , 1)",
nlpar = "a", lb = 0.1, ub = 1) +
brms::prior("normal(0.5, 0.03)",
nlpar = "b", lb = 0.001, ub = 0.9),
idx.colname = 'YearMon',
NEE.colname = 'NEE_PI',
PAR.colname = 'SW_IN',
TA.colname = 'TA_1_1_1')
#> [1] "GREAT JOB! your dataframe contains idx"
#> [1] "YIPEE! your dataframe contains nee"
#> [1] "Hooray! your dataframe contains PAR"
#> [1] "Hooray! your dataframe contains TA"
#> Your dataframe looks good and you are now ready to start fitting models
#> [1] "2004-07"
#> Warning: Rows containing NAs were excluded from the model.
#> Error : CmdStan path has not been set yet. See ?set_cmdstan_path.
#> Error in TRC_PARMS_05(data.frame = tower.data, iterations = 5000, priors.trc = brms::prior("normal(0.2 , 1)", nlpar = "a", lb = 0.1, ub = 1) + brms::prior("normal(0.5, 0.03)", nlpar = "b", lb = 0.001, ub = 0.9), idx.colname = "YearMon", NEE.colname = "NEE_PI", PAR.colname = "SW_IN", TA.colname = "TA_1_1_1"): object 'model.brms' not found