plr_bootstrap_uncertainty | R Documentation |
This function determines the uncertainty of a PLR measurement through resampling data for each model, prior to putting the data through the model.
plr_bootstrap_uncertainty( df, n, fraction = 0.65, var_list, model, by = "month", power_var = "power_var", time_var = "time_var", data_cutoff = 100, np = NA, pred = NULL )
df |
A dataframe containing pv data. |
n |
(numeric) Number of samples to take. The higher the n value, the longer it takes to complete, but the results become more accurate as well. |
fraction |
The fraction of data that constitutes a resample for the bootstrap. |
var_list |
A list of variables obtained through |
model |
the String name of the model to bootstrap. Select from:
|
by |
String, either "day", "week", or "month". Time over which to perform
|
power_var |
Variable name of power in the dataframe. This must be the variable's name after being put through your selected model. Typically power_var |
time_var |
Variable name of time in the dataframe. This must be the variable's name after being put through your selected model. Typically time_var |
data_cutoff |
The number of data points needed to keep a value in the final table. Regressions over less than this number and their data will be discarded. |
np |
The system's reported name plate power. See |
pred |
passed to predict_data in model call. See |
Returns PLR value and uncertainty calculated with bootstrap of data going into power correction models
# build var_list var_list <- plr_build_var_list(time_var = "timestamp", power_var = "power", irrad_var = "g_poa", temp_var = "mod_temp", wind_var = NA) # Clean Data test_dfc <- plr_cleaning(test_df, var_list, irrad_thresh = 100, low_power_thresh = 0.01, high_power_cutoff = NA) xbx_mbm_plr_uncertainty <- plr_bootstrap_uncertainty(test_dfc, n = 2, fraction = 0.65, by = 'month', power_var = 'power_var', time_var = 'time_var', var_list = var_list, model = "xbx", data_cutoff = 10, np = NA, pred = NULL)
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.