"RLum.Analysis"Object class to represent analysis data for protocol analysis, i.e. all curves, spectra etc. from one measurements. Objects from this class are produced, by e.g. read_XSYG2R, read_Daybreak2R
# S4 method for RLum.Analysis
show(object)# S4 method for RLum.Analysis
set_RLum(
class,
originator,
.uid,
.pid,
protocol = NA_character_,
records = list(),
info = list()
)
# S4 method for RLum.Analysis
get_RLum(
object,
record.id = NULL,
recordType = NULL,
curveType = NULL,
RLum.type = NULL,
protocol = "UNKNOWN",
get.index = NULL,
drop = TRUE,
recursive = TRUE,
info.object = NULL,
subset = NULL,
env = parent.frame(2)
)
# S4 method for RLum.Analysis
structure_RLum(object, fullExtent = FALSE)
# S4 method for RLum.Analysis
length_RLum(object)
# S4 method for RLum.Analysis
names_RLum(object)
# S4 method for RLum.Analysis
smooth_RLum(object, ...)
get_RLum:
Returns:
list of RLum.Data objects or
Single RLum.Data object, if only one object is contained and recursive = FALSE or
RLum.Analysis objects for drop = FALSE
structure_RLum:
Returns data.frame showing the structure.
length_RLum
Returns the number records in this object.
names_RLum
Returns the names of the record types (recordType) in this object.
smooth_RLum
Same object as input, after smoothing
get_RLum: names_RLum, length_RLum, structure_RLum (required):
an object of class RLum.Analysis
set_RLum character (required):
name of the RLum class to be created
set_RLum character (automatic):
contains the name of the calling function (the function that produces this object);
can be set manually.
set_RLum character (automatic):
sets an unique ID for this object using the internal C++ function create_UID.
set_RLum character (with default):
option to provide a parent id for nesting at will.
set_RLum character (optional):
sets protocol type for analysis object. Value may be used by subsequent analysis functions.
set_RLum list (required):
list of RLum.Analysis objects
set_RLum list (optional):
a list containing additional info data for the object
set_RLum:
Returns an RLum.Analysis object.
get_RLum: numeric or logical (optional):
IDs of specific records. If of type logical the entire id range is assumed
and TRUE and FALSE indicates the selection.
get_RLum: character (optional):
record type (e.g., "OSL"). Can be also a vector, for multiple matching,
e.g., recordType = c("OSL", "IRSL")
get_RLum: character (optional):
curve type (e.g. "predefined" or "measured")
get_RLum: character (optional):
RLum object type. Defaults to "RLum.Data.Curve" and "RLum.Data.Spectrum".
get_RLum: logical (optional):
return a numeric vector with the index of each element in the RLum.Analysis object.
get_RLum: logical (with default):
coerce to the next possible layer (which are RLum.Data-objects),
drop = FALSE keeps the original RLum.Analysis
get_RLum: logical (with default):
if TRUE (the default) and the result of the get_RLum() request is a single
object this object will be unlisted, means only the object itself and no
list containing exactly one object is returned. Mostly this makes things
easier, however, if this method is used within a loop this might be undesired.
get_RLum: character (optional):
name of the wanted info element
get_RLum: expression (optional):
logical expression indicating elements or rows to keep: missing values are
taken as false. This argument takes precedence over all other arguments,
meaning they are not considered when subsetting the object.
get_RLum: environment (with default):
An environment passed to eval as the enclosure. This argument is only
relevant when subsetting the object and should not be used manually.
structure_RLum; logical (with default):
extents the returned data.frame to its full extent, i.e. all info elements
are part of the return as well. The default value is FALSE as the data
frame might become rather big.
further arguments passed to underlying methods
show(RLum.Analysis): Show structure of RLum.Analysis object
set_RLum(RLum.Analysis): Construction method for RLum.Analysis objects.
get_RLum(RLum.Analysis): Accessor method for RLum.Analysis object.
The slots record.id, @recordType, @curveType and @RLum.type are optional to allow for records
limited by their id (list index number), their record type (e.g. recordType = "OSL")
or object type.
Example: curve type (e.g. curveType = "predefined" or curveType ="measured")
The selection of a specific RLum.type object superimposes the default selection. Currently supported objects are: RLum.Data.Curve and RLum.Data.Spectrum
structure_RLum(RLum.Analysis): Method to show the structure of an RLum.Analysis object.
length_RLum(RLum.Analysis): Returns the length of the object, i.e., number of stored records.
names_RLum(RLum.Analysis): Returns the names of the RLum.Data objects objects (same as shown with the show method)
smooth_RLum(RLum.Analysis): Smoothing of RLum.Data objects contained in this RLum.Analysis object
zoo::rollmean or zoo::rollmedian. In particular the internal
function .smoothing is used.
protocolObject of class character describing the applied measurement protocol
recordsObject of class list containing objects of class RLum.Data
Objects can be created by calls of the form set_RLum("RLum.Analysis", ...).
0.4.16
Sebastian Kreutzer, Institute of Geography, Heidelberg University (Germany) , RLum Developer Team
Kreutzer, S., 2024. RLum.Analysis-class(): Class 'RLum.Analysis'. In: Kreutzer, S., Burow, C., Dietze, M., Fuchs, M.C., Schmidt, C., Fischer, M., Friedrich, J., Mercier, N., Philippe, A., Riedesel, S., Autzen, M., Mittelstrass, D., Gray, H.J., Galharret, J., Colombo, M., 2024. Luminescence: Comprehensive Luminescence Dating Data Analysis. R package version 0.9.25. https://r-lum.github.io/Luminescence/
Risoe.BINfileData2RLum.Analysis, Risoe.BINfileData, RLum
showClass("RLum.Analysis")
##set empty object
set_RLum(class = "RLum.Analysis")
###use example data
##load data
data(ExampleData.RLum.Analysis, envir = environment())
##show curves in object
get_RLum(IRSAR.RF.Data)
##show only the first object, but by keeping the object
get_RLum(IRSAR.RF.Data, record.id = 1, drop = FALSE)
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