This method returns a spectral object of the same class as the one supplied as argument but with the spectral data normalized to 1.0 at a specific wavelength.
normalize(x, ...)normalise(x, ...)
# S3 method for default
normalize(x, ...)
# S3 method for source_spct
normalize(
x,
...,
range = NULL,
norm = "max",
unit.out = getOption("photobiology.radiation.unit", default = "energy"),
keep.scaling = FALSE,
na.rm = FALSE
)
# S3 method for response_spct
normalize(
x,
...,
range = NULL,
norm = "max",
unit.out = getOption("photobiology.radiation.unit", default = "energy"),
keep.scaling = FALSE,
na.rm = FALSE
)
# S3 method for filter_spct
normalize(
x,
...,
range = NULL,
norm = "max",
qty.out = getOption("photobiology.filter.qty", default = "transmittance"),
keep.scaling = FALSE,
na.rm = FALSE
)
# S3 method for reflector_spct
normalize(
x,
...,
range = NULL,
norm = "max",
qty.out = NULL,
keep.scaling = FALSE,
na.rm = FALSE
)
# S3 method for solute_spct
normalize(
x,
...,
range = NULL,
norm = "max",
keep.scaling = FALSE,
na.rm = FALSE
)
# S3 method for raw_spct
normalize(
x,
...,
range = NULL,
norm = "max",
keep.scaling = FALSE,
na.rm = FALSE
)
# S3 method for cps_spct
normalize(
x,
...,
range = NULL,
norm = "max",
keep.scaling = FALSE,
na.rm = FALSE
)
# S3 method for generic_spct
normalize(
x,
...,
range = NULL,
norm = "max",
col.names,
keep.scaling = FALSE,
na.rm = FALSE
)
# S3 method for source_mspct
normalize(
x,
...,
range = NULL,
norm = "max",
unit.out = getOption("photobiology.radiation.unit", default = "energy"),
keep.scaling = FALSE,
na.rm = FALSE,
.parallel = FALSE,
.paropts = NULL
)
# S3 method for response_mspct
normalize(
x,
...,
range = NULL,
norm = "max",
unit.out = getOption("photobiology.radiation.unit", default = "energy"),
keep.scaling = FALSE,
na.rm = FALSE,
.parallel = FALSE,
.paropts = NULL
)
# S3 method for filter_mspct
normalize(
x,
...,
range = NULL,
norm = "max",
qty.out = getOption("photobiology.filter.qty", default = "transmittance"),
keep.scaling = FALSE,
na.rm = FALSE,
.parallel = FALSE,
.paropts = NULL
)
# S3 method for reflector_mspct
normalize(
x,
...,
range = x,
norm = "max",
qty.out = NULL,
keep.scaling = FALSE,
na.rm = FALSE,
.parallel = FALSE,
.paropts = NULL
)
# S3 method for raw_mspct
normalize(
x,
...,
range = x,
norm = "max",
keep.scaling = FALSE,
na.rm = FALSE,
.parallel = FALSE,
.paropts = NULL
)
# S3 method for cps_mspct
normalize(
x,
...,
range = x,
norm = "max",
keep.scaling = FALSE,
na.rm = FALSE,
.parallel = FALSE,
.paropts = NULL
)
A copy of x
, with spectral data values normalized to one for
the criterion specified by the argument passed to norm
with
information about the normalization applied saved in attributes
"normalized"
and "normalization"
.
A copy of x
with the values of the spectral quantity rescaled
to 1 at the normalization wavelength. If the normalization wavelength is
not already present in x
, it is added by interpolation---i.e. the
returned value may be one row longer than x
. Attributes
normalized
and normalization
are set to keep a log of the
computations applied.
An R object
not used in current version
An R object on which range()
returns a numeric vector of
length 2 with the limits of a range of wavelengths in nm, with min and max
wavelengths (nm) used to set boundaries for search for normalization.
numeric Normalization wavelength (nm) or character string "max",
or "min" for normalization at the corresponding wavelength, "update" to
update the normalization after modifying units of expression, quantity
or range but respecting the previously used criterion, or "skip" to force
return of x
unchanged.
character Allowed values "energy", and "photon", or its alias "quantum"
logical or numeric Flag to indicate if any existing
scaling should be preserved or not. The default, FALSE
, preserves
the behaviour of versions (<= 0.10.9). If numeric, the spectrum is scaled
to this value before normalization and marked as not scaled.
logical indicating whether NA
values should be stripped
before calculating the summary (e.g. "max") used for normalization.
character string Allowed values are "transmittance", and "absorbance" indicating on which quantity to apply the normalization.
character vector containing the names of columns or variables to which to apply the normalization.
if TRUE, apply function in parallel, using parallel backend provided by foreach
a list of additional options passed into the foreach function when parallel computation is enabled. This is important if (for example) your code relies on external data or packages: use the .export and .packages arguments to supply them so that all cluster nodes have the correct environment set up for computing.
normalize(default)
: Default for generic function
normalize(source_spct)
: Normalize a source_spct
object.
normalize(response_spct)
: Normalize a response spectrum.
normalize(filter_spct)
: Normalize a filter spectrum.
normalize(reflector_spct)
: Normalize a reflector spectrum.
normalize(solute_spct)
: Normalize a solute spectrum.
normalize(raw_spct)
: Normalize a raw spectrum.
normalize(cps_spct)
: Normalize a cps spectrum.
normalize(generic_spct)
: Normalize a raw spectrum.
normalize(source_mspct)
: Normalize the members of a source_mspct object.
normalize(response_mspct)
: Normalize the members of a response_mspct object.
normalize(filter_mspct)
: Normalize the members of a filter_mspct object.
normalize(reflector_mspct)
: Normalize the members of a reflector_mspct object.
normalize(raw_mspct)
: Normalize the members of a raw_mspct object.
normalize(cps_mspct)
: Normalize the members of a cps_mspct object.
By default normalization is done based on the maximum of the spectral data. It is possible to also do the normalization based on a user-supplied wavelength expressed in nanometres or the minimum. It is also possible to update an existing normalization for different units of expression or after a conversion to a related spectral quantity.
By default the function is applied to the whole spectrum, but by passing a range of wavelengths as input, the search can be limited to a region of interest within the spectrum.
In 'photobiology' (>= 0.10.8) detailed information about the normalization is stored in an attribute. In 'photobiology' (>= 0.10.10) applying a new normalization to an already normalized spectrum recomputes the multiplier factors stored in the attributes whenever possible. This ensures that the returned object is identical independently of the previous application of a different normalization.
Other rescaling functions:
fscale()
,
fshift()
,
getNormalized()
,
getScaled()
,
is_normalized()
,
is_scaled()
,
setNormalized()
,
setScaled()
normalize(sun.spct)
normalise(sun.spct) # equivalent
normalize(sun.spct, norm = "max")
normalize(sun.spct, norm = 400)
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