Applying Butterworth filtering to an X–Y data
object
Use the butterworthFilter function to apply a
Butterworth filtering operation to a
previously savedX–Y data object (a collection of ordered pairs) to
produce a new X–Y data object. This filtering
operation can be used, for example, to remove high-frequency noise.
Figure 1
illustrates the type of X–Y plot that can be
produced using the butterworthFilter operation.
The butterworthFilter function requires two
arguments: the name of the X–Y data object
(name) and the cutoff frequency
(cutoffFrequency), which is the frequency above which the filter
attenuates at least half of the input signal. A description of the optional
arguments follows:
The order of the filter you want to use (filterOrder).
This argument must be a positive, even integer value; the default value is 2.
A symbolic constant specifying the method for computation of the
projection and pre-charge to be applied at the start of the data signal
(startCondition). Valid values for this argument are
ZERO, which applies a constant projection and
pre-charge of zero; CONSTANT, which applies a
constant projection and pre-charge equal to the first data point in the
X–Y data object;
MIRROR, which applies a projection and
pre-charge equivalent to reflecting the X–Y data
object about a vertical line passing through the first data point;
REVERSE_MIRROR, which applies a projection and
pre-charge equivalent to reflecting the X–Y data
object about both a vertical line and a horizontal line passing through the
first data point; and TANGENTIAL, which
applies a linear projection and pre-charge that is tangential to the first two
data points. The default value is CONSTANT.
A symbolic constant specifying the method for computation of the
projection and pre-charge to be applied at the end of the data signal
(endCondition). Valid values for this argument are
ZERO, which applies a constant projection and
pre-charge of zero; CONSTANT, which applies a
constant projection and pre-charge equal to the last data point in the
X–Y data object;
MIRROR, which applies a projection and
pre-charge equivalent to reflecting the X–Y data
object about a vertical line passing through the last data point;
REVERSE_MIRROR, which applies a projection and
pre-charge equivalent to reflecting the X–Y data
object about both a vertical line and a horizontal line passing through the
last data point; and TANGENTIAL, which applies
a linear projection and pre-charge that is tangential to the last two data
points. The default value is CONSTANT.
A symbolic constant that specifies the interpolation scheme
(interpolation). Valid values for this argument are
QUADRATIC, specifying a Lagrange second-order
interpolation scheme; CUBIC_SPLINE, specifying
a cubic spline interpolation scheme; and
LINEAR, specifying a linear interpolation
scheme. The default value is QUADRATIC.
The slope of the raw data curve leading up to the first data point
(startslope). This argument's default value is 0.0 (for a level
slope), and it is used only when
interpolation=CUBIC_SPLINE.
The slope of the raw data curve continuing past the final data point
(endslope). This argument's default value is 0.0 (for a level
slope), and it is used only when
interpolation=CUBIC_SPLINE.
A Boolean specifying whether a backward pass
(backwardPass) is to be performed on the filtered data. The
default value for this argument is True. When this
argument is set to False, the endCondition
argument is ignored.
Your X–Y data object must have a constant time
step for it to be filtered. If the time step is not constant,
Abaqus/CAE
computes additional points at constant intervals by
interpolation. The
constant time step for Butterworth filtering
is defined by the smallest time step in the X–Y data
object to be filtered.
Locate the Operate on XY Data dialog box.
From the main menu bar, selectToolsXY
DataCreate. Click
Operate on XY data in the dialog box that appears; then
click Continue. The Operate on XY
Data dialog box appears.
From the Operators listed, click
butterworthFilter(X,F).
The butterworthFilter function appears in
the expression window.
From the XY Data choices, click the name of the
X–Y data object on which to operate and click
Add to Expression. You can choose from all
X–Y data objects previously saved within this
session (listed alphabetically in the XY Data field).
The X–Y data object name appears within
the butterworthFilter function parentheses in the
expression window.
Position the cursor in the expression window before the second comma,
and type in a value for the cutoff frequency.
To continue to build your expression, position the cursor in the
expression window and type in or select the functions, operators, and
X–Y data you want to include.
To evaluate and display your expression, click Plot
Expression.
To
save your new
X–Y data object, click Save
As and then provide a name in the dialog box that appears.
Saving your data object makes it available for future operations
within this session and for inclusion in X–Y plots
containing multiple data objects.
When you are finished, click Cancel to close
the dialog box.