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getCompSensitivity

Complementary sensitivity function at specified point using slLinearizer or slTuner interface

Description

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linsys = getCompSensitivity(s,pt) returns the complementary sensitivity function at the specified analysis point for the model associated with the slLinearizer or slTuner interface, s.

The software enforces all the permanent openings specified for s when it calculates linsys. If you configured either s.Parameters, or s.OperatingPoints, or both, getCompSensitivity performs multiple linearizations and returns an array of complementary sensitivity functions.

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linsys = getCompSensitivity(s,pt,temp_opening) considers additional, temporary, openings at the point specified by temp_opening. Use an opening, for example, to calculate the complementary sensitivity function of an inner loop with the outer loop open.

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linsys = getCompSensitivity(___,mdl_index) returns a subset of the batch linearization results. mdl_index specifies the index of the linearizations of interest, in addition to any of the input arguments in previous syntaxes.

Use this syntax for efficient linearization, when you want to obtain the complementary sensitivity function for only a subset of the batch linearization results.

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[linsys,info] = getCompSensitivity(___) returns additional linearization information.

Examples

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Obtain the complementary sensitivity function, calculated at the plant output, for the ex_scd_simple_fdbk model.

Open the ex_scd_simple_fdbk model.

mdl = 'ex_scd_simple_fdbk';
open_system(mdl);

In this model:

$$\begin{array}{l}
K(s) = {K_p} = 3\\
G(s) = \frac{1}{{s + 5}}
\end{array}$$

Create an slLinearizer interface for the model.

sllin = slLinearizer(mdl);

To calculate the complementary sensitivity function at the plant output, use the y signal as the analysis point. Add this point to sllin.

addPoint(sllin,'y');

Obtain the complementary sensitivity function at y.

sys = getCompSensitivity(sllin,'y');
tf(sys)
ans =
 
  From input "y" to output "y":
   -3
  -----
  s + 8
 
Continuous-time transfer function.

The software adds a linearization output at y, followed by a linearization input, dy.

sys is the transfer function from dy to y, which is equal to $-(I+GK)^{-1}GK$.

For the scdcascade model, obtain the complementary sensitivity function for the inner-loop at y2.

Open the scdcascade model.

mdl = 'scdcascade';
open_system(mdl)

Create an slLinearizer interface for the model.

sllin = slLinearizer(mdl);

To calculate the complementary sensitivity transfer function for the inner loop at y2, use the y2 signal as the analysis point. To eliminate the effects of the outer loop, break the outer loop at y1m. Add both these points to sllin.

addPoint(sllin,{'y2','y1m'});

Obtain the complementary sensitivity function for the inner loop at y2.

sys = getCompSensitivity(sllin,'y2','y1m');

Here, 'y1m', the third input argument, specifies a temporary opening for the outer loop.

Suppose you batch linearize the scdcascade model for multiple transfer functions. For most linearizations, you vary the proportional (Kp2) and integral gain (Ki2) of the C2 controller in the 10% range. For this example, calculate the complementary sensitivity function for the inner loop for the maximum value of Kp2 and Ki2.

Open the scdcascade model.

mdl = 'scdcascade';
open_system(mdl);

Create an slLinearizer interface for the model.

sllin = slLinearizer(mdl);

Vary the proportional (Kp2) and integral gain (Ki2) of the C2 controller in the 10% range.

Kp2_range = linspace(0.9*Kp2,1.1*Kp2,3);
Ki2_range = linspace(0.9*Ki2,1.1*Ki2,5);

[Kp2_grid,Ki2_grid]=ndgrid(Kp2_range,Ki2_range);

params(1).Name = 'Kp2';
params(1).Value = Kp2_grid;

params(2).Name = 'Ki2';
params(2).Value = Ki2_grid;

sllin.Parameters = params;

To calculate the complementary sensitivity of the inner loop, use the y2 signal as the analysis point. To eliminate the effects of the outer loop, break the outer loop at y1m. Add both these points to sllin.

addPoint(sllin,{'y2','y1m'})

Determine the index for the maximum values of Ki2 and Kp2.

mdl_index = params(1).Value == max(Kp2_range) & params(2).Value == max(Ki2_range);

Obtain the complementary sensitivity transfer function at y2.

sys = getCompSensitivity(sllin,'y2','y1m',mdl_index);

Open Simulink model.

mdl = 'watertank';
open_system(mdl)

Create a linearization option set, and set the StoreOffsets option.

opt = linearizeOptions('StoreOffsets',true);

Create slLinearizer interface.

sllin = slLinearizer(mdl,opt);

Add an analysis point at the tank output port.

addPoint(sllin,'watertank/Water-Tank System');

Calculate the complementary sensitivity function at y, and obtain the corresponding linearization offsets.

[sys,info] = getCompSensitivity(sllin,'watertank/Water-Tank System');

View offsets.

info.Offsets
ans = 

  struct with fields:

             x: [2x1 double]
            dx: [2x1 double]
             u: 1
             y: 1
     StateName: {2x1 cell}
     InputName: {'watertank/Water-Tank System'}
    OutputName: {'watertank/Water-Tank System'}
            Ts: 0

Input Arguments

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Interface to a Simulink model, specified as either an slLinearizer interface or an slTuner interface.

Analysis point signal name, specified as:

  • Character vector or string — Analysis point signal name.

    To determine the signal name associated with an analysis point, type s. The software displays the contents of s in the MATLAB® command window, including the analysis point signal names, block names, and port numbers. Suppose that an analysis point does not have a signal name, but only a block name and port number. You can specify pt as the block name. To use a point not in the list of analysis points for s, first add the point using addPoint.

    You can specify pt as a uniquely matching portion of the full signal name or block name. Suppose that the full signal name of an analysis point is 'LoadTorque'. You can specify pt as 'Torque' as long as 'Torque' is not a portion of the signal name for any other analysis point of s.

    For example, pt = 'y1m'.

  • Cell array of character vectors or string array — Specifies multiple analysis point names. For example, pt = {'y1m','y2m'}.

To calculate linsys, the software adds a linearization output, followed by a linearization input at pt.

Consider the following model:

Specify pt as 'y':

The software computes linsys as the transfer function from dy to y.

If you specify pt as multiple signals, for example pt = {'u','y'}, the software adds a linearization output, followed by a linearization input at each point.

du and dy are linearization inputs, and u and y are linearization outputs. The software computes linsys as a MIMO transfer function with a transfer function from each linearization input to each linearization output.

Temporary opening signal name, specified as:

  • Character vector or string — Analysis point signal name.

    temp_opening must specify an analysis point that is in the list of analysis points for s. To determine the signal name associated with an analysis point, type s. The software displays the contents of s in the MATLAB command window, including the analysis point signal names, block names, and port numbers. Suppose that an analysis point does not have a signal name, but only a block name and port number. You can specify temp_opening as the block name. To use a point not in the list of analysis points for s, first add the point using addPoint.

    You can specify temp_opening as a uniquely matching portion of the full signal name or block name. Suppose that the full signal name of an analysis point is 'LoadTorque'. You can specify temp_opening as 'Torque' as long as 'Torque' is not a portion of the signal name for any other analysis point of s.

    For example, temp_opening = 'y1m'.

  • Cell array of character vectors or string array — Specifies multiple analysis point names. For example, temp_opening = {'y1m','y2m'}.

Index for linearizations of interest, specified as:

  • Array of logical values — Logical array index of linearizations of interest. Suppose that you vary two parameters, par1 and par2, and want to extract the linearization for the combination of par1 > 0.5 and par2 <= 5. Use:

    params = s.Parameters;
    mdl_index = params(1).Value>0.5 & params(2).Value <= 5;

    The expression params(1).Value>0.5 & params(2).Value<5 uses logical indexing and returns a logical array. This logical array is the same size as params(1).Value and params(2).Value. Each entry contains the logical evaluation of the expression for corresponding entries in params(1).Value and params(2).Value.

  • Vector of positive integers — Linear index of linearizations of interest. Suppose that you vary two parameters, par1 and par2, and want to extract the linearization for the combination of par1 > 0.5 and par2 <= 5. Use:

    params = s.Parameters;
    mdl_index = find(params(1).Value>0.5 & params(2).Value <= 5);

    The expression params(1).Value>0.5 & params(2).Value<5 returns a logical array. find returns the linear index of every true entry in the logical array

Output Arguments

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Complementary sensitivity function, returned as described in the following:

  • If you did not configure s.Parameters and s.OperatingPoints, the software calculates linsys using the default model parameter values. The software uses the model initial conditions as the linearization operating point. linsys is returned as a state-space model.

  • If you configured s.Parameters only, the software computes a linearization for each parameter grid point. linsys is returned as a state-space model array of the same size as the parameter grid.

  • If you configured s.OperatingPoints only, the software computes a linearization for each specified operating point. linsys is returned as a state-space model array of the same size as s.OperatingPoints.

  • If you configured s.Parameters and specified s.OperatingPoints as a single operating point, the software computes a linearization for each parameter grid point. The software uses the specified operating point as the linearization operating point. linsys is returned as a state-space model array of the same size as the parameter grid.

  • If you configured s.Parameters and specified s.OperatingPoints as multiple operating point objects, the software computes a linearization for each parameter grid point. The software requires that s.OperatingPoints is the same size as the parameter grid specified by s.Parameters. The software computes each linearization using corresponding operating points and parameter grid points. linsys is returned as a state-space model array of the same size as the parameter grid.

  • If you configured s.Parameters and specified s.OperatingPoints as multiple simulation snapshot times, the software simulates and linearizes the model for each snapshot time and parameter grid point combination. Suppose that you specify a parameter grid of size p and N snapshot times. linsys is returned as a state-space model array of size N-by-p.

For most models, linsys is returned as an ss object or an array of ss objects. However, if your model contains one of the following blocks in the linearization path defined by pt, then linsys returns the specified type of state-space model.

Blocklinsys Type
Block with a substitution specified as a genss object or tunable model objectgenss
Block with a substitution specified as an uncertain model, such as ussuss (Robust Control Toolbox)
Sparse Second Order blockmechss
Descriptor State-Space block configured to linearize to a sparse modelsparss

Linearization information, returned as a structure with the following fields:

Linearization offsets, returned as [] if s.Options.StoreOffsets is false. Otherwise, Offsets is returned as one of the following:

  • If linsys is a single state-space model, then Offsets is a structure.

  • If linsys is an array of state-space models, then Offsets is a structure array with the same dimensions as linsys.

Each offset structure has the following fields:

FieldDescription
xState offsets used for linearization, returned as a column vector of length nx, where nx is the number of states in linsys.
yOutput offsets used for linearization, returned as a column vector of length ny, where ny is the number of outputs in linsys.
uInput offsets used for linearization, returned as a column vector of length nu, where nu is the number of inputs in linsys.
dxDerivative offsets for continuous time systems or updated state values for discrete-time systems, returned as a column vector of length nx.
StateNameState names, returned as a cell array that contains nx elements that match the names in linsys.StateName.
InputNameInput names, returned as a cell array that contains nu elements that match the names in linsys.InputName.
OutputNameOutput names, returned as a cell array that contains ny elements that match the names in linsys.OutputName.
TsSample time of the linearized system, returned as a scalar that matches the sample time in linsys.Ts. For continuous-time systems, Ts is 0.

If Offsets is a structure array, you can configure an LPV System block using the offsets. To do so, first convert them to the required format using getOffsetsForLPV. For an example, see Approximate Nonlinear Behavior Using Array of LTI Systems.

Linearization diagnostic information, returned as [] if s.Options.StoreAdvisor is false. Otherwise, Advisor is returned as one of the following:

  • If linsys is a single state-space model, Advisor is a LinearizationAdvisor object.

  • If linsys is an array of state-space models, Advisor is an array of LinearizationAdvisor objects with the same dimensions as linsys.

LinearizationAdvisor objects store linearization diagnostic information for individual linearized blocks. For an example of troubleshooting linearization results using a LinearizationAdvisor object, see Troubleshoot Linearization Results at Command Line.

More About

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Complementary Sensitivity Function

The complementary sensitivity function at a point is the transfer function from an additive disturbance at the point to a measurement at the same point. In contrast to the sensitivity function, the disturbance is added after the measurement.

To compute the complementary sensitivity function at an analysis point, x, the software adds a linearization output at x, followed by a linearization input, dx. The complementary sensitivity function is the transfer function from dx to x.

Analysis Point in Simulink ModelHow getCompSensitivity Interprets Analysis PointComplementary Sensitivity Function

Transfer function from dx to x

For example, consider the following model where you compute the complementary sensitivity function at y:

Here, the software adds a linearization output at y, followed by a linearization input, dy. The complementary sensitivity function at y, T, is the transfer function from dy to y. T is calculated as follows:

y=GK(y+dy)y=GKyGKdy(I+GK)y=GKdyy=(I+GK)1GKdyT=(I+GK)1GK

Here I is an identity matrix of the same size as GK. The complementary sensitivity transfer function at y is equal to -1 times the closed-loop transfer function from r to y.

Generally, the complementary sensitivity function, T, computed from reference signals to plant outputs, is equal to IS. Here S is the sensitivity function at the point, and I is the identity matrix of commensurate size. However, because getCompSensitivity adds the linearization output and input at the same point, T, as returned by getCompSensitivity, is equal to SI.

The software does not modify the Simulink model when it computes the complementary sensitivity function.

Analysis Point

Analysis points, used by the slLinearizer and slTuner interfaces, identify locations within a model that are relevant for linear analysis and control system tuning. You use analysis points as inputs to the linearization commands, such as getIOTransfer, getLoopTransfer, getSensitivity, and getCompSensitivity. As inputs to the linearization commands, analysis points can specify any open-loop or closed-loop transfer function in a model. You can also use analysis points to specify design requirements when tuning control systems using commands such as systune.

Location refers to a specific block output port within a model or to a bus element in such an output port. For convenience, you can use the name of the signal that originates from this port to refer to an analysis point.

You can add analysis points to an slLinearizer or slTuner interface, s, when you create the interface. For example:

s = slLinearizer('scdcascade',{'u1','y1'});

Alternatively, you can use the addPoint command.

To view all the analysis points of s, type s at the command prompt to display the interface contents. For each analysis point of s, the display includes the block name and port number and the name of the signal that originates at this point. You can also programmatically obtain a list of all the analysis points using getPoints.

For more information about how you can use analysis points, see Mark Signals of Interest for Control System Analysis and Design and Mark Signals of Interest for Batch Linearization.

Permanent Loop Openings

Permanent openings, used by the slLinearizer and slTuner interfaces, identify locations within a model where the software breaks the signal flow. The software enforces these openings for linearization and tuning. Use permanent openings to isolate a specific model component. Suppose that you have a large-scale model capturing aircraft dynamics and you want to perform linear analysis on the airframe only. You can use permanent openings to exclude all other components of the model. Another example is when you have cascaded loops within your model and you want to analyze a specific loop.

Location refers to a specific block output port within a model. For convenience, you can use the name of the signal that originates from this port to refer to an opening.

You can add permanent openings to an slLinearizer or slTuner interface, s, when you create the interface or by using the addOpening command. To remove a location from the list of permanent openings, use the removeOpening command.

To view all the openings of s, type s at the command prompt to display the interface contents. For each permanent opening of s, the display includes the block name and port number and the name of the signal that originates at this location. You can also programmatically obtain a list of all the permanent loop openings using getOpenings.

Version History

Introduced in R2013b

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