Control Tutorials for MATLAB and Simulink (2024)

In this tutorial we will introduce a simple, yet versatile, feedback compensator structure: the Proportional-Integral-Derivative (PID) controller. The PID controller is widely employed because it is very understandable and because it is quite effective. One attraction of the PID controller is that all engineers understand conceptually differentiation and integration, so they can implement the control system even without a deep understanding of control theory. Further, even though the compensator is simple, it is quite sophisticated in that it captures the history of the system (through integration) and anticipates the future behavior of the system (through differentiation). We will discuss the effect of each of the PID parameters on the dynamics of a closed-loop system and will demonstrate how to use a PID controller to improve a system's performance.

Key MATLAB commands used in this tutorial are: tf , step , pid , feedback , pidtune

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Contents

  • PID Overview
  • The Characteristics of the P, I, and D Terms
  • Example Problem
  • Open-Loop Step Response
  • Proportional Control
  • Proportional-Derivative Control
  • Proportional-Integral Control
  • Proportional-Integral-Derivative Control
  • General Tips for Designing a PID Controller
  • Automatic PID Tuning

PID Overview

In this tutorial, we will consider the following unity-feedback system:

Control Tutorials for MATLAB and Simulink (1)

The output of a PID controller, which is equal to the control input to the plant, is calculated in the time domain from the feedback error as follows:

(1)Control Tutorials for MATLAB and Simulink (2)

First, let's take a look at how the PID controller works in a closed-loop system using the schematic shown above. The variable (Control Tutorials for MATLAB and Simulink (3)) represents the tracking error, the difference between the desired output (Control Tutorials for MATLAB and Simulink (4)) and the actual output (Control Tutorials for MATLAB and Simulink (5)). This error signal (Control Tutorials for MATLAB and Simulink (6)) is fed to the PID controller, and the controller computes both the derivative and the integral of this error signal with respect to time. The control signal (Control Tutorials for MATLAB and Simulink (7)) to the plant is equal to the proportional gain (Control Tutorials for MATLAB and Simulink (8)) times the magnitude of the error plus the integral gain (Control Tutorials for MATLAB and Simulink (9)) times the integral of the error plus the derivative gain (Control Tutorials for MATLAB and Simulink (10)) times the derivative of the error.

This control signal (Control Tutorials for MATLAB and Simulink (11)) is fed to the plant and the new output (Control Tutorials for MATLAB and Simulink (12)) is obtained. The new output (Control Tutorials for MATLAB and Simulink (13)) is then fed back and compared to the reference to find the new error signal (Control Tutorials for MATLAB and Simulink (14)). The controller takes this new error signal and computes an update of the control input. This process continues while the controller is in effect.

The transfer function of a PID controller is found by taking the Laplace transform of Equation (1).

(2)Control Tutorials for MATLAB and Simulink (15)

where Control Tutorials for MATLAB and Simulink (16) = proportional gain, Control Tutorials for MATLAB and Simulink (17) = integral gain, and Control Tutorials for MATLAB and Simulink (18) = derivative gain.

We can define a PID controller in MATLAB using a transfer function model directly, for example:

Kp = 1;Ki = 1;Kd = 1;s = tf('s');C = Kp + Ki/s + Kd*s
C = s^2 + s + 1 ----------- s Continuous-time transfer function.

Alternatively, we may use MATLAB's pid object to generate an equivalent continuous-time controller as follows:

C = pid(Kp,Ki,Kd)
C = 1 Kp + Ki * --- + Kd * s s with Kp = 1, Ki = 1, Kd = 1 Continuous-time PID controller in parallel form.

Let's convert the pid object to a transfer function to verify that it yields the same result as above:

tf(C)
ans = s^2 + s + 1 ----------- s Continuous-time transfer function.

The Characteristics of the P, I, and D Terms

Increasing the proportional gain (Control Tutorials for MATLAB and Simulink (19)) has the effect of proportionally increasing the control signal for the same level of error. The fact that the controller will "push" harder for a given level of error tends to cause the closed-loop system to react more quickly, but also to overshoot more. Another effect of increasing Control Tutorials for MATLAB and Simulink (20) is that it tends to reduce, but not eliminate, the steady-state error.

The addition of a derivative term to the controller (Control Tutorials for MATLAB and Simulink (21)) adds the ability of the controller to "anticipate" error. With simple proportional control, if Control Tutorials for MATLAB and Simulink (22) is fixed, the only way that the control will increase is if the error increases. With derivative control, the control signal can become large if the error begins sloping upward, even while the magnitude of the error is still relatively small. This anticipation tends to add damping to the system, thereby decreasing overshoot. The addition of a derivative term, however, has no effect on the steady-state error.

The addition of an integral term to the controller (Control Tutorials for MATLAB and Simulink (23)) tends to help reduce steady-state error. If there is a persistent, steady error, the integrator builds and builds, thereby increasing the control signal and driving the error down. A drawback of the integral term, however, is that it can make the system more sluggish (and oscillatory) since when the error signal changes sign, it may take a while for the integrator to "unwind."

The general effects of each controller parameter (Control Tutorials for MATLAB and Simulink (24), Control Tutorials for MATLAB and Simulink (25), Control Tutorials for MATLAB and Simulink (26)) on a closed-loop system are summarized in the table below. Note, these guidelines hold in many cases, but not all. If you truly want to know the effect of tuning the individual gains, you will have to do more analysis, or will have to perform testing on the actual system.

CL RESPONSE
RISE TIME
OVERSHOOT
SETTLING TIME
S-S ERROR
Kp
Decrease
Increase
Small Change
Decrease
Ki
Decrease
Increase
Increase
Decrease
Kd
Small Change
Decrease
Decrease
No Change

Example Problem

Suppose we have a simple mass-spring-damper system.

Control Tutorials for MATLAB and Simulink (27)

The governing equation of this system is

(3)Control Tutorials for MATLAB and Simulink (28)

Taking the Laplace transform of the governing equation, we get

(4)Control Tutorials for MATLAB and Simulink (29)

The transfer function between the input force Control Tutorials for MATLAB and Simulink (30) and the output displacement Control Tutorials for MATLAB and Simulink (31) then becomes

(5)Control Tutorials for MATLAB and Simulink (32)

Let

 m = 1 kg b = 10 N s/m k = 20 N/m F = 1 N

Substituting these values into the above transfer function

(6)Control Tutorials for MATLAB and Simulink (33)

The goal of this problem is to show how each of the terms, Control Tutorials for MATLAB and Simulink (34), Control Tutorials for MATLAB and Simulink (35), and Control Tutorials for MATLAB and Simulink (36), contributes to obtaining the common goals of:

  • Fast rise time
  • Minimal overshoot
  • Zero steady-state error

Open-Loop Step Response

Let's first view the open-loop step response. Create a new m-file and run the following code:

s = tf('s');P = 1/(s^2 + 10*s + 20);step(P)

Control Tutorials for MATLAB and Simulink (37)

The DC gain of the plant transfer function is 1/20, so 0.05 is the final value of the output to a unit step input. This corresponds to a steady-state error of 0.95, which is quite large. Furthermore, the rise time is about one second, and the settling time is about 1.5 seconds. Let's design a controller that will reduce the rise time, reduce the settling time, and eliminate the steady-state error.

Proportional Control

From the table shown above, we see that the proportional controller (Control Tutorials for MATLAB and Simulink (38)) reduces the rise time, increases the overshoot, and reduces the steady-state error.

The closed-loop transfer function of our unity-feedback system with a proportional controller is the following, where Control Tutorials for MATLAB and Simulink (39) is our output (equals Control Tutorials for MATLAB and Simulink (40)) and our reference Control Tutorials for MATLAB and Simulink (41) is the input:

(7)Control Tutorials for MATLAB and Simulink (42)

Let the proportional gain (Control Tutorials for MATLAB and Simulink (43)) equal 300 and change the m-file to the following:

Kp = 300;C = pid(Kp)T = feedback(C*P,1)t = 0:0.01:2;step(T,t)
C = Kp = 300 P-only controller.T = 300 ---------------- s^2 + 10 s + 320 Continuous-time transfer function.

Control Tutorials for MATLAB and Simulink (44)

The above plot shows that the proportional controller reduced both the rise time and the steady-state error, increased the overshoot, and decreased the settling time by a small amount.

Proportional-Derivative Control

Now, let's take a look at PD control. From the table shown above, we see that the addition of derivative control (Control Tutorials for MATLAB and Simulink (45)) tends to reduce both the overshoot and the settling time. The closed-loop transfer function of the given system with a PD controller is:

(8)Control Tutorials for MATLAB and Simulink (46)

Let Control Tutorials for MATLAB and Simulink (47) equal 300 as before and let Control Tutorials for MATLAB and Simulink (48) equal 10. Enter the following commands into an m-file and run it in the MATLAB command window.

Kp = 300;Kd = 10;C = pid(Kp,0,Kd)T = feedback(C*P,1)t = 0:0.01:2;step(T,t)
C = Kp + Kd * s with Kp = 300, Kd = 10 Continuous-time PD controller in parallel form.T = 10 s + 300 ---------------- s^2 + 20 s + 320 Continuous-time transfer function.

Control Tutorials for MATLAB and Simulink (49)

This plot shows that the addition of the derivative term reduced both the overshoot and the settling time, and had a negligible effect on the rise time and the steady-state error.

Proportional-Integral Control

Before proceeding to PID control, let's investigate PI control. From the table, we see that the addition of integral control (Control Tutorials for MATLAB and Simulink (50)) tends to decrease the rise time, increase both the overshoot and the settling time, and reduces the steady-state error. For the given system, the closed-loop transfer function with a PI controller is:

(9)Control Tutorials for MATLAB and Simulink (51)

Let's reduce Control Tutorials for MATLAB and Simulink (52) to 30, and let Control Tutorials for MATLAB and Simulink (53) equal 70. Create a new m-file and enter the following commands.

Kp = 30;Ki = 70;C = pid(Kp,Ki)T = feedback(C*P,1)t = 0:0.01:2;step(T,t)
C = 1 Kp + Ki * --- s with Kp = 30, Ki = 70 Continuous-time PI controller in parallel form.T = 30 s + 70 ------------------------ s^3 + 10 s^2 + 50 s + 70 Continuous-time transfer function.

Control Tutorials for MATLAB and Simulink (54)

Run this m-file in the MATLAB command window and you should generate the above plot. We have reduced the proportional gain (Control Tutorials for MATLAB and Simulink (55)) because the integral controller also reduces the rise time and increases the overshoot as the proportional controller does (double effect). The above response shows that the integral controller eliminated the steady-state error in this case.

Proportional-Integral-Derivative Control

Now, let's examine PID control. The closed-loop transfer function of the given system with a PID controller is:

(10)Control Tutorials for MATLAB and Simulink (56)

After several iterations of tuning, the gains Control Tutorials for MATLAB and Simulink (57) = 350, Control Tutorials for MATLAB and Simulink (58) = 300, and Control Tutorials for MATLAB and Simulink (59) = 50 provided the desired response. To confirm, enter the following commands to an m-file and run it in the command window. You should obtain the following step response.

Kp = 350;Ki = 300;Kd = 50;C = pid(Kp,Ki,Kd)T = feedback(C*P,1);t = 0:0.01:2;step(T,t)
C = 1 Kp + Ki * --- + Kd * s s with Kp = 350, Ki = 300, Kd = 50 Continuous-time PID controller in parallel form.

Control Tutorials for MATLAB and Simulink (60)

Now, we have designed a closed-loop system with no overshoot, fast rise time, and no steady-state error.

General Tips for Designing a PID Controller

When you are designing a PID controller for a given system, follow the steps shown below to obtain a desired response.

  1. Obtain an open-loop response and determine what needs to be improved
  2. Add a proportional control to improve the rise time
  3. Add a derivative control to reduce the overshoot
  4. Add an integral control to reduce the steady-state error
  5. Adjust each of the gains Control Tutorials for MATLAB and Simulink (61), Control Tutorials for MATLAB and Simulink (62), and Control Tutorials for MATLAB and Simulink (63) until you obtain a desired overall response. You can always refer to the table shown in this "PID Tutorial" page to find out which controller controls which characteristics.

Lastly, please keep in mind that you do not need to implement all three controllers (proportional, derivative, and integral) into a single system, if not necessary. For example, if a PI controller meets the given requirements (like the above example), then you don't need to implement a derivative controller on the system. Keep the controller as simple as possible.

An example of tuning a PI controller on an actual physical system can be found at the following link. This example also begins to illustrate some challenges of implementing control, including: control saturation, integrator wind-up, and noise amplification.

Automatic PID Tuning

MATLAB provides tools for automatically choosing optimal PID gains which makes the trial and error process described above unnecessary. You can access the tuning algorithm directly using pidtune or through a nice graphical user interface (GUI) using pidTuner.

The MATLAB automated tuning algorithm chooses PID gains to balance performance (response time, bandwidth) and robustness (stability margins). By default, the algorithm designs for a 60-degree phase margin.

Let's explore these automated tools by first generating a proportional controller for the mass-spring-damper system by entering the command shown below. In the shown syntax, P is the previously generated plant model, and 'p' specifies that the tuner employ a proportional controller.

 pidTuner(P,'p') 

The pidTuner GUI window, like that shown below, should appear.

Control Tutorials for MATLAB and Simulink (64)

Notice that the step response shown is slower than the proportional controller we designed by hand. Now click on the Show Parameters button on the top right. As expected, the proportional gain, Control Tutorials for MATLAB and Simulink (65), is smaller than the one we employed, Control Tutorials for MATLAB and Simulink (66) = 94.86 < 300.

We can now interactively tune the controller parameters and immediately see the resulting response in the GUI window. Try dragging the Response Time slider to the right to 0.14 s, as shown in the figure below. This causes the response to indeed speed up, and we can see Control Tutorials for MATLAB and Simulink (67) is now closer to the manually chosen value. We can also see other performance and robustness parameters for the system. Note that before we adjusted the slider, the target phase margin was 60 degrees. This is the default for the pidTuner and generally provides a good balance between robustness and performance.

Control Tutorials for MATLAB and Simulink (68)

Now let's try designing a PID controller for our system. By specifying the previously designed or (baseline) controller, C, as the second parameter, pidTuner will design another PID controller (instead of P or PI) and will compare the response of the system with the automated controller with that of the baseline.

 pidTuner(P,C) 

We see in the output window that the automated controller responds slower and exhibits more overshoot than the baseline. Now choose the Domain: Frequency option from the toolstrip, which reveals frequency domain tuning parameters.

Control Tutorials for MATLAB and Simulink (69)

Now type in 32 rad/s for Bandwidth and 90 deg for Phase Margin, to generate a controller similar in performance to the baseline. Keep in mind that a higher closed-loop bandwidth results in a faster rise time, and a larger phase margin reduces the overshoot and improves the system stability.

Finally, we note that we can generate the same controller using the command line tool pidtune instead of the pidTuner GUI employing the following syntax.

opts = pidtuneOptions('CrossoverFrequency',32,'PhaseMargin',90);[C, info] = pidtune(P, 'pid', opts)
C = 1 Kp + Ki * --- + Kd * s s with Kp = 320, Ki = 796, Kd = 32.2 Continuous-time PID controller in parallel form.info = struct with fields: Stable: 1 CrossoverFrequency: 32 PhaseMargin: 90


Published with MATLAB® 9.2

Control Tutorials for MATLAB and Simulink (2024)

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