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ELEC ENG 4CL4: Control System Design Notes for Lecture #13 Monday, February 3, 2003 Dr. Ian C. Bruce Room: CRL-229 Phone ext.: 26984 Email: ibruce@mail.ece.mcmaster.ca

(3) Cohen-Coon Reaction Curve Method Cohen and Coon carried out further studies to find controller settings which, based on the same model, lead to a weaker dependence on the ratio of delay to time constant. Their suggested controller settings are shown in Table 6.3: P PI PID K p T r T d [ ν o 1+ τ ] o K o τ o [ 3ν o ν o 0.9+ τ ] o τ o [30ν o +3τ o ] K o τ o [ 12ν o 9ν o +20τ o ν o 4 K o τ o 3 + τ ] o τ o [32ν o +6τ o ] 4τ o ν o 4ν o 13ν o +8τ o 11ν o +2τ o Table 6.3: Cohen-Coon tuning using the reaction curve.

General System Revisited Consider again the general plant: G K ( ) 0e sτ 0 s = γ0s + 1 The next slide shows the closed loop responses resulting from Cohen-Coon Reaction Curve tuning for different values of x =. ν τ 0

Figure 6.8: PI Cohen-Coon tuned (reaction curve method) control loop 2 Cohen Coon (reaction curve) for different values of the ratio x= τ/ν o x=0.1 Plant response 1.5 1 0.5 x=5.0 1.0 0 0 5 10 15 Time [t/τ]

Lead-lag Compensators Closely related to PID control is the idea of lead-lag compensation. The transfer function of these compensators is of the form: C(s) = τ 1s +1 τ 2 s +1 If τ 1 > τ 2, then this is a lead network and when τ 1 < τ 2, this is a lag network.

Figure 6.9: Approximate Bode diagrams for lead networks (τ 1 =10τ 2 ) C db 20[dB] C(jω) ω π 4 1 10τ 1 1 τ 1 1 10 τ 2 τ 2 ω

Observation We see from the previous slide that the lead network gives phase advance at ω = 1/τ 1 without an increase in gain. Thus it plays a role similar to derivative action in PID.

Figure 6.10: Approximate Bode diagrams for lag networks (τ 2 =10τ 1 ) C db 1 1 1 10 10τ 2 τ 1 τ 2 τ 1 ω 20[dB] C(jω) ω π 4

Observation We see from the previous slide that the lag network gives low frequency gain increase. Thus it plays a role similar to integral action in PID.

Illustrative Case Study: Distillation Column PID control is very widely used in industry. Indeed, one would we hard pressed to find loops that do not use some variant of this form of control. Here we illustrate how PID controllers can be utilized in a practical setting by briefly examining the problem of controlling a distillation column.

Example System The specific system we study here is a pilot scale ethanol-water distillation column. Photos of the column (which is in the Department of Chemical Engineering at the University of Sydney, Australia) are shown on the next slide.

Condenser Feed-point Reboiler

Figure 6.11: Ethanol - water distillation column A schematic diagram of the column is given below:

Model A locally linearized model for this system is as follows: where [ ] Y1 (s) Y 2 (s) = [ ][ ] G11 (s) G 12 (s) U1 (s) G 21 (s) G 22 (s) U 2 (s) G 11 (s) = 0.66e 2.6s 6.7s +1 G 12 (s) = 0.0049e s 9.06s +1 G 21 (s) = 34.7e 9.2s 8.15s +1 0.87(11.6s +1)e s G 22 (s) = (3.89s + 1)(18.8s +1) Note that the units of time here are minutes.

Decentralized PID Design We will use two PID controllers: One connecting Y 1 to U 1 The other, connecting Y 2 to U 2.

In designing the two PID controllers we will initially ignore the two transfer functions G 12 and G 21. This leads to two separate (and non-interacting) SISO systems. The resultant controllers are: C 1 (s) =1+ 0.25 s C s (s) =1+ 0.15 s We see that these are of PI type.

Simulations We simulate the performance of the system with the two decentralized PID controllers. A two unit step in reference 1 is applied at time t = 50 and a one unit step is applied in reference 2 at time t = 250. The system was simulated with the true coupling (i.e. including G 12 and G 21 ). The results are shown on the next slide.

Figure 6.12:Simulation results for PI control of distillation column 2.5 2 Plant outputs & ref. 1.5 1 0.5 0 r 1 (t) y 1 (t) r 2 (t) y 2 (t) 0.5 1 0 50 100 150 200 250 300 350 400 450 Time [minutes] It can be seen from the figure that the PID controllers give quite acceptable performance on this problem. However, the figure also shows something that is very common in practical applications - namely the two loops interact i.e. a change in reference r 1 not only causes a change in y 1 (as required) but also induces a transient in y 2. Similarly a change in the reference r 2 causes a change in y 2 (as required) and also induces a change in y 1. In this particular example, these interactions are probably sufficiently small to be acceptable. Thus, in common with the majority of industrial problems, we have found that two simple PID (actually PI in this case) controllers give quite acceptable performance for this problem. Later we will see how to design a full multivariable controller for this problem that accounts for the interaction.

Summary PI and PID controllers are widely used in industrial control. From a modern perspective, a PID controller is simply a controller of (up to second order) containing an integrator. Historically, however, PID controllers were tuned in terms of their P, I and D terms. It has been empirically found that the PID structure often has sufficient flexibility to yield excellent results in many applications.

The basic term is the proportional term, P, which causes a corrective control actuation proportional to the error. The integral term, I gives a correction proportional to the integral of the error. This has the positive feature of ultimately ensuring that sufficient control effort is applied to reduce the tracking error to zero. However, integral action tends to have a destabilizing effect due to the increased phase shift.

The derivative term, D, gives a predictive capability yielding a control action proportional to the rate of change of the error. This tends to have a stabilizing effect but often leads to large control movements. Various empirical tuning methods can be used to determine the PID parameters for a given application. They should be considered as a first guess in a search procedure.

Attention should also be paid to the PID structure. Systematic model-based procedures for PID controllers will be covered in later chapters. A controller structure that is closely related to PID is a lead-lag network. The lead component acts like D and the lag acts like I.