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Tuning Rule for Dead-Time Dominant Processes

Processes with lags or time constants (tau) longer than their dead times (td) are reasonably easy to tune. Most tuning rules work well for processes where tau > 2 td (lag dominant). The opposite is not true. Many tuning rules work very poorly when td > 2 tau (dead-time dominant).

Lag Dominant
When a process has a time constant that is much longer than the dead time, problems like overshoot and having to use high controller gains begin to appear. However, loops with long time constants still act in an intuitive way – if we add more control action we can make the process respond faster, like stepping down harder on the accelerator will get our car to the desired speed quicker.

Dead-Time Dominant
On the other side of the spectrum, when a process’ dead time is significantly longer than its time constant, it behaves much less intuitively – adding more control action does not make the process respond faster. For example, if your shower water is a little cold, opening the hot water tap a lot more is not going to get you to the right temperature any quicker, and it is going to have some serious side-effects.

I once saw several operators struggle to manually control the outlet temperature of a three-pass kiln. The kiln was a dead-time dominant process and its dead time was about 10 minutes long. The operators would notice the temperature is below set point and increase the firing rate. When they see no effect, they increase the firing rate more. And then some more, and more. Finally, when changes have made their way through the dead time, the temperature overshoots its set point by a large margin. Then the operators take the same actions and make the same mistakes in the opposite direction.

Needless to say, controller tuning also becomes difficult on dead-time dominant processes.

Tuning

Step response of a dead-time dominant process.

Step response of a dead-time dominant process.

You will find that the Ziegler-Nichols tuning rules don’t work well at all on a dead-time dominant process. For example, the following process characteristics were measured from the step-response of a dead-time dominant process in the previous plot:

td = 0.276 minutes
tau = 0.013 minutes
gp = 0.89

Applying the Ziegler-Nichols tuning rules to this process gives the following controller settings: Kc = 0.05; Ti = 0.92 minutes. The result is an extremely sluggish control loop (see below).

Dead-time dominant process tuned with the Ziegler-Nichols tuning rules.

Dead-time dominant loop tuned with the Ziegler-Nichols tuning rules.

Processes with time constants (tau) longer than their dead times (td) are reasonably easy to tune. Most tuning rules work well for processes where tau > 2 td (lag dominant). The opposite is not true. Most tuning rules work very poorly when td > 2 tau (dead-time dominant).

The Lambda tuning rules were designed for lag dominant processes and do not work all that well on dead-time dominant processes either. The Cohen-Coon tuning rules work much better than the Ziegler-Nichols rules, but they too aren’t the best tuning rule when the dead time is five or ten times as long as the time constant.

So what type of tuning rule will work well for controlling dead-time dominant processes? First, we need a lag-dominant controller, to make up for the absence of lag in the process. But if we just crank up the integral term, the loop will become unstable. So, second, we have to compensate by decreasing the controller gain.

The Cohen-Coon PI tuning rules will work reasonably well up to td = 2 tau, but it becomes sluggish after that. When td > 2 tau, it is better to use the dead-time tuning rule. It is as follows:

Kc = 0.36 / (gp * SM)
Ti = td / 3
No derivative.

SM is the stability margin and can be set to a value between 1 and 4. A value of 1 is equivalent to the 1/4-amplitude damping response. It is considered unsafe – the loop is very sensitive to changes in process conditions. A value of 2 or higher is recommended. It will reduce the overshoot, eliminate unnecessary cycling, and make the loop far more robust to changes in process conditions.

Hint: measure dead time in the same units of time as your controller’s integral setting. E.g. if your controller’s Ti setting is in minutes, measure td in minutes.

Notes:
– The tuning rules above are designed to work on controllers with interactive or non-interactive algorithms, but not controllers with parallel algorithms.
– Furthermore, they will work only on controllers with a controller gain setting and not a proportional band (found on Foxboro I/A controllers, for example).
– The rules assume the controller’s integral setting is in units of time (minutes or seconds), and not integral gain or rate (repeats per minute or repeats per second).

If your controller is different, parameter conversions will allow you to use these rules.

Applying the dead-time tuning rules to the process described above gives the following controller settings: Kc = 0.2; Ti = 0.092 minutes. The result is significantly better than what can be obtained with other tuning rules.

Dead-time dominant loop tuned with the Dead-Time tuning rules.

Dead-time dominant loop tuned with the Dead-Time tuning rules.

Better loop response can be obtained with a Smith Predictor, but this is more complex to implement and very sensitive to changes in process characteristics.

Stay tuned!

Jacques Smuts – Author of the book Process Control for Practitioners

 

8 Responses to “Tuning Rule for Dead-Time Dominant Processes”

  • Trevor:

    I am trying to calculate the Gp of the step response from the Dead Time Dominant process graph and not getting your value. I see the CO goes from 40.5 to 45 and the PV goes from 50 to 54. Utilizing the Gp equation given on another page, Gp = %changePV/%changeCO.
    ((54-50)/50)/((45-40.5)/40.5) = 0.72. The number you listed above is 0.89. Am I calculating the Gp incorrectly?

  • Trevor – You should convert the changes in CO and PV to a percentage of full scale. In this case I did not state the scaling, but both the PV and CO are scaled 0 – 100%. So gp = dPV[%] / dCO[%] = (54-50)/(45-40.5) = 4/4.5 = 0.89

  • Sam:

    Jacques,
    For an integrating or near integrating process with large deadtime, what tuning rules would you suggest? I am dealing with trying to tune the underflow density controller on a thickener by manipulating the underflow pump speed. The process appears to have a large amount of deadtime but step testing has been difficult because of other issues.
    Sam

  • Sam,
    I have done a lot of testing on this, and the Z/N rules for integrating processes seem to work well on deadtime + integrator processes. Even whe nthe dead time is long. But make sure your process truly is an integrating one.

  • Nam:

    Dear Mr. Jacques F. Smuts,
    I bought the book Process Control for Practitioners from Amazon.
    In page 154, I found the control formulas for long deadtime are:
    Kc = 0.18/(SM*gp)
    Ti = td/3
    Not same as the deadtime tuning rule above.
    So, what is the correct formula?

  • Nam, very good catch. The blog is right with Kc = 0.36/(SM x gp). I’ll update the equation in the next edition of my book.

  • Charles:

    Hi,
    I think it’s worth mentioning that some processes can have variable dead time (e.g. dead-time through a contact water treatment ozone chamber depends on the flow. Doubling the flow halves the dead time but does impact the time constant significantly). Which of course has a big impact on selection of tuning parameters. In the case or a variable dead time perhaps a Smith predictor with a variable dead time could be used?

  • Charles,
    The Smith Predictor with variable dead time might work. Or you could adjust the tuning parameters of a simple PID controller based on flow rate to accommodate the variable dead time.

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