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Sigurd Skogestad Department of Chemical Engineering

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Presentation on theme: "Sigurd Skogestad Department of Chemical Engineering"— Presentation transcript:

1 Plantwide control (Control structure design for complete chemical plants)
Sigurd Skogestad Department of Chemical Engineering Norwegian University of Science and Tecnology (NTNU) Trondheim, Norway Based on: Plenary presentation at ESCAPE’12, May 2002 Updated/expanded April 2004 for 2.5 h tutorial in Vancouver, Canada Further updated: August 2004, December 2004, August 2005

2 Outline Control structure design (plantwide control)
A procedure for control structure design I Top Down Step 1: Degrees of freedom Step 2: Operational objectives (optimal operation) Step 3: What to control ? (primary CV’s) (self-optimizing control) Step 4: Where set production rate? II Bottom Up Step 5: Regulatory control: What more to control (secondary CV’s) ? Step 6: Supervisory control Step 7: Real-time optimization

3 Idealized view of control (“Ph.D. control”)

4 Practice: Tennessee Eastman challenge problem (Downs, 1991) (“PID control”)

5 How we design a control system for a complete chemical plant?
Where do we start? What should we control? and why? etc.

6 Idealized view II: Optimizing control

7 Practice II: Hierarchical decomposition with separate layers
What should we control?

8 Alan Foss (“Critique of chemical process control theory”, AIChE Journal,1973):
The central issue to be resolved ... is the determination of control system structure. Which variables should be measured, which inputs should be manipulated and which links should be made between the two sets? There is more than a suspicion that the work of a genius is needed here, for without it the control configuration problem will likely remain in a primitive, hazily stated and wholly unmanageable form. The gap is present indeed, but contrary to the views of many, it is the theoretician who must close it. Carl Nett (1989): Minimize control system complexity subject to the achievement of accuracy specifications in the face of uncertainty.

9 Control structure design
Not the tuning and behavior of each control loop, But rather the control philosophy of the overall plant with emphasis on the structural decisions: Selection of controlled variables (“outputs”) Selection of manipulated variables (“inputs”) Selection of (extra) measurements Selection of control configuration (structure of overall controller that interconnects the controlled, manipulated and measured variables) Selection of controller type (LQG, H-infinity, PID, decoupler, MPC etc.). That is: Control structure design includes all the decisions we need make to get from ``PID control’’ to “Ph.D” control

10 Each plant usually different – modeling expensive
Process control: “Plantwide control” = “Control structure design for complete chemical plant” Large systems Each plant usually different – modeling expensive Slow processes – no problem with computation time Structural issues important What to control? Extra measurements Pairing of loops

11 Previous work on plantwide control
Page Buckley (1964) - Chapter on “Overall process control” (still industrial practice) Greg Shinskey (1967) – process control systems Alan Foss (1973) - control system structure Bill Luyben et al. ( ) – case studies ; “snowball effect” George Stephanopoulos and Manfred Morari (1980) – synthesis of control structures for chemical processes Ruel Shinnar ( ) - “dominant variables” Jim Downs (1991) - Tennessee Eastman challenge problem Larsson and Skogestad (2000): Review of plantwide control

12 Control structure selection issues are identified as important also in other industries.
Professor Gary Balas (Minnesota) at ECC’03 about flight control at Boeing: The most important control issue has always been to select the right controlled variables --- no systematic tools used!

13 Main simplification: Hierarchical structure
RTO Need to define objectives and identify main issues for each layer MPC PID

14 Regulatory control (seconds)
Purpose: “Stabilize” the plant by controlling selected ‘’secondary’’ variables (y2) such that the plant does not drift too far away from its desired operation Use simple single-loop PI(D) controllers Status: Many loops poorly tuned Most common setting: Kc=1, I=1 min (default) Even wrong sign of gain Kc ….

15 Regulatory control……... Trend: Can do better! Carefully go through plant and retune important loops using standardized tuning procedure Exists many tuning rules, including Skogestad (SIMC) rules: Kc = (1/k) (1/ [c +]) I = min (1, 4[c + ]), Typical: c= “Probably the best simple PID tuning rules in the world” © Carlsberg Outstanding structural issue: What loops to close, that is, which variables (y2) to control?

16 Supervisory control (minutes)
Purpose: Keep primary controlled variables (c=y1) at desired values, using as degrees of freedom the setpoints y2s for the regulatory layer. Status: Many different “advanced” controllers, including feedforward, decouplers, overrides, cascades, selectors, Smith Predictors, etc. Issues: Which variables to control may change due to change of “active constraints” Interactions and “pairing”

17 Supervisory control…... Trend: Model predictive control (MPC) used as unifying tool. Linear multivariable models with input constraints Tuning (modelling) is time-consuming and expensive Issue: When use MPC and when use simpler single-loop decentralized controllers ? MPC is preferred if active constraints (“bottleneck”) change. Avoids logic for reconfiguration of loops Outstanding structural issue: What primary variables c=y1 to control?

18 Local optimization (hour)
Purpose: Minimize cost function J and: Identify active constraints Recompute optimal setpoints y1s for the controlled variables Status: Done manually by clever operators and engineers Trend: Real-time optimization (RTO) based on detailed nonlinear steady-state model Issues: Optimization not reliable. Need nonlinear steady-state model Modelling is time-consuming and expensive

19 Objectives of layers: MV’s and CV’s
RTO Min J; MV=y1s cs = y1s CV=y1; MV=y2s MPC y2s PID CV=y2; MV=u u (valves)

20 Stepwise procedure plantwide control
I. TOP-DOWN Step 1. DEGREES OF FREEDOM Step 2. OPERATIONAL OBJECTIVES Step 3. WHAT TO CONTROL? (primary CV’s c=y1) Step 4. PRODUCTION RATE II. BOTTOM-UP (structure control system): Step 5. REGULATORY CONTROL LAYER (PID) “Stabilization” What more to control? (secondary CV’s y2) Step 6. SUPERVISORY CONTROL LAYER (MPC) Decentralization Step 7. OPTIMIZATION LAYER (RTO) Can we do without it?

21 Step 1. Degrees of freedom (DOFs)
m – dynamic (control) degrees of freedom = valves u0 – steady-state degrees of freedom Cost J depends normally only on steady-state DOFs

22 Distillation column with given feed
Control degrees of freeom Nm = 5 Steady-state degrees of freedom, Nu0 = 3 (2 with given pressure)

23 Step 2. Define optimal operation (economics)
What are we going to use our degrees of freedom for? Define scalar cost function J(u0,x,d) u0: degrees of freedom d: disturbances x: states (internal variables) Typical cost function: Optimal operation for given d: minu0 J(u0,x,d) subject to: Model equations: f(u0,x,d) = 0 Operational constraints: g(u0,x,d) < 0 J = cost feed + cost energy – value products

24 Step 3. What should we control (c)?
Implementation of optimal operation

25 What c’s should we control?
Optimal solution is usually at constraints, that is, most of the degrees of freedom are used to satisfy “active constraints”, g(u0,d) = 0 CONTROL ACTIVE CONSTRAINTS! cs = value of active constraint Implementation of active constraints is usually simple. WHAT MORE SHOULD WE CONTROL? Find variables c for remaining unconstrained degrees of freedom u.

26 Self-optimizing Control
Self-optimizing control is when acceptable operation can be achieved using constant set points (cs) for the controlled variables c (without the need to re-optimizing when disturbances occur). c=cs

27 Self-optimizing Control – Marathon
Optimal operation of Marathon runner, J=T Any self-optimizing variable c (to control at constant setpoint)?

28 Self-optimizing Control – Marathon
Optimal operation of Marathon runner, J=T Any self-optimizing variable c (to control at constant setpoint)? c1 = distance to leader of race c2 = speed c3 = heart rate c4 = level of lactate in muscles

29 Self-optimizing Control – Marathon
Optimal operation of Marathon runner, J=T Any self-optimizing variable c (to control at constant setpoint)? c1 = distance to leader of race (Problem: Feasibility for d) c2 = speed (Problem: Feasibility for d) c3 = heart rate (Problem: Impl. Error n) c4 = level of lactate in muscles (Problem: Large impl.error n)

30 Self-optimizing Control – Sprinter
Optimal operation of Sprinter (100 m), J=T Active constraint control: Maximum speed (”no thinking required”)

31 What should we control? Rule: Maximize the scaled gain
Scalar case. Minimum singular value = gain |G| Maximize scaled gain: |Gs| = |G| / span |G|: gain from independent variable (u) to candidate controlled variable (c) span (of c) = optimal variation in c + control error for c

32 Step 4. Where set production rate?
Very important! Determines structure of remaining inventory (level) control system Set production rate at (dynamic) bottleneck Link between Top-down and Bottom-up parts

33 Production rate set at inlet : Inventory control in direction of flow

34 Production rate set at outlet: Inventory control opposite flow

35 Production rate set inside process

36 Where to set the production rate?
Very important decision that determines the structure of the rest of the control system! May also have important economic implications

37 II. Bottom-up Determine secondary controlled variables and structure (configuration) of control system (pairing) A good control configuration is insensitive to parameter changes Step 5. REGULATORY CONTROL LAYER 5.1 Stabilization (including level control) 5.2 Local disturbance rejection (inner cascades) What more to control? (secondary variables) Step 6. SUPERVISORY CONTROL LAYER Decentralized or multivariable control (MPC)? Pairing? Step 7. OPTIMIZATION LAYER (RTO)

38 Step 5. Regulatory control layer
Purpose: “Stabilize” the plant using local SISO PID controllers Enable manual operation (by operators) Main structural issues: What more should we control? (secondary cv’s, y2) Pairing with manipulated variables (mv’s u2) y1 = c y2 = ?

39 ys y XC Ts T TC Ls L FC z XC

40 Degrees of freedom unchanged
No degrees of freedom lost by control of secondary (local) variables as setpoints become y2s replace inputs u2 as new degrees of freedom Cascade control: G K y2s u2 y2 y1 Original DOF New DOF

41 What should we control? Rule: Maximize the scaled gain
Scalar case. Minimum singular value = gain |G| Maximize scaled gain: |Gs| = |G| / span |G|: gain from independent variable (u) to candidate controlled variable (y) span (of y) = optimal variation in c + control error for y

42 Step 6. Supervisory control layer
Purpose: Keep primary controlled outputs c=y1 at optimal setpoints cs Degrees of freedom: Setpoints y2s in reg.control layer Main structural issue: Decentralized or multivariable?

43 Decentralized control (single-loop controllers)
Use for: Noninteracting process and no change in active constraints + Tuning may be done on-line + No or minimal model requirements + Easy to fix and change - Need to determine pairing - Performance loss compared to multivariable control - Complicated logic required for reconfiguration when active constraints move

44 Multivariable control (with explicit constraint handling = MPC)
Use for: Interacting process and changes in active constraints + Easy handling of feedforward control + Easy handling of changing constraints no need for logic smooth transition - Requires multivariable dynamic model - Tuning may be difficult - Less transparent - “Everything goes down at the same time”

45 Step 7. Optimization layer (RTO)
Purpose: Identify active constraints and compute optimal setpoints (to be implemented by supervisory control layer) Main structural issue: Do we need RTO? (or is process self-optimizing)

46 Conclusion Procedure plantwide control:
I. Top-down analysis to identify degrees of freedom and primary controlled variables (look for self-optimizing variables) II. Bottom-up analysis to determine secondary controlled variables and structure of control system (pairing).

47 Summary: Main steps What should we control (y1=c=z)?
Must define optimal operation! Where should we set the production rate? At bottleneck What more should we control (y2)? Variables that “stabilize” the plant Control of primary variables Decentralized? Multivariable (MPC)?


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