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1 E. S. Hori, Maximum Gain Rule Maximum Gain Rule for Selecting Controlled Variables Eduardo Shigueo Hori, Sigurd Skogestad Norwegian University of Science and Technology – NTNU N-7491 Trondheim, Norway
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2 E. S. Hori, Maximum Gain Rule Outline 1.Introduction: What should we control? 2.Self-optimizing Control 3.Maximum Gain Rule 4.Application: Indirect control of Distillation Column 5.Combination of Measurements 6.Conclusions
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3 E. S. Hori, Maximum Gain Rule Optimal operation of Sprinter (100m) Objective function J=T What should we control ? –Active constraint control: Maximum speed (”no thinking required”)
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4 E. S. Hori, Maximum Gain Rule Optimal operation of Marathon runner Objective function J=T Unconstrained optimum What should we control? –Any ”self-optimizing” variable c (to control at constant setpoint)? c 1 = distance to leader of race c 2 = speed c 3 = heart rate c 4 = ”pain” (lactate in muscles)
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5 E. S. Hori, Maximum Gain Rule 2. What is a good variable c to control? Self-optimizing control … is when acceptable operation can be achieved using constant set points (c s ) for the controlled variables c (without the need for re-optimizing when disturbances occur). Desirable properties for a ”self-optimizing” CV (c) : - Small optimal variation (”obvious”) - Large sensitivity (large gain from u to c) (ref. Moore, 1992) - Small implementation error (”obvious”)
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6 E. S. Hori, Maximum Gain Rule How do we find ”self-optimizing” variables in a systematic manner? Assume cost J determined by steady-state behavior Effective tool for screening: MAXIMUM GAIN RULE c – candidate controlled variable (CV) u – independent variable (MV) G – steady-state gain matrix (c = G u) G’ = S 1 G S 2 - scaled gain matrix S 1 – output scaling S 2 = J uu -1/2 – input ”scaling” Maximum gain rule: Maximize This presentation: Importance of input scaling, S 2 = J uu -1/2
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7 E. S. Hori, Maximum Gain Rule u cost J u opt c = G u Halvorsen, I.J., S. Skogestad, J. Morud and V. Alstad (2003). ”Optimal selection of controlled variables”. Ind. Eng. Chem. Res. 42(14), 3273–3284. 3. Maximum Gain Rule: Derivation
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8 E. S. Hori, Maximum Gain Rule 3. Maximum Gain Rule: Derivation (2) Maximum Gain Rule Simplified Maximum Gain Rule
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9 E. S. Hori, Maximum Gain Rule 3. Maximum Gain Rule: Output Scaling S 1 The outputs are scaled with respect to their ”span”:
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10 E. S. Hori, Maximum Gain Rule 3. Maximum Gain Rule: Input Scaling S 2
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11 E. S. Hori, Maximum Gain Rule 4. Application: indirect control Selection/Combination of measurements Primary variables Disturbances Measurements Noise Inputs Constant setpoints
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12 E. S. Hori, Maximum Gain Rule
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13 E. S. Hori, Maximum Gain Rule Column Data Column A: - Binary mixture - 50% light component - AB = 1.5 - 41 stages (total condenser) - 1% heavy in top - 1% light in bottom
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14 E. S. Hori, Maximum Gain Rule Application to distillation Selection/Combination of measurements, e.g. select two temperatures Primary variables: x H top, x L btm Disturbances: F, z F, q F Measurements: All T’s + inputs (flows) Noise (meas. Error) 0.5C on T Inputs: L, V
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15 E. S. Hori, Maximum Gain Rule Distillation Column: Output Scaling S 1
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16 E. S. Hori, Maximum Gain Rule Distillation Column: Input Scaling S 2 =J uu -1/2
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17 E. S. Hori, Maximum Gain Rule Distillation Column: Maximum Gain rule Select two temperatures (symmetrically located) This case: Input scaling (J uu -1/2 ) does not change order….
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18 E. S. Hori, Maximum Gain Rule Distillation Column: Maximum Gain rule and effect of Input Scaling
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19 E. S. Hori, Maximum Gain Rule 5. Linear combination of Measurements Consider temperatures only (41): Nullspace method: Possible to achive no disturbance loss : –Need as many measurements as u’s + d’s: need 4 T’s Two-step approach (”nullspace method”): 1.Select measurements (4 T’s): Maximize min. singular value of 2. Calculate H-matrix that gives no disturbance loss:
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20 E. S. Hori, Maximum Gain Rule 5. Combination of Measurements 2. Same 4 T’s, but minimize for both d and n: J=0.58 1. Nullspace method: Composition deviation: J=0.82 (caused by meas. error n ) Alternative approaches: 3. Optimal combination of any 4 T’s: J=0.44 (branch & bound; Kariwala/Cao) 4. Optimal combination of all 41 T’s: J=0.23
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21 E. S. Hori, Maximum Gain Rule 6. Conclusions Identify candidate CVs Simplified Maximum Gain Rule, - easy to apply – J uu not needed - usually good assumption Maximum Gain Rule: - results very close to exact local method (but not exact) - better for ill-conditioned plants
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