Design and Implementation of Advanced Automatic Control ... · "Design and Implementation of...

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"Design and Implementation of Advanced Automatic Control Strategy Based on Dynamic Models for High Capacity SAG Mill" Iván Yutronic (Collahuasi) Rodrigo Toro (Honeywell Chile)

Transcript of Design and Implementation of Advanced Automatic Control ... · "Design and Implementation of...

"Design and Implementation of Advanced Automatic Control Strategy Based on Dynamic Models for High

Capacity SAG Mill"

Iván Yutronic (Collahuasi)Rodrigo Toro (Honeywell Chile)

Table of Contents

• Who are we?

• The Challenge

• The Solution

• The Results

Who are we?• Collahuasi is operated by a joint

venture Xstrata (44%), Anglo American (44%), and Mitsui & Co. Ltd (12%).

• Collahuasi is located in the Andean plateau of northern Chile's Tarapacá Region.

• 210 km southeast of the city of Iquique average altitude of 4300 m.a.s.l.

• Reserves – 5115 Mt at 0.81% Cu y 0.023% Mo.

• Employees Approximately 3,600 people.

• 400,000 t.p.y. of copper in concentrates, 60,000 t.p.y. of copper cathode .

CollahuasiCollahuasi

CS - 1011

CS - 1012

PP- 1023 PP- 1024

PP- 1021 PP- 1022

BM 3

SAG 1

BM 1013

SAG 1011

BM 4SAG 2

Line #1

Line #2

Line #3

TO FLOTATION

DI 01

BM 1012

DI 1051

DI 02

Fe - 003

Fe - 004

Fe - 005

Fe - 006

Fe - 007

Fe - 008

Fe - 1031

Fe - 1032

Fe - 1033

Fe - 1034

Fe - 1035

Fe - 1036

Fe - 1037 Fe - 1038

CV - 05

CV - 06

SU - 01

SU - 02

CS - 001

CS - 002

CS - 003

CS - 004

SU - 1021

CS -1013

CS - 1014

CV - 1036

CV - 1038

CV - 1037

CV - 1035

PP- 03 PP- 04

PP- 05 PP- 06

CV - 07

CV - 09

CV - 08

CV - 10

Collahuasi Grinding Circuit

• Three SAG Mill lines and produces copper and molybdenum concentrate.

• The total production of the concentrator plant is 140000 [tpd].

• SAG Mill 1011 production is 60% of total production.

THE CHALLENGE

The Challenge

• High Capacity SAG Mill– Size: 40x24 [ft]

– Power: 21500 [kW]

– Max throughput: 5300 [ton/h]

Manual Operation Automatic Operation

The Team

GSOGSOOperationsOperations

HoneywellHoneywell

Search of advanced control solutions at the market

The choice of available alternatives.

The formulation and implementation of advanced control strategies.

*GSO: Operational Services Management

• Honeywell Chile– APC(Control/Process Engineers)

• Collahuasi:– Operations(Process Engineers)

– GSO*(DCS, Automation Engineers)

Targets

• Implement an advanced control solution able to:

– Govern the SAG mill.– Stabilize the main variables.

– Handle process constraints.

• Optimize the operation – Keeping the mill weight within the

operational range (940-1020 [ton]).

– Maximizing the fresh feed rate.

– Reducing the impact of process disturbances (variations in feed particle size and recycle of pebbles).

THE SOLUTION

Advanced Process Control

• Increase the profit by:

– Carry out the process to an optimal state

– An increase of plant operational efficiency

– Give a measurement of plant performance

– Coordination between the different process units

Variable

TimePoor control

Constraint Limit

Good RegulatoryControl

Advanced Control

$$

MPC Control Strategy

• Like a chess master– A set of (optimal) movements is

calculated (based in a prediction) in order to reach the objective.

– Optimal movements are computed at each control interval in order to handle changes in the “game conditions”.

• MPC: Model based Predictive Control– A well-established industrial control technology which dates back over 30

years.– 2000+ documented industrial applications*.

• ~100 applications in mining process with Honeywell Technology since 1996.

– Refining and Petrochemical applications are typically dominant but MPC is being rapidly adopted in other markets.

* ref: Control System Design (G. C. Goodwin et al. 2001)

Honeywell’s MPC: Profit Controller

• Profit Controller (RMPCT*):– RCA: Range Control Algorithm.

– Economical optimization (e.g. minimize power consumption).

– Robust control technology.

Known values Optimal response

Unforced prediction

Past Present Future

*RMPCT: Roboust Multivariable Predictive Control Technology

The Solution: ProfitSAG

• ProfitSAG is an MPC solution for SAG Mills– Objective function designed to accomplish the goals (maximize fresh feed rate)

– Fault tolerant policies (anti-windup integration with regulatory control level)

– Fully integrated with measured disturbances

SAG 1011

• Fresh Feed• Mill Speed• Solids

• Mill’s Weight• Mill’s Power• Mill’s Noise• Mill’s Torque• Produced Pebbles

• Returned pebble• Particle size

Process Process ValueValue PredictionsPredictions

MVs

DVs

CVs

ProfitSAG Dynamical ModelsFinal Trials

CV1 -WEIGHT

CV2 -NOISE

CV3 -POWER

CV4 -PEBBLES

CV5 -TORQUE

MV1 -ORE FEED [TPH]

MV2 -MILL SPEED [RPM]

MV3 -SOLIDS [%]

DV1 -RETURNED PEBBLE [TPH]

DV2 -FEED PARTICLE SIZE (<1”) [%]

G(s) = .01951

3s + 1e

-2s0 5 10 15 20

G(s) = -16.71

4s^2 + 4.18s + 1e

-1.67s0 5.25 10.5 15.7 21

G(s) = .07051

5.85s^2 + 5.33s + 1e

-0s0 4.5 9 13.5 18

G(s) = -4.121

38.4s + 1e

-6.08s0 39.9 79.8 120 160

G(s) = -.0195-.231s + 1

14s^2 + 5.96s + 1e

-0s0 5 10 15 20

G(s) = 6.011.85s + 1

.459s^2 + 3.89s + 1e

-0s0 3.17 6.33 9.5 12.7

G(s) = -.07171

5.76s^2 + 5.98s + 1e

-0s0 5.12 10.2 15.4 20.5

G(s) = 2.121

2.56s + 1e

-3.25s0 3.37 6.75 10.1 13.5

G(s) = 6631

.49s + 1e

-0s0 1.37 2.75 4.12 5.5

G(s) = 90.11.23s + 1

.368s^2 + 1.21s + 1e

-0s0 2 4 6 8

G(s) = -36.81

1.57s + 1e

-.75s0 3 6 9 12

G(s) = 4.211

.00949s^2 + .423s + 1e

-.0833s0 .625 1.25 1.87 2.5

ls MV1 -ORE FEED [TPH]

MV2 -MILL SPEED [RPM]

G(s) = .01951

3s + 1e

-2s0 5 10 15 20

G(s) = -16.71

4s^2 + 4.18s + 1e

-1.67s0 5.25 10.5 15.7 21

G(s) = -.0195-.231s + 1

14s^2 + 5.96s + 1e

-0s0 5 10 15 20

G(s) = 6.011.85s + 1

.459s^2 + 3.89s + 1e

-0s0 3.17 6.33 9.5 12.7

RESULTS

Evaluation

Scenarios:

1. Unconstrained Process • Sending produced pebbles (~8-10%) to

crushing plant.

2. Constrained Process• Recycling pebbles to SAG mill.

Performance Index:

1. Feed rate [tph]2. Specific energy consumption [kW/tph]

Scenario 1: without pebbles recycling

3 3.5 4 4.5 5 5.5 6 6.5 7 7.50

2

4

6

8

10

Specif ic Energy Consumption [kW/TPH]

Per

cent

age

of O

ccur

renc

e

Histogram of Specif ic Energy Consumption

Prof itSAG ONMedia: 4.9639Std: 0.44711Prof itSAG OFFMedia: 5.0755Std: 0.46949

2000 2500 3000 3500 4000 4500 50000

2

4

6

8

10

12

14

Fresh Feed [TPH]

Per

cent

age

of O

ccur

renc

e

Histogram of Fresh Feed

Prof itSAG ONMedia: 3649.9041std: 347.8902Prof itSAG OFFMedia: 3567.0156std: 361.0295

• The average has been reduced by 2.2% (0.1 [kW/tph]) and its standard deviation has been reduced by 4.8% (0.02 [kW/tph]).

• The fresh feed rate has been increased by 2.3% (82 [tph]) and its standard deviation has been reduced by 3.6% (14 [tph]) .

Scenario 2: recycling pebbles

2000 2500 3000 3500 4000 45000

4

8

12

16

20

Fresh Feed [TPH]

Per

cent

age

of O

ccur

renc

e

Histogram of Fresh Feed

Prof itSAG ONMedia: 3074.3594Std: 290.5276Prof itSAG OFFMedia: 2792.3525Std: 295.7731

4 4.5 5 5.5 6 6.5 7 7.5 80

2

4

6

8

9

Specif ic Energy Consumption [KW/TPH]

Per

cent

age

of O

ccur

renc

e

Histogram of Specif ic Energy Consumption

Prof itSAG ONMedia: 5.5155Std: 0.4567Prof itSAG OFFMedia: 5.7726Std: 0.60116

• The Specific Energy Consumption average has been reduced by 4.5% (0.24 [kW/tph]) and its standard deviation has been reduced by 24% (0.15 [kW/tph]) .

• The Fresh feed rate has been increased by 10.1% (282 [tph]) and its standard deviation has been reduced by 1.7% (12 [tph]) .

Conclusions

• Successfully integration between Collahuasi Operations, GSO and Honeywell APC Chile.

• Implementation of a Fully Automatic Solution in record time (1 month).

• Excellent initial utilization 90%.

• High confidence of operators and supervision in the controller actions.

• ProfitSAG shows good disturbance rejection and handling of constraints (e.g. recycle Pebbles).

• Fresh feed rate, has been increased in a range of 2.3 to 10 % (82 to 282 [tph]) and reduced variations by 3.6 % (14 [tph]), depending on the operational conditions.

• The Specific Energy Consumption, has been decreased in a range of 2.2 to 4.5% (0.1 to 0.24 [kW/tph]) and its standard deviation has been reduced by 24%, depending of the operational conditions.

Thank you