Title: From Process Control to Business Oriented Operation
1From Process Control toBusiness Oriented
Operation
- Ben Betlem
- University of TwenteFaculty of Science and
Technology
2Outline of presentation
MPC demands - integration
- traditional MPC
- principles
- four generations MPC
- current commercial products
- overview current state
- requirements
- market
- process dynamics of operation
- integration
- new structures
- problems
- future developments
3Principes MPC
MPC demands - integration
- controlled
- variable/trajectory
manipulatedvariable
4Problem definition MPC
MPC demands - integration
- Modelingmulti-variable, non-linear,
constrained, changing dynamic behavior - Optimumeconomic optimum usually on
constraints? keep system on constraint without
constraint violation
5Hierarchy of Control System Functions
MPC demands - integration
MPC move the plant from one constrained steady
state to another while minimizing constraint
violations
64 Generations MPC
MPC demands - integration
- before 1972 Linear Quadratic Gaussian Controller
- 1st 1970/1980 (industrial development)
- hierarchy of optimization and control
- predicted output closely to first-order path
(L-MPC), or closely to setpoint (DMC) - impulse response (L-MPC), linear step response
(DMC) - ad-hoc constraints check
- heuristic solution (L-MPC), least-square solution
(DMC) - 2nd 1980/1985
- objective function re-written in quadratic
programming form (QDMC) - explicit way to implement soft input and output
constraints
74 Generations MPC
MPC demands - integration
- 3rd 1985/1995
- fault tolerance recovering from infeasible
sub-plant solutions - avoiding large objective functions defining
ranked hard and soft constraints and
multi-objective functions - introduction state space models with state
estimation and model for unmeasured disturbances
(SMOC) - 4th 1995/
- windows
- multiple optimization levels with economic
objectives - robust control design consideration of model
uncertainties
8MPC Current Technology
MPC demands - integration
- drives process from one steady state to another
- MPC multivariable compensation
- MPC feedforward compensation
- prevent violation of constraints
- dynamic output optimization
- dynamic input optimization
- fault tolerance control as much of the plant as
possible
9MPC Calculation Procedure
MPC demands - integration
- read mvs, dvs, cvs values from process
- feedback by ad-hoc bias level adaptation
- state estimation only available in two products
- determine controlled subset mvs and cvs
- remove ill-conditioning
- mv move suppression by conditioning matrix
inversion - local steady state optimization
- steady state cvs as closely as possible to
targets from local economic optimization - as optimal targets change due to disturbances
- with exception of 2 products
- dynamic optimization
- output mvs
10Commercial Products (Qin Badgwell)
MPC demands - integration
11Linear MPC Commercial Products
MPC demands - integration
12nonlinear MPC Commercial Products
MPC demands - integration
nonlinear optimization sequence of iterations of
linearized version
13Requirements
MPC demands - integration
- Market Economic
- increase of capital turnaround for given margins
- minimal stocks
- direct coupling between productionand market
supply - direct coupling with raw material market
- Automation and Organization
- higher degree of automation
- operator task from PID-loop controller to quality
controller to economic controller - degrees of freedom and information assigned to
the persons responsible to realize objectives
14Goals
MPC demands - integration
- truly integrated optimization and control
- improvement of process economics
- matches process behavior
- respect imposed operating constraints
- for dynamic operation
- external adjustment
- to time varying supply chain and market economics
- to maximize added value
- internal adjustment
- to current state
- regarding changing process behavior
15Levels of Process Dynamics
MPC demands - integration
- stationary
- scheduled or fluctuating load changes
- scheduled product quality changes
- polymer molecular weight distribution
- long-term process change
- (semi-)batch operation
- crystallization,
- cyclic (semi-) batch with limited exhaustion
- distillation, bio-reaction (variable final time)
- combinations of continues - batch operation
16Dynamic Optimization
MPC demands - integration
- unscheduledload change
- scheduledquality change
- batch procesoptimal final time
- batch withrecyclesoptimal exhaustion
17Integration Structures
MPC demands - integration
Conventional minimal coupling
Integrated separation of co-ordination
18Integrated Structure Design
MPC demands - integration
- Criteria of centralization ? distribution of
goals - advantages overall above distributed
optimizationdetermined by mutual dependency
between units - advantages dynamic above momentary
optimizationdetermined by market and process
dynamics - Model, model adaptation, model consistency
- hybrid dynamic models using as much a-priori and
realt-time knowledge as possible e.g. fuzzy
modeling (van Lith)first principles dynamics
empirical model components - models derived from each other
- Quality determination
- dynamic partial least square
19MPC demands - integration
20Co-operation (van Brempt)
MPC demands - integration
yopt
uopt
mutual triggering possible
Dy
Du
y
u
21Academic Results
MPC demands - integration
- Hybrid modeling and model reduction
- Plant wide optimization
- Development of new numeric methods for large
prediction horizons - Non-linear MPC for processes with large range of
dynamics (stiff systems) - Efficient numerical techniques available
22Future Commercial MPC
MPC demands - integration
- introduction of dynamic optimization (batch)
- multiple objective functions
- integrating economic objectives
- infinite prediction horizon
- process models
- non-linear models from combined first principles
and experimental data - robust(accuracy/uncertainty versus control
application) - improved adaptation strategies
- algorithms
- inherently stable, avoiding extensive tuning
- robust numerical methods (from academics)
23Literature
- Qin, S.J. and T.A. Badgwell (2003)A survey of
industrial model predictive controlControl
Engineering Practice, in press - Incoop - Integrated control and dynamic
optimization for the proces industry, Workshop
23-24 jan. 2003, Düsseldorf - Brempt, W.van, T. Backx, J.Ludlage, P.van
Overschie, B. de Moor and R. Tousain (2001)A
high performance model predictive controller
application on a polyethylene gas phase
reactorControl Engineering Practice, 9, pp
829-835 - Lith, P.F. van, B.H. L. Betlem and B. Roffel
(2002)A structured modeling approach for dynamic
hybrid fuzzy-first principles models, Journal of
Process Control, 12, pp 605-615
24Stelling
- Als RT-procesoptimalisatie en MPC worden
geïntegreerd om beter te kunnen inspelen op de
supply chain, dan - dient de operator bewaker te worden van de
(locale) economische optimalisatie.