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    Distributed model predictive control for plant-wide hot-rolled strip laminar cooling process
    • 點擊數:730     發布時間:2010-03-14 20:29:00
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    1. Introduction
           Recently, customers require increasingly better quality for hotrolled
    strip products, such as automotive companies expect to gain
    an advantage from thinner but still very strong types of steel sheeting
    which makes their vehicles more efficient and more environmentally
    compatible. In addition to the alloying elements, the
    cooling section is crucial for the quality of products [1]. Hot-rolled
    strip laminar cooling process (HSLC) is used to cool a strip from an
    initial temperature of roughly 820–920 C down to a coiling temperature
    of roughly 400–680 C, according to the steel grade and
    geometry. The mechanical properties of the corresponding strip
    are determined by the time–temperature-course (or cooling curve)
    when strip is cooled down on the run-out table [1,2]. The precise
    and highly flexible control of the cooling curve in the cooling section
    is therefore extremely important.

           Most of the control methods (e.g. Smith predictor control [3],
    element tracking control [4], self-learning strategy [6] and adaptive
    control [5]) pursue the precision of coiling temperature and
    care less about the evolution of strip temperature. In these methods,
    the control problem is simplified so greatly that only the coiling
    temperature is controlled by the closed-loop part of the
    controller. However, it is necessary to regulate the whole evolution
    procedure of strip temperature if better properties of strip are
    required. This is a nonlinear, large-scale, MIMO, parameter
    distributed complicated system. Therefore, the problem is how to
    control the whole HSLC process online precisely with the size of
    HSLC process and the computational efforts required.

           Model predictive control (MPC) is widely recognized as a practical
    control technology with high performance, where a control
    action sequence is obtained by solving, at each sampling instant,
    a finite horizon open-loop receding optimization problem and
    the first control action is applied to the process [7]. An attractive
    attribute of MPC technology is its ability to systematically account
    for process constraints. It has been successfully applied to many
    various linear [7–12], nonlinear [13–17] systems in the process
    industries and is becoming more widespread [7,10]. For large-scale
    and relatively fast systems, however, the on-line implementation
    of centralized MPC is impractical due to its excessive on-line computation
    demand. With the development of DCS, the field-bus
    technology and the communication network, centralized MPC
    has been gradually replaced by decentralized or distributed MPC
    in large-scale systems [21,22] and [24]. DMPC accounts for the
    interactions among subsystems. Each subsystem-based MPC in
    DMPC, in addition to determining the optimal current response,
    also generates a prediction of future subsystem behaviour. By suitably
    leveraging this prediction of future subsystem behaviour, the
    various subsystem-based MPCs can be integrated and therefore the
    overall system performance is improved. Thus the DMPC is a good
    method to control HSLC.

         Some DMPC formulations are available in the literatures
    [18–25]. Among them, the methods described in [18,19] are
    proposed for a set of decoupled subsystems, and the method
    described in [18] is extended in [20] recently, which handles
    systems with weakly interacting subsystem dynamics. For
    large-scale linear time-invariant (LTI) systems, a DMPC scheme
    is proposed in [21]. In the procedure of optimization of each
    subsystem-based MPC in this method, the states of other subsystems
    are approximated to the prediction of previous instant.
    To enhance the efficiency of DMPC solution, Li et al. developed
    an iterative algorithm for DMPC based on Nash optimality for
    large-scale LTI processes in [22]. The whole system will arrive
    at Nash equilibrium if the convergent condition of the algorithm
    is satisfied. Also, in [23], a DMPC method with guaranteed feasibility
    properties is presented. This method allows the practitioner
    to terminate the distributed MPC algorithm at the end
    of the sampling interval, even if convergence is not attained.
    However, as pointed out by the authors of [22–25], the performance
    of the DMPC framework is, in most cases, different from
    that of centralized MPC. In order to guarantee performance
    improvement and the appropriate communication burden
    among subsystems, an extended scheme based on a so called
    ‘‘neighbourhood optimization” is proposed in [24], in which
    the optimization objective of each subsystem-based MPC considers
    not only the performance of the local subsystem, but also
    those of its neighbours. The HSLC process is a nonlinear,
    large-scale system and each subsystem is coupled with its
    neighbours by states, so it is necessary to design a new DMPC
    framework to optimize HSLC process. This DMPC framework
    should be suitable for nonlinear system with fast computational
    speed, appropriate communication burden and good global
    performance.
    In this work, each local MPC of the DMPC framework proposed
    is formulated based on successive on-line linearization of nonlinear
    model to overcome the computational obstacle caused by nonlinear
    model. The prediction model of each MPC is linearized
    around the current operating point at each time instant. Neighbourhood
    optimization is adopted in each local MPC to improve
    the global performance of HSLC and lessen the communication
    burden. Furthermore, since the strip temperature can only be measured
    at a few positions due to the hard ambient conditions, EKF is
    employed to estimate the transient temperature of strip in the
    water cooling section.
    The contents are organized as follows. Section 2 describes the
    HSLC process and the control problem. Section 3 presents proposed
    control strategy of HSLC, which includes the modelling of subsystems,
    the designing of EKF, the functions of predictor and the
    development of local MPCs based on neighbourhood optimization
    for subsystems, as well as the iterative algorithm for solving the
    proposed DMPC. Both simulation and experiment results are presented
    in Section 4. Finally, a brief conclusion is drawn to summarize
    the study and potential expansions are explained.
    2. Laminar cooling of hot-rolled strip
    2.1. Description
    The HSLC process is illustrated in Fig. 1. Strips enter cooling section
    at finishing rolling temperature (FT) of 820–920 C, and are
    coiled by coiler at coiling temperature (CT) of 400–680 C after
    being cooled in the water cooling section. The X-ray gauge is used
    to measure the gauge of strip. Speed tachometers for measuring
    coiling speed is mounted on the motors of the rollers and the
    mandrel of the coiler. Two pyrometers are located at the exit of
    finishing mill and before the pinch rol1 respectively. Strips are
    6.30–13.20 mm in thickness and 200–1100 m in length. The
    run-out table has 90 top headers and 90 bottom headers. The top
    headers are of U-type for laminar cooling and the bottom headers
    are of straight type for low pressure spray. These headers are divided
    into 12 groups. The first nine groups are for the main cooling
    section and the 1ast three groups are for the fine cooling section. In
    this HSLC, the number of cooling water header groups and the
    water flux of each header group are taken as control variables to
    adjust the temperature distribution of the strip.
    2.2. Thermodynamic model
    Consider the whole HSLC process from the point of view of geometrically
    distributed setting system (The limits of which are represented
    by the geometrical locations of FT and CT, as well as the
    strip top and bottom sides), a two dimensional mathematical model
    for Cartesian coordinates is developed combining academic and
    industrial research findings [26]. The model assumes that there is
    no direction dependency for the heat conductivity k. There is no
    heat transfer in traverse and rolling direction. The latent heat is
    considered by using temperature-dependent thermal property
    developed in [27] and the model is expressed as
    _x ¼
    k
    qcp
    @2x
    @z2 _l 
    @x
    @l ð1Þ
    with the boundary conditions on its top and bottom surfaces
    k
    @x
    @z ¼ h  ðx  x1Þ ð2Þ
    where the right hand side of (2) is h times (x  x1) and
    h ¼ hw
    x  xw
    x  x1
    þ r0e
    x4  x4
    1
    x  x1
    ð3Þ
    and x(z, l, t) strip temperature at position (z, l);
    l, z length coordinate and thickness coordinate respectively;
    q density of strip steel;
    cp specific heat capacity;
    k heat conductivity;
    r0 Stefan–Boltzmann constant (5:67  108 w=m2 K4);
    Water cooling section
    Finishing mill
    Pyrometer
    Fine cooling section
    7.5m 62.41m 7.5m
    5.2 m
    Pinch roll
    Coiler
    Main cooling section
    X-ray
    Fig. 1. Hot-rolled strip laminar cooling process.

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