A minmax model predictive control approach to robust power management in ambulatory wireless sensor networks abstract. Camacho abstract feedback minmax model predictive control based on a quadraticcost functionisaddressedin thispaper. Fontes and lalo magni abstract this paper proposes a model predictive control mpc algorithm for the solution of a robust control problem for continuoustime systems. Most importantly, mpc provides the flexibility to act while optimizing which is essential to the solution of many engineering problems in complex plants, where exact modeling is impossible. Model predictive control college of engineering uc santa barbara. The min max operator is explored for the first time as an alternative to the traditional loss function. It has been in use in the process industries in chemical plant s and oil refineries since the 1980s.
Feedback minmax model predictive control based on a. Course on model predictive control part iii stability. Course on model predictive control part iii stability and robustness. Themain contribution is an algorithm for solving the minmax quadratic. These properties however can be satisfied only if the underlying model used for.
Works in practice, without formal analysis theory requires large infinite prediction horizon terminal constraint additional tricks for a separate static optimization step integrating and. This paper proposes a robust output feedback model predictive control mpc scheme for linear parameter varying lpv systems based on a quasiminmax algorithm. Then, minmax feedback model predictive control using disturbance feedback policies is presented. A decomposition algorithm for feedback minmax model predictive control article pdf available in ieee transactions on automatic control 5110. Multistage suboptimal model predictive control with. Nonlinear model predictive control nmpc has become the accepted methodology to solve complex control problems related to process industries. The main contribution is an algorithm for solving the minmax quadratic mpc. Min, max selectors if then logics sequence logics other elements regulation. The state space model is applied in model predictive control mpc. May 15, 2007 the book is of interest as an introduction to model predictive control, and a merit is the special presentation, connecting the subject intimately with industrial situations. Minmax model predictive control of nonlinear systems. Most importantly, mpc provides the flexibility to act while optimizingwhich is essential to the solution of many engineering problems in complex plants, where exact modeling is impossible.
Nonlinear outputfeedback model predictive control with moving horizon estimation. Multistage suboptimal model predictive control with improved. Participially, chance constraints on the state and control are. The main motivation behind explicit nmpc is that an explicit state feedback law avoids the need for executing a numerical optimization algorithm in real. Minmax model predictive control for uncertain maxminplus. This leads to improved performance, compared to standard model predictive control, and resolves the feasibility difficulties that arise with the minmax techniques that are documented in the literature. The main contribution is an algorithm for solving the min max quadratic mpc problem with an arbitrary degree of approximation. Minmax predictive control of a fivephase induction machine. The book is of interest as an introduction to model predictive control, and a merit is the special presentation, connecting the subject intimately with industrial situations. Other readers will always be interested in your opinion of the books youve read. This text is an introduction to model predictive control, a control methodology which has encountered some success in industry, but which still presents many the book. Camacho minmax mpc 7 why minmax model predictive control. A survey on explicit model predictive control springer for. Constraints are present in all control systems due to physical, environmental and economic limits on plant operation, and the systematic handling of constraints provided by predictive control strategies allows for significant improvements in performance over conventional control methodologies.
Minmax approaches to robust model predictive control. Abstract we introduce an outputfeedback approach to model predictive control that combines state estimation and control into a single minmax optimization. Most importantly, mpc provides the flexibility to act while. The proposed robust predictive controller uses a semifeedback formulation and. Nonlinear outputfeedback model predictive control with. Terminal set of minmax model predictive control with guaranteed l 2 performance.
Min, max selectors if then logics sequence logics other elements regulation constraint handling local optimization ad hoc strategies, heuristics inconsistent performance complex control structure not robust to changes and failures focus on the performance of a local unit model is not explicitly used inside the. Ee392m winter 2003 control engineering 1216 technical detail tuning of mpc feedback control performance is an issue. Explicit approximate approach to feedback minmax model. Predictive control with constraints maciejowski pdf download. The state space model is applied in model predictive control mpc, where controller parameters of control prediction horizon length and constraint of control variable variation are discussed. A selftriggered control scheduler has been proposed to maximize the intersampling time of feedback minmax mpc, and the algorithm feasibility and closedloop isps at triggering time instants have been proved.
Pdf feedback minmax model predictive control based on a. Modern predictive control explains how mpc differs from other control methods in its implementation of a control action. Minmax model predictive control of nonlinear systems using discontinuous feedbacks fernando a. Nonlinear outputfeedback model predictive control with moving horizon estimation technical report david a. Pdf minmax approaches to robust model predictive control. A decomposition algorithm for feedback minmax model predictive control. This paper presents an approximate multiparametric nonlinear programming mpnlp approach to explicit solution of feedback minmax model predictive control problems for constrained. Robust and adaptive model predictive control of nonlinear. Explicit model predictive control mpc addresses the problem of removing one of the main drawbacks of mpc, namely the need to solve a mathematical program on line to compute the control action. A minmax model predictive control approach to robust. Robust predictive feedback control for constrained systems giovanini l. Most physical systems possess parametric uncertainties or unmeasurable parameters and, since parametric uncertainty may degrade the performance of model predictive control mpc. The basic idea in mpc is to repeatedly solve optimization problems online to nd an optimal input to the controlled system.
In recent years it has also been used in power system balancing models and in power electronics. In this paper, the explicit constrained minmax mpc problem is solved by an algorithm which is based on a discretetime linear system with uncertain disturbances. Minmax feedback model predictive control for constrained linear systems. Model predictive controllers rely on dynamic models of. On robustness of suboptimal minmax model predictive control defeng he, haibo ji, tao zheng. Part of the lecture notes in control and information sciences book series lncis.
The most important algorithms feature in an accompanying free online matlab toolbox, which allows easy access to sample solutions. This paper presents an approximate multiparametric nonlinear programming mpnlp approach to explicit solution of feedback min max model predictive control problems for constrained nonlinear systems in the presence of bounded disturbances. Then, minmax feedback model predictive control using disturbance feedback policies is presented, which leads to improved performance compared to. This approach involves an offline design of a robust state observer for lpv systems using linear matrix inequality lmi and an online robust output feedback mpc algorithm using. Min max mpc schemes can be classi ed in open loop and feedback min max controllers see mayne et al.
Course on model predictive control part iii stability and robustness gabriele pannocchia department of chemical engineering, university of pisa, italy email. Minmax model predictive control of nonlinear systems using. However, most robust mpc schemes can be classified into two categories 33. Bemporad, a decomposition algorithm for feedback minmax model predictive control, in proc.
Introduction onlinear model predictive control nmpc involves the solution at each sampling instant of a finite horizon optimal control problem subject to nonlinear system dynamics and state and input constraints. Output feedback model predictive control for lpv systems. Minmax tubebasedrobustmpc 5 output feedback mpc stabilityanalysis o. This work considers the problem of stabilization of nonlinear systems subject to constraints, uncertainty and faults in the control actuator. Feedback min max mpc obtains a sequence of feedback control laws that minimizes the worst case cost, while assuring robust constraint handling. With this proposal, the selection of voltage vectors does not need weighting factors that are normally used within the. A survey on explicit model predictive control springer.
Tuning of mpc feedback control performance is an issue. Explicit nonlinear model predictive control theory and. This volume provides a definitive survey of the latest model predictive control methods available to engineers and scientists today. Introduction onlinear model predictive control nmpc. Feedback minmax model predictive control using a single linear. Typically, such a model includes a machine learning algorithm that learns certain properties from a training dataset in order to make those predictions. Fossstate output feedback nonlinear model predictive control. Minmax feedback model predictive control for constrained. Recent developments in model predictive control promise remarkable opportunities for designing multiinput, multioutput control systems and improving the control of singleinput, singleoutput systems. A chanceconstrained stochastic model predictive control. This paper proposes a multistage suboptimal model predictive control mpc strategy which can reduce the prediction horizon without compromising the stability property. Course on model predictive control part iii stability and. The ultimate objective of a model predictive controller is to provide a closedloop feedback that regulates to its target set in a fashion that is optimal with respect to the infinitetime problem, while enforcing pointwise constraints in a constructive manner.
Model predictive control is powerful technique for optimizing the performance of constrained systems. Min max model predictive control of nonlinear systems using discontinuous feedbacks fernando a. Robust predictive feedback control for constrained systems. Suboptimal model predictive control feasibility implies stability. The control optimization is therefore feasible for all initial states. Robustly stable feedback minmax model predictive control. For all xt, we find, therefore, that the above set of controls satisfies the stability and state constraints. Fontes and lalo magni abstract this paper proposes a model predictive.
Camacho abstractfeedback minmax model predictive control based on a quadraticcost functionisaddressedin thispaper. This paper addresses the problem of transmission power control within a network of resourceconstrained wireless sensors that operate within a particular ambient healthcare environment. It has been in use in the process industries in chemical plants and oil refineries since the 1980s. Feedback minmax model predictive control based on a quadratic cost function d. Robust model predictive control design for faulttolerant.
Discontinuous feedback strategies are allowed in the solution of the min max. Model predictive control mpc is an advanced method of process control that is used to control a process while satisfying a set of constraints. It is based on an orthogonal search tree structure of the state space partition and consists in constructing a feasible piecewise nonlinear pwnl. Explicit model predictive control mpc addresses the problem of removing one of the main drawbacks of mpc, namely the need to solve a mathematical program on line to compute the. We have studied the robust selftriggered minmax mpc problem for constrained uncertain discretetime nonlinear systems. Minmax model predictive control mpc is one of the few techniques suitable for.
The control schemes the authors discuss introduce, in the control optimization, the notion that feedback is present in the recedinghorizon implementation of the control. Feedback minmax mpc obtains a sequence of feedback control laws. The paper also introduces the recourse horizon, which allows one to obtain a tradeoff between computational complexity and performance of the control law. Closed loop response for nominal mpc and the proposed minimax controller. Model predictive control advanced textbooks in control. In this paper, a fuzzylogic based operator is used instead of a traditional cost function for the predictive stator current control of a fivephase induction machine im. Feedback min max model predictive control based on a quadratic cost function is addressed in this paper. Lecture 12 model predictive control prediction model control optimization receding horizon update. An algorithm for explicit solution of minmax model. Robustly stable feedback minmax model predictive control conference paper in proceedings of the american control conference 4.
Constraints are present in all control systems due to physical, environmental and. The main contribution is an algorithm for solving the minmax quadratic mpc problem with an. On robustness of suboptimal minmax model predictive control. Feedback minmax model predictive control based on a quadratic cost function is addressed in this paper. In proceeding of the 51 th ieee conference on decision and control and european control conference, pages. More than 25 years after model predictive control mpc or receding horizon control rhc appeared in industry as an effective tool to deal with multivariable constrained control. Model predictive control provides high performance and safety in the form of constraint satisfaction. The transfer function model is used in internal model control imc, where the filter parameter is selected and discussed. Modern predictive control 1st edition ding baocang. Robust selftriggered minmax model predictive control for. Predictive modeling, supervised machine learning, and pattern. In this paper, we develop two algorithms for stochastic model predictive control smpc problems with discrete linear systems. This book was set in lucida using latex, and printed and bound by.
Recent developments in modelpredictive control promise remarkable opportunities for designing multiinput, multioutput control systems and improving the control of singleinput, single. It requires the solution of a very high dimensional problem that. Minmax feedback model predictive control for constrained linear. This text is an introduction to model predictive control, a control methodology which has encountered some success in industry, but which still presents many the book is of interest as an introduction to model predictive control, and a merit is the special presentation, connecting the subject intimately. Minmax mpc schemes can be classi ed in open loop and feedback minmax controllers see mayne et al. Pdf a decomposition algorithm for feedback minmax model. Predictive control for linear and hybrid systems is an ideal reference for graduate, postgraduate and advanced control practitioners interested in theory andor implementation aspects of predictive control. The proposed multistage mpc requires a precomputed sequence of j step admissible sets, where the j step admissible set is the set of system states that can be steered to the. Aug 25, 2014 machine learning and pattern classification predictive modeling is the general concept of building a model that is capable of making predictions. Minmax feedback formulations of model predictive control are discussed, both in the fixed and variable horizon contexts. These properties however can be satisfied only if the underlying model used for prediction of.
437 1514 800 526 134 1307 153 458 309 1011 1526 980 1594 931 695 325 1418 816 349 454 1470 1428 243 939 984 335 859 264 1125 1464 745 1351 94 645