scispace - formally typeset
Search or ask a question
Journal ArticleDOI

Control of large-scale dynamic systems by aggregation

01 Jun 1968-IEEE Transactions on Automatic Control (IEEE)-Vol. 13, Iss: 3, pp 246-253
TL;DR: Using the quantitative definition of weak coupling proposed by Milne, a suboptimal control policy for the weakly coupled system is derived and questions of performance degradation and of stability of such suboptimally controlled systems are answered.
Abstract: A method is proposed to obtain a model of a dynamic system with a state vector of high dimension. The model is derived by "aggregating" the original system state vector into a lower-dimensional vector. Some properties of the aggregation method are investigated in the paper. The concept of aggregation, a generalization of that of projection, is related to that of state vector partition and is useful not only in building a model of reduced dimension, but also in unifying several topics in the control theory such as regulators with incomplete state feedback, characteristic value computations, model controls, and bounds on the solution of the matrix Riccati equations, etc. Using the quantitative definition of weak coupling proposed by Milne, a suboptimal control policy for the weakly coupled system is derived. Questions of performance degradation and of stability of such suboptimally controlled systems are also answered in the paper.
Citations
More filters
Book ChapterDOI
01 Jan 2018
TL;DR: This paper proposes a design of a suboptimal controller for a power system model which is of order five and is reduced to models of orders four and three due to the reason that the implementation ofSuboptimal control demands the measurement of all the state variables of the system which is not practically feasible.
Abstract: This paper proposes a design of a suboptimal controller for a power system model. The system chosen is of order five and is reduced to models of orders four and three due to the reason that the implementation of suboptimal control demands the measurement of all the state variables of the system which is not practically feasible. The aggregation technique is employed for the reduction of order of the model. The aggregation matrix can be obtained using continued fraction expansion technique. The computational complexity is reduced by using the model order reduction techniques because the resulting suboptimal controllers are based on models with reduced orders. The performance analysis of the original system which is of the order of five is carried out in terms of several parameters.
Book ChapterDOI
01 Jan 2002
TL;DR: In this paper, the authors present new algorithms for model reduction, but do not present any new algorithms that can be used for model projection, but they do present some light on the mathematics behind projection techniques which are currently used for that purpose.
Abstract: In this Chapter, we do not intend to present new algorithms for model reduction but to throw some light on the mathematics behind projection techniques which are currently used for that purpose. In this respect, what follows can be considered as a continuation of [14, 15, 17] and the literature quoted in these papers.
Journal ArticleDOI
TL;DR: In this paper, the non-linear finite element method (FEM) is used to model and simulate the metal-forming process and a procedure for construction of the state space model from the finite element model is described.
Abstract: This paper describes a systematic procedure to build reduced-order analytical models for representing metal-forming processes. The non-linear finite element method (FEM) is used to model and simulate the metal-forming process. The procedure for construction of the state space model from the finite element model is described. Available model reduction schemes are utilized in generating reduced-order models from the full size state space representation of the system. The objective of the design process is to maintain specified effective strain rates in certain critical elements of the workpiece. The control input (ram velocity) is designed off-line using the linear quadratic regulator (LQR) theory with finite time control. Three model reduction methods are studied and a suitable technique applicable to the metal-forming process is identified. The selection is based on two performance measures, namely the designed velocity schedule and the infinity norm of the reduced-order system. The method of building the reduced-order process models is explained and demonstrated using two case studies
References
More filters
Journal ArticleDOI
TL;DR: A technique is presented for the decomposition of a linear program that permits the problem to be solved by alternate solutions of linear sub-programs representing its several parts and a coordinating program that is obtained from the parts by linear transformations.
Abstract: A technique is presented for the decomposition of a linear program that permits the problem to be solved by alternate solutions of linear sub-programs representing its several parts and a coordinating program that is obtained from the parts by linear transformations. The coordinating program generates at each cycle new objective forms for each part, and each part generates in turn from its optimal basic feasible solutions new activities columns for the interconnecting program. Viewed as an instance of a “generalized programming problem” whose columns are drawn freely from given convex sets, such a problem can be studied by an appropriate generalization of the duality theorem for linear programming, which permits a sharp distinction to be made between those constraints that pertain only to a part of the problem and those that connect its parts. This leads to a generalization of the Simplex Algorithm, for which the decomposition procedure becomes a special case. Besides holding promise for the efficient computation of large-scale systems, the principle yields a certain rationale for the “decentralized decision process” in the theory of the firm. Formally the prices generated by the coordinating program cause the manager of each part to look for a “pure” sub-program analogue of pure strategy in game theory, which he proposes to the coordinator as best he can do. The coordinator finds the optimum “mix” of pure sub-programs using new proposals and earlier ones consistent with over-all demands and supply, and thereby generates new prices that again generates new proposals by each of the parts, etc. The iterative process is finite.

2,281 citations

01 Jan 1960
TL;DR: In this article, the authors considered the problem of least square feedback control in a linear time-invariant system with n states, and proposed a solution based on the concept of controllability.
Abstract: THIS is one of the two ground-breaking papers by Kalman that appeared in 1960—with the other one (discussed next) being the filtering and prediction paper. This first paper, which deals with linear-quadratic feedback control, set the stage for what came to be known as LQR (Linear-Quadratic-Regulator) control, while the combination of the two papers formed the basis for LQG (Linear-Quadratic-Gaussian) control. Both LQR and LQG control had major influence on researchers, teachers, and practitioners of control in the decades that followed. The idea of designing a feedback controller such that the integral of the square of tracking error is minimized was first proposed by Wiener [17] and Hall [8], and further developed in the influential book by Newton, Gould and Kaiser [12]. However, the problem formulation in this book remained unsatisfactory from a mathematical point of view, but, more importantly, the algorithms obtained allowed application only to rather low order systems and were thus of limited value. This is not surprising since it basically took until theH2-interpretation in the 1980s of LQG control before a satisfactory formulation of least squares feedback control design was obtained. Kalman’s formulation in terms of finding the least squares control that evolves from an arbitrary initial state is a precise formulation of the optimal least squares transient control problem. The paper introduced the very important notion of c ntrollability, as the possibility of transfering any initial state to zero by a suitable control action. It includes the necessary and sufficient condition for controllability in terms of the positive definiteness of the Controllability Grammian, and the fact that the linear time-invariant system withn states,

1,451 citations

Journal ArticleDOI
TL;DR: A method is proposed for reducing large matrices by constructing a matrix of lower order which has the same dominant eigenvalues and eigenvectors as the original system.
Abstract: Often it is possible to represent physical systems by a number of simultaneous linear differential equations with constant coefficients, \dot{x} = Ax + r but for many processes (e.g., chemical plants, nuclear reactors), the order of the matrix A may be quite large, say 50×50, 100×100, or even 500×500. It is difficult to work with these large matrices and a means of approximating the system matrix by one of lower order is needed. A method is proposed for reducing such matrices by constructing a matrix of lower order which has the same dominant eigenvalues and eigenvectors as the original system.

614 citations

Journal ArticleDOI
TL;DR: In this article, a constructive design procedure for the problem of estimating the state vector of a discrete-time linear stochastic system with time-invariant dynamics when certain constraints are imposed on the number of memory elements of the estimator is presented.
Abstract: The paper presents a constructive design procedure for the problem of estimating the state vector of a discrete-time linear stochastic system with time-invariant dynamics when certain constraints are imposed on the number of memory elements of the estimator. The estimator reconstructs the state vector exactly for deterministic systems while the steady-state performance in the stochastic case may be comparable to that obtained by the optimal (unconstrained) Wiener-Kalman filter.

68 citations