Proceedings of the 2009 IEEE International Conference on Systems, Man, and Cybernetics San Antonio, TX, USA - October 2009
Fuzzy Large-Scale Systems Stabilization with Nonlinear State Feedback Controller Iman Zamani
Nasser Sadati
Electrical Engineering Department The Amirkabir University of Technology Tehran, Iran
[email protected]
Electrical and Computer Engineering Department The University of British Columbia Vancouver, BC Canada
[email protected]
Abstract— This paper investigates the stability and stabilization problem of fuzzy large-scale systems in which the system is composed of a number of Takagi-Sugeno fuzzy subsystems with interconnection. Instead of fuzzy parallel distributed compensation (PDC) design, nonlinear state feedback controllers are used in the stabilization of the overall large-scale system. Based on Lyapunov criterion, some conditions are derived under which the whole fuzzy large-scale system is stabilized asymptotically.
subsystem equations
୬
୧୪ ൌ
୧୪ ୧ ሺሻ
۔ሶ ୧ ሺሻ ൌ ୧୨୪ ൫୨ ሺሻ൯ ۖ ୨ୀଵ ە ୨ஷ୧ ሺ ൌ ͳǡʹǡ ڮǡ ሻǡ ሺ ൌ ͳǡʹǡ ڮǡ ሻǡ ሺ ൌ ͳǡʹǡ ڮǡ ୧ ሻሺͳሻ
୧୪ ୧ ሺሻ אԹ୫
is the th rule of ୧ . is the control input of ୧ at time with appropriate length. the State vector of the th subsystem ୧ ሺሻ אԹ୬ ୧ ሺሻ ൌ ൣ୧ଵ ሺሻǡ ୧ଶ ሺሻǡ ڮǡ ୧୬ ሺሻ൧ . the interconnection between th and ୧୨୪ ൫୨ ሺሻ൯ th subsystem in the th rule of ୧ . the number of rules in subsystem ୧ . ୧ the Number of states in subsystem ୧ . ୧ ൫୪୧ ǡ ୧୪ ൯ the system matrices of rule in subsystem ୧ that are controllable. ୧୩ the grade of membership of ୧୩ ሺሻǡ ሺ ൌ ͳǡʹǡ ڮǡ ୧ ሻ. If we utilize the standard fuzzy inference method i.e., singleton, minimum or product fuzzy inference, and centralaverage deffuzzifier, (1) can be inferred as ୰
ሶ ୧ ሺሻ ൌ ρ୪୧ ൫୧ ሺሻ൯ሺ୪୧ ୧ ሺሻ ୧୪ ୧ ሺሻሻ ୪ୀଵ
Consider a fuzzy large-scale system ሺሻ which consists of interconnected subsystems ୧ ሺ ൌ ͳǡʹǡ ڮǡ ሻ . The th fuzzy
978-1-4244-2794-9/09/$25.00 ©2009 IEEE
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୰
ρ୪୧ ሺ୧ ሺሻሻ୧୨୪ ൫୨ ሺሻ൯ ሺʹሻ ୨ୀଵ ୪ୀଵ ୨ஷ୧
where
PRELIMINARIES
978-1-4244-2794-9/09/$25.00 ©2009 IEEE
୪୧ ୧ ሺሻ
where
INTRODUCTION
Stability analysis and stabilization of fuzzy large-scale systems for both discrete and continuous cases were discussed by some researches[1]-[4]. In this work, a fuzzy large-scale system consisting of subsystems ୧ ሺ ൌ ͳǡʹǡ ڮǡ ሻ with interconnection is considered. Each subsystem is decomposed into a set of fuzzy regions, were in each region there is a local dynamic behavior of the subsystems described by a T-S fuzzy model. Motivated from the work in [5] for fuzzy systems, the stability analysis and controller design of continuous-time fuzzy large-scale system using Lyapunov function is considered in this paper. Based on Lyapunov and relevant theory such as Lasalle’s theorem, a nonlinear state feedback controller for each subsystem is designed such that the whole closed loop large-scale system under some sufficient conditions is stabilized asymptotically. These conditions are derived in the form of matrix inequalities. The main advantages of the proposed approach are low computation, optional feedback gains and some merits which are discussed in the next sections. The article is organized as follows; the considered system and problem formulation are discussed in Section II. In Section III, nonlinear state feedback controllers are designed and the main results are proposed. Section IV provides an example to illustrate the applicability of the proposed controller design. Finally, some concluding remarks are given in Section V. II.
୧ଵ ሺሻ୧ଵ ڮ୧୬ ሺሻ୧
ۓ ۖ
Keywords— Fuzzy large-scale system, nonlinear controller, T-S fuzzy systems, stability analysis
I.
୧ is described by the following rule-based
ρ୧ ୪ ൫୧ ሺሻ൯ ൌ
୰
୬ ୧ ୪ , ୪ ൌ ς୩ୀଵ ୧୩ ሺ୧୩ ሺሻሻ Ͳ ൘σ୰ ୨ ୧ ୨ୀଵ ୧
ሶ ୧ ሺሻ ൌ ρ୪୧ ൫୧ ሺሻ൯୩୧ ሺሻ ቆ ୪ୀଵ ୩ୀଵ ୨ୀଵ ୨ஷ୧
୰
and σ୪ୀଵ ρ୧ ୪ ൫୧ ሺሻ൯ ൌ ͳ. ρ୧ ୪ ൫୧ ሺሻ൯ is the firing strength of th rule of the th subsystem. It is assumed that the fuzzy sets are normalized, were two examples of normalized fuzzy sets are shown in Fig. 1. Also it is assumed that ୧୨୪ ൫୨ ሺሻ൯ ൌ ୧୨୪ ୨ ሺሻ, where ୧୨୪ is a constant matrix with appropriate dimension.
1
ͳ ୪୩ ሺሻ
െͳ ୧ ୧
୧୨୪ ୨ ሺሻቇሺሻ where ୧୪୩ ൌ ୪୧ െ ୧୪ ୩୧ . Now, our task is to design ୩୧ in such a way that the whole fuzzy large-scale system is stabilized asymptotically and exponentially. The stability condition of fuzzy large-scale system (6), can be summarized by the following theorem. Theorem 3.1: The fuzzy large-scale system (2) is stabilized asymptotically by the nonlinear state feedback controller (3), if there exist symmetric positive matrices ୧ , positive scalars Ʉ୪୧ and the state gainsଵ୧ such that the following conditions are satisfied:
ȋ
Ȍ
Figure 1. Two types of normalized fuzzy sets; solid line shows the normalized triangular fuzzy sets and dash line shows the other normalized fuzzy sets
III. NONLINEAR STATE FEEDBACK CONTROLLERS In this section, we will consider the controller design for fuzzy large-scale system (3). For stabilization, a nonlinear state feedback controller is considered as follows ୡ
୧ ሺሻ ൌ െ ୩୧ ሺሻ ୩୧ ୧ ሺሻ ሺ͵ሻ ୩ୀଵ
in which
ୡ
ୡ
୩୧ ሺሻ ൌ ͳƬͲ ୩୧ ሺሻ ͳ ୩ୀଵ
ሺ ൌ ͳǡʹǡ ڮǡ ൌ ͳǡʹǡ ڮǡ
୧ ሻሺͶሻ and ୩୧ is the state feedback gain with appropriate dimension. ୩୧ ሺሻ is a nonlinear function defined by (5. a) and (5. b), and
୧ is an optional number for designing the controller in each subsystem. ((5. a) and (5. b) are shown at the end of this page and the next page). It should be noted that if the control law based on PDC was used, then the proof of stabilization by Lyapunov method had much difficulty in the derivation of ሶ ൏ Ͳ . Hence, by proposing the new approach, using combination of (2) and (3), the closed-loop fuzzy subsystem becomes
୪ െ୪ଵ ୧ െɄ୧ ୧ ሺǤ ሻ െ ൏ ͲሺǤ ሻ where ͳ Ͳ ͳ , ሺ ൌ ͳǡʹǡ ڮǡ ୧ ሻǡ ሺ ൌ ͳǡʹǡ ڮǡ ሻ ୧ ൌ ൦ ൪ ڰ Ͳ ͳ ୬ ൈ୬
, ୧୪୩ ୧ ୧ ୧୪୩ ൌ െ୪୩ , ሺ ൌ ͳǡʹǡ ڮǡ
୧ ሻ ୧ ୧ ୧ , Ʉ୧ ൌ ୪ ሺɄ୪୧ ሻ Ͳ, ൌ ଵ୧ ሺሻɄ୧ , Ⱦ୧୨ ൌ ୪ ൫ฮ୧୨୪ ฮ൯ ൫୧ ୨ ൯ , ൌ ൣ୧୨ ൧ ൌ ቐ ଵ െ୧ ሺሻ୧ ɉ୧ Ⱦ୧୨ ് ɉ୧ ൌ ൫ሺ୧ ሻ൯. Proof: Consider the Lyapunov function ሺሻ for the fuzzy large-scale system, given by
ሺሻ ൌ ୧ ሺሻ ൌ ୧ ሺሻ୧ ୧ ሺሻ ሺͺሻ ୧ୀଵ
୧ୀଵ
Now, by taking the derivative of ୧ ሺሻ along the trajectories of th subsystem, we get ሶ୧ ሺሻ ൌ ሶ ୧ ሺሻ୧ ୧ ሺሻ ୧ ሺሻ୧ ሶ ୧ ሺሻሺͻሻ
ଵ୧ ሺሻ
ൌ
ͳ ୰ ୡ ୪ ۓ σ୨ୀଵ ρ ൫ ሺሻ൯ ቀ ൭σ୩ୀଶ ൭σ୪ୀଵ ሺሻ ୪୩ ୡ ୰ ୧ ୧ ሺሻ െ ୧୨ ሺሻቁ൱൱
െͳ ୧ ۖ ͳ ୨ஷ୧ ୪ ۖ ͳെ ǡ ฬρ ൫ ሺሻ൯ ൬ ୧ ሺሻ ୪୦ ୧ ୧ ሺሻ െ ୧୨ ሺሻ൰ฬ ് Ͳ ͳ ۖ ୡ ୰
െ ͳ ୪୦ ሺሻ ୪ σ σ σ ሺ ሻ൯ ሺሻ ୧ ୧ െ ୧୨ ሺሻቁቚ ୦ୀଵ ୪ୀଵ ୨ୀଵ ۖ ୦ୀଵ ୪ୀଵ ୨ୀଵ ቚρ ൫ ቀ െ ͳ ୧ ୨ஷ୧
୨ஷ୧
۔ ୡ ୰ ۖ ͳ ۖͳ ୪ ሺሻ ୪୦ ۖ ฬρ ൫ ሺሻ൯ ൬ ୧ ୧ ሺሻ െ ୧୨ ሺሻ൰ฬ ൌ Ͳ
െͳ ୧ ۖ
୧ ୦ୀଵ ୪ୀଵ ୨ୀଵ ە ୨ஷ୧
ሺͷǤ ሻ
5157
Now since ୨ ሺሻ୧୨୪ ୧ ୧ ሺሻ
୧୨୪ ሺሻ
ൌ (9) can be rewritten as ሶ୧ ሺሻ ୡ
୰
ൌ െ ρ୪୧ ൫୧ ሺሻ൯୩୧ ሺሻ ቆ ୪ୀଵ ୩ୀଵ ୨ୀଵ ୨ஷ୧
୧ ሺሻ
୧ ୧୨୪ ୨ ሺሻሺͳͲሻ
ͳ ሺሻ ୪୩ ୧ ୧ ሺሻ
െͳ ୧
୰
σ୨ୀଵ ρ୪୧ ൫୧ ሺሻ൯ ቀ ൭σ୪ୀଵ
ୡ
ͳ ୪ ሺሻ ୪୩ ୧ ୧ ሺሻ െ ୧୨ ሺሻቁ൱
െͳ ୧
ଶ
ۇ ۇ ۊۊ ୧ஷ୨ ۋۋ െ ۈ ۈ ͳ ୰ ۈ ۈୡ ୪ ୧ ሺሻ ୪୦ ୧ ሺሻ െ ୧୨୪ ሺሻቁቚۋۋ ୩ୀଶ σ୦ୀଵ σ୪ୀଵ σ୨ୀଵ ቚρ୧ ൫ ୧ ሺሻ൯ ቀ ୧
െͳ ୨ஷ୧ یی ۉ ۉ ሺͳ͵ሻ Therefore,
ሶሺሻ ൌ ሶ୧ ሺሻ
െ ୧୨୪ ሺሻቇሺͳͳሻ
୧ୀଵ ୰
୰
ۇ ͳ ۇ ଵ ሺሻ ۈ ρ୪୧ ൫୧ ሺሻ൯ ቆ ൌ െۈ ሺሻ ୪ଵ ୧ ୧ ሺሻ ۈ୧
െͳ ୧ ۉ
ۉ
ͳ ۇ െ ଵ୧ ሺሻ ۈ ρ୪୧ ൫୧ ሺሻ൯ ቆ ሺሻ ୪ଵ ୧ ୧ ሺሻ
െͳ ୧
୧ୀଵ
ۉ
୪ୀଵ ୨ୀଵ ୨ஷ୧
୪ୀଵ ୨ୀଵ ୨ஷ୧
െ ୧୨୪ ሺሻቇ൲ ۊ െ ୧୨୪ ሺሻቇ൲ۋ ۋ ی
୰
ୡ
ൌ
ͳ ۇ ۇ െ ۈ ୩୧ ሺሻ ۈ ρ୪୧ ൫୧ ሺሻ൯ ൬ ሺሻ ୪୩ ୧ ୧ ሺሻ
െͳ ୧ ୩ୀଶ
ۉ
ۉ െ
୧ୀଵ
୪ୀଵ ୨ୀଵ ୨ஷ୧
୰
୪ୀଵ
ۉ
୪ୀଵ ୨ୀଵ ୨ஷ୧
ۊ
ی
୰
Since σ୪ୀଵ ì୪୧ ൫୧ ሺሻ൯ ൌ ͳ and Ʉ୧ ൌ ୪ ሺɄ୪୧ ሻ, we can conclude that
୰
ۇ ͳ ۇ ଵ ሺሻ ۈ ρ୪୧ ൫୧ ሺሻ൯ ቆ ሺሻ ୪ଵ ሶ୧ ሺሻ ൌ െ ۈ ୧ ୧ ሺሻ ۈ୧
െͳ ୧ ۉ
୰
െ ρ୪୧ ൫୧ ሺሻ൯ ୧୨୪ ሺሻ൲ ሺͳͶሻ
୧୨୪ ሺሻ൰൲ ۋሺͳʹሻ
So,
ۇ
െ ଵ୧ ሺሻ ۈ ρ୪୧ ൫୧ ሺሻ൯ ቀ୧ ሺሻ ୪ଵ ୧ ୧ ሺሻቁ
ۉ
୰
୰
െ ρ୪୧ ൫୧ ሺሻ൯ ቀ୧ ሺሻ ୪ଵ ୧ ୧ ሺሻቁ
୪ୀଵ ୨ୀଵ ୨ஷ୧
୪ୀଵ
ۊ െ ୧୨୪ ሺሻቇ൲ۋ ۋ
െߟ ԡ୧
ԡଶ
ρ୪୧ ൫୧ ሺሻ൯ ୪ୀଵ
ൌ െߟ ԡ୧ ԡଶ ሺͳͷሻ
also
ی ୩୧ ሺሻ
ͳ ୰ ୪ σ୪ୀଵ σ୨ୀଵ ρ୪୧ ൫୧ ሺሻ൯ ቀ ሺሻ ୪୩ ୡ ୰ ۓ ୧ ୧ ሺሻ െ ୧୨ ሺሻቁ
െͳ ୧ ͳ ୨ஷ୧ ୪ ۖ ǡ ฬρ୪୧ ൫୧ ሺሻ൯ ൬ ୧ ሺሻ ୪୦ ୧ ୧ ሺሻ െ ୧୨ ሺሻ൰ฬ ് Ͳ ͳ ۖ ୡ ୰
െ ͳ ୪ ୪୦ ୪ ୦ୀଵ ୪ୀଵ ୨ୀଵ ۖ σ୦ୀଵ σ୪ୀଵ σ୨ୀଵ ቚρ୧ ൫୧ ሺሻ൯ ቀ െ ͳ ୧ ሺሻ ୧ ୧ ሺሻ െ ୧୨ ሺሻቁቚ
ൌ
୨ஷ୧
୨ஷ୧
۔ ୡ ୰ ۖͳ ͳ ୪ ۖ ቤρ୪୧ ൫୧ ሺሻ൯ ቆ ሺሻ ୪୦ ୧ ୧ ሺሻ െ ୧୨ ሺሻቇቤ ൌ Ͳ
െ ͳ ୧
ۖ ୧ ୦ୀଵ ୪ୀଵ ୨ୀଵ ە ୨ஷ୧ ሺͷǤ ሻ
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୰
Remark 3.1: Considering (7. b), we can use Sylvester criterion [7] for positive definite matrices. It is easy to show that these conditions are independent of ଵ୧ ሺሻሺ ൌ ͳǡʹǡ ڮǡ ሻ and we can get Ʉ୧ ሺ ൌ ͳǡʹǡ ڮǡ ሻ easily. Exponential stability is another important subject in stability analysis, which is concerned with asymptotic stability and decay rate. To treat the exponential stability analysis, an approach is often adopted, namely exponential stability theorem [8].
ρ୪୧ ൫୧ ሺሻ൯ ୧୨୪ ሺሻ ୪ୀଵ
୰
ൌ ρ୪୧ ൫୧ ሺሻ൯ ൬୨ ሺሻ୧୨୪ ୧ ୧ ሺሻ ୧ ሺሻ ୧ ୧୨୪ ୨ ሺሻ൰ ୪ୀଵ
୧ ԡ୧ ୧ ԡฮ୧୨୪ ୨ ฮ൫୧ ୨ ൯
୧ ට൫୧୨୪ ୨ ൯ ୧୨୪ ୨ ටɉ୫ୟ୶ ൫୧ ୧ ൯ԡ୧ ԡฮ୨ ฮ൫୧ ୨ ൯ ୧ ԡ୧ ԡฮ୨ ฮԡ୧ ԡଶ ൫ฮ୧୨୪ ฮ൯ ൫୧ ୨ ൯ሺͳሻ ୪
Now based on (15) and (16), it is clear that ሶሺሻ
From the proposed method and the theorem, it is easy to conclude that I. This theorem and the proposed method are innovative, usable and applicable with low amount of computation. This method does not include some restrictive conditions such as norm bounded, and also this is not a pre-designed method, i.e. it is not necessary to check the stability for pre-designed system that requires trial-anderror for controller design. ଵ ୩ II. ሺǤ ሻ is checked only for ୪ଵ ୧ and ୧ . Therefore ୧ is optional ሺ ് ͳሻ and doesn’t affect the stability. The number of state feedback gains which must be designed decreases drastically. Based on the authors experience, ୩୧ ሺ ് ͳሻaffect the type of responses i.e., the amount of oscillation, damping, settling time, etc. Therefore, the designer has more flexibility in designing.
ۇ ଵ୧ ሺሻ ۈെߟ ԡ୧ ԡଶ ୧ୀଵ
ۉ
୧ ԡ୧ ԡฮ୨ ฮԡ୧ ԡଶ ൫ฮ୧୨୪ ฮ൯ ൫୧ ୪
୨ୀଵ ୨ஷ୧
୨ ሻ ۊሺͳሻ ۋ ی
IV. ILLUSTRATIVE EXAMPLE
Therefore,
ሶሺሻ ଵ୧ ሺሻ ቌെߟ ԡ୧ ԡଶ ݎ ԡݔ ԡฮݔ ฮߣ ߚ ቍ ୧ୀଵ
ୀଵ
ሺͳͺሻ where
Here, an example is presented to verify the results of the proposed stabilization procedure of fuzzy large-scale systems. We consider the stability of the following fuzzy large-scale system composed of two subsystems described by • Subsystem ଵ ǣ
ԡܲ ԡଶ ൌ ߣ ൌ ߣ௫ ሺܲ ሻǡߚ ൌ ݉ܽݔ ൫ฮܥ ฮ൯ ൫݊ ݊ ൯ Following [6], the right-hand side of (18) is quadratic in terms of ൛ԡଵ ԡ ԡଶ ԡ ڮฮ ฮൟ, which can be rewritten as െ ሺͳͺሻ ԡ ԡ ۍଵ ې ԡଶ ԡ ۑሺͳͻሻ ൌ െൣԡଵ ԡ ԡଶ ԡ ڮฮ ฮ൧ ൈ ൈ ێ ۑ ڭ ێ ۏฮ ฮ ے Now if (15) and (18) hold, then we get ሶሺሻ ൏ Ͳ. Now, if ଵ ୩୧ ൫୧ ሺሻ൯ ൌ , then ୡ ͳ ୪ ρ୪୧ ൫୧ ሺሻ൯ ൬ ሺሻ ୪୩ ୧ ୧ ሺሻ െ ୧୨ ሺሻ൰ ൌ Ͳ
െͳ ୧ As it can be seen, the above procedure is more simpler and it can be easily resulted that ሶሺሻ Ͳ. With using the Laslle’s principle, since the limit set includes only the trivial trajectory ሺሻ Ͳ ؠ, and since the limit set only includes the origin, the origin is asymptotically stable. Thus, the proof is completed.
ͳǣଵଵ ሺሻଵଶ ଵଶ ሺሻଵଵ ሶ ଵ ሺሻ ൌ
ଵଵ ଵ ሺሻ
ଵଵ ଵ ሺሻ
ଶ ଵ ଵ୨ ୨ ሺሻ ୨ୀଵ ୨ஷଵ
ʹǣଵଵ ሺሻଵଶ ଵଶ ሺሻଵଶ
ଶ
ଶ ሶ ଵ ሺሻ ൌ ଶଵ ଵ ሺሻ ଵଶ ଵ ሺሻ ଵ୨ ୨ ሺሻ ୨ୀଵ ୨ஷଵ
͵ǣଵଵ ሺሻଵଵ ଵଶ ሺሻଵଵ ሶ ଵ ሺሻ ൌ
ଷଵ ଵ ሺሻ
ଵଷ ଵ ሺሻ
ଶ ଷ ଵ୨ ୨ ሺሻ ୨ୀଵ ୨ஷଵ
Ͳ ͳ ଶ Ͳ ͳ in which ଵଵ ൌ ቂ ቃ ǡ ଵ ൌ ቂ ቃǡ ଷଵ ൌ െͳ Ͳ െͳǤʹ ͳ Ͳ ͵ ͲǤͳ ͳǤ Ͳ ቂ ቃ , ଵଵ ൌ ቂ ቃ ǡ ଵଶ ൌ ቂ ቃ ǡ ଵଷ ൌ ቂ ቃǤ Moreover, the ͳ Ͳ Ͳ Ͳ ͳǤʹ interconnection matrices among the two subsystems are given
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ͲǤͳ Ͳ ͲǤͲͳ ͲǤͲͳ ଵ ଷ by ଵଶ ൌቂ ቃ ǡ ଶ ൌ ቂ ቃ , ଵଶ ൌ െͲǤ Ͳ ଵଶ െͲǤ Ͳ െͲǤͳ ͲǤʹͳ ୪ ቂ ቃ. Also Ⱦଵଶ ൌ ୪ ൫ฮଵଶ ฮ൯ሺଵ ଶ ሻ െͲǤ Ͳ ଵ ԡǡ ԡ ଶ ԡǡ ԡ ଷ ԡሽ ൈ ሺଵ ଶ ሻ ൌ ͲǤͲͻͶ , ൌ ሼԡଵଶ ଵଶ ଵଶ ଵଵ ሺሻ ଵ ൌ ͵ and ଵ ሺሻ ൌ ൨ . The normalized membership ଵଶ ሺሻ functions of subsystem 1 are shown in Fig. 2. •
becomes stable. For each subsystem, let us set
ଵ ൌ
ଶ ൌ ʹ. By using the above procedure, we can have ଵଵ ൌ ሾʹǤͲ͵Ͷǡ െͲǤͳͶͷʹሿ, ͷǤͷͶʹͲ ͲǤ͵ͻ͵ ൌቂ ቃ ൌ ିଵ Ͳ ͲǤ͵ͻ͵ ʹǤͺͳ͵ͺ which implies Ʉଵ ൌ ሺͲǤͳͺሻଶ ൌ ሺɉ୫୧୬ ሺሻሻଶ ൌ ͲǤͲ͵ͳͻǡ ɉ୫ୟ୶ ሺሻ ൌ ͲǤ͵ʹ. Also ଶ
Subsystem ଶ ǣ
ͳǣଶଵ ሺሻଶଵ ଶଶ ሺሻଶଵ
ଶ
ଵ ሶ ଶ ሺሻ ൌ ଵଶ ଶ ሺሻ ଶଵ ଶ ሺሻ ଶ୨ ୨ ሺሻ ୨ୀଵ ୨ஷଶ
ʹǣଶଵ ሺሻଶଶ ଶଶ ሺሻଶଵ
ଶ
ଶ ሶ ଶ ሺሻ ൌ ଶଶ ଶ ሺሻ ଶଶ ଶ ሺሻ ଶ୨ ୨ ሺሻ ୨ୀଵ ୨ஷଶ
Ͳ ͳ Ͳ Ͳ ͳǤͷ ଶ in which ଵଶ ൌ ቂ ቃ ǡ ଶ ൌ ቂ ቃ , ଶଵ ൌ ቂ ቃ ǡ ଶଶ ൌ ʹ Ͳ ͲǤͷ Ͷ Ͳ ͲǤͳ ቂ ቃ. Moreover, the interconnection matrices among the two Ͳ subsystems are given as ͲǤͳ ͲǤͳ ଵ Ͳ Ͳ ଶ ଶଵ ቂ ቃǡ ଶଵ ൌቂ ቃ Ͳ Ͳ ͲǤͳ ͲǤͳ also Ⱦଶଵ ୪ ଵ ԡǡ ԡ ଶ ԡሽሺ ൌ ൫ฮଶଵ ฮ൯ ሺଶ ଵ ሻሼԡଶଵ ଶ ଵ ሻ ଶଵ ୪
ሺሻ ൌ ͲǤʹͲͲͲ, ଶ ൌ ʹ and ଶ ሺሻ ൌ ଶଵ ൨. ଶଶ ሺሻ The normalized membership functions of subsystem 2 are shown in Fig. 3. First, we design a nonlinear state feedback controller for each subsystem so to make the fuzzy large-scale system
൫ɉ ሺ ሻ൯ െଵ ɉȾଵଶ Ʉଶ ൌ ʹͶǤͲͻͷͻ ฺ ቤ ୫୧୬ ୧ ቤ െଶ ɉȾଶଵ Ʉଶ ͲǤͲ͵ͳͻ െ͵ ൈ ͲǤ͵ʹ ൈ ͲǤͲͻͶ ฬͲ ൌฬ െʹ ൈ ͲǤ͵ʹ ൈ ͲǤʹͲͲͲ Ʉଶ and the state feedback gain is obtained as ଵଶ ൌ ሾͷǤͳͺʹͶ͵Ǥͷͻ͵Ͳሿ . Since ଵଶ ଶଶ are optional, by choosingଵଶ ൌ ሾͳǡͳሿ and ଶଶ ൌ ሾͲǤͲͳǡͲǤͲͳሿ, the procedure is completed. Hence, the overall closed-loop fuzzy large-scale system is stabilized asymptotically. The complete simulation results with initial condition ଵ ሺͲሻ ൌ ሾͲǤ͵ǡ െͲǤͷሿ , ଶ ሺͲሻ ൌ ሾͲǤͺǡ െͲǤͻሿ are shown in Figs. 4-7, respectively. Also for comparison, the responses without controllers (୧ ሺሻ Ͳ ؠሺ ൌ ͳǡʹሻ) are shown.
V. CONCLUSION In this paper, a new approach is used to stabilize the fuzzy large-scale systems in sense of Lyapunov Stability. Under some sufficient conditions, the nonlinear state feedback controllers are developed to stabilize the fuzzy large-scale system exponentially. Since in the real world, almost all systems are complex, the extracted results in this paper can be widely used in the practical applications. An example was also presented to demonstrate the applicability and effectiveness of the proposed approach.
1
1
0.9
0.9
ܯଵଵ
0.8 0.7
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Ǥ
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ܯଵଶ
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Figure 3. Membership function of subsystem ࡿ
Figure 2. Membership functions of subsystem ࡿ
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2 1.5
3
ݔଶଶ ሺݐሻ
ݔଶଵ ሺݐሻ
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Ǧ Figure 4. Response ݔଵଵ ሺݐሻ of subsystem1 when ݑሺݐሻ ( Ͳ ؠdash-line) and with controller (solid-line)ݔଵଵ ሺͲሻ ൌ ͲǤ͵
Figure 5. Response ଵଶ ሺሻ of subsystem1 when ሺሻ ( Ͳ ؠdash-line) and with controller (solid-line) ଵଶ ሺͲሻ ൌ െͲǤͷ
1
1
0.5
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0
ݔଵଵ ሺݐሻ
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ݔଵଶ ሺݐሻ -0.5
-0.5 -1
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-1.5
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Figure 6. Response ݔଶଵ ሺݐሻ of subsystem1 whenݑሺݐሻ ( Ͳ ؠdash-line) and with controller (solid-line)ݔଶଵ ሺͲሻ ൌ ͲǤͺ
REFERENCES
[2] [3] [4]
[5]
[6] [7] [8]
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W. J. Wang and W. W. Lin “Decentralized PDC for large-scale T–S fuzzy systems,” IEEE Trans. Fuzzy Syst., vol. 13, no. 6, Dec 2005. W. J. Wang and L. Luoh “Stability and stabilization of fuzzy large-scale systems “IEEE Trans. Fuzzy Syst., vol. 12, no. 3, June 2004. F. H. Hsiao and J. D. Hwang “Stability analysis of fuzzy large-scale systems,” IEEE Trans. Syst., Man, Cybern. vol. 32, no. 1, Feb 2001. H. Zhang, C. Li, and X. Liao “Stability Analysis and H Controller Design of Fuzzy Large-Scale Systems Based on Piecewise Lyapunov Functions,” IEEE Trans. Syst., Man, Cybern. B, Cybern., vol. 36, no. 3, June 2006. H. K. Lam, F. H. Leung, and P. K. S. Tam,˝ Nonlinear state feedback controller for nonlinear systems: stability analysis and design based on fuzzy plant model,˝ IEEE Trans. Fuzzy Syst., vol. 9, no. 4, Aug 2001. H. K. Khalil, Nonlinear Systems, 3rd ed. Upper saddle River, NJ: Prentice-Hall, 2002. K. Ogata, Discrete Time Control Systems. Published 1995, Prentice Hall. M. Bodson., Stability, Convergence, and Robustness of Adaptive Systems, Doctoral thesis, College of Engineering, University of California, Berkeley (1986).
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Figure 7. Response ݔଶଶ ሺݐሻ of subsystem1 when ݑሺݐሻ ( Ͳ ؠdash-line) and with controller (solid-line)ݔଶଶ ሺͲሻ ൌ െͲǤͻ