CN105607482A - T-S bilinear model based decentralized control method of nonlinear association large-system - Google Patents

T-S bilinear model based decentralized control method of nonlinear association large-system Download PDF

Info

Publication number
CN105607482A
CN105607482A CN201610050819.8A CN201610050819A CN105607482A CN 105607482 A CN105607482 A CN 105607482A CN 201610050819 A CN201610050819 A CN 201610050819A CN 105607482 A CN105607482 A CN 105607482A
Authority
CN
China
Prior art keywords
sigma
idm
epsiv
jim
notequal
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Pending
Application number
CN201610050819.8A
Other languages
Chinese (zh)
Inventor
张果
赵艳花
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Individual
Original Assignee
Individual
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Individual filed Critical Individual
Priority to CN201610050819.8A priority Critical patent/CN105607482A/en
Publication of CN105607482A publication Critical patent/CN105607482A/en
Pending legal-status Critical Current

Links

Classifications

    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05BCONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
    • G05B13/00Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion
    • G05B13/02Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric
    • G05B13/04Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric involving the use of models or simulators
    • G05B13/042Adaptive control systems, i.e. systems automatically adjusting themselves to have a performance which is optimum according to some preassigned criterion electric involving the use of models or simulators in which a parameter or coefficient is automatically adjusted to optimise the performance

Landscapes

  • Engineering & Computer Science (AREA)
  • Health & Medical Sciences (AREA)
  • Artificial Intelligence (AREA)
  • Computer Vision & Pattern Recognition (AREA)
  • Evolutionary Computation (AREA)
  • Medical Informatics (AREA)
  • Software Systems (AREA)
  • Physics & Mathematics (AREA)
  • General Physics & Mathematics (AREA)
  • Automation & Control Theory (AREA)
  • Electrical Control Of Air Or Fuel Supplied To Internal-Combustion Engine (AREA)

Abstract

The invention discloses a T-S bilinear model based decentralized control method of a nonlinear association large-system. According to a Lyapunov stability analysis theory and a parallel distribution compensation algorithm, n asymptotic stability sufficient condition related with a time lag of a closed-loop association large system is obtained, a decentralized controller can be obtained through solutions of a group of linear matrix inequalities, and the design of a corresponding decentralized fuzzy controller can be converted into a convex optimization problem restricted to the linear matrix inequalities (LMIs). Finally, simulation examples verify the effectiveness of the method brought forward by the invention.

Description

A kind of decentralized control method of the Design for Large-Scale Interconnected Nonlinear Systems based on T-S bilinear model
Technical field
The invention belongs to and close the United Nations General Assembly's systems technology field, relate to a kind of nonlinear dependence the United Nations General Assembly based on T-S bilinear modelThe decentralized control method of system.
Background technology
Close the United Nations General Assembly's system ubiquity in actual life, as: power system, nuclear process, economic system, computerNetwork system etc. The existing a lot of achievements of stability analysis for the large system of linear correlation emerge, but about non-linear correlationLarge systematic research achievement is also fewer. For these large scale systems, centralized Control will make whole control system information exchangeComplex, thus cause the system integration and operating cost to improve, and the reliability of system reduces. From the real-time of system, reliableProperty and the aspect such as economy consider, there is processing the complicated decentralized control method that closes the United Nations General Assembly's system in 20 century 70s.
Fuzzy control based on T-S model is one of effective ways of research nonlinear system, is closing dividing of the United Nations General Assembly's systemThe existing a lot of achievements in loose control aspect emerge. Prior art has the stable control of having studied the large system of a class Fuzzy Correlation;Have for a class and proposed Fuzzy decentralized robust control method with the Design for Large-Scale Interconnected Nonlinear Systems of multiple time delay; Study non-lineThe dispersion H of Xing Guan the United Nations General Assembly systemFollow the tracks of and control; Have and proposed the shape of a class with the uncertain Design for Large-Scale Interconnected Nonlinear Systems of time lagThe decentralised control of state feedback. But the consequent part of noticing above-mentioned T-S model fuzzy rule is all a linear model.
Bilinear system is the simplest nonlinear system of one, and it can describe biology, chemical industry, social warp very naturallyMany phenomenons in the complication systems such as Ji, population. The equation of describing population change is a good example. Population change speedFor:Wherein: v is that birth rate deducts the death rate.
Consider the validity of T-S model and the feature of bilinear system, the fuzzy control based on T-S bilinear model is just drawnPlay scholar's concern. Different with common T-S model, the consequent part of Fuzzy Bilinear control system fuzzy rule is oneBilinear model. Prior art has the kinds of robust control problems of having studied a class Continuous Fuzzy bilinear system, and result is pushed awayExtensively arrive the Continuous Fuzzy bilinear system of state with time lag. There is the robust control of having studied a class discrete-time fuzzy bilinear systemProblem processed. But close the United Nations General Assembly's systematic research or blank for Fuzzy Bilinear.
Summary of the invention
The object of this invention is to provide a kind of decentralised control side of the Design for Large-Scale Interconnected Nonlinear Systems based on T-S bilinear modelMethod, the large system of fuzzy time-delay bilinear interconnection being made up of S subsystem, to each subsystem design local state feedbackController, making closed loop close the United Nations General Assembly's system is Asymptotic Stability.
The technical solution adopted in the present invention is to carry out according to following steps:
The large system of design fuzzy time-delay bilinear interconnection;
One class is by S subsystem Ωi, i=1,2 ..., S composition band becomes Fuzzy Bilinear pass the United Nations General Assembly system of time lag sometimesΩ, i subsystem ΩiCan be expressed as:
R i m if ξ i 1 ( t ) is F i 1 m and . . . and ξ iv i is F iv i m then x . i ( t ) = A im x i ( t ) + B im u i ( t ) + N im x i ( t ) u i ( t ) + A idm x i ( t - d i ( t ) ) + B idm u i ( t - d i ( t ) ) + N idm x i ( t - d i ( t ) ) u i ( t - d i ( t ) ) + Σ j = 1 , j ≠ i S C jim x j ( t ) x i ( t ) = φ i ( t ) t = - τ i 0 m = 1,2 , . . . , r i - - - ( 1 )
Wherein:I subsystem ΩiFuzzy rule, s is the number of subsystem; M={1,2,...,ri},riIt is the number of the fuzzy rule of i subsystem;ξj(t),j=1,2,...,viIt is respectively fuzzy setWith prerequisite variable;ui(t) ∈ R is respectively state vector and control inputs; Aim,Aidm,Nim It is known sytem matrix;That j subsystem is to i sonThe correlation matrix of system; di(t) being the time lag item of system, is continuously differentiable function and satisfied 0≤di(t)≤τiAnd di(t)≤αi<1;
By single-point obfuscation, the average reverse gelatinizing method in product reasoning and center, the overall model of Fuzzy control systemFor:
x · i ( t ) = Σ m = 1 r i h im ( ξ i ( t ) ) [ A im x i ( t ) + B im u i ( t ) + N im x i ( t ) u i ( t ) + A idm x i ( t - d i ( t ) ) + N idm x i ( t - d i ( t ) ) u i ( t - d i ( t ) ) + B idm u i ( t - d i ( t ) ) + Σ j = 1 , j ≠ i S C jim x j ( t ) ] - - - ( 2 )
Wherein:μimji(t)) be ξj(t) existIn membership function; Suppose ωimi(t))≥0,By himi(t) definition) is known:Note respectively h by abridgingimi(t)),xi(t-di(t)),ui(t-di(t)) be him,xid(t),uid(t);
According to parallel distributed backoff algorithm, consider local feedback control device:
if ξ i 1 ( t ) is F i 1 m and . . . and ξ iv i ( t ) is F iv i m then u i ( t ) = ρ i K im x i ( t ) 1 + x i T K im T K im x i = ρ i sin θ im = ρ i cos θ im K im x i ( t ) - - - ( 3 )
Here:Controller gain to be asked, ρi> 0 is scalar undetermined,
Can similarly be obtained by (3):
Here:
i=1,2,...,S;m=1,2,...,ri
Overall decentralised control rule can be expressed as:
Under the effect of control law (5), the equation of whole closed-loop system can be expressed as:
x · i ( t ) = Σ m , n = 1 r i h im h in [ Λ i , mn x i ( t ) + Λ i , dmn x id ( t ) + Σ j = 1 , j ≠ i s C jim x j ( t ) ] - - - ( 6 )
Here: Λi,mn=AimisinθinNimicosθinBimKin
Theorem 1: for given normal number ρi,αi, i=1,2 ..., S, if for given normal number ε1i,ε2i,i=1,2 ..., there is positive definite symmetric matrices P in Si>0,Ri> 0, i=1,2 ..., S and matrix Kim,i=1,2,...,S;m=1,2,...,riMeet MATRIX INEQUALITIES (7), Ze Guan the United Nations General Assembly system (5) is asymptotically stable;
Фi,mm<0i=1,2,...,S;m=1,2,...,ri(7a)
Фi,mni,nm<0i=1,2,...,S;1≤m<n≤ri(7b)
Wherein:
φ i , 1 mn = A im T P i + P i A im + ( ϵ 1 i + ϵ 2 i ) ρ i 2 P i P i + ϵ 1 i - 1 N im T N im + ϵ 1 i - 1 ( B im K in ) T ( B im K in ) + Σ j = 1 , j ≠ i S P i C jim C jim T P i + ( S - 1 ) I + R i ,
φ i , 2 mn = ϵ 2 i - 1 N idm T N idm + ϵ 2 i - 1 ( B idm K in ) T ( B idm K in ) - ( 1 - α i ) R i .
Prove: choose following Lyapunov function:
V ( t ) = Σ i = 1 S V i ( t ) = Σ i = 1 S [ x i T ( t ) P i x i ( t ) + ∫ i - d i ( i ) i x i T ( s ) R i x i ( s ) ds ] - - - ( 8 )
Along the path of system (6), to V (t) differentiate, can obtain:
V . ( t ) = Σ i = 1 S Σ i = 1 r i h im h in [ x . i T ( t ) P i x i ( t ) + x i T ( t ) P i x . i ( t ) + x i T ( t ) R i x i ( t ) - ( 1 - d . i ) x id T ( t ) R i x id ( t ) ] ≤ Σ i = 1 S Σ m , n = 1 r i h im h in [ x i T ( t ) ( Λ i , mn T P i + P i Λ i , mn ) x i ( t ) + x id T ( t ) Λ i , dmn T P i x i ( t ) + x i T ( t ) P i Λ i , dmn x id ( t ) + Σ j = 1 , j ≠ i S x j T ( t ) C jim T P i x i ( t ) + x i T ( t ) P i Σ j = 1 , j ≠ i s C jim x j ( t ) + x i T ( t ) R i x i ( t ) - ( 1 - α i ) x id T ( t ) R i x id ( t ) - - - ( 9 )
Consider following formula, and can be obtained by lemma 1:
Λ i , mn T P i + P i Λ i , mn = A im T P i + P i A im + ( ρ i sin θ in N im ) T P i + P i ( ρ i sin θ in N im ) + ( ρ i cos θ in B im K in ) T P i + P i ( ρ i cos θ in B im K in ) ≤ A im T P i + P i A im + ϵ 1 i ρ i 2 P i P i + ϵ 1 i - 1 N im T N im + ϵ 1 i - 1 ( B im K in ) T ( B im K in ) , x id T ( T ) Λ i , dmn T P i x i ( t ) + x i T ( t ) P i Λ i , dmn x id ( t ) ≤ x id T ( t ) A idm T P i x i ( t ) + x i T ( t ) P i A idm x id ( t ) + x i T ( t ) ϵ 2 i ρ i 2 P i P i x i ( t ) + x id T ( t ) ϵ 2 i - 1 N idm T N idm x id ( t ) + x id T ( t ) ϵ 2 i - 1 ( B idm K in ) T ( B idm K in ) x id ( t ) , - - - ( 10 )
In like manner can obtain:
Σ i = 1 S Σ m = 1 r i h im [ Σ j = 1 , j ≠ i S x j T ( t ) C jim T P i x i ( t ) + x i T ( t ) P i Σ j = 1 , j ≠ i s C jim x j ( t ) ] = Σ i = 1 S Σ m = 1 r i h im [ x 1 T ( t ) C 1 im t P i x i ( t ) + . . . + x i - 1 T ( t ) C i - 1 im T P i x i ( t ) + x i + 1 T ( t ) C i + 1 im T P i x i ( t ) + . . . + x S T ( t ) C Sim T P i x i ( t ) + x i T ( t ) P i C 1 im x 1 ( t ) + . . . + x i T ( t ) P i C i - 1 im x i - 1 ( t ) + x i T ( t ) P i C i + 1 im x i + 1 ( t ) + . . . x i T ( t ) P i C Sim x S ( t ) ] ≤ Σ i = 1 S Σ m = 1 r i h im [ x i T ( t ) P i Σ j = 1 , j ≠ i S C jim C jim T P i x i ( t ) + Σ j = 1 , j ≠ i S x j T ( t ) x j ( t ) ] = Σ i = 1 S Σ m = 1 r i h im [ x i T ( t ) P i Σ j = 1 , j ≠ i S C jim C jim T P i x i ( t ) + ( S - 1 ) x i T ( t ) x i ( t ) ] - - - ( 11 )
(8) are brought into in (9), (10), (11), and noteCan obtain:
V . ( t ) &le; &Sigma; i = 1 S &Sigma; m , n = 1 r i h im h in &eta; i T ( t ) &Phi; i , mn x i ( t ) &eta; i ( t ) = &Sigma; i = 1 S [ &Sigma; m = 1 r i h im 2 &eta; i T ( t ) &Phi; i , mm &eta; i ( t ) + &Sigma; 1 = m < n r i h im h in &eta; i T ( t ) ( &Phi; i , mn + &Phi; i , nm ) &eta; i ( t ) ] - - - ( 12 )
Known according to (7) in theorem 1So known pass the United Nations General Assembly's system (6) is asymptotically stable;
Consider that (7) in theorem 1 are bilinearity MATRIX INEQUALITIES, can not directly be solved by LMI tool box, two-wireProperty MATRIX INEQUALITIES converts LMI to, provides the method for designing of controller:
Theorem 2: for given normal number αi,ρi, i=1,2 ..., s, if for given normal number ε1i,ε2i,i=1,2 ..., s exists matrixWith matrix Gim,i=1,2,...,S;m=1,2,...,riMeet MATRIX INEQUALITIES (13), Ze Guan the United Nations General Assembly system (5) is Asymptotic Stability, and controller gain is: Kim=GimZ-1,i=1,2,...,S;m=1,2,...,ri.;
T i , m * * * * * * Z i A idm T - ( 1 - &alpha; i ) R &OverBar; i * * * * * Z i 0 - I s - 1 * * * * N im Z i 0 0 - &epsiv; 1 i I * * * B im G im 0 0 0 - &epsiv; 1 i I * * 0 N idm Z i 0 0 0 - &epsiv; 2 i I * 0 B idm G im 0 0 0 0 - &epsiv; 2 i I < 0 , i = 1,2 , . . . , S ; m = 1,2 , . . . , r i - - - ( 13 a )
T i , m + T i , n * * * * * * Z i A idm T + Z i A idm T - 2 ( 1 - &alpha; i ) R &OverBar; i * * * * * 2 Z i 0 - 2 I s - 1 * * * * ( NZ ) i , mn &OverBar; 0 0 - t 55 * * * ( BG ) i , mn &OverBar; 0 0 0 - t 66 * * 0 ( N d Z ) i , mn &OverBar; 0 0 0 - t 77 * 0 ( B d G ) i , mn &OverBar; 0 0 0 0 - t 88 < 0 , i = 1,2 , . . . , S ; 1 &le; m < n &le; r i - - - ( 13 b )
Here:
( NZ ) i , mn &OverBar; = N im Z i N in Z i , ( BG ) i , mn &OverBar; = B im G in B in G im , ( N d Z ) i , mn &OverBar; = N idm Z i N idn Z i , ( B d G ) i , mn &OverBar; = B idm G in B idn G im ,
t44=t55=diag{ε1iI,ε1iI},t66=t77=diag{ε2iI,ε2iI}.
Prove: chooseAnd noteBy Kim=GimZ-1Known, Mim=KimZ;
(13a) taken advantage of to diag{P in left and right simultaneouslyi,Pi, I, I, I, I, I} can obtain:
P i T i , m P i * * * * * * A idm T P i - ( 1 - &alpha; i ) R i * * * * * I 0 - I s - 1 * * * * N im 0 0 - &epsiv; 1 i I * * * B im K im 0 0 0 - &epsiv; 1 i I * * 0 N idm 0 0 0 - &epsiv; 2 i I * 0 B idm K im 0 0 0 0 - &epsiv; 2 i I < 0 , i = 1,2 , . . . , S ; m = 1,2 , . . . , r i - - - ( 14 a )
Set up and can be equivalent to (7a) establishment by Schur complement fixed reason known (14a); Same reason (13b) can be derived (7b)Vertical; Known under designed controller by theorem 1 like this, Fuzzy Bilinear is closed the United Nations General Assembly's system Asymptotic Stability.
The invention has the beneficial effects as follows that the band that a class is described by T-S bilinear model becomes the non-linear correlation of time lag sometimesLarge system, has studied its dispersity feedback control problem. Theoretical and the parallel distributed compensation according to Lyapunov stability analysisAlgorithm, has obtained closed loop and has closed the adequate condition of the United Nations General Assembly's system delay dependent asymptotic stability. Decentralized controller can be by one group of linear momentThe solution of battle array inequality obtains. The design of adopting corresponding Decentralized Fuzzy controller can change into one and be subject to LMI(LMI) the protruding optimization problem of constraint. Finally, emulation numerical example has been verified the validity of institute's extracting method.
Brief description of the drawings
Fig. 1 is the condition responsive curve map of subsystem 1.
Fig. 2 is the condition responsive curve map of subsystem 2.
Fig. 3 controls curve map.
Detailed description of the invention
Below in conjunction with the drawings and specific embodiments, the present invention is described in detail.
Study a class input and state all close the United Nations General Assembly's system dispersion control with the Fuzzy Bilinear that sometimes becomes time lag hereinProblem processed. Based on Lyapunov Theory of Stability, obtain closed loop and closed the asymptotically stable abundant bar that the United Nations General Assembly's system time lag is relevantPart. The design of Decentralized Fuzzy controller can change into a protruding optimization problem that is subject to LMI (LMI) constraint.
In this article, RnRepresent n dimension Euclidean space, P > 0 (P >=0) represents that P is that a positive definite (positive semidefinite) is real rightClaim matrix. In matrix expression: ATRepresent the transposed matrix of A, A-1Represent the inverse matrix of A, * represents symmetrical, diag... .} represents diagonal matrix, and I represents the unit matrix of suitable dimension.RepresentIf do not specified,Matrix all represents the matrix of suitable dimension.
1. system is described
One class is by S subsystem Ωi, i=1,2 ..., S composition band becomes Fuzzy Bilinear pass the United Nations General Assembly system of time lag sometimesΩ, i subsystem ΩiCan be expressed as:
R i m f &xi; i 1 ( t ) is F i 1 m and . . . and &xi; iv i ( t ) is F iv i m then x &CenterDot; i ( t ) = A im x i ( t ) + B im u i ( t ) + N im x i ( t ) u i ( t ) + A idm x i ( t - d i ( t ) ) + B idm u i ( t - d i ( t ) ) + N idm x i ( t - d i ( t ) ) u i ( t - d i ( t ) ) + &Sigma; j = 1 , j &NotEqual; i S C jim x j ( t ) x i ( t = &phi; i ( t ) t = - &tau; i 0 m = 1,2 , . . . , r i - - - ( 1 )
Wherein:I subsystem ΩiFuzzy rule, s is the number of subsystem. M={1,2,...,ri},riIt is the number of the fuzzy rule of i subsystem.It is respectively fuzzy set and frontCarry variable.Respectively state vector and control inputs. It is known sytem matrix.The correlation matrix of j subsystem to i subsystem.di(t) being the time lag item of system, is continuously differentiable function and satisfied 0≤di(t)≤τiWith
By single-point obfuscation, the average reverse gelatinizing method in product reasoning and center, the overall model of Fuzzy control systemFor:
x &CenterDot; i ( t ) = &Sigma; m = 1 r i h im ( &xi; i ( t ) ) [ A im x i ( t ) + B im u i ( t ) + N im x i ( t ) u i ( t ) + A idm x i ( t - d i ( t ) ) + N idm x i ( t - d i ( t ) ) u i ( t - d i ( t ) ) + B idm u i ( t - d i ( t ) ) + &Sigma; j = 1 , j &NotEqual; i S C jim x j ( t ) ] - - - ( 2 )
Wherein:μinji(t)) be ξj(t) existIn membership function. In literary composition, supposeBy himi(t) definition) is known:Note respectively h obscure in the situation that by abridging not causing belowimi(t)),xi(t-di(t)),ui(t-di(t)) be him,xid(t),uid(t)。
According to parallel distributed backoff algorithm, consider local feedback control device:
if &xi; i 1 ( t ) is F i 1 m and . . . and &xi; iv i ( t ) is F i v i m then u i ( t ) = &rho; i K im x i ( t ) 1 + x i T K im T K im x i &rho; i sin &theta; im = &rho; i cos &theta; im K im x i ( t ) - - - ( 3 )
Here:Controller gain to be asked, ρi> 0 is scalar undetermined,
Can similarly be obtained by (3):
Here:
i=1,2,...,S;m=1,2,...,ri
Overall decentralised control rule can be expressed as:
Under the effect of control law (5), the equation of whole closed-loop system can be expressed as:
x i &CenterDot; ( t ) = &Sigma; m , n = 1 &eta; h im h in [ &Lambda; i , mn x i ( t ) + &Lambda; i , dmn x id ( t ) + &Sigma; j = 1 , j &NotEqual; i S C jim x j ( t ) ] - - - ( 6 )
Here: Λi,mn=AimisinθinNimicosθinBimKin
Target herein: for the large system of fuzzy time-delay bilinear interconnection (6) being formed by S subsystem, to each heightSystem local state feedback controller, it is asymptotically stable making closed loop close the United Nations General Assembly's system (5).
Below be given in the lemma that will use in proof:
Lemma 1: establish M, N is the real matrix that is applicable to dimension,, for scalar ε > 0, has MTN+NTM≤εMTM+ε-1NTN becomesVertical.
2. Main Conclusions
Theorem 1: for given normal number ρi,αi, i=1,2 ..., S, if for given normal number ε1i,ε2i,i=1,2 ..., there is positive definite symmetric matrices P in Si>0,Ri> 0, i=1,2 ..., S and matrix Kim,i=1,2,...,S;m=1,2,...,riMeet MATRIX INEQUALITIES (7), Ze Guan the United Nations General Assembly system (5) is asymptotically stable.
Φi,mm<0i=1,2,...,S;m=1,2,...,ri(7a)
Φi,mni,nm<0i=1,2,...,S;1≤m<n≤ri(7b)
Wherein: &Phi; i , mn = &phi; i , 1 mn P i A idm * &phi; i , 2 mn ,
&phi; i , 1 mn = A im T P i + P i A im + ( &epsiv; 1 i + &epsiv; 2 i ) &rho; i 2 P i P i + &epsiv; 1 i - 1 N im T N im + &epsiv; 1 i - 1 ( B im K in ) T ( B im K in ) + &Sigma; j = 1 , j &NotEqual; i S P i C jim C jim T P i + ( S - 1 ) I + R i ,
&phi; i , 2 mn = &epsiv; 2 i - 1 N idm T N idm + &epsiv; 2 i - 1 ( D idm K in ) T ( B idm K in ) - ( 1 - &alpha; i ) R i .
Prove: choose following Lyapunov function:
V ( t ) = &Sigma; i = 1 S V i ( t ) = &Sigma; i = 1 S [ x i T ( t ) P i x i ( t ) + &Integral; t - d i ( t ) t x i T ( s ) R i x i ( s ) ds ] - - - ( 8 )
Along the path of system (6), to V (t) differentiate, can obtain:
V &CenterDot; ( t ) = &Sigma; i = 1 S &Sigma; m , n = 1 r i h im h in [ x i T &CenterDot; ( t ) P i x i ( t ) + x i T ( t ) P i x i &CenterDot; ( t ) + x i T ( t ) R i x i ( t ) - ( 1 - d i &CenterDot; ) x id T ( t ) R i x id ( t ) ] &le; &Sigma; i = 1 S &Sigma; m , n = 1 r i h im h in [ x i T ( t ) ( &Lambda; i , mn T P i + P i &Lambda; i , mn ) x i ( t ) + x id T ( t ) &Lambda; i , dmn T P i x i ( t ) + x i T ( t ) P i &Lambda; i , dmn x id ( t ) + &Sigma; j = 1 j &NotEqual; i S x j T ( t ) C jim T P i x i ( t ) + x i T ( t ) P i &Sigma; j = 1 , j &NotEqual; i s C jim x j ( t ) + x i T ( t ) R i x i ( t ) - ( 1 - &alpha; i ) x id T ( t ) R i x id ( t ) ] - - - ( 9 )
Consider following formula, and can be obtained by lemma 1:
&Lambda; i , mn T P i + P i &Lambda; i , mn = A im T P i + P i A im + ( &rho; i sin &theta; in N im ) T P i + P i ( &rho; i sin &theta; in N im ) + ( &rho; i cos &theta; in B im K in ) T P i + P i ( &rho; i cos &theta; in B im K in ) &le; A im T P i + P i A im + &epsiv; 1 i &rho; i 2 P i P i + &epsiv; 1 i - 1 N im T N im + &epsiv; 1 i - 1 ( B im K im ) T ( B im K in ) , x id T ( t ) &Lambda; i , dmn T P i x i ( t ) + x i T ( t ) P i &Lambda; i , dmn x id ( t ) &le; x id T ( t ) A idm T P i x i ( t ) + x i T ( t ) P i A idm x id ( t ) + x i T ( t ) &epsiv; 2 i &rho; i 2 P i P i x i ( t ) + x id T ( t ) &epsiv; 2 i - 1 N idm T N idm x id ( t ) + x id T ( t ) &epsiv; 2 i - 1 ( B idm K in ) T ( B idm K in ) x id ( t ) , - - - ( 10 )
In like manner can obtain:
&Sigma; i = 1 S &Sigma; m = 1 r i h im [ &Sigma; j = 1 , j &NotEqual; i S x j T ( t ) C jim T P i x i ( t ) + x i T ( t ) P i &Sigma; j = 1 , j &NotEqual; i s C jim x j ( t ) ] = &Sigma; i = 1 S &Sigma; m = 1 r i h im [ x 1 T ( t ) C 1 im T P i x i ( t ) + . . . + x i - 1 T ( t ) C i - 1 im T P i x i ( t ) + x i + 1 T ( t ) C i + 1 im T P i x i ( t ) + . . . + x S T ( t ) C Sim T P i x i ( t ) + x i T ( t ) P i C 1 im x 1 ( t ) + . . . + x i T ( t ) P i C i - 1 im x i - 1 ( t ) + x i T ( t ) P i C i + 1 im x i + 1 ( t ) + . . . x i T ( t ) P i C Sim x S ( t ) ] &le; &Sigma; i = 1 S &Sigma; m = 1 r i h im [ x i T ( t ) P i &Sigma; j = 1 , j &NotEqual; i S C jim C jim T P i x i ( t ) + &Sigma; j = 1 , j &NotEqual; i S x j T ( t ) x j ( t ) ] = &Sigma; i = 1 S &Sigma; m = 1 r i h im [ x i T ( t ) P i &Sigma; j = 1 , j &NotEqual; i S C jim C jim T P i x i ( t ) + ( S - 1 ) x i T ( t ) x i ( t ) ] - - - ( 11 )
(8) are brought into in (9), (10), (11), and noteCan obtain:
V &CenterDot; ( t ) &le; &Sigma; i = 1 S &Sigma; m , n = 1 r i h im h in &eta; i T ( t ) &Phi; i , mn x i ( t ) &eta; i ( t ) = &Sigma; i = 1 S [ &Sigma; m = 1 r i h im 2 &eta; i T ( t ) &Phi; i , mn &eta; i ( t ) + &Sigma; 1 = m < n r i h im h in &eta; i T ( t ) ( &Phi; i , mn + &Phi; i , nm ) &eta; i ( t ) ] - - - ( 12 )
Known according to (7) in theorem 1So known pass the United Nations General Assembly's system (6) is asymptotically stable.
Consider that (7) in theorem 1 are bilinearity MATRIX INEQUALITIES, can not directly be solved by LMI tool box, belowBilinearity MATRIX INEQUALITIES converts LMI to, provides the method for designing of controller:
Theorem 2: for given normal number αi,ρi, i=1,2 ..., s, if for given normal number ε1i,ε2i,i=1,2 ..., s exists matrixS and matrix Gim,i=1,2,...,S;m=1,2,...,riMeet MATRIX INEQUALITIES (13), Ze Guan the United Nations General Assembly system (5) is Asymptotic Stability, and controller gain is: Kim=GimZ-1,i=1,2,...,S;m=1,2,...,ri.。
T i , m * * * * * * Z i A idm T - ( 1 - &alpha; i ) R &OverBar; i * * * * * Z i 0 - I s - 1 * * * * N im Z i 0 0 - &epsiv; 1 i I * * * B im G im 0 0 0 - &epsiv; 1 i I * * 0 N idm Z i 0 0 0 - &epsiv; 2 i I * 0 B idm G im 0 0 0 0 - &epsiv; 2 i I < 0 , i = 1,2 , . . . , S ; m = 1,2 , . . . , r i - - - ( 13 a )
T i , m + T i , n * * * * * * Z i A idm T + Z i A idn T - 2 ( 1 - &alpha; i ) R &OverBar; i * * * * * 2 Z i 0 - 2 I s - 1 * * * * ( NZ ) i , mn &OverBar; 0 0 - t 55 * * * ( BG ) i , mn &OverBar; 0 0 0 - t 66 * * 0 ( N d Z ) i , mn &OverBar; 0 0 0 - t 77 * 0 ( B d G ) i , mn &OverBar; 0 0 0 0 - t 88 < 0 , i = 1,2 , . . . , S ; 1 &le; m < n &le; r i - - - ( 13 b )
Here:
( NZ ) i , mn &OverBar; = N im Z i N in Z i , ( BG ) i , mn &OverBar; = B im G in B in G im , ( N d Z ) i , mn &OverBar; = N idm Z i N idn Z i , ( B d G ) i , mn &OverBar; = B idm G in B idn G im ,
t44=t55=diag{ε1iI,ε1iI},t66=t77=diag{ε2iI,ε2iI}.
Prove: chooseAnd noteBy Kim=GimZ-1Known, Mim=KimZ。
(13a) taken advantage of to diag{P in left and right simultaneouslyi,Pi, I, I, I, I, I} can obtain:
P i T i , m P i * * * * * * A idm T P i - ( 1 - &alpha; i ) R i * * * * * I 0 - I s - 1 * * * * N im 0 0 - &epsiv; 1 i I * * * B im K im 0 0 0 - &epsiv; 1 i I * * 0 N idm 0 0 0 - &epsiv; 2 i I * 0 B idm K im 0 0 0 0 - &epsiv; 2 i I < 0 , i = 1,2 , . . . , S ; m = 1,2 , . . . , r i - - - ( 14 a )
Set up and can be equivalent to (7a) establishment by Schur complement fixed reason known (14a). Same reason (13b) can be derived (7b)Vertical. Known under designed controller by theorem 1 like this, it is asymptotically stable that Fuzzy Bilinear is closed the United Nations General Assembly's system.
3. sample calculation analysis
In order to set forth method above, consider that 2 sub-system relationships form the Fuzzy Bilinear pass system of the United Nations General Assembly with time lagSystem:
Subsystem1:
R 1 1 : if x 11 is F 11 1 then x &CenterDot; 1 ( t ) = A 11 x 1 ( t ) + A 1 d 1 x 1 d ( t ) + N 11 x 1 ( t ) u 1 ( t ) + N 1 d 1 x 1 d ( t ) u 1 d ( t ) + B 11 u 1 d ( t ) + B 1 d 1 u 1 d ( t ) + C 211 x 2 ( t ) ; R 1 2 : if x 11 is F 11 2 then x &CenterDot; 1 ( t ) = A 12 x 1 ( t ) + A 1 d 2 x 1 d ( t ) + N 12 x 1 ( t ) u 1 ( t ) + N 1 d 2 x 1 d ( t ) u 1 d ( t ) + B 12 u 1 d ( t ) + B 1 d 2 u 1 d ( t ) + C 212 x 2 ( t ) ;
Subsystem2:
R 2 1 : if x 21 is F 21 1 then x 2 &CenterDot; ( t ) = A 21 x 2 ( t ) + A 2 d 1 x 2 d ( t ) + N 21 x 2 ( t ) u 2 ( t ) + N 2 d 1 x 2 d ( t ) u 2 d ( t ) + B 21 u 2 d ( t ) + B 2 d 1 u 2 d ( t ) + C 121 x 1 ( t ) ; R 2 2 : if x 21 is F 21 2 then x 2 &CenterDot; ( t ) = A 22 x 2 ( t ) + A 2 d 2 x 2 d ( t ) + N 22 x 2 ( t ) u 2 ( t ) + N 2 d 2 x 2 d ( t ) u 2 d ( t ) + B 22 u 2 d ( t ) + B 2 d 2 u 2 d ( t ) + C 122 x 1 ( t ) ;
Wherein:
A 11 = - 95 7 - 35 - 97 , A 12 = - 82 9 - 30 - 90 , A 21 = - 110 15 - 10 - 100 , A 22 = - 102 9 - 5 - 90 ;
N 11 = - 3 0 0 0 , N 12 = - 3 - 3 1 - 3 , N 21 = 0 0 0 - 4 , N 22 = 0 0 4 - 1 ; B 11 = - 1 0 , B 12 = 1 1 ,
B 21 = B 22 = 1 1 ; A 1 d 1 = - 10 0 5 2 , A 1 d 2 = - 15 0 0 7 , A 2 d 1 = - 12 0 10 24 , A 2 d 2 = 10 0 14 7 ;
N 1 d 1 = 0.5 0 0 0.2 , N 1 d 2 = 0.3 0 0 0.5 , N 2 d 1 = 0.3 0 0 0.5 , N 2 d 2 = 0.3 0 0 0.5 ;
B 1 d 1 = B 1 d 2 = 1 0 , B 2 d 1 = B 2 d 2 = - 1 0 ; C 211 = C 212 = 1 - 1 0 1 , C 121 = C 122 = 1 1 0 1 ,
Selecting All Parameters ρ1=0.75,ρ2=0.63,a1=a2=0,ε11=ε12=ε21=ε22=1. Choose membership functionWith RootAccording to theorem 2, solve corresponding LMIs and can obtain 2
K11=[-1.1233-1.0443];K12=[-1.8542-1.0211];
K21=[-1.4735-1.2671];K22=[-1.8013-1.2024].
It is x that two subsystems are chosen respectively to initial value10=[-2.81.7]T,x20=[3.0-1.6]T, utilizeMATLAB emulation, Fig. 1 is the state variable response curve of subsystem 1, and Fig. 2 is the condition responsive curve of subsystem 2, and Fig. 3 is twoThe control curve of individual subsystem. Can be found out by simulation result, under designed controller, it is asymptotic that closed loop is closed the United Nations General Assembly's systemStable.

Claims (1)

1. a decentralized control method for the Design for Large-Scale Interconnected Nonlinear Systems based on T-S bilinear model, is characterized in that, according toLower step is carried out:
The large system of design fuzzy time-delay bilinear interconnection;
One class is by S subsystem Ωi, i=1,2 ..., S composition band becomes the Fuzzy Bilinear pass system Ω of the United Nations General Assembly of time lag sometimes, theI subsystem ΩiCan be expressed as:
R i m f &xi; i 1 ( t ) is F i 1 m and . . . and &xi; iv i ( t ) is F iv i m then x . i ( t ) = A im x i ( t ) + B im u i ( t ) + N im x i ( t ) u i ( t ) + A idm x i ( t - d i ( t ) ) + B idm u i ( t - d i ( t ) ) + N idm x i ( t - d i ( t ) ) u i ( t - d i ( t ) ) + &Sigma; j = 1 , j &NotEqual; i S C jim x j ( t ) x i ( t ) = &phi; i ( t ) t = - &tau; i 0 m = 1,2 , . . . , r i - - - ( 1 )
Wherein:I subsystem ΩiFuzzy rule, s is the number of subsystem; M={1,2 ..., ri},riIt is the number of the fuzzy rule of i subsystem;Respectively fuzzy set and prerequisite variable;Respectively state vector and control inputs; It is known system squareBattle array;The correlation matrix of j subsystem to i subsystem; di(t) being the time lag item of system, is continuousDifferentiable function and satisfied 0≤di(t)≤τiWith
By single-point obfuscation, the average reverse gelatinizing method in product reasoning and center, the overall model of Fuzzy control system is:
x . i ( t ) = &Sigma; m = 1 r i h im ( &xi; i ( t ) ) [ A im x i ( t ) + B im u i ( t ) + N im x i ( t ) u i ( t ) + A idm x i ( t - d i ( t ) ) + N idm x i ( t - d i ( t ) ) u i ( t - d i ( t ) ) + B idm u i ( t - d i ( t ) ) + &Sigma; j = 1 , j &NotEqual; i S C jim x j ( t ) ] - - - ( 2 )
Wherein:μinji(t)) be ξj(t) existIn membership function; FalseIfBy himi(t) definition) is known:Note respectively h by abridgingimi(t)),xi(t-di(t)),ui(t-di(t)) be him,xid(t),uid(t);
According to parallel distributed backoff algorithm, consider local feedback control device:
f &xi; i 1 ( t ) is F i 1 m and . . . and &xi; iv i ( t ) is F iv i m then u i ( t ) = &rho; i K im x i ( t ) 1 + x i T K im T K im x i = &rho; i sin &theta; im = &rho; i cos &theta; im K im x i ( t ) - - - ( 3 )
Here:Controller gain to be asked, ρi> 0 is scalar undetermined,
Can similarly be obtained by (3):
Here:
Overall decentralised control rule can be expressed as:
Under the effect of control law (5), the equation of whole closed-loop system can be expressed as:
x . i ( t ) = &Sigma; m , n = 1 r i h im h in [ &Lambda; i , mn x i ( t ) + &Lambda; i , dmn x id ( t ) + &Sigma; j = 1 , j &NotEqual; i s C jim x j ( t ) ] - - - ( 6 )
Here: Λi,mn=AimisinθinNimicosθinBimKin
Theorem 1: for given normal number ρi,αi, i=1,2 ..., S, if for given normal number ε1i,ε2i,i=1,2 ..., there is positive definite symmetric matrices P in Si>0,Ri> 0, i=1,2 ..., S and matrix Kim,i=1,2,...,S;m=1,2,...,riMeet MATRIX INEQUALITIES (7), Ze Guan the United Nations General Assembly system (5) is asymptotically stable;
Φi,mm<0i=1,2,...,S;m=1,2,...,ri(7a)
Φi,mni,nm<0i=1,2,...,S;1≤m<n≤ri(7b)
Wherein:
&phi; i , 1 mn = A im T P i + P i A im + ( &epsiv; 1 i + &epsiv; 2 i ) &rho; i 2 P i P i + &epsiv; 1 i - 1 N im T N im + &epsiv; 1 i - 1 ( B im K in ) T ( B im K in ) + &Sigma; j = 1 , j &NotEqual; i S P i C jim C jim T P i + ( S - 1 ) I + R i ,
&phi; i , 2 mn = &epsiv; 2 i - 1 N idm T N idm + &epsiv; 2 i - 1 ( B idm K in ) T ( B idm K in ) - ( 1 - &alpha; i ) R i .
Prove: choose following Lyapunov function:
V ( t ) = &Sigma; i = 1 S V i ( t ) = &Sigma; i = 1 S [ x i T ( t ) P i x i ( t ) + &Integral; t - d i ( t ) t x i T ( s ) R i x i ( s ) ds ] - - - ( 8 )
Along the path of system (6), to V (t) differentiate, can obtain:
V . ( t ) = &Sigma; i = 1 S &Sigma; m , n = 1 r i h im h in [ x . i T ( t ) P i x i ( t ) + x i T ( t ) P i x . i ( t ) + x i T ( t ) R i x i ( t ) - ( 1 - d . i ) x id T ( t ) R i x id ( t ) ] &le; &Sigma; i = 1 S &Sigma; m , n = 1 r i h im h in [ x i T ( t ) ( &Lambda; i , mn T P i + P i &Lambda; i , mn ) x i ( t ) + x id T ( t ) &Lambda; i , dmn T P i x i ( t ) + x i T ( t ) P i &Lambda; i , dmn x id ( t ) + &Sigma; j = 1 j &NotEqual; i S x j T ( t ) C jim T P i x i ( t ) + x i T ( t ) P i &Sigma; j = 1 , j &NotEqual; i s C jim x j ( t ) + x i T ( t ) R i x i ( t ) - ( 1 - &alpha; i ) x id T ( t ) R i x id ( t ) ] - - - ( 9 )
Consider following formula, and can be obtained by lemma 1:
&Lambda; i , mn T P i + P i &Lambda; i , mn = A im T P i + P i A im + ( &rho; i sin &theta; in N im ) T P i + P i ( &rho; i sin &theta; in N im ) + ( &rho; i cos &theta; in B im K in ) T P i + P i ( &rho; i cos &theta; in B im K in ) &le; A im T P i + P i A im + &epsiv; 1 i &rho; i 2 P i P i + &epsiv; 1 i - 1 N im T N im + &epsiv; 1 i - 1 ( B im K in ) T ( B im K in ) , x id T ( t ) &Lambda; i , dmn T P i x i ( t ) + x i T ( t ) P i &Lambda; i , dmn x id ( t ) &le; x id T ( t ) A idm T P i x i ( t ) + x i T ( t ) P i A idm x id ( t ) + x i T ( t ) &epsiv; 2 i &rho; i 2 P i P i x i ( t ) + x id T ( t ) &epsiv; 2 i - 1 N idm T N idm x id ( t ) + x id T ( t ) &epsiv; 2 i - 1 ( B idm K in ) T ( B idm K in ) x id ( t ) , - - - ( 10 )
In like manner can obtain:
&Sigma; i = 1 S &Sigma; m = 1 r i h im [ &Sigma; j = 1 , j &NotEqual; i S x j T ( t ) C jim T P i x i ( t ) + x i T ( t ) p i &Sigma; j = 1 , j &NotEqual; i s C jim x j ( t ) ] = &Sigma; i = 1 S &Sigma; m = 1 r i h im [ x 1 T ( t ) C 1 im T P i x i ( t ) + . . . + x i - 1 T ( t ) C i - 1 im T P i x i ( t ) + x i + 1 T ( t ) C i + 1 im T P i x i ( t ) + . . . + x S T ( t ) C Sim T P i x i ( t ) + x i T ( t ) P i C 1 im x 1 ( t ) + . . . + x i T ( t ) P i C i - 1 im x i + 1 ( t ) + x i T ( t ) P i C i + 1 im x i + 1 ( t ) + . . . x i T ( t ) P i C Sim x S ( t ) ] &le; &Sigma; i = 1 S &Sigma; m = 1 r i h im [ x i T ( t ) P i &Sigma; j = 1 , j &NotEqual; i S C jim C jim T P i x i ( t ) + &Sigma; j = 1 , j &NotEqual; i S x j T ( t ) x j ( t ) ] = &Sigma; i = 1 S &Sigma; m = 1 r i h im [ x i T ( t ) P i &Sigma; j = 1 , j &NotEqual; i S C jim C jim T P i x i ( t ) + ( S - 1 ) x i T ( t ) x i ( t ) ] - - - ( 11 )
(8) are brought into in (9), (10), (11), and noteCan obtain:
V . ( t ) &le; &Sigma; i = 1 S &Sigma; m , n = 1 r i h im h in &eta; i T ( t ) &Phi; i , mn x i ( t ) &eta; i ( t ) = &Sigma; i = 1 S [ &Sigma; m = 1 r i h im 2 &eta; i T ( t ) &Phi; i , mm &eta; i ( t ) + &Sigma; i = m < n r i h im h in &eta; i T ( t ) ( &Phi; i , mn + &Phi; i , nm ) &eta; i ( t ) ] - - - ( 12 )
Known according to (7) in theorem 1So known pass the United Nations General Assembly's system (6) is asymptotically stable;
Consider that (7) in theorem 1 are bilinearity MATRIX INEQUALITIES, can not directly be solved by LMI tool box, bilinearity squareBattle array inequality converts LMI to, provides the method for designing of controller:
Theorem 2: for given normal number αi,ρi, i=1,2 ..., s, if for given normal number ε1i,ε2i,i=1,2 ..., s exists matrixAnd matrixMeet matrix notEquation (13), Ze Guan the United Nations General Assembly system (5) is Asymptotic Stability, and controller gain is: Kim=GimZ-1,i=1,2,...,S;m=1,2,...,ri.;
T i , m * * * * * * Z i A idm T - ( 1 - &alpha; i ) R &OverBar; i * * * * * Z i 0 - I s - 1 * * * * N im Z i 0 0 - &epsiv; 1 i I * * * B im G im 0 0 0 - &epsiv; 1 i I * * 0 N idm Z i 0 0 0 - &epsiv; 2 i I * 0 B idm G im 0 0 0 0 - &epsiv; 2 i I < 0 , i = 1,2 , . . . , S ; m = 1,2 , . . , r i - - - ( 13 a )
T i , m + T i , n * * * * * * Z i A idm T + Z i A idn T - 2 ( 1 - &alpha; i ) R &OverBar; i * * * * * 2 Z i 0 - 2 I s - 1 * * * * ( NZ ) i , mn &OverBar; 0 0 - t 55 * * * ( BG ) i , mn &OverBar; 0 0 0 - t 66 * * 0 ( N d Z ) i , mn &OverBar; 0 0 0 - t 77 * 0 ( B d G ) i , mn &OverBar; 0 0 0 0 - t 88 < 0 , i = 1,2 , . . . , S ; 1 &le; m < n &le; r i - - - ( 13 b )
Here:
( NZ ) i , mn &OverBar; = N im Z i N in Z i , ( BG ) i , mn &OverBar; = B im G in B in G im , ( N d Z ) i , mn &OverBar; = N idm Z i N idn Z i , ( B d G ) i , mn &OverBar; = B idm G in B idn G im ,
t44=t55=diag{ε1iI,ε1iI},t66=t77=diag{ε2iI,ε2iI}.
Prove: chooseAnd noteBy Kim=GimZ-1Known, Mim=KimZ;
(13a) taken advantage of to diag{P in left and right simultaneouslyi,Pi, I, I, I, I, I} can obtain:
P i T i , m P i * * * * * * A idm T P i - ( 1 - &alpha; i ) R i * * * * * I 0 - I s - 1 * * * * N im 0 0 - &epsiv; 1 i I * * * B im K im 0 0 0 - &epsiv; 1 i I * * 0 N idm 0 0 0 - &epsiv; 2 i I * 0 B idm K im 0 0 0 0 - &epsiv; 2 i I < 0 , i = 1,2 , . . . , S ; m = 1,2 , . . , r i - - - ( 14 a )
Set up and can be equivalent to (7a) establishment by Schur complement fixed reason known (14a); Same reason (13b) can be derived (7b) and set up; ThisSample is known under designed controller by theorem 1, and Fuzzy Bilinear is closed the United Nations General Assembly's system Asymptotic Stability.
CN201610050819.8A 2016-01-26 2016-01-26 T-S bilinear model based decentralized control method of nonlinear association large-system Pending CN105607482A (en)

Priority Applications (1)

Application Number Priority Date Filing Date Title
CN201610050819.8A CN105607482A (en) 2016-01-26 2016-01-26 T-S bilinear model based decentralized control method of nonlinear association large-system

Applications Claiming Priority (1)

Application Number Priority Date Filing Date Title
CN201610050819.8A CN105607482A (en) 2016-01-26 2016-01-26 T-S bilinear model based decentralized control method of nonlinear association large-system

Publications (1)

Publication Number Publication Date
CN105607482A true CN105607482A (en) 2016-05-25

Family

ID=55987491

Family Applications (1)

Application Number Title Priority Date Filing Date
CN201610050819.8A Pending CN105607482A (en) 2016-01-26 2016-01-26 T-S bilinear model based decentralized control method of nonlinear association large-system

Country Status (1)

Country Link
CN (1) CN105607482A (en)

Cited By (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN106094842A (en) * 2016-06-28 2016-11-09 哈尔滨工程大学 A kind of UUV diving plane H based on T S model and PDC∞control method
CN109033585A (en) * 2018-07-13 2018-12-18 河海大学 The PID controller design method of uncertain network control system based on T-S fuzzy model
CN109635443A (en) * 2018-12-13 2019-04-16 西安交通大学 A kind of isolated power system stability Decoupling Analysis method
CN110017696A (en) * 2019-04-18 2019-07-16 杭州电子科技大学 Industrial furnace temprature control method with probabilistic T-S model

Cited By (7)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN106094842A (en) * 2016-06-28 2016-11-09 哈尔滨工程大学 A kind of UUV diving plane H based on T S model and PDC∞control method
CN109033585A (en) * 2018-07-13 2018-12-18 河海大学 The PID controller design method of uncertain network control system based on T-S fuzzy model
CN109033585B (en) * 2018-07-13 2020-04-03 河海大学 Design method of PID controller of uncertain network control system
CN109635443A (en) * 2018-12-13 2019-04-16 西安交通大学 A kind of isolated power system stability Decoupling Analysis method
CN109635443B (en) * 2018-12-13 2020-10-27 西安交通大学 Independent power system stability decoupling analysis method
CN110017696A (en) * 2019-04-18 2019-07-16 杭州电子科技大学 Industrial furnace temprature control method with probabilistic T-S model
CN110017696B (en) * 2019-04-18 2020-10-16 杭州电子科技大学 Industrial furnace temperature control method with uncertain T-S model

Similar Documents

Publication Publication Date Title
CN105607482A (en) T-S bilinear model based decentralized control method of nonlinear association large-system
Jia et al. Robust reliable passive control of uncertain stochastic switched time-delay systems
Ahmida et al. Exponential stability of uncertain TS fuzzy switched systems with time delay
Muralisankar et al. Mean square delay dependent-probability-distribution stability analysis of neutral type stochastic neural networks
Yin et al. Reducing urban traffic congestion using deep learning and model predictive control
Bouassem et al. Unknown input observer design for a class of Takagi-Sugeno descriptor systems
Jamel et al. Observer design and active fault tolerant control for Takagi-Sugeno systems affected by sensors faults
CN107544242A (en) The method that method of inverse controls dissolved oxygen in continuous casting water treatment system
Navghare et al. Design of adaptive pH controller using ANFIS
Zhang et al. LMI-based stability analysis of fuzzy large-scale systems with time delays
Eleiwi et al. Feedback control for distributed heat transfer mechanisms in direct-contact membrane distillation system
Ratchagit A switching rule for the asymptotic stability of discrete-time systems with convex polytopic uncertainties
Saoudi et al. Fault tolerant control for uncertain fuzzy bilinear models
Jia et al. A new strategy for fault estimation in Takagi-Sugeno fuzzy systems via a fuzzy learning observer
Grigorie et al. Adaptive neuro-fuzzy inference controllers for smart material actuators
Soltani et al. Delay dependent stability analysis of Takagi-Sugeno fuzzy time-delays system
Yan-Bin et al. Robust stability of uncertain Takagi-Sugeno fuzzy systems with time-varying input-delay
Sun et al. Multiple delay-dependent guaranteed cost control for uncertain switched random nonlinear systems against intermittent sensor and actuator faults
Koldaev The Neuro-Fuzzy Controller of Reactor Installation Management of Butanol Hydrogenation
Koo et al. Robust decentralized control for fuzzy large-scale systems using dynamic output-feedback
Li et al. Fuzzy modeling-based fault diagnosis and fault tolerant control for the non-Gaussian nonlinear singular stochastic distribution system
Krokavec et al. On reduced-order fuzzy observer for one class of bilinear Takagi-Sugeno systems
Sunori et al. Neuro-Fuzzy Controller Design for MIMO Boiler Turbine Process
Pykh Entropy characteristics of macrosystems with nonlinear pair interactions
El Hacene Djallel et al. Exponential Stabilization of TS Fuzzy Systems with Time-Varying Delay

Legal Events

Date Code Title Description
C06 Publication
PB01 Publication
C10 Entry into substantive examination
SE01 Entry into force of request for substantive examination
RJ01 Rejection of invention patent application after publication
RJ01 Rejection of invention patent application after publication

Application publication date: 20160525