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Article

Consensus Control of Leaderless and Leader-Following Coupled PDE-ODEs Modeled Multi-Agent Systems

1
Faculty of Management and Economics, Kunming University of Science and Technology, Kunming 650500, China
2
Systems Engineering Research Institute, China State Shipbuilding Corporation Limited, Beijing 100094, China
3
School of Precision Instrument and Opto-electronics Engineering, Tianjin Univeristy, Tianjin 300072, China
4
School of Automation and Electrical Engineering, Linyi University, Linyi 276005, China
5
School of Information Science and Technology, Linyi University, Linyi 276005, China
*
Author to whom correspondence should be addressed.
All authors contributed equally to this work.
Mathematics 2022, 10(2), 201; https://doi.org/10.3390/math10020201
Submission received: 13 December 2021 / Revised: 7 January 2022 / Accepted: 7 January 2022 / Published: 10 January 2022
(This article belongs to the Special Issue Advanced Control Theory with Applications)

Abstract

:
This paper discusses consensus control of nonlinear coupled parabolic PDE-ODE-based multi-agent systems (PDE-ODEMASs). First, a consensus controller of leaderless PDE-ODEMASs is designed. Based on a Lyapunov-based approach, coupling strengths are obtained for leaderless PDE-ODEMASs to achieve leaderless consensus. Furthermore, a consensus controller in the leader-following PDE-ODEMAS is designed and the corresponding coupling strengths are obtained to ensure the leader-following consensus. Two examples show the effectiveness of the proposed methods.

1. Introduction

Consensus in multi-agent systems (MASs) is to achieve a common group objective when agents have different initial states [1,2,3,4]. It has received great attention in the past decade as a result from its wide applications in flocking of mobile robots [5], opinion dynamics in social networks [6], formation of unmanned vehicles [7,8,9], microgrid energy management [10], traffic flow [11], etc.
In a pioneering contribution, many important control methods were proposed for consensus of MASs, focusing on models based on ordinary differential equations [12,13,14,15,16,17,18,19,20]. Actually, there are many practical cases in nature and discipline fields with spatio-temporal characteristics, modeled by coupled partial differential equations (PDEs) [21,22,23,24,25]. Applied to overhead cranes [26], hormonal therapy [27], traffic flow [28], etc., another class of spatio-temporal models is based on coupled partial differential equations—ordinary differential equations (PDE-ODEs) [29,30,31]. Therefore, it is important to research consensus control of PDE-based coupled MASs (PDEMASs) or coupled PDE-ODE-based MASs (PDE-ODEMASs).
More recently, there have been many important results related to PDEMASs. Ref. [32] studied a distributed adaptive controller of uncertain leader-following parabolic PDEMASs; ref. [33] studied consensus control for parabolic and second-order hyperbolic PDEMASs; ref. [34] studied distributed P-type iterative learning for PDEMASs with time delay; refs. [35,36] studied iterative learning control for PDEMASs without and with time delay; ref. [37] studied boundary control of 3-D PDEMASs with arbitrarily large boundary input delay; refs. [38,39] studied consensus and input constraint consensus of nonlinear PDEMASs using boundary control. However, consensus control for PDE-ODEMASs has not been addressed yet, which is a new challenge.
Motivated by the above, this paper studies consensus control of nonlinear coupled parabolic PDE-ODEMASs with Neumann boundary conditions. First, dealing with the leaderless case, a consensus controller of leaderless PDE-ODEMASs is designed. The leaderless consensus error system is obtained and one Lyapunov functional candidate is given. Using Wirtinger’s inequality and matrix properties, coupling strengths are obtained for leaderless PDE-ODEMASs to achieve cluster consensus. Furthermore, dealing with the leader-following case, a consensus controller of leader-following PDE-ODEMASs is designed. The leader-following consensus error system is obtained and another Lyapunov functional candidate is given. The corresponding coupling strengths are obtained to ensure leader-following consensus.
The remainder of this paper is organized as follows. The problem formulation is given in Section 2. Section 3 presents a consensus control design of the leaderless PDE-ODEMAS and Section 4 gives that of the leader-following PDE-ODEMAS. An example to illustrate the effectiveness of the proposed method is presented in Section 5 and Section 6 offers some concluding remarks.
Notations: λ max ( · ) , λ 2 ( · ) stand for the maximum eigenvalue and smallest nonzero eigenvalue of ·, respectively. ⊗ is a Kronecker product of matrices. The identity matrix of n order is denoted by I n . | | · | | denotes the Euclidean norm for vectors in R n or the induced 2-norm for matrices in R m × n .

2. Problem Formulation

Consider a nonlinear PDE-ODEMAS as
x ˙ i ( t ) = f ( x i ( t ) ) + 0 1 w ( y i ( ξ , t ) ) d ξ + u i ( t ) , y i ( ξ , t ) t = α 2 y i ( ξ , t ) ξ 2 + p ( y i ( ξ , t ) ) + q ( x i ( t ) ) + U i ( ξ , t ) ,
such that
y i ( ξ , t ) ξ ξ = 0 = 0 , y i ( ξ , t ) ξ ξ = 1 = 0 , x i ( 0 ) = x i 0 , y i ( ξ , 0 ) = y i 0 ( ξ ) ,
where ( ξ , t ) [ 0 , 1 ] × [ 0 , ) , respectively, mean the spatial variable and time variable; x i ( t ) , y i ( ξ , t ) R n are the states; u i ( t ) , U i ( ξ , t ) R n are the control inputs; x i 0 , y i 0 ( ξ ) are bounded and y i 0 ( ξ ) is continuous; α is a positive scalar; i { 1 , 2 , , N } ; and f ( · ) , w ( · ) , p ( · ) , q ( · ) R n are sufficiently smooth nonlinear functions.
Define consensus error e i ( t ) = Δ x i ( t ) 1 N j = 1 N x j ( t ) and ε i ( ξ , t ) = Δ y i ( ξ , t ) 1 N j = 1 N y j ( ξ , t ) .
Definition 1.
For the leaderless PDE-ODEMAS (1), (2) with any initial conditions, if
lim t e i ( t ) 0 , lim t ε i ( ξ , t ) 0 ,
for any i { 1 , 2 , , N } , then the leaderless PDE-ODEMAS (1), (2) achieves consensus.
Lemma 1
([40]). Let κ be a differentiable function with κ ( 0 ) = 0 and κ ( 1 ) = 0 , then
0 1 κ T ( s ) κ ( s ) d s π 2 0 1 κ ˙ T ( s ) κ ˙ ( s ) d s .
Lemma 2
([41]). For an undirected connected graph with Laplacian matrix L, and x R n such that 1 N T x = 0 , then
λ 2 ( L ) x T x x T L x .
If Laplacian matrix L R N × N is symmetric, then 0 = λ 1 ( · ) < λ 2 ( · ) λ N ( · ) . The smallest nonzero eigenvalue of λ 2 ( · ) is known as the algebraic connectivity of graphs [41].
Assumption A1.
Assume f ( · ) , p ( · ) , q ( · ) , w ( · ) satisfy the Lipschitz condition, i.e., for any ν 1 and ν 2 R n , there exist scalars γ 1 , γ 2 , γ 3 , γ 4 > 0 such that
| f ( ν 1 ) f ( ν 2 ) | γ 1 | ν 1 ν 2 | , | p ( ν 1 ) p ( ν 2 ) | γ 2 | ν 1 ν 2 | , | q ( ν 1 ) q ( ν 2 ) | γ 3 | ν 1 ν 2 | , | w ( ν 1 ) w ( ν 2 ) | γ 4 | ν 1 ν 2 | .

3. Consensus Control of the Leaderless PDE-ODEMAS

To achieve consensus of the leaderless PDE-ODEMAS (1), the consensus controller is designed as:
u i ( t ) = d j = 1 N a i j ( x j ( t ) x i ( t ) ) , U i ( ξ , t ) = k j = 1 N b i j ( y j ( ξ , t ) y i ( ξ , t ) ) ,
where d and k are the coupling strengths to be determined, i { 1 , 2 , , N } . Assume that the topological structure A = ( a i j ) N × N is defined as: a i j = a j i > 0 ( i j ) if the agent i connects to j, otherwise a i j = 0 ( i j ) ; a i i = 0 . The topological structure B = ( b i j ) N × N is defined the same as A.
The consensus error system can be obtained from (1), (2), and (7) that
e ˙ i ( t ) = f ( x i ( t ) ) 1 N j = 1 N f ( x j ( t ) ) + 0 1 w ( y i ( ξ , t ) ) d ξ 1 N j = 1 N 0 1 w ( y j ( ξ , t ) ) d ξ + d j = 1 N a i j ( x j ( t ) x i ( t ) ) , ε i ( ξ , t ) t = α 2 ε i ( ξ , t ) ξ 2 + p ( y i ( ξ , t ) ) 1 N j = 1 N p ( y j ( ξ , t ) ) + q ( x i ( t ) ) 1 N j = 1 N q ( x j ( t ) ) + k j = 1 N b i j ( y j ( ξ , t ) y i ( ξ , t ) ) ,
such that
ε i ( ξ , t ) ξ ξ = 0 = 0 , ε i ( ξ , t ) ξ ξ = 1 = 0 , e i ( 0 ) = e i 0 ( ξ ) , ε i ( ξ , 0 ) = ε i 0 ( ξ ) ,
where e i 0 = Δ x i 0 1 N j = 1 N x j 0 and ε i 0 ( ξ ) = Δ y i 0 ( ξ ) 1 N j = 1 N y j 0 ( ξ ) .
Theorem 1.
Under Assumption 1, assume the graphs A and B are connected. Using the controller (7), the leaderless PDE-ODEMAS (1), (2) achieves consensus if
d > γ 1 + 1 2 γ 3 2 + 1 2 λ 2 ( L a ) , k > max { γ 2 + 1 2 γ 4 2 + 1 2 α π 2 λ 2 ( L b ) , 0 } .
Proof. 
Consider the following Lyapunov function as
V 1 ( t ) = 1 2 i = 1 N e i T ( t ) e i ( t ) + 1 2 i = 1 N 0 1 ε i T ( ξ , t ) ε i ( ξ , t ) d ξ .
We have
V 1 ˙ ( t ) = i = 1 N e i T ( t ) e ˙ i ( t ) + i = 1 N 0 1 ε i T ( ξ , t ) ε i ( ξ , t ) t d ξ = i = 1 N e i T ( t ) [ f ( x i ( t ) ) 1 N j = 1 N f ( x j ( t ) ) ] + i = 1 N e i T ( t ) [ 0 1 w ( y i ( ξ , t ) ) d ξ 1 N j = 1 N 0 1 w ( y j ( ξ , t ) ) d ξ ] + i = 1 N e i T ( t ) d j = 1 N a i j ( e j ( t ) e i ( t ) ) + i = 1 N 0 1 ε i T ( ξ , t ) Θ 2 ε i ( ξ , t ) ξ 2 d ξ + i = 1 N 0 1 ε i T ( ξ , t ) ( p ( y i ( ξ , t ) ) 1 N j = 1 N p ( y j ( ξ , t ) ) ) d ξ + i = 1 N 0 1 ε i T ( ξ , t ) ( q ( x i ( t ) ) 1 N j = 1 N q ( x j ( t ) ) ) d ξ + i = 1 N 0 1 ε i T ( ξ , t ) k j = 1 N b i j ( ε j ( ξ , t ) ε i ( ξ , t ) ) d ξ .
According to the matrix property,
i = 1 N e i T ( t ) d j = 1 N a i j ( e j ( t ) e i ( t ) ) = d e T ( t ) ( L a I n ) e ( t ) d λ 2 ( L a ) e T ( t ) e ( t ) ,
and
i = 1 N 0 1 ε i T ( ξ , t ) k j = 1 N b i j ( ε i ( ξ , t ) ε j ( ξ , t ) ) d ξ = k 0 1 ε T ( ξ , t ) ( L b I n ) ε ( ξ , t ) d ξ k λ 2 ( L b ) 0 1 ε T ( ξ , t ) ε ( ξ , t ) d ξ ,
where λ 2 ( · ) denotes the smallest nonzero eigenvalue of ·, L a , i j = a i j when i j , L a , i i = j = 1 N a i j , L b , i j = b i j when i j , L b , i i = j = 1 N b i j . Therefore, L a , L b are Laplacian matrices. Using Lemma 1, for α > 0 ,
0 1 i = 1 N ε i T ( ξ , t ) α ε i , ξ ξ ( ξ , t ) d ξ = α 0 1 ε ξ T ( ξ , t ) ε ξ ( ξ , t ) d ξ α π 2 0 1 ε T ( ξ , t ) ε ( ξ , t ) d ξ .
Using Assumption 1, owing to i = 1 N e i T ( t ) ( f ( 1 N j = 1 N x j ( t ) ) 1 N j = 1 N f ( x j ( t ) ) ) = 0 and i = 1 N ε i T ( ξ , t ) ( f ( 1 N j = 1 N p ( y i ( ξ , t ) ) ) 1 N j = 1 N p ( y i ( ξ , t ) ) = 0 , we have
i = 1 N e i T ( t ) ( f ( x i ( t ) ) 1 N j = 1 N f ( x j ( t ) ) ) γ 1 i = 1 N e i 2 ( t ) ,
and
i = 1 N 0 1 ε i T ( ξ , t ) ( p ( y i ( ξ , t ) ) 1 N j = 1 N p ( y j ( ξ , t ) ) ) d ξ γ 2 0 1 ε i 2 ( ξ , t ) d ξ .
In the same way,
i = 1 N 0 1 ε i T ( ξ , t ) ( q ( x i ( t ) ) 1 N j = 1 N q ( x j ( t ) ) ) d ξ = i = 1 N 0 1 ε i T ( ξ , t ) ( q ( x i ( t ) ) q ( 1 N j = 1 N x j ( t ) ) ) d ξ 1 2 i = 1 N 0 1 ε i T ( ξ , t ) ε i ( ξ , t ) d ξ + 1 2 i = 1 N 0 1 ( q ( x i ( t ) ) q ( 1 N j = 1 N x j ( t ) ) ) 2 d ξ 1 2 i = 1 N 0 1 ε i T ( ξ , t ) ε i ( ξ , t ) d ξ + 1 2 γ 3 2 i = 1 N e i 2 ( t ) ,
and
i = 1 N e i T ( t ) 0 1 ( w ( y i ( ξ , t ) ) 1 N j = 1 N w ( y j ( ξ , t ) ) ) d ξ = i = 1 N e i T ( t ) 0 1 ( w ( y i ( ξ , t ) ) w ( 1 N j = 1 N y j ( ξ , t ) ) ) d ξ 1 2 i = 1 N [ e i T ( t ) e i ( t ) d ξ + 0 1 ( w ( y i ( ξ , t ) ) w ( 1 N j = 1 N y j ( ξ , t ) ) ) 2 d ξ ] 1 2 i = 1 N e i T ( t ) e i ( t ) + 1 2 i = 1 N γ 4 2 0 1 ε i 2 ( ξ , t ) d ξ .
Substituting (13)–(19) into (12),
V 1 ˙ ( t ) ρ 1 e T ( t ) e ( t ) ρ 2 0 1 ε 2 ( ξ , t ) d ξ 2 ρ V ( t ) ,
where e = Δ [ e 1 T , e 2 T , , e N T ] T , ε = Δ [ ε 1 T , ε 2 T , , ε N T ] T , ρ 1 = Δ γ 1 1 2 γ 3 2 1 2 + d λ 2 ( L a ) , ρ 2 = Δ γ 2 1 2 γ 4 2 1 2 + α π 2 + k λ 2 ( L b ) , and ρ = Δ min { ρ 1 , ρ 2 } .
Taking d and k as (10) yields,
ρ 1 > 0 , ρ 2 > 0 .
It follows from (20) and (21) that V 1 ( t ) V 1 ( 0 ) exp { 2 ρ t } , which implies e i ( t ) 0 and ε i ( ξ , t ) 0 as t This completes the proof. □

4. Consensus Control of the Leader-Following PDE-ODEMAS

The leader agent is supposed to be
x ˙ 0 ( t ) = f ( x 0 ( t ) ) + 0 1 w ( y 0 ( ξ , t ) ) d ξ , y 0 ( ξ , t ) t = α 2 y 0 ( ξ , t ) ξ 2 + p ( y 0 ( ξ , t ) ) + q ( x 0 ( t ) ) ,
such that
y 0 ( ξ , t ) ξ ξ = 0 = 0 , y 0 ( ξ , t ) ξ ξ = 1 = 0 , x 0 ( 0 ) = x 0 0 , y 0 ( ξ , 0 ) = y 0 0 ( ξ ) ,
where x 0 0 , y 0 0 ( ξ ) are bounded and y 0 0 ( ξ ) is continuous.
The leader-following consensus controller is designed as:
u i ( t ) = d [ j = 1 N a i j ( x j ( t ) x i ( t ) ) + δ i ( x 0 ( t ) x i ( t ) ) ] , U i ( ξ , t ) = k [ j = 1 N b i j ( y j ( ξ , t ) y i ( ξ , t ) ) + ρ i ( y 0 ( ξ , t ) y i ( ξ , t ) ) ] ,
where δ i > 0 if x i can obtain the information of x 0 ; otherwise, δ i = 0 ; and ρ i > 0 if y i can obtain the information of y 0 ; otherwise, ρ i = 0 .
Let e ˜ i ( t ) = x i ( t ) x 0 ( t ) and ε ˜ i ( ξ , t ) = y i ( ξ , t ) y 0 ( ξ , t ) . The leader-following consensus error system is obtained as
e ˜ ˙ i ( t ) = f ( x i ( t ) ) f ( x 0 ( t ) ) + 0 1 w ( y i ( ξ , t ) ) d ξ 0 1 w ( y 0 ( ξ , t ) ) d ξ d j = 1 N g i j e ˜ j ( t ) , ε ˜ i ( ξ , t ) t = α 2 ε ˜ i ( ξ , t ) ξ 2 + p ( y i ( ξ , t ) ) p ( y 0 ( ξ , t ) ) + q ( x i ( t ) ) q ( x 0 ( t ) ) k j = 1 N h i j ε ˜ j ( ξ , t ) ,
such that
ε ˜ i ( ξ , t ) ξ ξ = 0 = 0 , ε ˜ i ( ξ , t ) ξ ξ = 1 = 0 , e ˜ i ( 0 ) = e ˜ i 0 ( ξ ) , ε ˜ i ( ξ , 0 ) = ε ˜ i 0 ( ξ ) ,
where G = [ g i j ] = L A + d i a g { δ i } , H = [ h i j ] = L B + d i a g { ρ i } , e ˜ i 0 = Δ x i 0 x 0 0 and ε ˜ i 0 ( ξ ) = Δ y i 0 ( ξ ) y 0 0 ( ξ ) .
Definition 2.
For the leader-following PDE-ODEMAS (22), (23) with any initial conditions, if
lim t e ˜ i ( t ) 0 , lim t | | ε ˜ i ( ξ , t ) | | 0 ,
for any i { 1 , 2 , , N } , then the leader-following PDE-ODEMAS (22), (23) achieves consensus.
Theorem 2.
Under Assumption 1, assume the graphs A and B are connected. Using the controller (26), the leader-following PDE-ODEMAS (1) achieves consensus if
d > γ 1 + 1 2 γ 3 2 + 1 2 λ min ( G ) , k > max { γ 2 + 1 2 γ 4 2 + 1 2 α π 2 λ min ( H ) , 0 } .
Proof. 
Consider the Lyapunov functional candidate as
V 2 ( t ) = 1 2 i = 1 N e ˜ i T ( t ) e ˜ i ( t ) + 1 2 i = 1 N 0 1 ε ˜ i T ( ξ , t ) ε ˜ i ( ξ , t ) d ξ .
One has
V 2 ˙ ( t ) = i = 1 N e ˜ i T ( t ) e ˜ ˙ i ( t ) + i = 1 N 0 1 ε ˜ i T ( ξ , t ) ε ˜ i ( ξ , t ) t d ξ = i = 1 N e ˜ i T ( t ) ( f ( x i ( t ) ) f ( x 0 ( t ) ) ) + i = 1 N e ˜ i T ( t ) [ 0 1 w ( y i ( ξ , t ) ) d ξ 0 1 w ( y 0 ( ξ , t ) ) d ξ ] i = 1 N e ˜ i T ( t ) d j = 1 N g i j e ˜ j ( t ) + i = 1 N 0 1 ε ˜ i T ( ξ , t ) α 2 ε ˜ i ( ξ , t ) ξ 2 d ξ + i = 1 N 0 1 ε ˜ i T ( ξ , t ) ( p ( y i ( ξ , t ) ) p ( y 0 ( ξ , t ) ) ) d ξ + i = 1 N 0 1 ε ˜ i T ( ξ , t ) ( q ( x i ( t ) ) q ( x 0 ( t ) ) ) d ξ i = 1 N 0 1 ε ˜ i T ( ξ , t ) k j = 1 N h i j ε ˜ j ( ξ , t ) d ξ .
Since G and H are symmetric positive definite matrices,
i = 1 N e ˜ i T ( t ) d j = 1 N g i j ( e ˜ j ( t ) ) = d e ˜ T ( t ) ( G I n ) e ˜ ( t ) d λ min ( G ) e ˜ T ( t ) e ˜ ( t ) ,
and
i = 1 N 0 1 ε ˜ i T ( ξ , t ) k j = 1 N h i j ε ˜ j ( ξ , t ) d ξ = k 0 1 ε ˜ T ( ξ , t ) ( H I n ) ε ˜ ( ξ , t ) d ξ k λ min ( H ) 0 1 ε ˜ T ( ξ , t ) ε ˜ ( ξ , t ) d ξ ,
where e ˜ = Δ [ e ˜ 1 T , e ˜ 2 T , , e ˜ N T ] T , ε ˜ = Δ [ ε ˜ 1 T , ε ˜ 2 T , , ε ˜ N T ] T , λ min ( · ) denotes the smallest nonzero eigenvalue and G, H are symmetric positive definite matrices.
Considering (13)–(19), and substituting (31)–(32) into (30),
V 2 ˙ ( t ) ( γ 1 + 1 2 γ 3 2 + 1 2 d λ min ( G ) ) e ˜ T ( t ) e ˜ ( t ) + ( γ 2 + 1 2 γ 4 2 + 1 2 α π 2 k λ min ( H ) ) 0 1 ε ˜ T ( ξ , t ) ε ˜ ( ξ , t ) d ξ .
In a similar way to the analysis in Theorem 1, the proof can be completed. □
Remark 1.
Many papers have investigated stabilization control methods for PDE-ODE systems [29,30,31,42], while this paper investigates consensus control for PDE-ODE-based MASs, considering control based on coupling.
Remark 2.
Many significant results were obtained for consensus control modeled by PDEMASs [32,33,34,35,36,37,38,39]. Different from PDEMASs, this paper investigates consensus control methods for PDE-ODEMASs, as well as considering leaderless and leader-following models.

5. Numerical Simulation

Example 1.
Consider the leaderless PDE-ODEMAS (1) and (2) with coefficients as
α = 0.8 , f ( · ) = w ( · ) = p ( · ) = q ( · ) = tanh ( · ) , a i j = b i j = 1 , and i j , for i , j = 1 , 2 , 3 , 4 , n = 2 ,
and with random initial conditions.
It is obvious that f ( · ) , p ( · ) , q ( · ) , and w ( · ) satisfy the Lipschitz condition with γ 1 = γ 2 = γ 3 = γ 4 = 1 .
With Theorem 1, according to (10), d > 0.50 and k > 0 are obtained. Therefore, we take d = 0.51 and k = 0.01 . It can be seen in Figure 1 and Figure 2 that the leaderless PDE-ODEMAS achieves consensus with control gains d = 0.51 and k = 0.01 .
From another point of view, d = 0.49 and k = 0 do not satisfy (10). It can be seen in Figure 3 and Figure 4 that the leaderless PDE-ODEMAS cannot achieve consensus with control gains d = 0.49 and k = 0 .
Example 2.
Consider a nonlinear leader-following PDE-ODEMAS composed of 1 leader agent (22) and (23) and 4 following agents (1) and (2) with coefficients the same as Example 1. In the same way, γ 1 = γ 2 = γ 3 = γ 4 = 1 are obtained. Choose δ i = ρ i = 1 . With Theorem 2, according to (28), d > 2.0 and k > 0 are obtained. Therefore, we take d = 2.1 and k = 0.1 . It can be seen in Figure 5 and Figure 6 that the leader-following PDE-ODEMAS achieves consensus.
From another point of view, d = 1.9 and k = 0 do not satisfy (28). It can be seen in Figure 7 and Figure 8 that the leader-following PDE-ODEMAS cannot achieve consensus with control gains d = 0.49 and k = 0 .

6. Conclusions

This paper has studied consensus control of the PDE-ODEMASs. First, a consensus controller of the leaderless PDE-ODEMASs was designed. We have shown that the cluster consensus behavior can be reached for the given coupling strengths for the leaderless PDE-ODEMASs. Then, a consensus controller in the leader-following PDE-ODEMASs was designed. Leader-following consensus behavior can be arrived at for the given coupling strengths for the leader-following PDE-ODEMASs. In numerical simulations, it shows the obtained gains according to the proposed methods can ensure consensus of both leaderless and leader-following PDE-ODEMASs. On the contrary, the control with gains a little bit less than those according to the proposed methods cannot achieve consensus. There are often a great number of agents in the real world and, in future, pinning consensus, only controlling a few agents of the PDE-ODEMASs, will be studied, as well as time delays.

Author Contributions

Methodology, A.Z.; software, K.Y. and Y.J.; writing—original draft preparation, X.N.; writing—review and editing, C.Y. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Major Science and Technology Special Project of Yunnan Province under grant number 202102AD080002, by the Natural Science Foundation of Shandong Province under grant number ZR2019YQ28, the Development Plan of Youth Innovation Team of Universities in Shandong Province under grant number 2019KJN007.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. e i ( t ) withthe control gains d = 0.51 and k = 0.01 in Example 1.
Figure 1. e i ( t ) withthe control gains d = 0.51 and k = 0.01 in Example 1.
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Figure 2. ε i ( ξ , t ) with the control gains d = 0.51 and k = 0.01 in Example 1.
Figure 2. ε i ( ξ , t ) with the control gains d = 0.51 and k = 0.01 in Example 1.
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Figure 3. e i ( t ) with the control gains d = 0.49 and k = 0 in Example 1.
Figure 3. e i ( t ) with the control gains d = 0.49 and k = 0 in Example 1.
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Figure 4. ε i ( ξ , t ) with the control gains d = 0.49 and k = 0 in Example 1.
Figure 4. ε i ( ξ , t ) with the control gains d = 0.49 and k = 0 in Example 1.
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Figure 5. e ˜ i ( t ) with the control gains d = 2.1 and k = 0.1 in Example 2.
Figure 5. e ˜ i ( t ) with the control gains d = 2.1 and k = 0.1 in Example 2.
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Figure 6. ε ˜ i ( ξ , t ) with the control gains d = 2.1 and k = 0.1 in Example 2.
Figure 6. ε ˜ i ( ξ , t ) with the control gains d = 2.1 and k = 0.1 in Example 2.
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Figure 7. e ˜ i ( t ) with the control gains d = 1.9 and k = 0 in Example 2.
Figure 7. e ˜ i ( t ) with the control gains d = 1.9 and k = 0 in Example 2.
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Figure 8. ε ˜ i ( ξ , t ) with control gains d = 1.9 and k = 0 in Example 2.
Figure 8. ε ˜ i ( ξ , t ) with control gains d = 1.9 and k = 0 in Example 2.
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Ni, X.; Yi, K.; Jiang, Y.; Zhang, A.; Yang, C. Consensus Control of Leaderless and Leader-Following Coupled PDE-ODEs Modeled Multi-Agent Systems. Mathematics 2022, 10, 201. https://doi.org/10.3390/math10020201

AMA Style

Ni X, Yi K, Jiang Y, Zhang A, Yang C. Consensus Control of Leaderless and Leader-Following Coupled PDE-ODEs Modeled Multi-Agent Systems. Mathematics. 2022; 10(2):201. https://doi.org/10.3390/math10020201

Chicago/Turabian Style

Ni, Xu, Kejia Yi, Yiming Jiang, Ancai Zhang, and Chengdong Yang. 2022. "Consensus Control of Leaderless and Leader-Following Coupled PDE-ODEs Modeled Multi-Agent Systems" Mathematics 10, no. 2: 201. https://doi.org/10.3390/math10020201

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