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Article

Consensus of Fixed and Adaptive Coupled Multi-Agent Systems with Communication Delays

1
College of Intelligent Technology and Engineering, Chongqing University of Science and Technology, Chongqing 401331, China
2
College of Information Engineering, Tarim University, Alar City 843300, China
3
College of Electrical Engineering, Chongqing University of Science and Technology, Chongqing 401331, China
*
Authors to whom correspondence should be addressed.
Submission received: 25 November 2022 / Revised: 28 January 2023 / Accepted: 31 January 2023 / Published: 7 March 2023

Abstract

:
This paper aims to solve the consensus problem of three different types of multi-agent systems under fixed communication delay. For these three different types of multi-agent systems, three new control protocols are constructed to solve the consensus issue of multi-agent systems with coupling weights, which is rarely considered in other related articles. For fixed coupled multi-agent systems, a new control strategy is designed by Lyapunov theory, matrix theory, and the inequality method to ensure the consensus of multi-agent systems. An adaptive coupling weight updating scheme is proposed for adaptive coupling multi-agent systems to achieve the consensus state of the multi-agent systems. Finally, experimental results show the effectiveness of the proposed three different algorithms.

1. Introduction

Now, more and more coordination control methods have been applied to smart grid power allocation [1], tracking control [2], Unmanned Aerial Vehicle (UAV) formation control [3], and others. The design of a cooperative control protocol determines whether the whole system can reach consensus in multi-agent systems. Through the transmission of information between two adjacent agents, a control protocol is designed to make the state values of all agents reach a state [4]. For achieving the consensus of multi-agent systems, the design of a control protocol has attracted much consideration.
It is worth noting that for the control strategy of multi-agent systems, there are currently two main popular control models: the leader–follower model and the leaderless model. Under the action of the cooperative control protocol, all the state values of the follower agents can reach the same state value as the followers [5,6,7]. In [5], Sader et al. studied the problem that leader–follower multi-agent systems exit fuzzy fault-tolerant tracking consensus. Zhang et al. [6] investigated the linear leader–follower multiagent systems problem with nonzero leader input. In [7], Tian et al. researched the leader–following multi-agent systems fixed-time problem of high-order with external disturbances. In addition, leaderless multi-agent models have been extensively studied [8,9,10]. In the leaderless system model, the information between agents does not need to be exchanged with the leader, only agents exchange information with neighboring agents. In [8], Tian et al. proposed the consensus problem of second-order leaderless multi-agent systems with parametric uncertainties. Rezaee and Abdollahi [9] investigated the problem of strict-feedback nonlinear leaderless multi-agent systems with control directions. Other than that, Difilippo et al. [10] studied the problem of a leaderless agents system by forming a uniformly spaced string. The above-mentioned leader–follower model and leaderless model give us a lot of inspiration for our work in this paper.
It is worth noting that the system often has time delays in the practical application process [11,12,13]. In recent years, more and more scholars have started to extensively study the lag synchronization problem of the multi-agent system [14,15,16,17,18]. Ref. [14] mainly studied the generalized delay synchronization problem of weighted complex networks of time delays. The authors designed an appropriate controller to achieve synchronization in the time delay state by using the Lyapunov function and inequality techniques. Unlike [14], Xie et al. [15] set an observer to detect the state between the agent and its neighbors without considering the factor of network weight where a control strategy was designed for a multi-agent system. For the system in the nonlinear state, the predictor was designed in the literature [16] to suppress the disturbance factors and achieve a consensus effect. To reduce the influence of input delay in a multi-agent system, the consensus issue was transformed into a robust H consensus control issue by designing the control output in [17]. In [18], a method based on frequency domain analysis was proposed to carry out the consensus control of a multi-agent system with coupling weight.
However, in the multi-agent system, if the communication between agents is delayed or interrupted, the consensus of the multi-agent system will be reduced or destroyed [19,20,21,22]. In [19], the double-tree-from transformations method was introduced to solve the communication delay problem between agents. Different from [19], Ref. [20] divided a group into many clusters and then conducted modeling processing on aperiodic sampling and communication delay, obtaining the necessary conditions for forming clusters through detailed theoretical analysis. For the consensus issue of a fixed multi-agent system, the solution proposed in [21] was to establish a model with linear parameters, where a kind of directed fixed adaptive consensus algorithm was proposed for satisfying the equilibrium condition. Lu [23] proposed a new distributed primal-dual algorithm for a continuous-time multi-agent system under a time-varying graph to address the problem of distributed resource allocation. In paper [24], the problem of a nonlinear multiagent system under time-varying delay is taken into account. They have given a good solution strategy for dealing with communication delays in multi-agent systems. Motivated by the above research results, this paper mainly studies the adaptive and fixed coupling consensus of multi-agent systems with communication delays.
Inspired by the discussions above, this paper on the consensus problem of three different types of multi-agent control under communication delay. We design three different control protocols to achieve the consensus of multi-agent systems. The main innovation points are listed as follows:
(1) Different from the paper [14], this paper studies the consensus problem of fixed and adaptive coupled multi-agent systems with communication delays, and our research is more general.
(2) Three new control protocols are designed for three different types of multi-agent systems. For adaptive coupling multi-agent systems, an adaptive coupling weight updating scheme is proposed to ensure consensus for two cases in an adaptive coupling situation.
The rest of this paper is organized as follows. Some notations are given in Section 2. Section 3 studies consensus control of fixed and adaptive coupling multi-agent systems with communication delays. In Section 4, several simulations are presented to verify the correctness of the theoretical results. Finally, the conclusion is written in Section 5.

2. Problem Formulation

Notations

The n-dimensional Euclidean space is R n . The notation R n × n denotes the set of n × n matrix spaces. The notation I N denotes an identity matrix with appropriate dimensions. The Euclidean norm is | | · | | . The Kronecker product is ⊗. The notation W T is the transpose of a matrix W. The notation λ 1 . represents the maximum eigenvalues of corresponding matrix. The notation λ 2 . represents the minimum eigenvalues of corresponding matrix. The notation N i is a neighbor of the ith node.
In this part, we design three different control strategies for three different types of multi-agent systems, and prove the stability bywith the Lyapunov function.
Case 1: The consensus of fixed coupling leaderless multi-agent systems with communication delays. Consider a fixed coupling multi-agent system with N agents, where the dynamic of the ith agent is described by
x ˙ i ( t ) = A x i ( t ) + c j = 1 N G i j Γ x j ( t ) + u i ,
where i = 1 , 2 , , N ,   x i R n is the state vector of node i, u i R n represents the control input vector of node i, A R n × n is a constant matrix, c > 0 represents the coupling strength, Γ R n × n denotes the inner coupling matrix. G i j R N × N stands for the outer coupling weight, where satisfies G i j = G j i > 0 if there is a connection between node i and node j and G i j = G j i = 0 otherwise, and G i i = j = 1 , j i N G i j . Assume that the network of system (1) is connected in this paper.
Remark 1.
Compared with [20], there are internal and external coupling in multi-agent systems in this paper. Such systems are more applicable in reality.
Definition 1.
The multi-agent system (1) can reach an average consensus if the following condition is satisfied.
lim t + x i t x ¯ t = 0 , x ¯ t = 1 N i = 1 N x i t .
For multi-agent systems (1), the control protocol is designed as
u i t = k j = 1 N x j t γ j i x ¯ t γ j i x i t x ¯ t x i t x ¯ t ,
where k > 0 denotes control gain and γ j i > 0 denotes communication delay of agent j to agent i. In this paper, the communication delay is a fixed delay, which means that it does not change with time. Define error σ i t = x i t x ¯ t . Then
σ ˙ i t = x ˙ i t x ¯ ˙ t = A x i ( t ) + c j = 1 N G i j Γ x j ( t ) + u i t 1 N i = 1 N A x i t + c j = 1 N G i j Γ x j ( t ) + u i t = A σ i t + c j = 1 N G i j Γ e j t + u i t 1 N i = 1 N u i t .
Case 2: A fixed coupling leader–following multi-agent system with N agents, where the dynamic of ith agent is described by
x ˙ i ( t ) = A x i ( t ) + c j = 1 N G i j Γ x j ( t ) + u i , i = 1 , 2 , , N 1 x ˙ 0 ( t ) = A x 0 ( t ) ,
where x i R n denotes the state of following agents and x 0 R n denotes the state of leader agent. The notations G i j and Γ are defined in (1).
Definition 2.
The multi-agent system (5) can reach leader–following consensus if following condition satisfies.
lim t + x i t x 0 t = 0 .
For multi-agent systems (5), the control protocol is designed as
u i t = k j = 1 N x j t γ j i x 0 t γ j i x i t x 0 t x i t x 0 t ,
where k > 0 denotes control gain and γ j i > 0 denotes communication delay. Define error σ i t = x i t x 0 t , then
σ ˙ i t = x ˙ i t x ˙ 0 t = A σ i t + c j = 1 N G i j Γ σ j t + u i t .
Case 3: Consider an adaptive coupling leaderless multi-agent system with N agents, where the dynamic of ith agent is described by
x ˙ i ( t ) = A x i ( t ) + c j = 1 N G i j t Γ x j ( t ) + u i ,
where i = 1 , 2 , , N , x i R n is the state of agent, G i j t is time-varying matrix, where satisfies G i j t = G j i t > 0 j i . If there is connection between agent i and agent j and G i j t = 0 . Furthermore, G i i t = j = 1 , j i N G i j t when i = j . A R n × n is a constant matrix. c > 0 is a coupling strength. Γ R N × N is a inner coupling matrix. u i R n represents the control input vector of node i. For system (9), the following controller is designed
u i t = j N i k x j t γ j i x ¯ t γ j i x i t x ¯ t ,
where k > 0 and γ j i > 0 is communication delay of agent j to agent i. Let error σ i t = x i t x ¯ t , then
σ ˙ i t = x ˙ i t x ¯ ˙ t = A σ i t + c j = 1 N G i j t Γ σ j t + u i t 1 N i = 1 N u i t .
The adaptive strategy for updating the coupling weight G i j t is designed as follows:
G ˙ i j t = a i j σ i t σ j t T Γ σ i t σ j t , i f i , j ε j i G ˙ i j t , i f i = j 0 , o t h e r w i s e ,
where a i j = a j i > 0 and ε denote the set of edges in a multi-agent system (9).

3. Main Results

In this section, the sufficient conditions of consensus of fixed and adaptive coupled multi-agent systems with communication delays will be provided. We give the specifically designed three new control protocols and the matrix inequality conditions.
Theorem 1.
The fixed coupling multi-agent systems (1) achieve average consensus under protocol (3) if there exists matrix P such that
I N P A + A T P + c G P Γ + Γ P 2 k I N P 0 .
Proof. 
Select the Lyapunov functional as follows:
V 1 σ t = i = 1 N σ i T t P σ i t + k i = 1 N j N i t γ j i t σ j T γ P σ j γ d γ .
The derivation of time on both sides of Equation (14) can be obtained
V ˙ 1 σ t = 2 i = 1 N σ i T t P σ ˙ i t + k i = 1 N j N i σ j T t P σ j t σ j T t γ j i P σ j t γ j i .
Combined with Equation (4), we obtain
V ˙ 1 σ t = 2 i = 1 N σ i T t P σ ˙ i t + k i = 1 N j N i σ j T t P σ j t σ j T t γ j i P σ j t γ j i = 2 i = 1 N σ i T t P A σ i t + j = 1 N c G i j Γ σ j t k σ j t + k j N i σ j t γ j i σ i t + k i = 1 N j N i σ j T t P σ j t σ j T t γ j i P σ j t γ j i .
Since the system (1) is undirected, Equation (16) can be rewritten as
V ˙ 1 σ t = i = 1 N σ i T t P A + A T P σ i t + 2 i = 1 N j = 1 N c G i j σ i T t P Γ σ j t + k i = 1 N j N i σ j T t P σ j t σ j T t γ j i P σ j t γ j i k i = 1 N j N i σ j T t γ j i P σ j t γ j i 2 k i = 1 N σ i T t P σ i t + 2 k i = 1 N j N i σ i T t P σ j t γ j i k i = 1 N j N i σ i T t P σ i t = σ T c G P Γ + Γ P T + I N P A + A T P 2 k I N P σ t k W 1 t ,
where W 1 t = i = 1 N j N i σ i t σ j t γ j i T P σ i t σ j t γ j i . Since I N P A + A T P   + c G P Γ + Γ P 2 k I N P 0 , V ˙ 1 e t < 0 . According to Definition 1, the systems (1) can achieve average consensus. □
Theorem 2.
The fixed coupling multi-agent systems (6) achieve leader–following consensus under protocol (7) if the following condition is satisfied
I N A + A T + 2 c G Γ 2 k I N I n 0 .
Proof. 
The Lyapunov functional is selected
V 2 σ t = i = 1 N σ i T t σ i t + k i = 1 N j N i t γ j i t σ j T γ σ j γ d γ .
The derivation of time on both sides of Equation (19) can be obtained
V ˙ 2 σ t = 2 i = 1 N σ i T t σ ˙ i t + k i = 1 N j N i σ j T t σ j t σ j T t γ j i σ j t γ j i .
Combine with Equation (8), obtaining
V ˙ 2 σ t = 2 i = 1 N σ i T t σ ˙ i t + k i = 1 N j N i σ j T t σ j t σ j T t γ j i σ j t γ j i = 2 i = 1 N σ i T t A σ i t + j = 1 N c G i j Γ σ j t k σ j t + k j N i σ j t γ j i σ i t + j N i σ j T t σ j t σ j T t γ j i σ j t γ j i = i = 1 N σ i T t A + A T σ i t + 2 i = 1 N j = 1 N c G i j σ i T t Γ σ j t k i = 1 N j N i σ j T t γ j i σ j t γ j i 2 k i = 1 N σ i T t σ i t + 2 k i = 1 N j N i σ i T t σ j t γ j i k i = 1 N j N i σ i T t σ i t = σ T 2 c G Γ + I N A + A T 2 k I N I n σ t k W 2 t ,
where W 2 t = i = 1 N j N i σ i t σ j t γ j i T σ i t σ j t γ j i .
Since I N A + A T + 2 c G Γ 2 k I N I n 0 , V ˙ 2 σ t < 0 . According to Definition 2, the systems (6) can achieve leader–following consensus. □
Theorem 3.
The multi-agent system (9) realizes average consensus under controller (10) and the adaptive strategy (12).
Proof. 
The Lyapunov functional is chosen as follows
V 3 σ t = i = 1 N σ i T t σ i t + i = 1 N j N i c G i j t α i j 2 a i j + k i = 1 N j N i t γ j i t σ j T s σ j s d s ,
where α i j = α j i > 0 i j and α i j = 0 if and only if G i j t = 0 . The derivation of time on both sides of Equation (22) can be obtained
V ˙ 3 σ t = i = 1 N σ T i t A + A T σ i t + 2 i = 1 N j = 1 N c G i j t σ T i t Γ σ j t + 2 i = 1 N σ i T t j N i k σ j t γ j i σ i t + k i = 1 N j N i k σ j T t σ j t σ j T t γ j i σ j t γ j i + i = 1 N j N i c G i j t α i j σ i t σ j t T Γ σ i t σ j t .
Since
i = 1 N j N i c G i j t α i j σ i t σ j t T Γ σ i t σ j t = 2 c i = 1 N j N i G i j t α i j σ i T t Γ σ j t .
Combining Equation (23) with Equation (24), one has
V ˙ 3 σ t = σ t T I N A + A T σ t + i = 1 N j = 1 N 2 c α i j σ i t T Γ σ j t k W 3 t σ t T I N A + A T + 2 c α Γ σ t k W 3 t ,
where W 3 t = i = 1 N j N i σ i t σ j t γ j i T σ i t σ j t γ j i , σ t =   σ 1 t T , σ 2 t T , , σ N t T T ,   α = α i j N × N R N × N . Since the network of system (9) is connected, G i j t 0 . Obviously, there is a unitary matrix H such that H T α H = Ω = d i a g ω 1 , ω 2 , , ω N , where 0 = ω 1 > ω 2 ω 3 ω N . So from Equation (25) we can obtain
V ˙ 3 σ t σ t T I N A + A T + 2 c ω 2 Γ σ t k W 3 t σ t T λ 1 A T + A + 2 c ω 2 λ 2 Γ σ t k W 3 t .
Let us pick a large enough number ω 2
λ 1 A T + A + 2 c ω 2 λ 2 Γ 0 .
From Equations (26) and (27), we have V ˙ 3 e t < 0 . So, the multi-agent system (9) achieves average consensus under the adaptive strategy (12) and controller (10). □
Remark 2.
The communication delay is fixed in this paper. If the communication delay is time-varying, it will affect the system to achieve consensus. Reference [25] pointed out that the communication network between the control center and the actuator faces the challenge of random communication delay, which will also affect the control of smart grids.
Remark 3.
In real life, time delay often changes with time. This phenomenon of time-varying delay is also a hot topic in current research. In the future research, the fixed delay term γ j i used in this paper can be further modified as a time-varying term, but the influence of such time-varying terms on system stability needs to be further considered.

4. Numerical Simulations

In this section, a simulation experiment will be given to verify the effectiveness of the algorithm proposed in this paper.

4.1. Example 1

Consider a multi-agent system, whose dynamic is described as follows
x ˙ i ( t ) = A x i ( t ) + 0 . 2 j = 1 N G i j Γ x j ( t ) + u i ,
where A = 0 0.3 0.3 0.3 0 1 0.3 1 0 , Γ = I 3 , G = 0.05 0 0.03 0.02 0 0 0.06 0.03 0 0.03 0.03 0.03 0.06 0 0 0.02 0 0 0.02 0 0 0.03 0 0 0.03 . Under control protocol (3), we choose k = 0.5 , P = d i a g 1.5 , 1 , 1 ,   γ j i = 0.1 . The conditions given above can satisfy Theorem 1. The states trajectories of five agents and input signal under protocol (3) are drawn in Figure 1 and Figure 2. Figure 3 depicts that variation of error. Obviously, the average consensus is achieved.

4.2. Example 2

A leader–following multi-agent system is considered. In Equation (5), choose A = 0 0.5 0.5 0.5 0 1 0.5 1 0 , c = 0.5 , Γ = I 3 , G = 0.05 0 0.03 0.02 0 0 0.05 0.03 0 0.02 0.03 0.03 0.06 0 0 0.02 0 0 0.02 0 0 0.02 0 0 0.02 .
Under protocol (7), use k = 0.5 , γ j i = 0 . 1 . The condition of Theorem 2 is satisfied. The sates trajectories and the input signal under protocol (7) are depicted in Figure 4 and Figure 5. Figure 6 depicts that variation of error. As we can see, the leader–following consensus is realized.

4.3. Example 3

A leaderless multi-agent system with adaptive couplings is considered. In Equation (9), choose A = 0 2 2 2 0 3 2 3 0 ,   c = 2.5 , Γ = I 3 , G 0 = 0.05 0 0.03 0.02 0 0 0.06 0.03 0 0.03 0.03 0.03 0.06 0 0 0.02 0 0 0.02 0 0 0.03 0 0 0.03 . From control protocol (10), we choose k = 1 , γ j i = 0 . 2 . The states and input control (10) trajectories are described in Figure 7 and Figure 8. The error σ i t = x i t x ¯ t changes with time as shown in Figure 9. Clearly, the average consensus is achieved under protocol (10) and adaptive strategy (12). Figure 10 displays the changing of the coupling weights.
In this paper, we study the consensus problem of three different types of multi-agent systems with fixed communication delays. It is not difficult to find from the experimental results that multi-agent systems are mainly divided into two categories. One is a multi-agent system with a leader, and the other is a multi-agent system without a leader. For a leader–follower system, the state values of all agents in the system will eventually converge to the state values of the leader. In a multi-agent system without a leader, the state values of the agents will gradually converge under the action of the controller.

5. Conclusions

In this study, we investigate the consensus problem of fixed and adaptive coupled multi-agent systems with communication delays. For fixed coupling multi-agent systems and adaptive coupling multi-agent systems, we study three different models of multi-agent models, and give corresponding control strategies to offset the impact of communication delay on multi-agent systems. The rationality of the proposed strategy and theorem is proved by using Lyapunov theory and matrix inequality. Finally, the proposed theory is verified by simulation experiments. In this paper, the communication delay is fixed, but in life, the delay is often changed. Therefore, in the future research, the time-varying delay will be the direction of our further research.

Author Contributions

Methodology, S.T. and Q.H.; Software, S.T.; Formal analysis, S.T.; Data curation, Z.Q.; Writing review and editing, Y.T., T.W. and T.M.; Funding acquisition, B.Z. All authors have read and agreed to the published version of the manuscript.

Funding

This work was supported in part by the Science and Technology Research Program of Chongqing Municipal Education Commission in China (KJZD-K201901504, KJQN201901537, and KJZD-K202100104), in part by the Natural Science Foundation of Chongqing (cstc2021jcyj-msxmX1212, cstc2021jcyj-msxmX0146), in part by the West Light Foundation of the Chinese Academy of Science, in part by the Open Foundation of Chongqing University of Science and Technology No. cqsrc202110, in part by Bingtuan Science and Technology Program in China (No. 2021AB026), in part by the Scientific Research Foundation of Chongqing University of Science and Technology (No. ckrc2020027).

Conflicts of Interest

The authors declare that they have no known competing financial interest or personal relationship that could have appeared to influence the work reported in this paper.

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Figure 1. The states trajectories of five agents.
Figure 1. The states trajectories of five agents.
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Figure 2. The input signal trajectories under protocol (3).
Figure 2. The input signal trajectories under protocol (3).
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Figure 3. The error trajectories.
Figure 3. The error trajectories.
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Figure 4. The states trajectories of six agents.
Figure 4. The states trajectories of six agents.
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Figure 5. The input signal trajectories under protocol (7).
Figure 5. The input signal trajectories under protocol (7).
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Figure 6. The error trajectories.
Figure 6. The error trajectories.
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Figure 7. The states trajectories of five agents.
Figure 7. The states trajectories of five agents.
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Figure 8. The input signal trajectories of five agents.
Figure 8. The input signal trajectories of five agents.
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Figure 9. The error trajectories of five agents.
Figure 9. The error trajectories of five agents.
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Figure 10. The adaptive coupling weights.
Figure 10. The adaptive coupling weights.
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MDPI and ACS Style

Qiu, Z.; Tian, S.; Zhou, B.; Han, Q.; Tian, Y.; Weng, T.; Mamut, T. Consensus of Fixed and Adaptive Coupled Multi-Agent Systems with Communication Delays. Electronics 2023, 12, 1279. https://0-doi-org.brum.beds.ac.uk/10.3390/electronics12061279

AMA Style

Qiu Z, Tian S, Zhou B, Han Q, Tian Y, Weng T, Mamut T. Consensus of Fixed and Adaptive Coupled Multi-Agent Systems with Communication Delays. Electronics. 2023; 12(6):1279. https://0-doi-org.brum.beds.ac.uk/10.3390/electronics12061279

Chicago/Turabian Style

Qiu, Zicheng, Sheng Tian, Baoping Zhou, Qi Han, Yuan Tian, Tengfei Weng, and Turghunjan Mamut. 2023. "Consensus of Fixed and Adaptive Coupled Multi-Agent Systems with Communication Delays" Electronics 12, no. 6: 1279. https://0-doi-org.brum.beds.ac.uk/10.3390/electronics12061279

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