1. Introduction
Complex networks have been widely used in fields such as earth sciences, robot control, biological systems, and neuroscience [
1,
2,
3,
4,
5]. With the deepening of the research, scholars have found that most complex systems are not isolated, but are instead interdependent and interactive. Researchers introduced the concept of multi-layer networks to describe such networks and have made fruitful achievements in the field of research on multi-layer networks, such as accomplishing the synchronization of multi-layer complex networks [
6,
7,
8,
9,
10,
11,
12], structure identification of multi-layer networks [
13], and cascading failures and consensus of multi-layer networks [
14,
15,
16,
17,
18].
Noise exists in the real environment. Not all nodes of the complex network may achieve the common goal well under the interference of noise. Network coherence is used to study the degree of consensus that can be achieved by all nodes of the network and describes the deviation of the state of each node in the network from the average of the current states of all nodes. Network coherence is determined by the Laplacian spectrum [
19]. Ref. [
20] discussed the robustness of a scale-free network consensus and discovered the relationships between network coherence and average degree. Ref. [
21] calculated the Laplacian eigenvalues of a class of fractal networks using a recursive method and obtained the first-order and second-order coherence of the networks. Ref. [
22] designed a new control protocol to study the consensus of multi-intelligent systems. Ref. [
23] presented an algorithm for approximating second-order coherence. Ref. [
24] studied the robustness of network coherence and found that asymmetric networks show higher coherence than symmetric networks. The above literature has mainly studied the impact of control protocol design and topology on network consensus but has not considered the impact of different layer connection methods on network consensus.
As the basic elements of the network, the ring structure, link structure, and star structure play a very important role in the complex network. Unlike the link and star structure, the ring structure brings redundant paths to its nodes, which greatly enhances the connectivity of the network and becomes more robust. Research on the ring structure can provide new ideas and methods for optimizing network connectivity and anti-attack capability, quickly adjusting the network state. Therefore, a network based on a ring structure has aroused great interest in scholars and has achieved some good results [
25,
26,
27].
Consensus-based distributed algorithms have been widely studied in the field of networked systems for achieving agreement among a group of agents with limited communication abilities [
28,
29]. A large-scale, many-objective deployment optimization algorithm for edge servers in a networked system was proposed, which is relevant to the consensus problem [
28]. In a consensus problem, agents aim to reach a common decision based on local interactions with their neighbors, which can be modeled as a network. One of the most widely used network structures for consensus is the two-layer ring network, which is robust and efficient at achieving agreement among a group of agents. However, the robustness of consensus in these networks is still an open research question [
30,
31]. A robust identification method for highly nonlinear systems was proposed, which is important for achieving consensus in the presence of noise and disturbances [
30]. This paper takes the two-layer ring networks as the research object and analyzes the influence of different interlayer edge-connection patterns on the consensus of the two-layer ring networks. The main novelties and contributions of the paper are as follows:
A new network model is proposed that is different from the interlayer, fully connected two-layer ring networks. This will save more costs in practical applications.
Compared with solving the Laplacian spectrum of the fully connected network, the Laplacian spectrum of the partially connected two-layer ring networks is difficult to calculate. The consensus of the two-layer ring networks is obtained by using the relationships among the network coherence, eigenvalues, and characteristic polynomial coefficients.
Based on the formula of network coherence, the optimal and worst edge-connected patterns of two-layer ring networks are found, and the results are revealed through simulation experiments.
The paper is organized as follows. The preliminaries are given in
Section 2. The consensus is derived in
Section 3.
Section 4 presents the numerical simulation results.
2. Preliminaries
2.1. Network Coherence
The research on consensus not only helps to better understand the general mechanism of consensus in nature but also helps to reveal the essence of some practical engineering operations, such as the coordination and control of distributed sensors and the control of multi-robot formations.
The network dynamics model with
q nodes is described as follows [
32]:
where
is the Laplacian matrix of the network and
represents the interference of white noise. Network coherence is defined as robustness to noise:
The output of system (1) is written as follows:
where
P is the projection operator,
and
is the
q-vector of all ones.
According to [
33], the first-order coherence can be expressed in terms of Laplacian eigenvalues,
2.2. Two-Layer Ring Network Models
A kind of two-layer ring network with two linked edges between layers (Networks-a) is shown in
Figure 1a. Due to the symmetry of the ring network, we assume that there are two edges between node pairs 1 and
, where
n is the number of nodes in the ring network. We denote the edge connection pattern as 1 &
p. A kind of two-layer ring network with three linked edges between layers (Networks-b) is shown in
Figure 1b. We assume that there are three edges between node pairs 1,
, and
, and we denote the edge connection pattern as 1 &
i &
j.
3. Theoretical Calculation and Conjectures
In this section, we calculate the coherence of Networks-a and Networks-b and make some conjectures about the influence of different edge connection patterns on the consensus.
3.1. The Coherence of Networks-a
This section will use the relationships between the eigenvalues and coefficients in characteristic polynomial theory to obtain the coherence of Networks-a. To solve this problem, the coefficients of a class of characteristic polynomials are as follows:
Lemma 1 ([
20])
. Let be the constant term, first-order coefficient and quadratic coefficient of the characteristic polynomial ,then, , , .According to the topology structure of Networks-a, the Laplacian characteristic polynomial is . Let be ; is the Laplacian characteristic polynomial of the ring network . We expand using the first row, can be obtained by changing the 1st and pth diagonal elements to on the basis of . Let be ; combining the relationships between and , we have We will use Lemma 1 to obtain the sum of the reciprocals of the non-zero characteristic eigenvalues of and , respectively. For the convenience of description, let be the i degree coefficients of , respectively.
Lemma 2. Let be the eigenvalues of ; then, Proof. From the Vieta theorem [
21],
, using Lemma 1,
□
Lemma 3. Let be the eigenvalues of ; then, Proof. From the Vieta theorem,
, using Lemma 1,
where
then
□
Theorem 1. Let the number of single-layer network nodes in Networks-a be n. If there are two linked edges between the node pairs 1 and , then the coherence of Networks-a is as follows: Proof. By substituting the results of Equations (8) and (9) into Equation (10), Theorem 1 can be easily obtained. □
3.2. The Coherence of Networks-b
Similar to
Section 3.1, this section will use the coefficients of the characteristic polynomial to obtain the coherence of Networks-b.
According to the topology of Networks-b, the Laplacian characteristic polynomial can be written as follows:
can be obtained by changing the 1st, ith, and jth diagonal elements to on the basis of . Let be ; using the Laplacian theorem, we get
Theorem 2. Let the number of single-layer network nodes in Networks-b be n. If there are three linked edges between the node pairs 1, , and , then the coherence of Networks-b is as follows:where , .
Proof. Let
be the eigenvalues of
; using the Formula (5),
Similar to the proof of Lemma 3, we have . Theorem 2 can be easily obtained. □
3.3. Conjecture
Conjecture 1. The impact of edge connection pattern 1 & p on the consensus of Networks-a is as follows:
- (1)
Whennis odd, the edge connection patterns 1 & and 1 & have the best network consensus.
- (2)
Whennis even, the edge connection pattern 1 & has the best network consensus.
- (3)
Whethernis odd or even, the edge connection patterns 1 & 2 and 1 & n have the worst network consensus.
Conjecture 2. The impact of edge connection pattern 1 & i & j on the consensus of Networks-b is as follows:
- (1)
The edge connection patterns 1 & 2 & 3, 1 & 2 & n, and 1 & & n have the worst network consensus.
- (2)
When i is fixed, , and the edge connection patterns 1 & i & and 1 & i & n have the worst network consensus. When is odd, the edge connection patterns 1 & i & and 1 & i & have the best network consensus. When is even, the edge connection pattern 1 & i & has the best network consensus.
Conjecture 3. The impact of the number of single-layer network nodes n on the consensus of Networks-b is as follows:
When , the edge connection pattern 1 & & has the best network consensus. When , the edge connection patterns 1 & & , 1 & & , and 1 & & have the best network consensus. When , the edge connection patterns 1 & & , 1 & & , and 1 & & have the best network consensus.
4. Numerical Simulation Experiment
In this section, the relationships between the edge connection patterns and consensus are numerically simulated to demonstrate the rationality of the three conjectures mentioned in the previous section.
4.1. The Influence of Edge Connection Pattern 1 & p on
When
, through the traversal simulation of all edge connection patterns 1 &
p,
Figure 2 shows the change in
with
p. When
,
decreases with the increase in
p. When
,
increases with the increase in
p. As
p can only be a positive integer,
obtains the maximum value at
and
and obtains the minimum value at
. The smaller the first-order coherence is, the stronger the consensus is. The edge connection pattern 1 &
has the best consensus, and the edge connection patterns 1 & 2 and 1 &
n have the worst network consensus; this result is consistent with the conclusion of Conjecture 1.
4.2. The Influence of Edge Connection Pattern 1 & i & j on
When
, through the traversal simulation of all edge connection patterns 1 &
i &
j,
Figure 3 shows the change in
with
. When
;
;
,
reaches the maximum value. The edge connection patterns 1 & 2 & 3, 1 & 2 &
n, and 1 &
&
n have the worst network consensus.
When i is fixed, reaches its maximum value at and . When , decreases as j increases. When , increases as j increases. As j can only be a positive integer, obtains the minimum value at . The edge connection patterns 1 & i & and 1 & i & n have the worst network consensus, and the edge connection pattern 1 & i & has the best network consensus. This result is consistent with the conclusion of Conjecture 1.
4.3. The Influence of the Number of Single-Layer Network Nodes n on
In this section, we calculate the best edge connection patterns 1 & i & j for .
When
,
Figure 4 gives an intuitive linear fitting line among
, and
n.
As seen from
Figure 4a, when
, the best edge connection pattern 1 &
i &
j is unique, and
i and
j are respectively distributed on the straight lines
and
. Therefore, when
, the edge connection pattern 1 &
&
has the best consensus.
As seen from
Figure 4b, when
, there are three types of best edge connection patterns;
i and
j are distributed on lines
,
, and
, respectively. Therefore, when
, the edge connection patterns 1 &
&
, 1 &
&
and 1 &
&
have the best consensus.
As seen from
Figure 4c, when
, there are three types of best edge connection patterns;
i and
j are distributed on lines
,
, and
, respectively. Therefore, when
, the edge connection patterns 1 &
&
, 1 &
&
, and 1 &
&
have the best consensus. The above simulation results are consistent with the conclusion of Conjecture 3.
5. Conclusions
The research on the optimization of the interlayer connection of two-layer networks is still in the preliminary stage; the results of the theoretical method are few, and most of the results are still using the numerical method. In this study, the coherence of a Networks-a model with two linked edges between layers and a Networks-b model with three linked edges between layers were deduced using the coefficients of tridiagonal matrix characteristic polynomials and the Laplacian theorem. Furthermore, the conjectures of different edge connection patterns on the consensus of the two types of networks were obtained, which were revealed through simulation experiments. In the case of Networks-a, the best edge connection pattern is 1 & , and the worst edge connection patterns are 1 & 2 and 1 & n. In the case of Networks-b, the worst edge connection patterns are 1 & 2 & 3, 1 & 2 & n, and 1 & & n. The best edge connection patterns are related to the parameter n. When , the edge connection patterns are unique; when and , there are three cases of edge connection patterns, and they are all near 1 & & .
The study of the effect of different interlayer connection patterns on the dynamics of two-layer networks is still at a preliminary stage, and the research results are mostly obtained using numerical methods, which is difficult to prove theoretically. This study obtained the best edge connection patterns of the networks using numerical simulations for the two-layer ring networks with two or three linked edges. However, when the number of interlayer edges is greater than or equal to four, what is the change in the best/worst edge connection patterns of the two-layer ring networks? In the case of fully connected two-layer ring networks, which edges can be reduced to obtain the best consensus? These questions are worthy of our in-depth study.
Author Contributions
Conceptualization, Z.L. and H.G.; Formal analysis, Z.S. and W.Z.; Investigation, W.Z. and H.G.; Methodology, H.G. and W.Z.; Writing—original draft, H.G. and Z.L.; Writing—review and editing, Z.S., W.Z., H.G. and Z.L.; All authors contributed equally to this work. All authors have read and agreed to the published version of the manuscript.
Funding
This research was funded by the Xinjiang Natural Science Foundation (No. 2022D01A54).
Institutional Review Board Statement
Not applicable.
Informed Consent Statement
Not applicable.
Data Availability Statement
Not applicable.
Acknowledgments
We express our sincere gratitude to the people who gave us valuable comments. This work was supported by the Xinjiang Natural Science Foundation (No. 2022D01A54).
Conflicts of Interest
The authors declare no conflict of interest.
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