中国科学院数学与系统科学研究院期刊网

Collections

Special Issue to Celebrate the 30th Anniversary of Journal of Systems Science and Complexity
This special issue is dedicated to the 30th anniversary of Journal of Systems Science and Complexity (JSSC) which is under the auspices of the Institute of Systems Science, Chinese Academy of Sciences. This special issue was organized by the editorial board of JSSC. The papers published in this special issue are high quality contribution to the fields of complex network, systems control, statistics and data science, and computer mathematics.

Sort by Default Latest Most read  
Please wait a minute...
  • Select all
    |
  • GAO Xiao-Shan,CHEN Jie,SHAO Jun,WANG Shouyang
    Journal of Systems Science and Complexity. 2017, 30(1): 1-3. https://doi.org/10.1007/s11424-017-6000-4
  • LI Yan,MU Yifen,YUAN Shuo,GUO Lei
    Journal of Systems Science and Complexity. 2017, 30(1): 4-19. https://doi.org/10.1007/s11424-017-6287-1

    This paper explores the application of noncooperative game theory together with the concept of Nash equilibrium to the investigation of some basic problems on multi-scale structure, especially the meso-scale structure in the multi-phase complex systems in chemical engineering. The basis of this work is the energy-minimization-multi-scale (EMMS) model proposed by Li and Kwauk (1994) and Li, et al. (2013) which identifies the multi-scale structure as a result of ‘compromise-in-competition between dominant mechanisms’ and tries to solve a multi-objective optimization problem. However, the existing methods often integrate it into a problem of single objective optimization, which does not clearly reflect the ‘compromise-in-competition’ mechanism and causes heavy computation burden as well as uncertainty in choosing suitable weighting factors. This paper will formulate the compromise in competition mechanism in EMMS model as a noncooperative game with constraints, and will describe the desired stable system state as a generalized Nash equilibrium. Then the authors will investigate the game theoretical approach for two typical systems in chemical engineering, the gas-solid fluidization (GSF) system and turbulent flow in pipe. Two different cases for generalized Nash equilibrium in such systems will be well defined and distinguished. The generalize Nash equilibrium will be solved accurately for the GSF system and a feasible method will be given for turbulent flow in pipe. These results coincide with the existing computational results and show the feasibility of this approach, which overcomes the disadvantages of the existing methods and provides deep insight into the mechanisms of multi-scale structure in the multi-phase complex systems in chemical engineering.

  • HU Yanqing,FAN Ying,DI Zengru
    Journal of Systems Science and Complexity. 2017, 30(1): 20-29. https://doi.org/10.1007/s11424-017-6210-9

    Stanley Milgram’s small world experiment presents “six degrees of separation” of our world. One phenomenon of the experiment still puzzling us is that how individuals operating with the social network information with their characteristics can be very adept at finding the short chains. The previous works on this issue focus whether on the methods of navigation in a given network structure, or on the effects of additional information to the searching process. In this paper, the authors emphasize that the growth and shape of network architecture is tightly related to the individuals’ attributes. The authors introduce a method to reconstruct nodes’ intimacy degree based on local interaction. Then we provide an intimacy based approach for orientation in networks. The authors find that the basic reason of efficient search in social networks is that the degree of “intimacy” of each pair of nodes decays with the length of their shortest path exponentially. Meanwhile, the model can explain the hubs limitation which was observed in real-world experiment.

  • LIU Xiaoyu,SUN Jian,DOU Lihua,CHEN Jie
    Journal of Systems Science and Complexity. 2017, 30(1): 30-45. https://doi.org/10.1007/s11424-017-6272-8

    In this paper, the leader-following consensus for discrete-time multi-agent systems with parameter uncertainties is investigated based on the event-triggered strategy. And the parameter uncertainty is assumed to be norm-bounded. A consensus protocol is designed based on the event-triggered strategy to make the multi-agent systems achieve consensus without continuous communication among agents. Each agent only needs to observe its own state to determine its own triggering instants under the triggering function in this paper. In addition, a sufficient condition for the existence of the eventtriggered consensus protocol is derived and presented in terms of the linear matrix inequality. Finally, a numerical example is given to illustrate to efficiency of the event-triggered consensus protocol proposed in this paper.

  • WEN Guanghui,YU Wenwu,YU Xinghuo,L¨U Jinhu
    Journal of Systems Science and Complexity. 2017, 30(1): 46-67. https://doi.org/10.1007/s11424-017-6181-x

    Complex cyber-physical network refers to a new generation of complex networks whose normal functioning significantly relies on tight interactions between its physical and cyber components. Many modern critical infrastructures can be appropriately modelled as complex cyber-physical networks. Typical examples of such infrastructures are electrical power grids, WWW, public transportation systems, state financial networks, and the Internet. These critical facilities play important roles in ensuring the stability of society as well as the development of economy. Advances in information and communication technology open opportunities for malicious attackers to launch coordinated attacks on cyber-physical critical facilities in networked infrastructures from any Internet-accessible place. Cybersecurity of complex cyber-physical networks has emerged as a hot topic within this context. In practice, it is also very crucial to understand the interplay between the evolution of underlying network structures and the collective dynamics on these complex networks and consequently to design efficient security control strategies to protect the evolution of these networks. In this paper, cybersecurity of complex cyber-physical networks is first outlined and then some security enhancing techniques, with particular emphasis on safety communications, attack detection and fault-tolerant control, are suggested. Furthermore, a new class of efficient secure control strategies are proposed for guaranteeing the achievement of desirable pinning synchronization behaviors in complex cyber-physical networks against malicious attacks on nodes. The authors hope that this paper motivates to design enhanced security strategies for complex cyber-physical network systems, to realize resilient and secure critical infrastructures.

  • YAN Yamin,HUANG Jie
    Journal of Systems Science and Complexity. 2017, 30(1): 68-85. https://doi.org/10.1007/s11424-017-6151-3

    Recently, the robust output regulation problem for continuous-time linear systems with both input and communication time-delays was studied. This paper will further present the results on the robust output regulation problem for discrete-time linear systems with input and communication delays. The motivation of this paper comes from two aspects. First, it is known that the solvability of the output regulation problem for linear systems is dictated by two matrix equations. While, for delay-free systems, these two matrix equations are same for both continuous-time systems and discretetime systems, they are different for continuous-time time-delay systems and discrete-time time-delay systems. Second, the stabilization methods for continuous-time time-delay systems and discrete-time time-delay systems are also somehow different. Thus, an independent treatment of the robust output regulation problem for discrete-time time-delay systems will be useful and necessary.

  • YANG Yuecheng,HU Xiaoming
    Journal of Systems Science and Complexity. 2017, 30(1): 86-100. https://doi.org/10.1007/s11424-017-6185-6

    Optimal control problem with partial derivative equation (PDE) constraint is a numericalwise difficult problem because the optimality conditions lead to PDEs with mixed types of boundary values. The authors provide a new approach to solve this type of problem by space discretization and transform it into a standard optimal control for a multi-agent system. This resulting problem is formulated from a microscopic perspective while the solution only needs limited the macroscopic measurement due to the approach of Hamilton-Jacobi-Bellman (HJB) equation approximation. For solving the problem, only an HJB equation (a PDE with only terminal boundary condition) needs to be solved, although the dimension of that PDE is increased as a drawback. A pollutant elimination problem is considered as an example and solved by this approach. A numerical method for solving the HJB equation is proposed and a simulation is carried out.

  • HU Xiaonan,DUAN Xiaogang,PAN Dongdong,ZHANG Sanguo,LI Qizhai
    Journal of Systems Science and Complexity. 2017, 30(1): 101-110. https://doi.org/10.1007/s11424-017-6187-4

    The genetic models are greatly important in the analysis of genetic epidemiologic studies and many of the studies are conducted using the trend test under the additive model. However, for many complex diseases and traits, the underlying genetic model for a genetic locus is usually uncertain. So a robust test free of genetic model is appropriate. In this paper, the authors propose a model-embedded trend test by incorporating Hardy-Weinberg equilibrium information and obtain the explicit formula to calculate its statistical significance. Extensive simulation studies show the proposed test is more robust than the existing procedures. Finally, a real application is further analyzed to show the performance of the proposed test.

  • XIA Qi,DONG Yuexiao
    Journal of Systems Science and Complexity. 2017, 30(1): 111-121. https://doi.org/10.1007/s11424-017-6227-0

    Existing estimators of the central mean space are known to have uneven performances across different types of link functions. By combining the strength of the ordinary least squares and the principal Hessian directions, the authors propose a new hybrid estimator that successfully recovers the central mean space for a wide range of link functions. Based on the new hybrid estimator, the authors further study the order determination procedure and the marginal coordinate test. The superior performance of the hybrid estimator over existing methods is demonstrated in extensive simulation studies.

  • ZHANG Yanqing,TANG Niansheng
    Journal of Systems Science and Complexity. 2017, 30(1): 122-138. https://doi.org/10.1007/s11424-017-6254-x

    Structural equation model (SEM) is a multivariate analysis tool that has been widely applied to many fields such as biomedical and social sciences. In the traditional SEM, it is often assumed that random errors and explanatory latent variables follow the normal distribution, and the effect of explanatory latent variables on outcomes can be formulated by a mean regression-type structural equation. But this SEM may be inappropriate in some cases where random errors or latent variables are highly nonnormal. The authors develop a new SEM, called as quantile SEM (QSEM), by allowing for a quantile regression-type structural equation and without distribution assumption of random errors and latent variables. A Bayesian empirical likelihood (BEL) method is developed to simultaneously estimate parameters and latent variables based on the estimating equation method. A hybrid algorithm combining the Gibbs sampler and Metropolis-Hastings algorithm is presented to sample observations required for statistical inference. Latent variables are imputed by the estimated density function and the linear interpolation method. A simulation study and an example are presented to investigate the performance of the proposed methodologies.

  • ZHAO Jiwei,SHAO Jun
    Journal of Systems Science and Complexity. 2017, 30(1): 139-153. https://doi.org/10.1007/s11424-017-6188-3

    The generalized linear model is an indispensable tool for analyzing non-Gaussian response data, with both canonical and non-canonical link functions comprehensively used. When missing values are present, many existing methods in the literature heavily depend on an unverifiable assumption of the missing data mechanism, and they fail when the assumption is violated. This paper proposes a missing data mechanism that is as generally applicable as possible, which includes both ignorable and nonignorable missing data cases, as well as both scenarios of missing values in response and covariate. Under this general missing data mechanism, the authors adopt an approximate conditional likelihood method to estimate unknown parameters. The authors rigorously establish the regularity conditions under which the unknown parameters are identifiable under the approximate conditional likelihood approach. For parameters that are identifiable, the authors prove the asymptotic normality of the estimators obtained by maximizing the approximate conditional likelihood. Some simulation studies are conducted to evaluate finite sample performance of the proposed estimators as well as estimators from some existing methods. Finally, the authors present a biomarker analysis in prostate cancer study to illustrate the proposed method.

  • CHEN Shaoshi,KAUERS Manuel
    Journal of Systems Science and Complexity. 2017, 30(1): 154-172. https://doi.org/10.1007/s11424-017-6202-9

    Creative telescoping is the method of choice for obtaining information about definite sums or integrals. It has been intensively studied since the early 1990s, and can now be considered as a classical technique in computer algebra. At the same time, it is still a subject of ongoing research. This paper presents a selection of open problems in this context. The authors would be curious to hear about any substantial progress on any of these problems.

  • GAO Xiao-Shan,HUANG Zhang,WANG Jie,YUAN Chun-Ming
    Journal of Systems Science and Complexity. 2017, 30(1): 173-195. https://doi.org/10.1007/s11424-017-6174-9

    In this paper, the concept of toric difference varieties is defined and four equivalent descriptions for toric difference varieties are presented in terms of difference rational parametrization, difference coordinate rings, toric difference ideals, and group actions by difference tori. Connections between toric difference varieties and affine N[x]-semimodules are established by proving the one-to-one correspondence between irreducible invariant difference subvarieties and faces of N[x]-semimodules and the orbit-face correspondence. Finally, an algorithm is given to decide whether a binomial difference ideal represented by a Z[x]-lattice defines a toric difference variety.

  • KAPUR Deepak
    Journal of Systems Science and Complexity. 2017, 30(1): 196-233.

    Gr¨obner basis theory for parametric polynomial ideals is explored with the main objective of mimicking the Gr¨obner basis theory for ideals. Given a parametric polynomial ideal, its basis is a comprehensive Gr¨obner basis if and only if for every specialization of its parameters in a given field, the specialization of the basis is a Gr¨obner basis of the associated specialized polynomial ideal. For various specializations of parameters, structure of specialized ideals becomes qualitatively different even though there are significant relationships as well because of finiteness properties. Key concepts foundational to Gr¨obner basis theory are reexamined and/or further developed for the parametric case: (i) Definition of a comprehensive Gr¨obner basis, (ii) test for a comprehensive Gr¨obner basis, (iii) parameterized rewriting, (iv) S-polynomials among parametric polynomials, (v) completion algorithm for directly computing a comprehensive Gr¨obner basis from a given basis of a parametric ideal. Elegant properties of Gr¨obner bases in the classical ideal theory, such as for a fixed admissible term ordering, a unique Gr¨obner basis can be associated with every polynomial ideal as well as that such a basis can be computed from any Gr¨obner basis of an ideal, turn out to be a major challenge to generalize for parametric ideals; issues related to these investigations are explored. A prototype implementation of the algorithm has been successfully tried on many examples from the literature.

  • WANG Qiuye,LI Yangjia,XIA Bican,ZHAN Naijun
    Journal of Systems Science and Complexity. 2017, 30(1): 234-252. https://doi.org/10.1007/s11424-017-6226-1

    Hybrid systems are dynamical systems with interacting discrete computation and continuous physical processes, which have become more common, more indispensable, and more complicated in our modern life. Particularly, many of them are safety-critical, and therefore are required to meet a critical safety standard. Invariant generation plays a central role in the verification and synthesis of hybrid systems. In the previous work, the fourth author and his coauthors gave a necessary and sufficient condition for a semi-algebraic set being an invariant of a polynomial autonomous dynamical system, which gave a confirmative answer to the open problem. In addition, based on which a complete algorithm for generating all semi-algebraic invariants of a given polynomial autonomous hybrid system with the given shape was proposed. This paper considers how to extend their work to non-autonomous dynamical and hybrid systems. Non-autonomous dynamical and hybrid systems are with inputs, which are very common in practice; in contrast, autonomous ones are without inputs. Furthermore, the authors present a sound and complete algorithm to verify semi-algebraic invariants for non-autonomous polynomial hybrid systems. Based on which, the authors propose a sound and complete algorithm to generate all invariants with a pre-defined template.