Refine your search
Collections
A B C D E F G H I J K L M N O P Q R S T U V W X Y Z All
Hong, He
- The Research of Group Mobility Model Based on Spectral Clustering Algorithm in Opportunistic Networks
Abstract Views :182 |
PDF Views:0
Authors
Affiliations
1 College of computer and communication, Hunan institute of engineering,Xiangtan,411104, CN
1 College of computer and communication, Hunan institute of engineering,Xiangtan,411104, CN
Source
International Journal of Advanced Networking and Applications, Vol 11, No 5 (2020), Pagination: 4378-4385Abstract
The research on group mobility in the opportunity network concerns what nodes’mobility may bring about, in contrast to the preciously-proposed group mobility approaches that are unilateral in the thoughts of the constitution of groups by nodes, resulting in, the distortion of reality to reflect group behavior characteristics that are revealed in the situations of their application. Based on the Spectral Clustering algorithm, this paper proposes the group mobility model (SCM), which takes the advantage of node ’s own properties, such as its spatial position, to set up node’s affinity matrix, extract main characteristics from arbitrarily distributed nodes with the aid of spectral clustering algorithm, and regarding the needs of a task assigned cluster nodes dynamically in a fixed time. The model depicts truly and effectively the group characteristics of node’s mobility, accomplish the conducts of group mobility and clustering well.Keywords
Opportunistic network, Spectral Clustering, group mobility model.- Asymptotical Synchronization of Coupled Time-delay Partial Differential Systems via Pinning Control and Boundary Control
Abstract Views :183 |
PDF Views:0
Authors
He Hong
1
Affiliations
1 College of computer and communication, Hunan institute of engineering, Xiangtan,411104, CN
1 College of computer and communication, Hunan institute of engineering, Xiangtan,411104, CN
Source
International Journal of Advanced Networking and Applications, Vol 11, No 6 (2020), Pagination: 4443-4450Abstract
This paper focus on the asymptotic synchronization issue of coupled time-delay PDSs via pinning control and boundary control. The asymptotic synchronization of PDSs with both node-delay and coupling delay is discussed firstly. Then the pinning controller and boundary controller are also presented in order to achieve the asymptotic synchronization. Further more, synchronization criteria are established by using the Lyapunov function method and inequality techniques. Obviously, it is an efficient control technique to combine the pinning control with the boundary control for the asymptotic synchronization of the PDSs. Finally, an example of digital simulation is used to elucidate the practicability and validity of our control method and the correctness of the theorem.Keywords
Asymptotic Synchronization, Partial Differential Systems, Pinning Control, Boundary Control.References
- X. J. Wu and H. T. Lu, “Exponential synchronization of weighed general delay coupled and non-delay coupled dynamical networks,” in Computers and mathematics with Applications 2010, pp. 2476-2487.
- S. M. Cai, Q. B. He, J. J. Hao and Z. R. Liu, “Exponential synchronization of complex networks with nonidentical time-delayed dynamical nodes,” in Physics Letters A 2010, pp. 2539-2550.
- Q. X. Cheng and J. D. Cao, “Synchronization of complex dynamical networks with discrete time delays on time scales,” in Neurocomputing 2015, pp.729-736.
- X. Y. Guo and J. M. Li, “A new synchronization algorithm for delayed complex dynamical networks via adaptive control approach,” in Commun Nonlinear Sci NumerSimulat 2012, pp. 4395-4403.
- X. Wang, X. Z. Liu, K. She and Sh. M. Zhong, “Finite-time lag synchronization of master-slave complex dynamical networks with unknown signal propagation delays,” in Journal of Franklin Institute 2017, pp. 1-17.
- L. Zhang, X. S. Yang, C. Xu and J. W. Feng, “Exponential synchronization of complex-valued complex networks with time-varying delays and stochastic perturbations via time-delayed impulsive control,” in Applied Mathematics and Computation 2017, pp. 22-30.
- Z. Q. Zhang, D. L. Hao and D. M. Zhou, “Global asymptotic stability by complex-valued inequalities for complex-valued neural networks with delays on period time scales,” in Neurocomputing 2017, pp. 494-501.
- J. A. Wang, “Synchronization of delayed complex dynamical network with hybrid-coupling via aperiodically intermittent pinning control,” in Journal of Franklin Institute 2017, pp. 1833-1855.
- X. Zhou, H. Feng and S. H. Chen, “The effect of control strength on the synchronization in pinning control questions,” in Computers and Mathematics with Applications 2011, pp. 2014-2018.
- L. X. Li, W. W. Li, J.Kurths, Q. Luo, Y. X. Yang and S. D. Li, “Pinning adaptive synchronization of a class of uncertain complex dynamical networks with multi-link against network deterioration,” in Chaos, Solutions & Fractals 2015, pp. 20-34.
- X. J. Wu, Y. Liu and J. Zhou, “Pinning adaptive synchronization of general time-varying delayed and multi-linked networks with variable structures,” in Neurocomputing 2015, pp. 492-499.
- X. W. Liu and Y. Xu, “Cluster synchronization in complex networks of nonidentical dynamical systems via pinning control,” in Neurocomputing 2015, pp. 260-268.
- R. Yu, H. G. Zhang, Z. L. Wang and J. Y. Wang, “Synchronization of complex dynamical networks via pinning scheme design under hybrid topologies,” in Neurocomputing 2016, pp. 210-217.
- B. C. Li, “Pinning adaptive hybrid synchronization of two general complex dynamical networks with mixed coupling,” in Applied Mathematics Modeling 2016, pp. 2983-2998.
- X. Z. Liu and K. X. Zhang, “Synchronization of linear dynamical networks on time scales:pinning control via delayed impulses,” in Automatica 2016, pp. 147-152.
- Z. Tang, J. H. Park and T. H. Lee, “Distributed adaptive pinning control for cluster synchronization of nonlinearly coupled Lur’s networks,” in Commun Nonlinear Sci NumerSimulat 2016, pp. 7-20.
- H. L. Li, C. Hu, Y. L. Jiang, Z. L. Wang and Z. D. Teng, “Pinning adaptive and impulsive synchronization of fractional-order complex dynamical networks,” in Chaos, Solitons and Fractals 2016, pp. 142-149.
- S. D. Zhai and Q. D. Li, “Pinning bipartite synchronization for coupled nonlinear systems with antagonistic interactions and switching topologies,” in Systems & Control Letters 2016, pp. 127-132.
- L. L. Li, Daniel W.C. Ho, J. D. Cao and J. Q. Lu, “Pinning cluster synchronization in an array of coupled neural networks under event-based mechanism,” in Neural Networks 2016, pp. 1-12.
- X. W. Liu, Y. Liu and L. J. Zhou, “Quasi-synchronization of nonlinear coupled chaotic systems via aperiodically intermittent pinning control,” in Neurocomputing 2016, pp. 759-767.
- R. Rakkiyappan, G. Velmurugan, J. Nicholas George and R. Selvamani, “Exponential synchronization of Lur’e complex dynamical networks with uncertain inner coupling and pinning impulsive control,” in Applied Mathematics and Computation 2017, pp. 217-231.
- S. Dharani, R. Rakkiyappan and J. H. Park, “Pinning sampled-date synchronization of coupled inertial neural networks with reaction-diffusion terms and time-varying delays,” in Neurocomputing 2017, pp. 101-107.
- M. Xu, J. L. Wang and P. C. Wei, “Synchronization for coupled reaction-diffusion neural networks with and without multiple time-varying delays via pinning-control,” in Neurocomputing 2017, pp. 82-91.
- S. X. Wang, Y. L. Huang and B. B. Xu, “Pinning synchronization of spatial diffusion coupled reaction-diffusion neural networks with and without multiple time-varying delays,” in Neurocomputing 2017, pp. 92-100.
- W. L. He, F. Qian and J. D. Cao, “Pinning-controlled synchronization of delayed neural networks with distributed-delay coupling via impulsive control,” in Neural Networks 2017, pp. 1-9.
- X. W. Liu, Z. Chen and L. J. Zhou, “Synchronization of coupled reaction-diffusion neural networks with hybrid coupling via aperiodically intermittent pinning control,” in Journal of Franklin Institute 2017, pp. 1-24.
- Y. L. Huang, B. B. Xu and S. Y. Ren, “Analysis and pinning control for passivity of coupled reaction-diffusion neural networks with nonlinear coupling,” in Neurocomputing 2017, pp. 1-9.
- X. H. Ma and J. A. Wang, “Pinning outer synchronization between two delayed complex networks with nonlinear coupling via adaptive periodically intermittent control,” in Neurocomputing 2016, pp. 197-203.
- X. Q. Lei, S. M. Cai, S. Q. Jiang and Z. R. Liu, “Adaptive outer synchronization between two complex delayed dynamical networks via aperiodically intermittent pinning control,” in Neurocomputing 2017, pp. 26-35.
- K. N. Wu and B. S. Chen, “Synchronization of partial differential systems via diffusion coupling,” in IEEE Transactions on Circuits and Systems 2012, pp. 2655-2668.
- K. N. Wu, C. X. Li, X. S. Wang and B. S. Chen, “ synchronization of coupled delay partial differential systems via nonsingular transformation method,” in Applied Mathematical Modeling 2015, pp. 4646-4654.
- K. N. Wu, T. Tian, L. M. Wang and W. W. Wang, “Asymptotical synchronization for a class of coupled time-delay partial differential systems via boundary control, ” in Neurocomputing 2016, pp. 113-118.
- K. N. Wu, T. Tian, and L. M. Wang, “Synchronization for a class of coupled linear partial differential systems via boundary control,” in Journal of the Franklin Institute 2016, pp. 4062-4073.
- L. M. Wang, K. N. Wu, Y. N. Zhu and X. H. Ding, “Mean square synchronization of coupled stochastic partial differential systems,” in Applied Mathematics and Computation 2016, pp. 386-393.
- H. N. Wu, J. W. Wang and H. X. Li, “Fuzzy boundary control design for a class of nonlinear parabolic distributed parameter systems,” in IEEE Trans. Fuzzy Syst. 2014, pp. 642–652.
- Application Research on Satisfaction Evaluation of Clothing Advertising based on Micro Expression Recognition Technology
Abstract Views :136 |
PDF Views:1
Authors
Affiliations
1 Textile Engineering, Hunan Institute of Engineering,Xiangtan,411104, CN
2 College of computer and communication, Hunan institute of engineering, Xiangtan,411104, CN
1 Textile Engineering, Hunan Institute of Engineering,Xiangtan,411104, CN
2 College of computer and communication, Hunan institute of engineering, Xiangtan,411104, CN
Source
International Journal of Advanced Networking and Applications, Vol 12, No 4 (2021), Pagination: 4639-4643Abstract
Questionnaire is one of the most important means to collect data and make information decision. In this paper, the micro expression recognition technology of artificial intelligence is applied in the field of print advertising satisfaction collection and information decision-making. Starting with the analysis of micro expression, a new concept of satisfaction factor of print advertising is proposed and then various optimization functions in neural network are analyzed and discussed. In the following part, the Adabound optimization function is applied to the network model in the example of clothing print advertisement and the convergence s peed of the loss function is accelerated in order to improve the detection accuracy of the model. Experimental result shows the satisfaction of the viewers to the clothing print advertisements, allowing researchers to judge their purchase desire at the same timeKeywords
Clothing print advertising; micro expression recognition; satisfaction; Adabound.References
- 徐峰,张军平.人脸微表情识别综述[J].自动化学报 ,2017,43(03):333-348.
- Pfister T,Li X,Zhao G,Pietikainen M. Recognising spontaneous facial micro-expressions[C].2011 international conference on computer vision. IEEE, 2011: 1449-1456.
- Wang Y,See J,han R.C.W, Oh Y.H. Efficient spatio-temporal local binary patterns for spontaneous facial micro-expression recognition[J]. PloS one, 2015, 10(5): e0124674.
- Li X, Hong X, Moilanen A, Huang X, Pfister T, Zhao G, et al. Towards reading hidden emotions: A comparative study of spontaneous micro -expression spotting and recognition methods[J]. IEEE Transactions on Affective Computing, 2018, 9(4): 563-577.
- Patel D, Hong X, Zhao G. Selective deep features for micro-expression recognition[C].2016 23rd International Conference on Pattern Recognition (ICPR). IEEE, 2016: 2258-2263.
- Li X, Yu J, Zhan S. Spontaneous facial micro-expression detection based on deep learning[C].2016 IEEE 13th International Conference on Signal Processing (ICSP). IEEE, 2016: 1130-1134.
- Bai-cun ZHOU,Cong-ying HAN,Tian-de GUO.Convergence of Stochastic Gradient Descent in Deep Neural Network[J].Acta Mathematicae Applicatae Sinica,2021,37(01):126-136.
- Navdeep Bohra,Vishal Bhatnagar. Group level social media popularity prediction by MRGB and Adam optimization[J]. Journal of Combinatorial Optimization,2021(prepublish).
- Zheng Huang,Yiwen Zhao,Xin Li,Xingang Zhao,Yunhui Liu,Guoli Song,Yang Luo. Application of innovative image processing methods and AdaBound-SE-DenseNet to optimize the diagnosis performance of meningiomas and gliomas[J]. Biomedical Signal Processing and Control,2020,59.
- 王甦菁,邹博超,刘瑞,李振,赵国朕,刘烨,傅小兰.隐 藏情绪分析与识别方法 [J]. 心理科学进展 ,2020,28(09):1426-1436.
- Vedat Tümen,Burhan Ergen. Intersections and crosswalk detection using deep learning and image processing techniques[J]. Physica A: Statistical Mechanics and its Applications,2020,543.