Biblio

Filters: Author is Li, L.  [Clear All Filters]
2019-09-30
Liu, Y., Li, L., Gao, Q., Cao, J., Wang, R., Sun, Z..  2019.  Analytical Model of Torque-Prediction for a Novel Hybrid Rotor Permanent Magnet Machines. IEEE Access. 7:109528–109538.

This paper presents an analytical method for predicting the electromagnetic performance in permanent magnet (PM) machine with the spoke-type rotor (STR) and a proposed hybrid rotor structure (HRS), respectively. The key of this method is to combine magnetic field analysis model (MFAM) with the magnetic equivalent circuit model. The influence of the irregular PM shape is considered by the segmentation calculation. To obtain the boundary condition in the MFAM, respectively, two equivalent methods on the rotor side are proposed. In the STR, the average flux density of the rotor core outer-surface is calculated to solve the Laplace's equation with considering for the rotor core outer-surface eccentric. In the HRS, based on the Thevenin's theorem, the equivalent parameters of PM remanence BreB and thickness hpme are obtained as a given condition, which can be utilized to compute the air-gap flux density by conventional classic magnetic field analysis model of surface-mounted PMs with air-gap region. Finally, the proposed analytical models are verified by the finite element analysis (FEA) with comparisons of the air-gap flux density, flux linkage, back-EMF and electromagnetic torque, respectively. Furthermore, the performance that the machine with the proposed hybrid structure rotor can improve the torque density as explained.

2019-09-04
Liang, J., Jiang, L., Cao, L., Li, L., Hauptmann, A..  2018.  Focal Visual-Text Attention for Visual Question Answering. 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition. :6135–6143.
Recent insights on language and vision with neural networks have been successfully applied to simple single-image visual question answering. However, to tackle real-life question answering problems on multimedia collections such as personal photos, we have to look at whole collections with sequences of photos or videos. When answering questions from a large collection, a natural problem is to identify snippets to support the answer. In this paper, we describe a novel neural network called Focal Visual-Text Attention network (FVTA) for collective reasoning in visual question answering, where both visual and text sequence information such as images and text metadata are presented. FVTA introduces an end-to-end approach that makes use of a hierarchical process to dynamically determine what media and what time to focus on in the sequential data to answer the question. FVTA can not only answer the questions well but also provides the justifications which the system results are based upon to get the answers. FVTA achieves state-of-the-art performance on the MemexQA dataset and competitive results on the MovieQA dataset.
2018-02-21
Lai, J., Duan, B., Su, Y., Li, L., Yin, Q..  2017.  An active security defense strategy for wind farm based on automated decision. 2017 IEEE Power Energy Society General Meeting. :1–5.

With the development of smart grid, information and energy integrate deeply. For remote monitoring and cluster management, SCADA system of wind farm should be connected to Internet. However, communication security and operation risk put forward a challenge to data network of the wind farm. To address this problem, an active security defense strategy combined whitelist and security situation assessment is proposed. Firstly, the whitelist is designed by analyzing the legitimate packet of Modbus on communication of SCADA servers and PLCs. Then Knowledge Automation is applied to establish the Decision Requirements Diagram (DRD) for wind farm security. The D-S evidence theory is adopted to assess operation situation of wind farm and it together with whitelist offer the security decision for wind turbine. This strategy helps to eliminate the wind farm owners' security concerns of data networking, and improves the integrity of the cyber security defense for wind farm.

2018-04-30
Li, L., Wu, S., Huang, L., Wang, W..  2017.  Research on modeling for network security policy confliction based on network topology. 2017 14th International Computer Conference on Wavelet Active Media Technology and Information Processing (ICCWAMTIP). :36–41.

The consistency checking of network security policy is an important issue of network security field, but current studies lack of overall security strategy modeling and entire network checking. In order to check the consistency of policy in distributed network system, a security policy model is proposed based on network topology, which checks conflicts of security policies for all communication paths in the network. First, the model uniformly describes network devices, domains and links, abstracts the network topology as an undirected graph, and formats the ACL (Access Control List) rules into quintuples. Then, based on the undirected graph, the model searches all possible paths between all domains in the topology, and checks the quintuple consistency by using a classifying algorithm. The experiments in campus network demonstrate that this model can effectively detect the conflicts of policy globally in the distributed network and ensure the consistency of the network security policies.

2017-12-27
Li, L., Abd-El-Atty, B., El-Latif, A. A. A., Ghoneim, A..  2017.  Quantum color image encryption based on multiple discrete chaotic systems. 2017 Federated Conference on Computer Science and Information Systems (FedCSIS). :555–559.

In this paper, a novel quantum encryption algorithm for color image is proposed based on multiple discrete chaotic systems. The proposed quantum image encryption algorithm utilize the quantum controlled-NOT image generated by chaotic logistic map, asymmetric tent map and logistic Chebyshev map to control the XOR operation in the encryption process. Experiment results and analysis show that the proposed algorithm has high efficiency and security against differential and statistical attacks.