HUANG Yinggang1 (黄迎港), LUO Wenguang1∗ (罗文广), HUANG Dan2 (黄 丹), LAN Hongli1 (蓝红莉)
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|||HUANG Yinghao1,2 (黄颖浩), WU Yi3 (吴怡), YAO Lixiu2 (姚莉秀), CAI Yunze1,2∗ (蔡云泽). A Class of Distributed Variable Structure Multiple Model Algorithm Based on Posterior Information of Information Matrix [J]. J Shanghai Jiaotong Univ Sci, 2022, 27(5): 671-679.|
|||LIU Qunpo1,3 (刘群坡), LIU Guanghui1∗ (刘广辉), FEI Shumin2,3 (费树岷), WANG Haixing1 (王海星), ZHANG Jianjun1,3 (张建军). Inverse Kinematics Analysis of a 6-DOF Manipulator Using Spherical Geometry Method [J]. J Shanghai Jiaotong Univ Sci, 2022, 27(5): 680-687.|
|||LU Pengli1∗ (卢鹏丽), DONG Chen1,2 (董晨), GUO Yuhong3 (郭育红). A Novel Method Based on Node's Correlation to Evaluate Important Nodes in Complex Networks [J]. J Shanghai Jiaotong Univ Sci, 2022, 27(5): 688-698.|
|||LI Bin (李 斌), WAN Yi-ming (万一鸣), YE Hao (叶 昊) . Time-Varying Delay and Quantization Error [J]. Journal of shanghai Jiaotong University (Science), 2011, 16(5): 513-518.|