[1]刘 胜,宋 佳,李高云.PSO并行优化LSSVR非线性黑箱模型辨识[J].智能系统学报,2010,5(1):51-56.
 LIU Sheng,SONG Jia,LI Gao-yun.Modeling a complex nonlinear system with particle swarm optimizationand paralleloptimized least squares support vector regression[J].CAAI Transactions on Intelligent Systems,2010,5(1):51-56.
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PSO并行优化LSSVR非线性黑箱模型辨识

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[7]XIA Kewen,DONG Yao,DU Hongbin. Oil layer recognition model of LSSVM based on improved PSO algorithm[J].Control and Decision, 2007(12): 13851389.
[8]LI Yonggang,GUI Weihua,YANG Chunhua,CHEN Zhisheng. A resilient particle swarm optimization algorithm [J]. Control and Decision, 2008, 23 (1): 9598.
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备注/Memo

收稿日期:2009-03-01.
基金项目:
黑龙江省自然科学基金资助项目(A200419).
通信作者:刘 胜.E-mail:liu.sch@163.com.
作者简介:
刘 胜,男,1957年生,教授,博士生导师,黑龙江省教学名师,黑龙江省重点一级学科“控制科学与工程”学科负责人.兼任教育部工程研究中心“船舶控制工程研究中心”主任,中国造船学会仪器仪表学术委员会副主任,黑龙江省自动化学会副理事长.主要研究方向为智能控制、鲁棒控制、船舶航行与姿态控制.目前承担国家“973”计划项目、国防基础研究基金项目、国防预研项目4项,省部级项目6项.曾获黑龙江省优秀教学工作者,中国船舶工业总公司优秀青年科技工作者,获省部级科学技术奖7项,省教学成果奖一等奖2项、二等奖2项,省教育科学研究成果一等奖4项,省部级自然科学技术学术成果奖8项.发表学术论文150余篇,被SCI、EI、ISTP检索70余篇,出版学术著作3部.
宋 佳,女,1983年生,博士研究生,主要研究方向为智能控制、船舶姿态控制.参与科研项目2项,发表学术论文10余篇,被EI、ISTP检索6篇.
?李高云,男,1981年生,博士研究生,主要研究方向为智能控制、故障诊断与容错控制、船舶航行与姿态控制.参与科研项目3项,获黑龙江省科学技术二等奖1项,黑龙江省高校科学技术一等奖1项.发表学术论文近10篇,被EI、ISTP检索4篇.

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