宋鲁凯

特聘副教授

  • 学 位:博士
  • 所在系所:机械电子工程系
  • 行政职务:无
  • 办公地点:机电楼715
  • 办公电话:无
  • 电子邮箱:slk@ustb.edu.cn
  • 科研方向:可靠性数字孪生、数智装备与人工智能

  • 教育/工作经历:

    2025.07-至今   北京科技大学,机械工程学院,特聘副教授

    2024.07-2025.06 北京航空航天大学,国际前沿交叉科学研究院,助理教授/博士后

    2023.01-2024.12 香港理工大学,机械工程系,香江学者研究员/博士后

    2020.11-2024.06 北京航空航天大学,航空发动机研究院,助理研究员/博士后

    2016.09-2020.07 北京航空航天大学,航空宇航推进理论与工程,获博士学位

     

    代表性论著:

    [1] LK Song, F Tao, et al. Cascade sampling-driven block mapping for coupled reliability evaluation of turbine cooling systems, Mechanical Systems and Signal Processing, 2025.

    [2] LK Song, F Tao, et al. Physics-embedding multi-response regressor for time-variant system reliability assessment, Reliability Engineering and System Safety, 2025, 263: 111262.

    [3] LK Song, XQ Li, et al. Cascade ensemble learning for multi-level reliability evaluation, Aerospace Science and Technology, 2024, 148: 109101. (ESI 1%高被引论文)

    [4] LK Song, YS Choy, et al. Multi-XGB: A multi-objective reliability evaluation approach for aeroengine turbine discs, Digital Engineering, 2024, 2: 100006.

    [5] LK Song, GC Bai, et al. A unified fatigue reliability-based design optimization framework for aircraft turbine disk, International Journal of Fatigue, 2021, 152: 106422.

    [6] LK Song, GC Bai, et al. A novel metamodeling approach for probabilistic LCF estimation of turbine disk, Engineering Failure Analysis, 2021, 120: 105074.

    [7] LK Song, GC Bai, et al. Dynamic surrogate modeling approach for probabilistic creep-fatigue life evaluation of turbine disks, Aerospace Science and Technology, 2019, 95: 105439.

    [8] LK Song, GC Bai, et al. Probabilistic LCF life assessment for turbine discs with DC strategy-based wavelet neural network regression, International Journal of Fatigue, 2019, 119, 204-219.

    [9] LK Song, GC Bai, et al. Multi-failure probabilistic design for turbine bladed disks using neural network regression with distributed collaborative strategy, Aerospace Science and Technology, 2019, 92: 464-477.

    [10] LK Song, J Wen, et al. Distributed collaborative probabilistic design of multi-failure structure with fluid-structure interaction using fuzzy neural network of regression, Mechanical Systems and Signal Processing, 2018, 104: 72-86.

    [11] LK Song, CW Fei, et al. Dynamic neural network method-based improved PSO and BR algorithms for transient probabilistic analysis of flexible mechanism, Advanced Engineering Informatics, 2017, 33: 144-153.

    [12] LK Song, CW Fei, et al. Multi-objective reliability-based design optimization approach of complex structure with multi-failure modes, Aerospace Science and Technology, 2017, 64: 52-62.

    [13] YW Wang, LK Song*, et al. Probabilistic fatigue estimation framework for aeroengine bladed discs with multiple fuzziness modeling, Journal of Materials Research and Technology, 2023, 24: 2812-2827.

    [14] XQ Li, LK Song*, et al. Multivariate ensembles-based hierarchical linkage strategy for system reliability evaluation of aeroengine cooling blades, Aerospace Science and Technology, 2023, 138: 108325. (ESI 0.1%热点论文 & ESI 1%高被引论文)

    [15] BW Wang, WZ Tang, LK Song*, et al. Deep neural network-based multiagent synergism method of probabilistic HCF evaluation for aircraft compressor rotor, International Journal of Fatigue, 2023, 170: 107510.

    [16] XQ Li, LK Song*, et al. Vectorial surrogate modeling approach for multi-failure correlated probabilistic evaluation of turbine rotor, Engineering with Computers, 2023, 39(3): 1885-1904. (ESI 1% 高被引论文)

    [17] H Zhang, LK Song*, et al. Active extremum Kriging-based multi-level linkage reliability analysis and its application in aeroengine mechanism systems, Aerospace Science and Technology, 2022, 131: 107968.

    [18] K Deng, LK Song*, et al. Improved Kriging-based hierarchical collaborative approach for multi-failure dependent reliability assessment, International Journal of Fatigue, 2022, 160: 106842.

     

    授权发明专利:

    [1] 陶飞, 宋鲁凯, 王子同, 张贺, 左颖. 一种航空发动机叶盘结构可靠性数实融合测试方法[P]. 202411752671.3

    [2] 陶飞, 王思远, 宋鲁凯, 周尧明, 张贺, 左颖. 一种面向整体叶盘加工的刀具磨损数实融合测试方法[P]. 202510546237.8

    [3] 陶飞, 张帅, 宋鲁凯, 张贺, 左颖, 朱永怀. 基于数字空间密度网格的多传感融合人机距离估计方法[P]. 202510181396.2

    [4] 陶飞,张贺,张帅,宋鲁凯, 王子同. 一种空天装备数实试验数据匹配与映射方法、装置[P]. 202411919720.8

    [5] 宋鲁凯, 白广忱, 张红, 李雪芹. 一种航空发动机典型机构多构件失效相关的可靠性仿真方法[P]. CN202210209702.5

    [6] 宋鲁凯, 白广忱, 李雪芹, 张红, 罗安平. 一种基于学科分解的多失效结构分布式协同可靠性方法[P]. CN202210084456.5

    [7] 宋鲁凯, 白广忱, 李雪芹, 张红, 马心怡. 一种基于多层级分布式协同代理模型的复杂结构可靠性方法[P]. CN202210175261.1

    [8] 宋鲁凯, 白广忱, 张红, 李雪芹, 樊晨辉. 一种基于多目标代理模型的静叶调节机构系统可靠性分析方法[P]. CN202111668038.2

     

    成果与荣誉:

    特聘副教授,人社部香江学者,从事数智装备可靠性数字孪生相关研究。主持国家自然科学基金、省自然科学基金、博士后自然科学基金、卓越学术基金等项目,作为项目骨干参与国家重点研发、XX重大专项、自然科学基金(区域联合、重点、面上)等项目。获香江学者奖、航空强国中国心奖、Early Career Award等荣誉,2023、2024连续入选World’s Top 2% Scientists榜单。