English
 首页  学院概况  教师队伍  教育教学  本科生  研究生  科研科普  招生就业  党建工作  学生工作  校友之家 

讲师

 教授 
 副教授 
 讲师 
 实验员 
当前位置: 首页>>教师队伍>>教师队伍>>讲师>>正文
邓丁山
2022-07-16 17:01  

【基本信息】

姓名:邓丁山

职称:讲师

出生年月:1992年9月

电子邮件:deng-ding-shan@qq.com

【个人简介】

毕业于四川大学,机械制造及其自动化专业,工学博士。参与国家自然科学基金等多项;发表SCI、EI论文10篇。

【研究方向】

主要研究方向为智能优化、复杂网络、调度规划等。

【主要成果】

论文著作

[1]Deng D-S, Long W, Li Y-Y, Shi X-Q. Building Robust Closed-Loop Supply Networks against Malicious Attacks.Processes. 2021, 9(1):39.

[2]Deng D-S, Long W, Li Y-Y, Shi X-Q. Multipopulation genetic algorithms with different interaction structures to solve flexible job-shop scheduling problems: A network science perspective.Mathematical Problems in Engineering. 2020, 2020:1-14.

[3]Shi X-Q,Deng D-S, Long W, Li Y-Y, Yu X-H. Research on the robustness of interdependent supply networks with tunable parameters. Computers & Industrial Engineering.2021, 158:107431.

[4]Shi X-Q, Yuan X-J,Deng D-S. Research on supply network resilience considering the ripple effect with collaboration.International Journal of Production Research.2021(3):1-18.

[5]石小秋,李炎炎,邓丁山,龙伟.基于自适应变级遗传算法的FJSP研究.机械工程学报. 2019(6):10.

[6]Shi X-Q, Long W, Li Y-Y,Deng D-S. Robustness of interdependent supply chain networks against both functional and structural cascading failures.Physica A: Statistical Mechanics and its Applications.2022, 586.

[7]Shi X-Q, Long W, Li Y-Y,Deng D-S, Wei Y-L, Liu H-G.Research on supply network resilience considering random and targeted disruptions simultaneously.International Journal of Production Research. 2019, 58(1):1-19.

[8]Shi X-Q, Long W, Li Y-Y,Deng D-S,Wei Y-L. Research on the performance of multi-population genetic algorithms with different complex network structures.Soft Computing. 2020, 24(5).

[9]Shi X-Q, Long W, Li Y-Y,Deng D-S.Multi-population genetic algorithm with ER network for solving flexible job shop scheduling problems.PLOS ONE. 2020, 15.

[10]Shi X-Q, Long W, Li Y-Y, Wei Y-L,Deng D-S. Different Performances of Different Intelligent Algorithms for Solving FJSP: A Perspective of Structure.Computational Intelligence and Neuroscience. 2018, 2018(4):1-14.

科研项目

  1. 工信部,面上项目, [2017]327,发动机(叶片)绿色再制造关键技术开发与系统集成,参加。

  2. 国家自然科学基金委员会,面上项目,51875371,基于衰减路径速度积的压力容器缺陷动态安全裕度及剩余寿命研究,参加。

关闭窗口

航空港校区 | 四川省成都市西南航空港经济开发区学府路一段24号 | 邮编:610225

Copyright 2017-2018 成都信息工程大学自动化学院 建议使用IE8.0,1024*860以上浏览