Optimization of R&D project partner selection for complex product systems

Shou Yongyi, Song Chunjiang

Science Research Management ›› 2014, Vol. 35 ›› Issue (10) : 144-149.

PDF(1 KB)
PDF(1 KB)
Science Research Management ›› 2014, Vol. 35 ›› Issue (10) : 144-149.

Optimization of R&D project partner selection for complex product systems

  • Shou Yongyi, Song Chunjiang
Author information +
History +

Abstract

Partner selection is one of the critical success factors of a complex product system (CoPS) R&D project. Factors influencing partner selection in the current literature were summarized and four factors were selected for consequent analysis, namely expenditure, time, risk and synergies among partners. A multi-objective integer programming model was proposed to formulate the decision-making process of partner selection. The objective is to search for an optimal combination of partners for sub-projects in order to reduce the risk of project failure and to minimize the overall project cost and tardiness penalty. A genetic algorithm was proposed to solve the mathematical model. An example was adopted and the computational results showed that the proposed model and the genetic algorithm are effective in selecting rational partners for CoPS projects.

Key words

complex product system / partner selection / synergy / multi-objective optimization / genetic algorithm

Cite this article

Download Citations
Shou Yongyi, Song Chunjiang. Optimization of R&D project partner selection for complex product systems[J]. Science Research Management. 2014, 35(10): 144-149

References

[1] Hobday, M. Product complexity, innovation and industrial organisation [J]. Research Policy, 1998, 26(6): 689-710. [2] Walker, W. Entrapment in large technology systems: Institutional commitment and power relations [J]. Research Policy, 2000, 29(7-8): 833-846. [3] Hansen, K.L., Rush, H. Hotspots in complex product systems: Emerging issues in innovation management [J]. Technovation, 1998, 18(9): 555-561. [4] Ren, Y.T., Yeo, K.T. Research challenges on complex product systems (CoPS) innovation [J]. Journal of the Chinese Institute of Industrial Engineers, 2006, 26(6): 519-529. [5] Hobday, M., Rush, H. Technology management in complex product systems (CoPS) – ten questions answered [J]. International Journal of Technology Management, 1999, 17(6): 618-638. [6] 陈劲, 桂彬旺, 陈钰芬. 基于模块化开发的复杂产品系统创新案例研究[J]. 科研管理, 2006, 27(6): 1-8. [7] 吴运建, 周良毅, 吴健中, 董斌. 企业技术创新风险分析[J]. 科研管理, 1996, 17(3): 34-38. [8] Sari, B., Sen, T., Kilic, E. AHP model for the selection of partner companies in virtual enterprises [J]. International Journal of Advanced Manufacturing Technology, 2008, 38(3-4): 367-376. [9] Camarinha-Matos, L.M., Afsarmanesh, H. Collaborative Networks: Reference Modeling [M]. New York: Springer, 2008. [10] Ip, W.H., Huang, M., Yung, K.L., et al. Genetic algorithm solution for a risk-based partner selection problem in a virtual enterprise [J]. Computers & Operations Research, 2003, 30(2): 213-231. [11] Crispin, J.A., De Sousa, J.P. Partner selection in virtual enterprises: A multi-criteria decision support approach [J]. International Journal of Production Research, 2009, 47(17): 4791-4812. [12] Wang, D., Yung, K.L., Ip, W.H. A heuristic genetic algorithm for subcontractor selection in a global manufacturing environment [J]. IEEE Transactions on Systems, Man, and Cybernetics, Part C: Applications and Reviews, 2001, 31(2): 189-198. [13] Fischer, M., Jahn, H., Teich, T. Optimizing the selection of partners in production networks [J]. Robotics and Computer-Integrated Manufacturing, 2004, 20(6): 593-601. [14] 曹洪医, 汪定伟. 用GA求解动态联盟中伙伴选择的多目标优化模型[J]. 控制与决策, 2002, 17(3): 274-277. [15] 王丹, 杨晓春, 王国仁等. 基于模糊层次分析法实现虚拟企业中的伙伴选择[J]. 东北大学学报(自然科学版), 2000, 21(6): 606-609. [16] Li, S.X., Rowley, T.J. Inertia and evaluation mechanisms in interorganizational partner selection: Syndicate formation among U.S. investment banks [J]. Academy of Management Journal, 2002, 45(6): 1104-1119. [17] 汪定伟, 容启亮, 叶伟雄. 企业动态结盟中的伙伴挑选模型及其软计算方法[J]. 中国科学(E辑), 2002, 32(6): 824-830. [18] 冯蔚东, 陈剑, 赵纯均. 基于遗传算法的动态联盟伙伴选择过程及优化模型[J]. 清华大学学报(自然科学版), 2000, 40(10): 120-124. [19] 玄光南, 程润伟. 遗传算法与工程优化[M]. 北京: 清华大学出版社, 2004. [20] 韩江洪, 王梅芳, 马学森等. 基于自适应遗传算法的虚拟企业伙伴选择求解[J]. 计算机集成制造系统, 2008, 14(1): 118-123.
PDF(1 KB)

Accesses

Citation

Detail

Sections
Recommended

/