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基于遗传算法的企业种群进化能力评价 被引量:7

Evaluation of the evolutionary ability of enterprise species based on GA
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摘要 从企业种群的基本内涵入手,阐述企业种群进化的内涵和模式,并基于企业种群的刺激-意识-反应进化模式,运用遗传算法对企业种群的进化能力进行评价,提出企业种群进化能力的途径.个体企业每经过一次遗传操作都会有适应度较低的基因(评价指标)被适应度较高的基因(评价指标)所替代;企业种群经过选择、交叉、变异的遗传操作,保持最适应环境变化、进化能力较强、具有与环境保持互动的战略机制、战略能力最强的企业,经过这样重复的过程,最终能够达到企业种群进化能力的最优. The paper begins from the basic content of enterprise species and expatiates the content of enterprise species evolution and its model. And the paper uses Genetic Algorithm to evaluate the evolutionary ability of the enterprise species based on the model of stimulus - consciousness - reaction of enterprise species, and supposes the path to improve the evolutionary ability of enterprise species. It says that the individual enterprise achieves its evolution through genetics processing which help the genes of higher adaptability ( assessment indicator) of enterprise take the place of those of lower adaptability( assessment indicator), and through the genetic processing of choosing, intersection and variation, the enterprise species will maintain the enterprises who have the most adaptability, a higher evolutionary ability, a strategy helping the enterprise interacting with its environment and the highest strategy ability. After such repeated process, the enterprise species can attain an evolution ability of superior.
出处 《哈尔滨工业大学学报》 EI CAS CSCD 北大核心 2006年第12期2155-2157,2161,共4页 Journal of Harbin Institute of Technology
基金 国家自然科学基金资助项目(70672086)
关键词 企业种群 企业种群进化 适应度函数 适应策略 enterprise species enterprise species evolution fitness function adaptive policy
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