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Virtual Enterprise Risk Management Using Artificial Intelligence

机译:使用人工智能的虚拟企业风险管理

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摘要

Virtual enterprise (VE) has to manage its risk effectively in order to guarantee the profit. However, restricting the risk in a VE to the acceptable level is considered difficult due to the agility and diversity of its distributed characteristics. First, in this paper, an optimization model for VE risk management based on distributed decision making model is introduced. This optimization model has two levels, namely, the top model and the base model, which describe the decision processes of the owner and the partners of the VE, respectively. In order to solve the proposed model effectively, this work then applies two powerful artificial intelligence optimization techniques known as evolutionary algorithms (EA) and swarm intelligence (SI). Experiments present comparative studies on the VE risk management problem for one EA and three state-of-the-art SI algorithms. All of the algorithms are evaluated against a test scenario, in which the VE is constructed by one owner and different partners. The simulation results show that the PS~2O algorithm, which is a recently developed SI paradigm simulating symbiotic coevolution behavior in nature, obtains the superior solution for VE risk management problem than the other algorithms in terms of optimization accuracy and computation robustness.
机译:虚拟企业(VE)必须有效地管理其风险,才能保证利润。然而,由于其分布特性的敏捷性和多样性,将VE中的风险限制在可接受的水平被认为是困难的。首先,本文介绍了一种基于分布式决策模型的VE风险管理优化模型。该优化模型有两个层次,即顶级模型和基础模型,分别描述了VE的所有者和合作伙伴的决策过程。为了有效地解决所提出的模型,这项工作然后应用了两种强大的人工智能优化技术,即进化算法(EA)和群智能(SI)。实验针对一种EA和三种最先进的SI算法对VE风险管理问题进行了比较研究。所有算法均根据测试场景进行评估,在测试场景中,VE由一个所有者和不同的合作伙伴构建。仿真结果表明,PS〜2O算法是最近开发的一种模拟自然界中共生共进化行为的SI范式,在优化精度和计算稳健性方面比其他算法获得了更好的VE风险管理问题解决方案。

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  • 来源
    《Mathematical Problems in Engineering 》 |2010年第1期| p.28.1-28.20| 共20页
  • 作者单位

    Key Laboratory of Industrial Informatics, Shenyang Institute of Automation, Chinese Academy of Sciences,Faculty Office III, Nanta Street no. 114, Dongling District, Shenyang 110016, China;

    rnKey Laboratory of Industrial Informatics, Shenyang Institute of Automation, Chinese Academy of Sciences,Faculty Office III, Nanta Street no. 114, Dongling District, Shenyang 110016, China;

    rnKey Laboratory of Industrial Informatics, Shenyang Institute of Automation, Chinese Academy of Sciences,Faculty Office III, Nanta Street no. 114, Dongling District, Shenyang 110016, China;

    Jilin Petrochemical Information Network Technology Ltd. Corp., Jilin 132022, China;

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