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A feedback Adaptive fuzzy Petri net model for context reasoning

机译:关于上下文推理的反馈自适应模糊Petri网模型

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As an improved model of fuzzy Petri net, adaptive Petri net (AFPN) has got the learning ability from neural network. But AFPN still depends on offline training data, while actual environment is so complex, vague and changeful that AFPN seems slightly inadequate. This paper proposes an approach based on fuzzy logic and feedback theory to improve AFPN. The approach introduces feedback mechanisms into AFPN to enhance the adaptive ability in dynamic environment. In addition, the approach embeds fuzzy logic theory into the representation of context information. Thus, the uncertain context information management is more conformable with person's sense. The approach is also able to learn the parameters of membership function by using the back propagation algorithm of neural network. At the end of the paper, an experiment is designed to demonstrate that the approach is feasible and effective in fuzzy reasoning.
机译:作为模糊Petri网的改进模型,Adaptive Petri网(AFPN)已经从神经网络中获得了学习能力。但AFPN仍然取决于离线培训数据,而实际环境是如此复杂,模糊和变革,即AFPN似乎略有不足。本文提出了一种基于模糊逻辑和反馈理论的方法,以改善AFPN。该方法将反馈机制引入AFPN,以增强动态环境的自适应能力。此外,该方法将模糊逻辑理论嵌入到上下文信息的表示中。因此,不确定的上下文信息管理与人的意义更加符合。该方法还能够通过使用神经网络的后传播算法来学习成员资格函数的参数。在本文末尾,旨在证明该方法在模糊推理中是可行的和有效的。

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