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引用次数: 14

摘要

在本文中,我们提出了几个模糊推理系统,以监测病人的状态在手术室。使用的算法包括递归模糊推理(RFIS)和以序列模式作为输入的非递归算法。RFIS算法将当前患者状态数据与推理系统的先前输出相结合,因此能够基于先前的顺序系统输出来强化当前的发现。结果表明,RFIS系统可以在更关键的状态下提高灵敏度,同时产生更平滑的推理输出。
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Fuzzy expert systems for sequential pattern recognition for patient status monitoring in operating room.

In this paper, we present several fuzzy inference systems for monitoring patient status in an operating room. The algorithms used include recursive fuzzy inference (RFIS), and non-recursive with sequential patterns as inputs. The RFIS algorithm combines current patient status data with previous output of the inference system, therefore is able to reinforce the current finding based on previous sequential system output. The results show that the RFIS system can be tuned towards higher sensitivity for more critical status, while generating smoother inference output.

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