首页> 外文会议>Engineering in Medicine and Biology Society, 2003. Proceedings of the 25th Annual International Conference of the IEEE >An event-driven dynamic recurrent neuro-fuzzy system for adaptive prognosis in rehabilitation
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An event-driven dynamic recurrent neuro-fuzzy system for adaptive prognosis in rehabilitation

机译:事件驱动的动态递归神经模糊系统,用于康复适应性预后

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An event-driven dynamic recurrent neuro-fuzzy system for prognosis in rehabilitation is introduced. Four layers are used to implement a fuzzy expert system, each of which consists of a cluster of neurons: input, rule-state, output, and outcome. The input "sensory" layer detects events based on physical and physiological status. Rules can fire in response to events and the current states, generating impulse or pulse-train signals to a given state. The states of the dynamic system, which often represent fuzzy expressions such as "strength.arm", change as a function of time. The event signals and the fuzzy states then are nonlinearly mapped to fuzzy outputs. Outcomes, similar to optimization performance criteria, are then a function of inputs, states and outputs. The system is designed with an interactive graphical user interface to facilitate rule creation by clinical experts. The structure is designed so that reinforcement learning approaches can be added in the future. This will enable tuning of system parameters, based on feedback from the patient and practitioner, as well as the error between predicted and measured outcomes.
机译:介绍了一种事件驱动的动态递归神经模糊系统,用于康复治疗的预后。使用四层来实现模糊专家系统,每层系统都由一组神经元组成:输入,规则状态,输出和结果。输入的“感觉”层基于物理和生理状态检测事件。规则可以响应事件和当前状态而触发,从而生成到给定状态的脉冲或脉冲序列信号。动态系统的状态(通常表示模糊表达,例如“ strength.arm”)随时间而变化。然后将事件信号和模糊状态非线性映射到模糊输出。因此,类似于优化性能标准的结果是输入,状态和输出的函数。该系统设计有交互式图形用户界面,以方便临床专家创建规则。设计该结构,以便将来可以添加强化学习方法。这将能够基于患者和从业人员的反馈以及预测结果和测量结果之间的误差来调整系统参数。

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