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Normal and Hypoxia EEG Recognition Based on a Chaotic Olfactory Model

机译:基于混沌嗅觉模型的正常与缺氧EEG识别

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The KIII model of the chaotic dynamics of the olfactory system was designed to simulate pattern classification required for odor perception. It was evaluated by simulating the patterns of action potentials and EEG waveforms observed in electrophysiological experiments. It differs from conventional artificial neural networks in relying on a landscape of chaotic attractors for its memory system and on a high-dimensional trajectory in state space for virtually instantaneous access to any low-dimensional attractor. Here we adapted this novel neural network as a diagnostic tool to classify normal and hypoxic EEGs.
机译:嗅觉系统混沌动力学的KIII模型旨在模拟气味感知所需的模式分类。通过模拟在电生理实验中观察到的动作电位和EEG波形的模式来评估它。它与常规人工神经网络的不同之处在于依靠混沌吸引子的景观,用于其内存系统,以及在状态空间中的高维轨迹上,用于几乎瞬间进入任何低维吸引子。在这里,我们将这种新颖的神经网络改造为分类正常和缺氧EEG的诊断工具。

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