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On the derivation and tuning of phase oscillator models for lamprey central pattern generators

机译:关于七rey鳗中央模式发生器的相位振荡器模型的推导和调整

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Using phase response curves and averaging theory, we derive phase oscillator models for the lamprey central pattern generator from two biophysically-based segmental models. The first one relies on network dynamics within a segment to produce the rhythm, while the second contains bursting cells. We study intersegmental coordination and show that the former class of models shows more robust behavior over the animal's range of swimming frequencies. The network-based model can also easily produce approximately constant phase lags along the spinal cord, as observed experimentally. Precise control of phase lags in the network-based model is obtained by varying the relative strengths of its six different connection types with distance in a phase model with separate coupling functions for each connection type. The phase model also describes the effect of randomized connections, accurately predicting how quickly random network-based models approach the determinisitic model as the number of connections increases.
机译:使用相位响应曲线和平均理论,我们从两个基于生物物理的分段模型中得出了七lamp鳗中央模式发生器的相位振荡器模型。第一个依靠片段内的网络动态来产生节奏,而第二个则包含爆发单元。我们研究了节间协调,并表明前一类模型在动物的游泳频率范围内表现出更强健的行为。如实验观察到的那样,基于网络的模型还可以轻松地沿脊髓产生近似恒定的相位滞后。在基于网络的模型中,通过在具有每种连接类型的单独耦合功能的相位模型中,通过改变六个不同连接类型的相对强度随距离变化,可以获得对相位滞后的精确控制。阶段模型还描述了随机连接的效果,可准确预测随着连接数增加,基于随机网络的模型接近确定性模型的速度。

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