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Identification of Multiple-Input Systems with Highly Coupled Inputs: Application to EMG Prediction from Multiple Intracortical Electrodes

机译:具有高耦合输入的多输入系统的识别:在多个皮层内电极的EMG预测中的应用

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A robust identification algorithm has been developed for linear, time-invariant, multiple-input single-output systems, with an emphasis on how this algorithm can be used to estimate the dynamic relationship between a set of neural recordings and related physiological signals. The identification algorithm provides a decomposition of the system output such that each component is uniquely attributable to a specific input signal, and then reduces the complexity of the estimation problem by discarding those input signals that are deemed to be insignificant. Numerical difficulties due to limited input bandwidth and correlations among the inputs are addressed using a robust estimation technique based on singular value decomposition. The algorithm has been evaluated on both simulated and experimental data. The latter involved estimating the relationship between up to 40 simultaneously recorded motor cortical signals and peripheral electromyograms (EMGs) from four upper limb muscles in a freely moving primate. The algorithm performed well in both cases: it provided reliable estimates of the system output and significantly reduced the number of inputs needed for output prediction. For example, although physiological recordings from up to 40 different neu-ronal signals were available, the input selection algorithm reduced this to 10 neuronal signals that made significant contributions to the recorded EMGs.
机译:已经针对线性,时不变,多输入单输出系统开发了一种鲁棒的识别算法,重点是如何使用该算法来估计一组神经记录和相关生理信号之间的动态关系。识别算法对系统输出进行分解,以使每个分量都可归因于特定的输入信号,然后通过丢弃那些认为无关紧要的输入信号来降低估计问题的复杂性。使用基于奇异值分解的鲁棒估计技术可以解决由于有限的输入带宽和输入之间的相关性导致的数值困难。该算法已在模拟和实验数据上进行了评估。后者涉及估计自由活动的灵长类动物中多达40个同时记录的运动皮层信号与来自四个上肢肌肉的周围肌电图(EMG)之间的关系。该算法在两种情况下均表现良好:它提供了系统输出的可靠估计,并显着减少了输出预测所需的输入数量。例如,尽管可以从多达40个不同的神经信号中获得生理记录,但是输入选择算法将其减少为10个神经元信号,这对所记录的EMG做出了重大贡献。

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