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Brain Signal Source Localization Using a Method Combining BP Neural Networks with Nonlinear Least Squares Method

机译:脑信号源定位使用一种与非线性最小二乘法相结合的BP神经网络的方法

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Brain source localization is an important inverse problem for brain diagnosis and functional analysis. The goal of dipole source localization in the brain is to estimate a set of parameters that can represent the characteristics of the source. Although a back-propagation neural networks (BPNN) method can solve this typical inverse problem fast enough for real time localization, the accuracy may not be high enough. A problem in using a nonlinear least squares (NLS) method is that the solution may be trapped in the local minima of an error function or be not converged. A method combining BPNN with NLS is proposed in this study. The method shows how to estimate an approximate solution of the inverse problem by the BPNN, and how to select the initial value of the NLS due to the results of BPNN to obtain the optimal solution.
机译:脑源本地化是脑诊断和功能分析的重要逆问题。偶极源定位在大脑中的目标是估计可以代表源的特征的一组参数。虽然反向传播神经网络(BPNN)方法可以快速解决这一典型的逆问题,但是精度可能不够高。使用非线性最小二乘(NLS)方法的问题是解决方案可以捕获在误差函数的局部最小值中或不收敛。本研究提出了一种将BPNN与NLS组合的方法。该方法展示了如何通过BPNN估计逆问题的近似解,以及由于BPNN的结果获得最佳解决方案,如何选择NLS的初始值。

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