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首页> 外文期刊>Nonlinear processes in geophysics >A fast approximation for 1-D inversion of transient electromagnetic data by using a back propagation neural network and improved particle swarm optimization
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A fast approximation for 1-D inversion of transient electromagnetic data by using a back propagation neural network and improved particle swarm optimization

机译:通过使用反向传播神经网络和改进的粒子群优化的瞬态电磁数据的1-D反转的快速近似

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摘要

As one of the most active nonlinear inversion methods in transient electromagnetic (TEM) inversion, the back propagation (BP) neural network has high efficiency because the complicated forward model calculation is unnecessary in iteration. The global optimization ability of the particle swarm optimization (PSO) is adopted for amending the BP's sensitivity to its initial parameters, which avoids it falling into a local optimum. A chaotic-oscillation inertia weight PSO (COPSO) is proposed for accelerating convergence. The COPSO-BP algorithm performance is validated by two typical testing functions, two geoelectric models inversions and a field example. The results show that the COPSO-BP method is more accurate, stable and needs relatively less training time. The proposed algorithm has a higher fitting degree for the data inversion, and it is feasible to use it in geophysical inverse applications.
机译:作为瞬态电磁(TEM)反转中最活跃的非线性反转方法之一,后传播(BP)神经网络具有高效率,因为迭代中不需要复杂的前向模型计算。 采用粒子群优化(PSO)的全局优化能力用于修改BP对其初始参数的敏感性,这避免它落入局部最佳。 提出了一种混沌振荡惯性重量PSO(COPSO),用于加速收敛。 通过两个典型的测试功能,两个电气电模型反转和现场示例验证了CopSO-BP算法性能。 结果表明,CoPSO-BP方法更准确,稳定,需要相对较少的训练时间。 该算法具有更高的数据反转拟合度,并且在地球物理逆应用中使用它是可行的。

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