In this work, the generalized broken soliton-like (gBS-like) equation is derived through the generalized bilinear method. The neural network model, which can fit the explicit solution with zero error, is found. The interference wave solution of the gBS-like equation is obtained by using the bilinear neural network method (BNNM) and physical informed neural networks (PINNs). Interference waves are shown well via three-dimensional plots and density plots. Compared with PINNs, the bilinear neural network method is not only more accurate but also faster.
翻译:在这项工作中,普遍断裂的索利通类(gBS类)等式通过通用双线法推导出。发现神经网络模型可以将明确的解决方案与零错误相匹配。GBS类等式的干扰波溶液是通过双线神经网络法(BNNM)和物理知情神经网络(PINNs)获得的。干涉波通过三维地块和密度地块很好地显示。与PINNs相比,双线神经网络方法不仅更准确,而且更快。