As an emerging technology in deep learning, physics-informed neural networks (PINNs) have been widely used to solve various partial differential equations (PDEs) in engineering. However, PDEs based on practical considerations contain multiple physical quantities and complex initial boundary conditions, thus PINNs often returns incorrect results. Here we take heat transfer problem in multilayer fabrics as a typical example. It is coupled by multiple temperature fields with strong correlation, and the values of variables are extremely unbalanced among different dimensions. We clarify the potential difficulties of solving such problems by classic PINNs, and propose a parallel physics-informed neural networks with bidirectional balance. In detail, our parallel solving framework synchronously fits coupled equations through several multilayer perceptions. Moreover, we design two modules to balance forward process of data and back-propagation process of loss gradient. This bidirectional balance not only enables the whole network to converge stably, but also helps to fully learn various physical conditions in PDEs. We provide a series of ablation experiments to verify the effectiveness of the proposed methods. The results show that our approach makes the PINNs unsolvable problem solvable, and achieves excellent solving accuracy.
翻译:作为深层学习的新兴技术,物理学知情神经网络(PINNs)被广泛用于解决工程中各种局部差异方程式(PDEs),然而,基于实际考虑的PDEs包含多种物理数量和复杂的初始边界条件,因此PINNs通常会返回不正确的结果。我们在这里将多层结构中的热传输问题作为典型的例子。我们把多层结构中的热传输问题当作一个典型的例子。它由具有很强相关性的多个温度场以及变量的价值在不同层面之间极为不平衡地结合在一起。我们澄清了由经典PINNs解决这类问题的潜在困难,并提出了具有双向平衡的平行物理知情神经网络。详细地说,我们平行的解决框架通过多个多层的认知同步地匹配了平行的方程式。此外,我们设计了两个模块来平衡数据前进进程和损失梯度的反向调整过程。这种双向平衡不仅使整个网络能够以刺穿的方式融合,而且还有助于充分了解PDEs的各种物理条件。我们提供了一系列的模拟实验,以核实拟议方法的有效性。结果表明我们的方法能够实现极的精确性和无法解的问题。