Physics-informed neural particle flow for the Bayesian update step
AI 摘要
提出一种基于物理信息神经网络的粒子流方法,用于贝叶斯更新,提升高维非线性估计性能。
主要贡献
- 提出基于物理信息的神经粒子流框架
- 将连续性方程和对数同伦轨迹相结合,构建主偏微分方程
- 通过嵌入PDE作为物理约束进行无监督训练
方法论
利用神经网络逼近概率密度演化的传输速度场,并将PDE作为物理约束嵌入损失函数中,实现无监督学习。
原文摘要
The Bayesian update step poses significant computational challenges in high-dimensional nonlinear estimation. While log-homotopy particle flow filters offer an alternative to stochastic sampling, existing formulations usually yield stiff differential equations. Conversely, existing deep learning approximations typically treat the update as a black-box task or rely on asymptotic relaxation, neglecting the exact geometric structure of the finite-horizon probability transport. In this work, we propose a physics-informed neural particle flow, which is an amortized inference framework. To construct the flow, we couple the log-homotopy trajectory of the prior to posterior density function with the continuity equation describing the density evolution. This derivation yields a governing partial differential equation (PDE), referred to as the master PDE. By embedding this PDE as a physical constraint into the loss function, we train a neural network to approximate the transport velocity field. This approach enables purely unsupervised training, eliminating the need for ground-truth posterior samples. We demonstrate that the neural parameterization acts as an implicit regularizer, mitigating the numerical stiffness inherent to analytic flows and reducing online computational complexity. Experimental validation on multimodal benchmarks and a challenging nonlinear scenario confirms better mode coverage and robustness compared to state-of-the-art baselines.