Topological Characterization of Churn Flow and Unsupervised Correction to the Wu Flow-Regime Map in Small-Diameter Vertical Pipes
Abstract
Churn flow-the chaotic, oscillatory regime in vertical two-phase flow-has lacked a quantitative mathematical definition for over years. We introduce the first topology-based characterization using Euler Characteristic Surfaces (ECS). We formulate unsupervised regime discovery as Multiple Kernel Learning (MKL), blending two complementary ECS-derived kernels-temporal alignment ( distance on the surface) and amplitude statistics (scale-wise mean, standard deviation, max, min)-with gas velocity. Applied to unlabeled air-water trials from Montana Tech, the self-calibrating framework learns weights , , , placing of total weight on topology-derived features (). The ECS-inferred slug/churn transition lies m/s above Wu et al.'s (2017) prediction in -in. tubing, quantifying reports that existing models under-predict slug persistence in small-diameter pipes where interfacial tension and wall-to-wall interactions dominate flow. Cross-facility validation on Texas A&M University images confirms higher topological complexity in churn vs. slug (). Applied to TAMU pseudo-trials, the same unsupervised framework achieves -class accuracy and churn recall-without any labeled training data-matching or exceeding supervised baselines that require thousands of annotated examples. This work provides the first mathematical definition of churn flow and demonstrates that unsupervised topological descriptors can challenge and correct widely adopted mechanistic models.
Source: arXiv:2604.06167v1 - http://arxiv.org/abs/2604.06167v1 PDF: https://arxiv.org/pdf/2604.06167v1 Original Link: http://arxiv.org/abs/2604.06167v1