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Unifying same- and different-material particle charging through stochastic scaling

Unifying same- and different-material particle charging through stochastic scaling

来源:Arxiv_logoArxiv
英文摘要

Triboelectric charging of insulating particles through contact is critical in diverse physical and engineering processes, from dust storms and volcanic eruptions to industrial powder handling. However, repeated experiments revealed counterintuitive charge patterns, including variable impact charge under identical conditions, charge sign reversal with repeated impacts, and bipolar charging of differently sized particles. Existing computational models cannot predict these patterns; they either rely on oversimplified heuristics or require inaccessible detailed surface properties. We present a physics-based stochastic particle charging (SPC) model integrating experimentally characterized charging statistics into multiphase simulations. The model unifies same-material (particle-particle) and different-material (particle-wall) charging in a single framework, grounded in a stochastic closure by the mean, variance, skewness, and minimum impact charge of a single reference experiment. Implemented in a Lagrangian-Eulerian CFD solver, the SPC model takes less than 0.01% of the CPU time when simulating 300 000 insulating particles, charging during millions of same- and different-material contacts, transported by turbulent wall-bounded flows. By scaling the statistical parameters of the reference impact to each collision, the new model reproduces the complex charging patterns observed in experiments without requiring surface-level first-principles inputs. The SPC model offers a physically grounded route to massive-scale simulations of electrostatic effects across many fields of particle-laden flows.

Holger Grosshans、Gizem Ozler、Simon Janta?

高电压技术

Holger Grosshans,Gizem Ozler,Simon Janta?.Unifying same- and different-material particle charging through stochastic scaling[EB/OL].(2025-05-14)[2025-07-20].https://arxiv.org/abs/2505.23775.点此复制

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