Shi Anni, Schwartz Daniel K
Department of Chemical and Biological Engineering, University of Colorado Boulder, Boulder, Colorado 80305, United States.
ACS Nano. 2024 Aug 27;18(34):22864-22873. doi: 10.1021/acsnano.4c02873. Epub 2024 Aug 15.
While irregular and geometrically complex pore networks are ubiquitous in nature and industrial processes, there is no universal model describing nanoparticle transport in these environments. 3D super-resolution nanoparticle tracking was employed to study the motion of passive (Brownian) and active (self-propelled) species within complex networks, and universally identified a mechanism involving successive cavity exploration and escape. In all cases, the long-time ensemble-averaged diffusion coefficient was proportional to a quantity involving the characteristic length scale and time scale associated with microscopic cavity exploration and escape ( ∼ /), where the proportionality coefficient reflected the apparent porous network connectivity. For passive nanoparticles, this coefficient was always lower than expected theoretically for a random walk, indicating reduced network accessibility. In contrast, the coefficient for active nanomotors, in the same pore spaces, aligned with the theoretical value, suggesting that active particles navigate "intelligently" in porous environments, consistent with kinetic Monte Carlo simulations in networks with variable pore sizes. These findings elucidate a model of successive cavity exploration and escape for nanoparticle transport in porous networks, where pore accessibility is a function of motive force, providing insights relevant to applications in filtration, controlled release, and beyond.
虽然不规则且几何结构复杂的孔隙网络在自然界和工业过程中普遍存在,但尚无描述纳米颗粒在这些环境中传输的通用模型。采用三维超分辨率纳米颗粒追踪技术研究了复杂网络中被动(布朗运动)和主动(自推进)粒子的运动,并普遍确定了一种涉及连续腔室探索和逃逸的机制。在所有情况下,长时间系综平均扩散系数与一个涉及与微观腔室探索和逃逸相关的特征长度尺度和时间尺度的量成正比(∼ /),其中比例系数反映了表观多孔网络连通性。对于被动纳米颗粒,该系数始终低于理论上随机游走的预期值,表明网络可及性降低。相比之下,在相同孔隙空间中主动纳米马达的系数与理论值相符,这表明主动粒子在多孔环境中“智能”导航,这与具有可变孔径的网络中的动力学蒙特卡罗模拟一致。这些发现阐明了多孔网络中纳米颗粒传输的连续腔室探索和逃逸模型,其中孔隙可及性是驱动力的函数,为过滤、控释及其他应用提供了相关见解。