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[STT41-P02] Periodic boundary granular box method for initializing large scale numerical sandbox models
Keywords:numerical sandbox , sample preparation , periodic boundary granular box
Preparing samples for HPC-enhanced sandbox simulations is nontrivial. Free-fall is the most common technique to initialize numerical samples. For a real-scale sandbox experiment, one needs to wait billions of particles falling into the box and reaching equilibrium. In such a way, there is no explicit control of the particle distribution characteristics, such void ratio and coordination number, which are known to affect the force transmission between particles.
In this study, we present a new method for sample preparation, taking advantage of periodic boundary granular box (PG box). A PG box is a primitive assembly of particles inside a virtual box, where distribution of particles at boundaries satisfy periodic conditions. Using a simple iterative procedure, we first generate primitive PG boxes with controlled properties such as volume fraction, coordination number, and fabric isotopy/anisotropy. PG boxes are then connected and trimmed to fit arbitrary sample boundaries. In such a way, numerical samples for large scale 3D samples with complicated boundaries can be made efficiently. The convergence is checked for the failure behaviors of PG boxes with over a million DEM particles. The initiation of a real-scale sandbox sample with gentle slope is demonstrated.