Abstract:
Smoothed Particle Hydrodynamics (SPH) is a
popular meshfree method used in fluid dynamics which can be
used to model higher deformable boundaries. However,
compared to conventional grid-based methods, SPH based
meshfree methods fundamentally consume higher
computational time mainly due to the Nearest Neighbour
Particle Searching (NNPS) algorithm. This becomes an obvious
problem when modelling large 2-D and 3-D plant tissues as there
is a higher number of interactions between particles. Very few
attempts have been recently reported to obtain efficient
computational performance when modelling the drying
phenomena of plant tissues. Therefore, this research aims to
introduce a novel application of the Adaptive Fixed
Neighborhood based SPH (AFN-SPH) method, where the fixed
neighbourhood with a radius of three times the smoothing
length, get updated timely to represent the dynamic changes of
the problem domain. It was observed that AFN-SPH is
beneficial particularly to simulate plant tissues in extreme
drying. Both qualitative and quantitative good agreements were
observed in results compared to the conventional SPH
techniques. Further, around 30%-40% of time reduction was
obtained for different tissues. Therefore, the results indicated
that this method can be used as a computationally efficient,
meshfree based modelling approach applicable for problem
domains with deforming boundaries.
Citation:
K. G. P. Hansani, A. K. C. I. Kodithuwakku, S. Baduge and H. C. P. Karunasena, "Novel Application of Adaptive Fixed Neighbourhood based SPH (AFN-SPH) Method to Reduce Computational Time in Meshfree based Plant Tissue Drying Models," 2020 Moratuwa Engineering Research Conference (MERCon), 2020, pp. 142-147, doi: 10.1109/MERCon50084.2020.9185294.