Please use this identifier to cite or link to this item:
https://hdl.handle.net/10356/180354
Title: | A DeepParticle method for learning and generating aggregation patterns in multi-dimensional Keller–Segel chemotaxis systems | Authors: | Wang, Zhongjian Xin, Jack Zhang, Zhiwen |
Keywords: | Mathematical Sciences | Issue Date: | 2024 | Source: | Wang, Z., Xin, J. & Zhang, Z. (2024). A DeepParticle method for learning and generating aggregation patterns in multi-dimensional Keller–Segel chemotaxis systems. Physica D, 460, 134082-. https://dx.doi.org/10.1016/j.physd.2024.134082 | Project: | NTU SUG 023162-00001 | Journal: | Physica D | Abstract: | We study a regularized interacting particle method for computing aggregation patterns and near singular solutions of a Keller–Segel (KS) chemotaxis system in two and three space dimensions, then further develop the DeepParticle method to learn and generate solutions under variations of physical parameters. The KS solutions are approximated as empirical measures of particles that self-adapt to the high gradient part of solutions. We utilize the expressiveness of deep neural networks (DNNs) to represent the transform of samples from a given initial (source) distribution to a target distribution at a finite time T prior to blowup without assuming the invertibility of the transforms. In the training stage, we update the network weights by minimizing a discrete 2-Wasserstein distance between the input and target empirical measures. To reduce the computational cost, we develop an iterative divide-and-conquer algorithm to find the optimal transition matrix in the Wasserstein distance. We present numerical results of the DeepParticle framework for successful learning and generation of KS dynamics in the presence of laminar and chaotic flows. The physical parameter in this work is either the evolution time or the flow amplitude in the advection-dominated regime. | URI: | https://hdl.handle.net/10356/180354 | ISSN: | 0167-2789 | DOI: | 10.1016/j.physd.2024.134082 | Schools: | School of Physical and Mathematical Sciences | Rights: | © 2024 Elsevier B.V. All rights reserved. | Fulltext Permission: | none | Fulltext Availability: | No Fulltext |
Appears in Collections: | SPMS Journal Articles |
SCOPUSTM
Citations
50
2
Updated on May 6, 2025
Page view(s)
63
Updated on May 6, 2025
Google ScholarTM
Check
Altmetric
Items in DR-NTU are protected by copyright, with all rights reserved, unless otherwise indicated.