Mass-parallel Sleptsov net-based solving PDEs on FPGA for embedded control

Conference Presentation


Zaitsev, D., McEwan, A. and Kostikov, A. 2025. Mass-parallel Sleptsov net-based solving PDEs on FPGA for embedded control. 10th International Conference on Information and Communication Technology for Intelligent Systems (ICTIS - 2025).
AuthorsZaitsev, D., McEwan, A. and Kostikov, A.
TypeConference Presentation
Abstract

Real-time embedded applications are normally viewed as continuous processes and are often specified using Partial Differential Equations (PDEs) and with certain boundary conditions. In this paper we present techniques for fast mass-parallel numerical solving of PDEs. We compose specialized lattices based on the integer number approximation specified with Sleptsov nets to be implemented as dedicated hardware, which we prototype on an FPGA. For mass-parallel solving of PDEs, we employ ad-hoc finite-difference schemes and iteration methods that allow us to recalculate the lattice values in a single time cycle with appropriate accuracy suitable for control of hypersonic objects and thermonuclear reactions.

KeywordsPartial-differential equation; mass-parallel solution; Sleptsov net; FPGA; embedded control
Year2025
Conference10th International Conference on Information and Communication Technology for Intelligent Systems (ICTIS - 2025)
Accepted author manuscript
File Access Level
Restricted
Output statusIn press
Publication process dates
Deposited31 Oct 2025

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