Solving the (3+1)D Zakharov-Kuznetsov-Burgers equation using physics-informed neural networks
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Results in Physics
Abstract
The (3 + 1)-dimensional Zakharov-Kuznetsov-Burgers (ZKB) equation plays a pivotal role in modeling nonlinear
wave propagation and dissipation phenomena in plasma dynamics. In this study, we develop a Physics-Informed
Neural Network (PINN) framework tailored to accurately solve the ZKB equation with appropriate initial and
boundary conditions. The proposed method successfully reconstructs lump and multi-soliton wave structures,
exhibiting excellent agreement with analytical benchmarks. High-resolution 2D, 3D surface, and contour plots
illustrate the dynamic evolution of nonlinear waves, while error heatmaps and training loss curves validate the
model’s accuracy and stability. The PINN framework is implemented on [specify hardware, e.g., Intel i9 CPU,
NVIDIA RTX GPU, 64 GB RAM], achieving efficient training times for high-dimensional computations. Moreover,
potential applications in spatiotemporal structured light and coupled nonlinear systems are discussed, highlighting the broader significance of this approach in modern plasma physics and optics. This work emphasizes the
robustness, efficiency, and versatility of PINNs in handling high-dimensional nonlinear partial differential
equations, offering a promising computational alternative for future research in plasma physics, soliton theory,
and applied mathematics.
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Towhiduzzaman, M., Al Mohit, M. A., & Asaduzzaman, A. Z. M. (2025). Solving the (3+ 1) D Zakharov-Kuznetsov-Burgers equation using physics-informed neural networks: Lump and soliton wave dynamics in plasma. Results in Physics, 108512.
