This article explores how physics-informed neural networks (PINNs) can simulate shock wave generation, interactions, and entropy solutions. Using Burgers’ equation as a test case, the models accurately handle wave formation, collisions, and rarefaction without prior knowledge of origin points. The results highlight how deep learning can advance computational fluid dynamics by tackling problems once limited to traditional numerical methods.This article explores how physics-informed neural networks (PINNs) can simulate shock wave generation, interactions, and entropy solutions. Using Burgers’ equation as a test case, the models accurately handle wave formation, collisions, and rarefaction without prior knowledge of origin points. The results highlight how deep learning can advance computational fluid dynamics by tackling problems once limited to traditional numerical methods.

Shocks, Collisions, and Entropy—Neural Networks Handle It All

Abstract and 1. Introduction

1.1. Introductory remarks

1.2. Basics of neural networks

1.3. About the entropy of direct PINN methods

1.4. Organization of the paper

  1. Non-diffusive neural network solver for one dimensional scalar HCLs

    2.1. One shock wave

    2.2. Arbitrary number of shock waves

    2.3. Shock wave generation

    2.4. Shock wave interaction

    2.5. Non-diffusive neural network solver for one dimensional systems of CLs

    2.6. Efficient initial wave decomposition

  2. Gradient descent algorithm and efficient implementation

    3.1. Classical gradient descent algorithm for HCLs

    3.2. Gradient descent and domain decomposition methods

  3. Numerics

    4.1. Practical implementations

    4.2. Basic tests and convergence for 1 and 2 shock wave problems

    4.3. Shock wave generation

    4.4. Shock-Shock interaction

    4.5. Entropy solution

    4.6. Domain decomposition

    4.7. Nonlinear systems

  4. Conclusion and References

4.3. Shock wave generation

In this section, we demonstrate the potential of our algorithms to handle shock wave generation, as described in Subsection 2.3. One of the strengths of the proposed algorithm

\

\ is that it does not require to know the initial position&time of birth, in order to accurately track the DLs. Recall that the principle is to assume that in a given (sub)domain and from a smooth function a shock wave will eventually be generated. Hence we decompose the corresponding (sub)domain in two subdomains and consider three neural networks: two neural networks will approximate the solution in each subdomain, and one neural network will approximate the DL. As long as the shock wave is not generated (say for t < t∗ ), the global solution remains smooth and the Rankine-Hugoniot condition is trivially satisfied (null jump); hence the DL for t < t∗ does not have any meaning.

\ Experiment 4. We again consider the inviscid Burgers’ equation, Ω × [0, T] = (−1, 2) × [0, 0.5] and the initial condition

\

\

\ Figure 7: Experiment 4. (Left) Loss function. (Right) Space-time solution

\ Figure 8: Experiment 4. (Left) Graph of the solution at T = 3/5. (Middle) Discontinuity lines. (Right) Flux jump along the DLs.

\

4.4. Shock-Shock interaction

In this subsection, we are proposing a test involving the interaction of two shock waves merging to generate a third shock wave. As explained in Subsection 2.4, in this case it is necessary re-decompose the full domain once the two shock waves have interacted.

\ \

\ \ \ Figure 9: Experiment 5. (Left) Space-time solution without shock interaction (artificial for t > t∗ = 0.45. (Right) Space-time solution with shock interaction.

\

4.5. Entropy solution

We propose here an experiment dedicated to the computation of the viscous shock profiles and rarefaction waves and illustrating the discussion from Subsection 1.3. In this example, a regularized non-entropic shock is shown to be “destabilized” into rarefaction wave by the direct PINN method.

\ \

\ \ \ \

\ \ \

\ \

:::info Authors:

(1) Emmanuel LORIN, School of Mathematics and Statistics, Carleton University, Ottawa, Canada, K1S 5B6 and Centre de Recherches Mathematiques, Universit´e de Montr´eal, Montreal, Canada, H3T 1J4 (elorin@math.carleton.ca);

(2) Arian NOVRUZI, a Corresponding Author from Department of Mathematics and Statistics, University of Ottawa, Ottawa, ON K1N 6N5, Canada (novruzi@uottawa.ca).

:::


:::info This paper is available on arxiv under CC by 4.0 Deed (Attribution 4.0 International) license.

:::

\

Market Opportunity
Instadapp Logo
Instadapp Price(FLUID)
$2.554
$2.554$2.554
-0.97%
USD
Instadapp (FLUID) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

Ripple, DBS, Franklin Templeton Unveil RLUSD DeFi Integration

Ripple, DBS, Franklin Templeton Unveil RLUSD DeFi Integration

The post Ripple, DBS, Franklin Templeton Unveil RLUSD DeFi Integration appeared on BitcoinEthereumNews.com. Ripple partners with DBS and Franklin Templeton to launch RLUSD-backed trading and lending solutions for institutional investors.   Ripple has teamed up with DBS and Franklin Templeton to launch a new trading and lending platform powered by Ripple’s RLUSD stablecoin. This collaboration aims to create a more efficient financial ecosystem for institutional investors.  Through this partnership, clients can now use RLUSD and tokenized money market funds to manage portfolios and access liquidity in real-time. New Partnership Brings Real-Time Trading and Lending Solutions In a recent press release, Ripple revealed a partnership with DBS and Franklin Templeton, set to bring innovative trading and lending solutions to the financial market.  The partnership involves the listing of Franklin Templeton’s tokenized money market product, sgBENJI. Additionally, it is alongside Ripple’s RLUSD on the DBS Digital Exchange (DDEx).  This offers institutional clients the ability to trade between RLUSD and yield-bearing tokens in real-time. Besides, it also enables easy portfolio rebalancing, allowing clients to earn returns during market fluctuations. The collaboration also explores lending opportunities where clients can pledge sgBENJI tokens as collateral to access liquidity. DBS will serve as the custodian for these pledged assets and facilitate repos and credit lines through the bank or third-party platforms. RLUSD Stablecoin Enhances Portfolio Management Ripple’s RLUSD stablecoin plays a central role in this collaboration, providing investors with a solution for managing volatility while earning yields.  By using RLUSD, clients can easily switch between stable, cash-like holdings and yield-generating products. This provides a way to mitigate risk and enhance returns, particularly in volatile market conditions. Franklin Templeton’s decision to issue sgBENJI on the XRP Ledger further boosts the project’s credibility. The XRP Ledger’s high throughput, low costs, and reliability make it an ideal platform for issuing tokenized securities.  This move also enhances the interoperability of digital securities, helping…
Share
BitcoinEthereumNews2025/09/18 21:15
Rain And Lithic Forge Strategic Partnership To Accelerate Global Growth Of Stablecoin-Powered Payments

Rain And Lithic Forge Strategic Partnership To Accelerate Global Growth Of Stablecoin-Powered Payments

The post Rain And Lithic Forge Strategic Partnership To Accelerate Global Growth Of Stablecoin-Powered Payments appeared on BitcoinEthereumNews.com. Rain And Lithic Forge Strategic Partnership To Accelerate Global Growth Of Stablecoin-Powered Payments – BitcoinWorld Skip to content Home Press Release Rain and Lithic Forge Strategic Partnership to Accelerate Global Growth of Stablecoin-Powered Payments Source: https://bitcoinworld.co.in/rain-and-lithic-forge-strategic-partnership-to-accelerate-global-growth-of-stablecoin-powered-payments/
Share
BitcoinEthereumNews2025/09/18 21:16
Zcash Consolidates After Rejection as Traders Brace for Breakout

Zcash Consolidates After Rejection as Traders Brace for Breakout

The post Zcash Consolidates After Rejection as Traders Brace for Breakout appeared on BitcoinEthereumNews.com. ZEC compression persists as higher lows hold, signaling
Share
BitcoinEthereumNews2025/12/29 20:30