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Multi-source AI news clustered, deduplicated, and scored 0–100 across authority, cluster strength, headline signal, and time decay.

  1. LNN-PINN: A Unified Physics-Only Training Framework with Liquid Residual Blocks

    Researchers have developed LNN-PINN, a new framework designed to enhance the accuracy of physics-informed neural networks (PINNs). This framework integrates a liquid residual gating architecture into the hidden layers of PINNs without altering the core physics modeling or optimization processes. Testing across four benchmark problems demonstrated that LNN-PINN consistently achieved lower RMSE and MAE compared to standard PINNs under identical training conditions. The architecture also proved adaptable and stable across various problem complexities, offering a concise yet effective method for improving predictive capabilities in scientific and engineering applications. AI

    IMPACT Enhances predictive accuracy for scientific and engineering problems by refining PINN architectures.