Physics-Informed Neural Networks (PINNs) solve the data paradox by incorporating known physical laws as constraints during training, enabling accurate predictions with sparse, real-world operational data. This approach bypasses the need for the millions of labeled failure events required by purely statistical models like LSTMs or GRUs.














