This document discusses using neural networks for adaptive digital filter design to cancel linear noise. It begins by introducing adaptive filters and their use in noise cancellation applications. An adaptive noise cancellation system structure is shown using an adaptive filter to estimate noise from a reference input and subtract it from the noisy primary input. Neural networks can be used for adaptive filtering, with the exact random basis function (RBF) network presented as a suitable architecture. Simulation results show that the RBF network achieves much lower error than a linear layer function by producing an output signal close to the desired target. The paper concludes the RBF network is well-suited for this application as it minimizes the error between the output and target signals, effectively canceling linear noise