Adaptive and Efficient Nonlinear Channel Equalization for Underwater Acoustic Communication
This addresses the challenge of efficient and adaptive equalization for highly non-stationary underwater acoustic channels, which is incremental as it builds on piecewise linear methods with a novel adaptive tree structure.
The paper tackles the problem of nonlinear channel equalization for underwater acoustic communication by introducing hierarchical and adaptive piecewise linear equalization algorithms, resulting in significantly improved bit error rate performance with polynomial computational complexity.
We investigate underwater acoustic (UWA) channel equalization and introduce hierarchical and adaptive nonlinear channel equalization algorithms that are highly efficient and provide significantly improved bit error rate (BER) performance. Due to the high complexity of nonlinear equalizers and poor performance of linear ones, to equalize highly difficult underwater acoustic channels, we employ piecewise linear equalizers. However, in order to achieve the performance of the best piecewise linear model, we use a tree structure to hierarchically partition the space of the received signal. Furthermore, the equalization algorithm should be completely adaptive, since due to the highly non-stationary nature of the underwater medium, the optimal MSE equalizer as well as the best piecewise linear equalizer changes in time. To this end, we introduce an adaptive piecewise linear equalization algorithm that not only adapts the linear equalizer at each region but also learns the complete hierarchical structure with a computational complexity only polynomial in the number of nodes of the tree. Furthermore, our algorithm is constructed to directly minimize the final squared error without introducing any ad-hoc parameters. We demonstrate the performance of our algorithms through highly realistic experiments performed on accurately simulated underwater acoustic channels.