NSF CAREER
Generalizing Deep Learning for Wireless Communication
In recent years, Deep learning (DL) has been applied to wireless communication systems, but in silos of innovation that has limited its utility across a wide variety of applications and channels. The proposed CAREER research is the first to view DL transceivers as a generic waveform processing hardware that not only outperform existing designs but is also able to adapt in extremely dynamic and non-stationary wireless environments. Central to realizing this, is a novel, low complexity DL based spatio-temporal channel decomposition apparatus that pre-compensates the transmission to remove hidden correlations in the channel by an adaptive analysis of the channel state information. This vastly simplifies the receiver architecture, which now operates within chosen bounds of performance while being malleable to the changes in the underlying wireless data samples. Collectively, the proposal will make real-time, data-driven DL ubiquitous and universally applicable in wireless communications that is firmly rooted in provable mathematical principles, something that is currently missing in the literature.
In order to realize the research vision we need to leverage the computational advantage of DL to iterativelyreinforce the knowledge of hidden correlations in the channel and pre-compensate the waveform at the transmitter. This allows for a generic neural network based receiver to operate with a deterministic error bound for any and all wireless environment. Therefore, the objective of this proposal are:
To extract meaningful characterizations of multi-modal channels at the transmitter that uniquely define the future stochastic behavior of the channel, that is also computationally efficient.
To pre-compensate the waveform by employing the latent representation of the wireless channel to guarantee the error performance at the receiver for all types of channel.
To establish a mathematical and functional equivalence between a classical and generalized DL receiver and generate optimal structures with bounded error performance for different wireless channels.
To learn and predict the future channel states by employing a data-driven and policy based learning to adapt to NS channels with unknown distributions.
The educational objectives of the CAREER proposal are shaped by the seismic shift in higher education by COVID–19 pandemic that has forced all academicians to re-calibrate their learning and teaching strategies:
To expand the understanding of communication systems theory by creating a knowledge bridge to deep learning with focus on explainable data-driven signal processing.
To innovate teaching modalities for personalized and interactive learning for classrooms of the future, including piloting instruction in extended reality (XR) environments.
To prepare students for life-long learning, create opportunities for traditionally under-represented groups and promote an inclusive learning environment within my research lab as well as in the department.
Z. Zou, A. Dutta, "Multi-dimensional Eigenwave Multiplexing (MEM): A General Modulation for LTV Channels", IEEE Transactions on Vehicular Technology, 2025. [pdf]
Z. Zou, I. Amarasekara, A. Dutta, "Explainable Neural Network for Joint Orthogonal Bases of Doubly Selective Channels", in IEEE Transactions on Wireless Communications, 2025. [pdf]
Z. Zou, M. Careem, A. Dutta N. Thawdar, “Joint Spatio-Temporal Precoding for Practical Non-Stationary Wireless channels,” in IEEE Transactions on Communications, April 2023. [pdf]
I. Amarasekara, A. Dutta, "Self-supervised Blind Detection in LTV-MIMO Channels", In 2026 IEEE 103th Vehicular Technology Conference (VTC2026-Spring), 2026. [pdf]
Z. Zou, X. Wei, X. Tian, G. Chen, A. Dutta, K. Pham, and E. Blasch, Joint Interference Cancellation with Imperfect CSI, In 2024 IEEE Military Communications Conference (MILCOM), 2024. [pdf]
Z. Zou, I. Amarasekara, A. Dutta, "Learning to Decompose Asymmetric Channel Kernels for Generalized Eigenwave Multiplexing", In IEEE INFOCOM 2024-IEEE Conference on Computer Communications, 2024. [pdf]
Z. Zou, I. Amarasekara, A. Dutta, "Adaptive Neural Network for Eigen-decomposition of Multi-dimensional Channel Kernels", In 2024 IEEE 99th Vehicular Technology Conference (VTC2024-Spring), 2024. [pdf]
Z. Zou and A. Dutta, "Mutidimensional Eigenwaves Multiplexing Modulation for Non-stationary Channels", In IEEE Global Communications Conference (GLOBECOM), 2023. [pdf]
Z. Zou and A. Dutta, "Capacity Achieving by Diagonal Permutation for MU-MIMO Channels," In IEEE Global Communications Conference (GLOBECOM), 2023. [pdf]
Z. Zou, M. Careem, A. Dutta and N. Thawdar, "Unified Characterization and Precoding for Non-Stationary Channels," In IEEE International Conference on Communications (ICC), 2022. (Best Paper Award). [pdf]
M. Careem, A. Dutta and N. Thawdar, "On Equivalence of Neural Network Receivers", In IEEE International Conference on Communications (ICC), 2021. [pdf]
M. A. Abdul Careem, “Architecting Future Multi-Modal Networks: Coexistence, Generalization & Testbeds”, Ph.D. Dissertation (May 2023), University at Albany, SUNY. [pdf]
Z. Zou, “Waveforms for xG Non-stationary Channels” Ph.D. Dissertation (May 2025), University at Albany, SUNY. [pdf]
I. Amarasekara, “Computationally Efficient Variational Methods for MU-MIMO Receiver” Ph.D. Dissertation (Expected May 2027), University at Albany, SUNY. [pdf]