Noncoherent compressive channel estimation for mm-wave massive MIMO

Millimeter (mm) wave massive MIMO has the potential for delivering orders of magnitude increases in mobile data rates, with compact antenna arrays providing narrow steerable beams for unprecedented levels of spatial reuse. A fundamental technical bottleneck, however, is rapid spatial channel estimation and beam adaptation in the face of mobility and blockage. Recently proposed compressive techniques which exploit the sparsity of mm wave channels are a promising approach to this problem, with overhead scaling linearly with the number of dominant paths and logarithmically with the number of array elements. Further, they can be implemented with RF beamforming with low-precision phase control. However, these methods make implicit assumptions on long-term phase coherence that are not satisfied by existing hardware. In this paper, we propose and evaluate a noncoherent compressive channel estimation technique which can estimate a sparse spatial channel based on received signal strength (RSS) alone, and is compatible with off-the-shelf hardware. The approach is based on cascading phase retrieval (i.e., recovery of complex-valued measurements from RSS measurements, up to a scalar multiple) with coherent compressive estimation. While a conventional cascade scheme would multiply two measurement matrices to obtain an overall matrix whose entries are in a continuum, a key novelty in our scheme is that we constrain the overall measurement matrix to be implementable using coarsely quantized pseudorandom phases, employing a virtual decomposition of the matrix into a product of measurement matrices for phase retrieval and compressive estimation. Theoretical and simulation results show that our noncoherent method scales almost as well with array size as its coherent counterpart, thus inheriting the scalability and low overhead of the latter.

[1]  Richard G. Baraniuk,et al.  1-Bit compressive sensing , 2008, 2008 42nd Annual Conference on Information Sciences and Systems.

[2]  R. Tibshirani Regression Shrinkage and Selection via the Lasso , 1996 .

[3]  Allen Y. Yang,et al.  CPRL -- An Extension of Compressive Sensing to the Phase Retrieval Problem , 2012, NIPS.

[4]  Upamanyu Madhow,et al.  Compressive Parameter Estimation in AWGN , 2014, IEEE Transactions on Signal Processing.

[5]  Emmanuel J. Candès,et al.  PhaseLift: Exact and Stable Signal Recovery from Magnitude Measurements via Convex Programming , 2011, ArXiv.

[6]  Upamanyu Madhow,et al.  Compressive Channel Estimation and Tracking for Large Arrays in mm-Wave Picocells , 2015, IEEE Journal of Selected Topics in Signal Processing.

[7]  Robert W. Heath,et al.  Adaptive One-Bit Compressive Sensing with Application to Low-Precision Receivers at mmWave , 2014, 2015 IEEE Global Communications Conference (GLOBECOM).

[8]  Xiaodong Li,et al.  Phase Retrieval via Wirtinger Flow: Theory and Algorithms , 2014, IEEE Transactions on Information Theory.

[9]  Omid Salehi-Abari,et al.  Millimeter Wave Communications: From Point-to-Point Links to Agile Network Connections , 2016, HotNets.

[10]  Kannan Ramchandran,et al.  PhaseCode: Fast and Efficient Compressive Phase Retrieval Based on Sparse-Graph Codes , 2017, IEEE Transactions on Information Theory.

[11]  Upamanyu Madhow,et al.  Newtonized Orthogonal Matching Pursuit: Frequency Estimation Over the Continuum , 2015, IEEE Transactions on Signal Processing.

[12]  Justin K. Romberg,et al.  Efficient Compressive Phase Retrieval with Constrained Sensing Vectors , 2015, NIPS.

[13]  E. Candès The restricted isometry property and its implications for compressed sensing , 2008 .

[14]  Sundeep Rangan,et al.  Compressive phase retrieval via generalized approximate message passing , 2012, Allerton Conference.

[15]  Upamanyu Madhow,et al.  Compressive adaptation of large steerable arrays , 2012, 2012 Information Theory and Applications Workshop.

[16]  S. Frick,et al.  Compressed Sensing , 2014, Computer Vision, A Reference Guide.

[17]  Upamanyu Madhow,et al.  Noncoherent mmWave Path Tracking , 2017, HotMobile.