Title :
On the sphere-decoding algorithm II. Generalizations, second-order statistics, and applications to communications
Author_Institution :
Dept. of Electr. Eng., California Inst. of Technol., Pasadena, CA, USA
Abstract :
In Part I, we found a closed-form expression for the expected complexity of the sphere-decoding algorithm, both for the infinite and finite lattice. We continue the discussion in this paper by generalizing the results to the complex version of the problem and using the expected complexity expressions to determine situations where sphere decoding is practically feasible. In particular, we consider applications of sphere decoding to detection in multiantenna systems. We show that, for a wide range of signal-to-noise ratios (SNRs), rates, and numbers of antennas, the expected complexity is polynomial, in fact, often roughly cubic. Since many communications systems operate at noise levels for which the expected complexity turns out to be polynomial, this suggests that maximum-likelihood decoding, which was hitherto thought to be computationally intractable, can, in fact, be implemented in real-time-a result with many practical implications. To provide complexity information beyond the mean, we derive a closed-form expression for the variance of the complexity of sphere-decoding algorithm in a finite lattice. Furthermore, we consider the expected complexity of sphere decoding for channels with memory, where the lattice-generating matrix has a special Toeplitz structure. Results indicate that the expected complexity in this case is, too, polynomial over a wide range of SNRs, rates, data blocks, and channel impulse response lengths.
Keywords :
Toeplitz matrices; antenna arrays; channel coding; computational complexity; maximum likelihood decoding; radio networks; signal processing; statistical analysis; Toeplitz structure; antenna array; channel coding; communications system; expected complexity; finite lattice; frequency-selective channel; infinite lattice; lattice-generating matrix; maximum-likelihood decoding; multiantenna system; second-order statistics; signal-to-noise ratio; sphere-decoding algorithm; wireless communication; Closed-form solution; Frequency; Lattices; Maximum likelihood decoding; Maximum likelihood detection; Polynomials; Signal processing algorithms; Signal to noise ratio; Statistics; Wireless communication; Expected complexity; frequency-selective channels; multiple-antenna systems; polynomial-time complexity; sphere decoding; wireless communications;