A Reduced-Complexity Maximum Likelihood Detection with A Sub Optimal Ber Requirement

Author:

Mourya Sharan, ,Dutta Amit Kumar,

Abstract

Maximum likelihood (ML) detection is an optimal signal detection scheme, which is often difficult to implement due to its high computational complexity, especially in a multiple input multiple-output (MIMO) scenario. In a system with Nt transmit antennas employing M-ary modulation, the ML-MIMO detector requires MNt cost function (CF) evaluations followed by a search operation for detecting the symbol with the minimum CF value. However, a practical system needs the bit-error ratio (BER) to be application-dependent which could be sub-optimal. This implies that it may not be necessary to have the minimal CF solution all the time. Rather it is desirable to search for a solution that meets the required sub-optimal BER. In this work, we propose a new detector design for a SISO/MIMO system by obtaining the relation between BER and CF which also improves the computational complexity of the ML detector for a sub-optimal BER.

Publisher

Lattice Science Publication (LSP)

Reference8 articles.

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3. L. He and H. Ge, "Reduced complexity maximum likelihood detection for v-blast systems," in IEEE Military Communications Conference, 2003. MILCOM 2003., vol. 2, pp. 1386-1391 Vol.2, 2003.

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5. H. Men and M. Jin, "A low-complexity ml detection algorithm for spatial modulation systems with mpsk constellation," IEEE Communications Letters, vol. 18, no. 8, pp. 1375-1378, 2014.[Crossref]

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