The Dimension and Minimum Distance of Two Classes of Primitive BCH Codes
March 22, 2016 Β· Declared Dead Β· π Finite Fields Their Appl.
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Authors
Cunsheng Ding, Cuiling Fan, Zhengchun Zhou
arXiv ID
1603.07007
Category
cs.IT: Information Theory
Citations
99
Venue
Finite Fields Their Appl.
Last Checked
4 months ago
Abstract
Reed-Solomon codes, a type of BCH codes, are widely employed in communication systems, storage devices and consumer electronics. This fact demonstrates the importance of BCH codes -- a family of cyclic codes -- in practice. In theory, BCH codes are among the best cyclic codes in terms of their error-correcting capability. A subclass of BCH codes are the narrow-sense primitive BCH codes. However, the dimension and minimum distance of these codes are not known in general. The objective of this paper is to determine the dimension and minimum distances of two classes of narrow-sense primitive BCH codes with design distances $Ξ΄=(q-1)q^{m-1}-1-q^{\lfloor (m-1)/2\rfloor}$ and $Ξ΄=(q-1)q^{m-1}-1-q^{\lfloor (m+1)/2\rfloor}$. The weight distributions of some of these BCH codes are also reported. As will be seen, the two classes of BCH codes are sometimes optimal and sometimes among the best linear codes known.
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