A Heuristic Search Method with the Reduced List of Test Error Patterns for Maximum Likelihood Decoding
نویسندگان
چکیده
The reliability-based heuristic search methods for maximum likelihood decoding (MLD) generate test error patterns (or, equivalently, candidate codewords) according to their heuristic values. Test error patterns are stored in lists and its space complexity is crucially large for MLD of long block codes. Based on the decoding algorithms both of Battail and Fang and of its generalized version suggested by Valembois and Fossorier, we propose a new method for reducing the space complexity of the heuristic search methods for MLD including the well-known decoding algorithm of Han et al. If the heuristic function satisfies a certain condition, the proposed method guarantees to reduce the space complexity of both the Battail-Fang and Han et al. decoding algorithms. Simulation results show the high efficiency of the proposed method. key words: maximum likelihood decoding, binary block codes, heuristic search, most reliable basis, reliability
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A Heuristic Search Algorithm with the Reduced List of Test Error Patterns for Maximum Likelihood Decoding
The reliability-based heuristic search methods for maximum likelihood decoding (MLD) generate test error patterns (or, equivalently, candidate codewords) according to their heuristic values. Test error patterns are stored in lists and its space complexity is crucially large for MLD of long block codes. One of the well-known heuristic search methods for MLD is the A decoding algorithm proposed b...
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ورودعنوان ژورنال:
- IEICE Transactions
دوره 88-A شماره
صفحات -
تاریخ انتشار 2005