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Infeasible primal-dual interior-point algorithm for linear-programming decoding of LDPC codes

机译:用于LDPC码的线性编程解码的不可行的原始对偶内点算法

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The linear programming (LP) decoding of Low-Density Parity-Check (LDPC) codes is widely concerned for its maximum likelihood (ML) features. It is that the ML decoding rule for LDPC codes can be relaxed to LP optimization problem. Therefore, this paper focus on an efficient algorithm called infeasible primal-dual interior-point (IPDIP) to solve the LP problem. In each iteration, the IPDIP algorithm obtains the predictor and corrector steps by solving the Karush-Kuhn-Tucker (KKT) equation twice. The predictor term is used to responsible for optimal solution and the corrector term keeps the current iteration away from the boundary of the feasible region. Furthermore, a modification of the centering parameter is developed to accelerate the convergence speed for the IPDIP algorithm. Simulation results of LP decoding demonstrate that the proposed IPDIP algorithm achieves beautiful bit error rate (BER) performance and good global convergence properties with less iteration number and time than other algorithms which only solve the KKT equation once by Newton method or use the not modified centering parameter.
机译:低密度奇偶校验(LDPC)码的线性编程(LP)解码因其最大似然(ML)功能而广受关注。 LDPC码的ML解码规则可以放宽到LP优化问题。因此,本文重点研究一种有效的算法,即不可行的原始对偶内点(IPDIP),以解决LP问题。在每次迭代中,IPDIP算法通过两次求解Karush-Kuhn-Tucker(KKT)方程来获得预测值和校正步骤。预测项用于负责最优解,而校正项则使当前迭代远离可行区域的边界。此外,开发了对中参数的修改,以加快IPDIP算法的收敛速度。 LP解码的仿真结果表明,与仅通过牛顿法一次求解KKT方程或使用未修改的对中算法的其他算法相比,所提出的IPDIP算法具有出色的误码率(BER)性能和良好的全局收敛性,且迭代次数和时间更少。参数。

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