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Analytical Computation of Mean Time to Lose Lock for Langevin Delay-Locked Loops

机译:Langevin延迟锁定环的平均丢失锁定时间的解析计算

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This paper presents a novel method for the analytical mean time to lose lock (MTLL) computation of coherent second-order Langevin delay-locked loops (DLLs). Analytical MTLL computation is a key task for DLLs, since the computational complexity of numerical MTLL simulations is far too high in many operating ranges of the second-order Langevin DLLs. To obtain the crucial MTLL values analytically without simulations, we rewrite the Langevin stochastic differential equation (SDE) as a vector-valued Ornstein-Uhlenbeck (OU) SDE. It includes a Gaussian noise term, which yields as a solution of the vector-valued OU SDE a time-variant Gaussian distribution. Thus, the complementary error function yields the loss of lock probability and thereby the MTLL. If we replace the complementary error functions by suitable exponential approximations, we obtain a simple MTLL expression with an exponential function as dominant term. The simple exponential MTLL expression yields the optimum loop parameters corresponding to the maximum MTLL. Simulation results confirm that the optimum loop parameters corresponding to our analytical MTLL computation method and to the simplified exponential approximation coincide. Besides the crucial analytical MTLL results, the OU random processes yield additionally the likewise crucial analytical jitter results.
机译:本文提出了一种新的相干二阶Langevin延迟锁定环(DLL)的解析平均丢失时间(MTLL)计算方法。 MTLL的分析计算是DLL的关键任务,因为在许多二阶Langevin DLL的工作范围内,数值MTLL模拟的计算复杂度过高。为了在没有仿真的情况下分析地获得关键的MTLL值,我们将Langevin随机微分方程(SDE)重写为向量值Ornstein-Uhlenbeck(OU)SDE。它包括一个高斯噪声项,该项可得出向量变量OU SDE的时变高斯分布。因此,互补误差函数导致锁定概率的损失,从而导致MTLL的损失。如果用合适的指数近似值代替互补误差函数,我们将获得一个简单的MTLL表达式,其中指数函数为主导项。简单的指数MTLL表达式产生对应于最大MTLL的最佳循环参数。仿真结果证实,与我们的分析MTLL计算方法和简化的指数逼近相对应的最佳回路参数是一致的。除了关键的分析MTLL结果之外,OU随机过程还产生了同样重要的分析抖动结果。

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