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Hybrid of unscented Kalman filter and genetic algorithm for state and parameter estimation in sigma–delta modulators

机译:Σ-Δ调制器中无味卡尔曼滤波器和遗传算法的混合用于状态和参数估计

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摘要

A mathematically simple hybrid of the unscented Kalman filter and the genetic algorithm (GA) is presented and applied to the non-ideality estimation in sigma-delta modulators. Parameter estimation is a complicated task, especially if a system must be observed continuously and its internal states have to be tracked in addition. A GA is a low-cost method to find an optimal parameter set but if the system is vastly changing, it cannot be applied. In contrast, the basic Kalman filter is an effective state estimator but cannot be used to estimate parameters of a system without complex mathematical extensions. A combination of both techniques can be beneficial to enable fast and especially low-cost on-chip estimation procedures.
机译:提出了无味卡尔曼滤波器和遗传算法(GA)的数学上简单的混合,并将其应用于sigma-delta调制器中的非理想估计。参数估计是一项复杂的任务,尤其是如果必须连续观察系统并且还必须跟踪其内部状态时。遗传算法是一种寻找最佳参数集的低成本方法,但是如果系统发生巨大变化,则无法应用。相反,基本的卡尔曼滤波器是有效的状态估计器,但是如果没有复杂的数学扩展,则不能用于估计系统的参数。两种技术的结合可能有利于实现快速且特别是低成本的片上评估程序。

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