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Performance optimization of LQR‐based PID controller for DC‐DC buck converter via iterative‐learning‐tuning of state‐ weighting matrix

机译:通过迭代 - 学习调整对DC-DC降压转换器的LQR基于LQR的PID控制器性能优化

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摘要

This paper presents a numerically optimized linear-quadratic-regulator-based tuning mechanism for a ubiquitous proportional-integral-derivative controller to improve the output-voltage regulation capability of a direct-current (DC)-DC buck converter. The linear-quadratic-regulator minimizes the quadratic cost of variations in the control signal and error-dynamics of output-voltage to provide a trivial set of optimized proportional-integral-derivative controller gains in the form of the state-feedback gain vector. In order to further improve the controller's time-domain performance and its disturbance-rejection capability against load-transients and input-fluctuations, an iterative-learning-tuning mechanism is adopted to optimize the state-weighting matrix of the linear-quadratic cost function. The proposed optimization mechanism iteratively converges in the direction of the steepest gradient-descent of another performance index that directly captures the transient response characteristics, and thus, optimally selects the weighting matrix to achieve the desired natural frequency and damping ratio of the closed-loop system. Credible hardware-in-the-loop experiments are conducted on a low-power DC-DC buck converter circuit to validate the aforementioned propositions.
机译:本文介绍了一种基于数值优化的线性二次稳压器的调谐机构,用于普遍存在的比例积分衍生控制器,以提高直流(DC)-DC降压转换器的输出电压调节能力。线性 - 二次调节器最小化输出电压的控制信号和误差动力学的二次成本,以提供一种以状态反馈增益向量的形式提供一组简化的比例积分 - 积分控制器增益。为了进一步改善控制器的时域性能及其对负载瞬变和输入波动的干扰拒绝能力,采用迭代学习调整机制来优化线性二次成本函数的状态加权矩阵。所提出的优化机制迭代地收敛于直接捕获瞬态响应特性的另一性能指标的陡峭梯度 - 下降的方向上,因此,最佳地选择加权矩阵以实现闭环系统的期望的固有频率和阻尼比率。可信硬件在循环实验上进行在低功耗DC-DC降压转换器电路上进行,以验证上述命题。

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