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A Novel Nonlinear Deep Reinforcement Learning Controller for DC–DC Power Buck Converters

机译:用于DC-DC电源降压转换器的新型非线性深加固学习控制器

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摘要

The nonlinearities and unmodeled dynamics inevitably degrade the quality and reliability of power conversion, and as a result, pose big challenges on higher-performance voltage stabilization of dc-dc buck converters. The stability of such power electronic equipment is further threatened when feeding the nonideal constant power loads (CPLs) because of the induced negative impedance specifications. In response to these challenges, the advanced regulatory and technological mechanisms associated with the converters require to be developed to efficiently implement these interface systems in the microgrid configuration. This article addresses an intelligent proportional-integral based on sliding mode (SM) observer to mitigate the destructive impedance instabilities of nonideal CPLs with time-varying nature in the ultralocal model sense. In particular, in the current article, an auxiliary deep deterministic policy gradient (DDPG) controller is adaptively developed to decrease the observer estimation error and further ameliorate the dynamic characteristics of dc-dc buck converters. The design of the DDPG is realized in two parts: (i) an actor-network which generates the policy commands, while (ii) a critic-network evaluates the quality of the policy command generated by the actor. The suggested strategy establishes the DDPG-based control to handle for what the iPI-based SM observer is unable to compensate. In this application, the weight coefficients of the actor and critic networks are trained based on the reward feedback of the voltage error, by using the gradient descent scheme. Finally, to investigate the merits and implementation feasibility of the suggested method, some experimental results on a laboratory prototype of the dc-dc buck converter, which feeds a time-varying CPL, are presented.
机译:非线性和未拼接的动态不可避免地降低了电力转换的质量和可靠性,因此,对DC-DC降压转换器的更高性能电压稳定构成了大量挑战。由于引起的负阻抗规范,在馈送非膜恒电负载(CPLS)时,这种电力电子设备的稳定性进一步威胁。为应对这些挑战,与转换器相关的先进监管和技术机制要求开发,以便在微电网配置中有效地实现这些接口系统。本文根据滑动模式(SM)观察者来解决基于滑动模式(SM)观察者的智能比例积分,以减轻非抗体CPLS的破坏性阻抗稳定性,在超常数模型意义上具有时变性质。特别地,在当前的文章中,自适应地开发辅助深度确定性政策梯度(DDPG)控制器以降低观察者估计误差,并进一步改变DC-DC降压转换器的动态特性。 DDPG的设计在两部分中实现:(i)生成策略命令的演员网络,而(ii)批评网络评估演员生成的策略命令的质量。建议的策略建立了基于DDPG的控制,以处理基于IPI的SM Observer无法补偿的内容。在本申请中,通过使用梯度下降方案,基于电压误差的奖励反馈来训练演员和批评网络的权重系数。最后,探讨了建议方法的优点和实施可行性,提出了一种在DC-DC降压转换器的实验室原型的一些实验结果,其馈送了一个时变CPL。

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