基于神经网络的同步降压变换器电池充电控制器设计

Mohan Krishna Banda, S. Madichetty, Sukumar Mishra
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摘要

本文介绍了一种由人工神经网络(ANN)控制的1.5千瓦容量的同步降压变换器(SB)的设计,该变换器可用于铅酸蓄电池充电。最常用的铅酸电池充电器需要一个具有恒流电压(CC-CV)算法的降压转换器来为电池充电。常规收费有各种缺点;传统降压变换器的损耗是通过用MOSFET代替二极管来提高效率的。传统的基于pi的控制算法设计复杂且完全依赖于系统动力学。提出的数据驱动人工神经网络控制器简化了电池充电的控制逻辑。该方案已在一个试验台上进行了测试,其中使用了太阳能模拟器、SB、控制器和12V, 42Ah铅酸电池等硬件组件。基于人工神经网络的控制逻辑脉冲从微控制器传递到驱动两个mosfet的栅极驱动电路。通过将算法完全部署到微控制器上,完整的人工神经网络算法已在独立模式下执行。还观察到,该方案的效率达到95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of ANN Based Controller for Battery Charging Using Synchronous Buck Converter
This article presents the design of an artificial neural network (ANN) controlled one-and-a-half kilowatt capacity synchronous buck converter(SB) that can be used to charge lead-acid batteries. The most commonly used lead-acid battery charger requires a buck converter with a constant current voltage (CC-CV) algorithm to charge batteries. The conventional charges have various disadvantages; the traditional buck converter losses are negotiated by replacing the diode with MOSFET to improve efficiency. The conventional PI-based control algorithm design is complex and entirely depends on the system dynamics. The proposed data-driven ANN controller simplifies the control logic for battery charging. The proposed scheme has been tested on a test bed wherein the hardware components like a solar emulator, SB, controller and a 12V, 42Ah lead-acid battery has been used. The pulses from ANN-based control logic have been given from the micro-controller to the gate driver circuit that drives both MOSFETs’. The complete ANN algorithm has been performed in standalone mode by deploying the algorithm entirely onto a micro-controller. It is also observed that 95% of efficiency has been achieved with the proposed scheme.
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