Artificial Neural Network with 3-Port Dc-Dc Converter Based Energy Management Scheme in Sustainable Energy Sources

Evangelin Jeba J, C. Rajesh
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Abstract

In micro grids, energy management is referred to as an information and control system that offers the essential functionality to ensure that the energy supply from the generation and distribution systems occurs at the lowest possible operational cost. Energy management systems (EMS) support distributed energy resource utilization in micro grids, especially when variable generation and pricing are present. In this paper, an Artificial Neural Network (ANN)-based energy management approach for a hybrid wind, solar and Battery Storage System (BSS) is presented. To sustain the DC voltage, a 3 Port DC-DC Converter is also proposed. While renewable energy systems have numerous advantages, one of the challenges they face is the intermittency of power generation, leading to fluctuations in the power supply to the grid. Therefore, EMS aims to reduce these variations. Another goal is to maintain the battery state of charge (SOC) within the allowed ranges to extend the battery life. The implementation is carried out in Simulink/Matlab platform. To demonstrate the efficacy of the suggested approach, we compare the Total Harmonic Distortion (THD) of the proposed controller (1.52%) with that of conventional controllers, including the ZSI-based PID controller (3.05%), PI controller (4.02%), and FO-PI (3.32%) controller.
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基于3端口Dc-Dc变换器的人工神经网络可持续能源管理方案
在微电网中,能源管理被称为一种信息和控制系统,它提供基本功能,以确保发电和配电系统的能源供应以尽可能低的运营成本发生。能源管理系统(EMS)支持微电网中的分布式能源利用,特别是在存在可变发电和定价的情况下。提出了一种基于人工神经网络(ANN)的风能、太阳能和电池混合储能系统(BSS)能量管理方法。为了维持直流电压,还提出了一种3端口DC-DC变换器。虽然可再生能源系统有许多优点,但它们面临的挑战之一是发电的间歇性,导致电网供电的波动。因此,EMS旨在减少这些变化。另一个目标是将电池充电状态(SOC)保持在允许的范围内,以延长电池寿命。在Simulink/Matlab平台上实现。为了证明所提出方法的有效性,我们将所提出控制器的总谐波失真(THD)(1.52%)与传统控制器(包括基于zsi的PID控制器(3.05%),PI控制器(4.02%)和FO-PI控制器(3.32%)的总谐波失真(THD)进行比较。
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