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Switched Capacitor-Coupled Inductor DC DC Converter for Grid-Connected PV System using LFCSO-Based Adaptive Neuro-Fuzzy Inference System

机译:用于基于LFCSO的自适应神经模糊推理系统的交换电容器耦合电感器DC DC转换器。基于LFCSO的自适应神经模糊推理系统

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In this paper, the Levy flight-based chicken swarm optimization (LFCSO) is proposed to follow the highest power of grid-joined photovoltaic (PV) framework. To analyze the grid-associated PV framework, the characteristics of current, power, voltage, and irradiance are determined. Because of the low yield voltage of the source PV, a big advance up converter with big productivity is required when the source PV is associated with the matrix power. A tale great advance up converter dependent on the exchanged capacitor and inductor is illustrated in this paper. The LFCSO algorithm with the adaptive neuro-fuzzy inference system is used to generate the control pulses of the transformer-coupled inductor DC-DC converter-less switched capacitor. While using the switched capacitor-coupled inductor, the voltage addition is expanded in the DC-DC converter and the power of PV is maximized. Here, the normal CSO algorithm is updated with the help of Levy flight functions to generate optimal results. To get the accurate optimal results, the output of the proposed LFCSO algorithm is given as the input of the ANFIS technique. After that, the optimal results are generated and they provide the pulses for the system. The working guideline is analyzed and the voltage addition is derived with the utilization of the proposed technique. From that point forward, it predicts the exact maximum power of the converter according to its inputs. Under the variety of solar irradiance and partial shading conditions (PSCs), the PV system is tested and its characteristics are analyzed in different time instants. The proposed LFCSO with ANFIS method is actualized in Simulink/MATLABstage, and the tracking executing is examined with a traditional method such as genetic algorithm (GA), perturb and observe (P&O) technique-neuro-fuzzy controller (NFC) and fuzzy logic controller (FLC) technique.
机译:本文提出了征收飞行的鸡舍优化(LFCSO)以遵循电网连接光伏(PV)框架的最高功率。为了分析网格相关的PV框架,确定电流,电源,电压和辐照度的特性。由于源PV的源PV的低屈服电压,当源PV与矩阵功率相关联时,需要具有较大的生产率的大提升转换器。本文示出了依赖于交换电容器和电感器的故事大进步转换器。具有自适应神经模糊推理系统的LFCSO算法用于产生变压器耦合电感器DC-DC转换电容器的控制脉冲。在使用开关电容耦合电感器的同时,在DC-DC转换器中扩展电压加法,并且PV的功率最大化。在这里,借助征用飞行功能的帮助更新正常的CSO算法以产生最佳结果。为了获得准确的最佳结果,所提出的LFCSO算法的输出作为ANFIS技术的输入给出。之后,产生最佳结果,并且它们为系统提供脉冲。分析了工作指南,并通过利用所提出的技术来推导电压加法。从那时起,它根据其输入预测转换器的精确最大功率。在太阳辐照度和部分遮阳条件(PSC)的各种下,测试光伏系统,其特征在不同的时间瞬间进行分析。具有ANFIS方法的提出的LFCSO在Simulink / MatlaMstage中实现,并通过传统方法检查跟踪执行,例如遗传算法(GA),扰动和观察(P&O)技术 - 神经模糊控制器(NFC)和模糊逻辑控制器(FLC)技术。

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