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首页> 外文期刊>Engineering Applications of Artificial Intelligence >A new Exponentially Expanded Robust Random Vector Functional Link Network based MPPT model for Local Energy Management of PV-Battery Energy Storage Integrated Microgrid
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A new Exponentially Expanded Robust Random Vector Functional Link Network based MPPT model for Local Energy Management of PV-Battery Energy Storage Integrated Microgrid

机译:基于指数扩展的鲁棒随机矢量功能链接网络的MPPT模型,用于光伏电池储能集成微电网的局部能量管理

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摘要

In this paper a new Maximum Power Point Tracking (MPPT) model is presented for Local Energy Management (LEM) of a multiple Photovoltaic (PV) based microgrid. To detect accurate MPP references under local uncertainties, a non-iterative Linear Recurrence Relationship (LRR) based PV model is incorporated with PV penetration index. A robust, accurate and fast Exponentially Expanded Robust Random Vector Functional Link network (EE-RRVFLN) based MPPT algorithm is constructed with an exponentially expansion unit to address positive dynamic volatility and a direct link relationship to address null vs. positive volatility in PV data. The robustness is further incorporated by a maximum likelihood estimator using Huber's cost function, where both input and output weights are optimally estimated by targeting reduction in MPP tracking error. An Assessment Index (i.e. MPPT error related) based Distributed Adaptive Droop (DAD) mechanism is suggested as Primary Controller (PC) for effective power sharing among multiple PVs. A detailed case study is presented to evaluate the accuracy of the proposed model in MATLAB simulation, as well as in dSPACE 1104 based Hardware-in-Loop (HIL) platform. Historical data for different intervals/ seasons, partial shading, improved LEM validations (simulation and HIL) are considered as different cases to establish the excellence of the proposed approach, as compared with conventional Functional Link Neural Network (FLNN) and Random Vector Functional Link Neural Network (RVFLNN).
机译:本文提出了一种新的最大功率点跟踪(MPPT)模型,用于基于多光伏(PV)的微电网的本地能源管理(LEM)。为了在局部不确定性下检测准确的MPP参考,将基于非迭代线性递归关系(LRR)的PV模型与PV渗透指数结合在一起。基于指数扩展单元的健壮,准确和快速的指数扩展鲁棒随机矢量功能链接网络(EE-RRVFLN)构造有指数扩展单元,以解决正动态波动性,并建立直接链接关系以解决PV数据中的零波动与正波动性。最大似然估计器使用Huber的成本函数进一步合并了鲁棒性,其中输入和输出权重均通过以降低MPP跟踪误差为目标而得到最佳估计。建议使用基于评估索引(即与MPPT错误有关)的分布式自适应下垂(DAD)机制作为主控制器(PC),以在多个PV之间进行有效的功率共享。提出了详细的案例研究,以评估在MATLAB仿真以及基于dSPACE 1104的硬件在环(HIL)平台中提出的模型的准确性。与传统的功能链接神经网络(FLNN)和随机矢量功能链接神经网络相比,不同间隔/季节,部分阴影,改进的LEM验证(模拟和HIL)的历史数据被认为是确立建议方法卓越性的不同情况。网络(RVFLNN)。

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