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Machine Learning Based Controlled Filtering for Solar PV Variability Reduction with BESS

机译:基于机器学习的Solar PV可变性控制滤波

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The intermittent nature of solar power prevents the large-scale penetration of Photovoltaic (PV) systems in the utility grid as it causes various irregularities such as voltage fluctuations, frequency deviations, and reduced overall output power quality. This paper introduces a novel smoothing control methodology for firming of PV power fluctuations. Battery Energy Storage System (BESS) is coupled with solar panel arrangements and included into the grid for solar power smoothing and to stabilize the above-mentioned irregular behaviors. Additionally, smoothing filters such as Low Pass Filters (LPFs) are integrated along with the BESS for optimal functioning and cost reduction. It has been established that the time constant of a LPF directly impacts the degree of solar PV smoothing. Thus, the proposed methodology utilizes the concepts of machine learning and model predictive control to design a control system that intelligently controls the LPF time constant to efficiently rid the PV profile from fluctuations while operating under practical constraints. A high accuracy prediction system is also developed using neural networks. The proposed controller can flatten solar power variations by utilizing the inputs from our prediction system. In addition to the smoothing performance of our controller, the effect on the battery ramp rate and state of charge is also observed. The proposed firming concept has been described theoretically and simulation results have also been demonstrated.
机译:太阳能的间歇性质防止了实用电网中的光伏(PV)系统的大规模渗透,因为它导致各种不规则性,例如电压波动,频率偏差和减少总输出功率质量。本文介绍了一种新颖的平滑控制方法,用于闪烁PV功率波动。电池储能系统(BESS)与太阳能电池板布置连接,并包括在网格中,用于太阳能平滑,并稳定上述不规则行为。另外,平滑滤光器如低通滤波器(LPF)与BESS一起集成,以获得最佳的功能和降低成本。已经确定LPF的时间常数直接影响太阳能光伏平滑程度。因此,所提出的方法利用机器学习和模型预测控制的概念来设计控制系统,该控制系统智能地控制LPF时间常数,以在实际限制下运行时有效地从波动中摆脱波动。使用神经网络开发了一种高精度预测系统。所提出的控制器可以利用来自预测系统的输入来平稳太阳能变化。除了我们控制器的平滑性能之外,还观察到对电池斜坡率和充电状态的影响。理论上已经描述了所提出的紧致概念,并且还证明了仿真结果。

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