太阳能光伏系统最大功率点跟踪的神经网络与模糊联合控制

Ram Keshaw, Rao B. Chiranjeev, Jain Raina
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摘要

可再生能源是未来最有效的能源之一。使用光伏板是利用太阳能发电的最有效方法。利用太阳能的光伏板具有非线性电压电流和电压控制特性。太阳能光伏板的控制产率在某一电压点最高。最大功率点电压是光伏板产生最大功率时的电压。介绍了太阳能光伏板的结构及其特点。为了获得最高的控制点电压,显示了实际最大功率点跟踪(MPPT)电压与人工神经网络(ANN)布置导出的最大功率点跟踪(MPPT)电压的差值,并成功接受。结果似乎与人工神经网络的准确性完全匹配。利用所获得的人工神经网络显示,可以成功准确地跟踪光伏板的最高控制点。从得到的各种结果来看,很明显,在遵循PV板的最极端控制点时,建议的计算证明要简单得多。由于PV电压密切跟踪最高控制点电压,因此当采用所提出的控制方法时,反应时间大大缩短。此外,所提出的策略的精确性是令人难以置信的逻辑。在每个辐照度和温度场景下,控制框架都表现良好。
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Combined Neural Network and Fuzzy Control for Maximum Power Point Tracking In Solar PV System
The most effective renewable energy in the future among energy. Using photovoltaic (PV) panels is the most effective approach to utilize solar energy for electrical power. The photovoltaic panel that uses solar energy has non-linear voltage-current and voltage-control properties. The control yield from the solar-powered PV board is highest at a certain voltage point. The maximum power point voltage is the voltage at which the PV board produces the most power. The construction of the solar-powered PV board and a description of its features have been presented. In order to acquire the highest control point voltage, the difference between the real Maximum Power Point Tracking (MPPT) voltage and the MPPT voltage deduced from the Artificial Neural Network (ANN) arrangement is displayed, and it is successfully accepted. The result appears to be an exact match for the accuracy of ANN. The PV board's highest control point can be successfully and accurately tracked using the ANN display that was obtained. From the various results obtained, it becomes obvious that the suggested computation proves to be considerably simpler in following the PV board's most extreme control point. The reaction time is drastically reduced when the proposed control approach is used since the PV voltage closely tracks the highest control point voltage. Additionally, the proposed strategy's precision is incredibly logical. In every irradiance and temperature scenario, the control framework performs well.
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