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首页> 外文期刊>Energy Conversion & Management >Photovoltaic mono and bifacial module/string electrical model parameters identification and validation based on a new differential evolution bee colony optimizer
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Photovoltaic mono and bifacial module/string electrical model parameters identification and validation based on a new differential evolution bee colony optimizer

机译:光伏单声道和双相模块/弦电气模型参数识别和验证基于新的差分演进蜜蜂优化器

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摘要

Well estimating the electrical model parameters of the photovoltaic (PV) module/string serves to develop an accurate simulator and a fault diagnosis tool. Several based evolutionary techniques were proposed to identify the unknown circuit equivalent PV generator (PVG) parameters. Whereas most of them have not been examined to various real operating conditions of solar irradiance and PV cells temperature. That requires larger search range than the adopted one in the literature. Enlarging the search range imposes more computational time and high exploration and exploitation features. Hence, a novel hybrid differential evolution and artificial bee colony intelligence (nDEBCO) approach is proposed. In terms of convergence quality, CPU execution time, number of function evaluations (NFE), and error standard deviation (StD). The newly developed approach permits to accurately identify the PV module/string unknown parameters with suitable implementation complexity. Monofacial CLS 220P PV string has been utilized employing an adequate experimental setup with online implementation. 1080 I-V curves have been measured and estimated, where the overall RMSE +/- StD is below 0.02 +/- 1e- 16. The nDEBCO outperforms the present-day published works, for common case studies in the literature with two based root mean square error (RMSE) objective functions namely Lambert W function (LWF) and classic. It yields 7.73006268e- 4 of RMSE, 7.8785e- 18 of StD, and 2150 NFE under ODM with LWF for RTC France PV cell. Bifacial PV module has been evaluated and the electrical parameters have been extracted within less than 1.36 s of CPU run time and not8.0299631e- 3 +/- 6.9096e- 16 of RMSE +/- StD for front and rear faces. Additionally, the parameter identification procedure has been well validated to simulate the real partial shading scenarios of the studied PV string with a RMSE less than 0.045 and 0.397% of power maximum point absolute error.
机译:良好估算光伏(PV)模块/串的电模型参数用于开发精确的模拟器和故障诊断工具。提出了几种基于的进化技术来识别未知电路等效PV发生器(PVG)参数。然而,大多数人尚未被检查到太阳辐照度和光伏电池温度的各种实际操作条件。这需要比文献中采用的更大的搜索范围。扩大搜索范围强加了更多的计算时间和高勘探和开发功能。因此,提出了一种新型的混合差分演化和人造群殖民地智能(NDEBCO)方法。在收敛质量方面,CPU执行时间,功能评估数(NFE)和错误标准偏差(STD)。新开发的方法允许准确地识别PV模块/字符串未知参数,具有合适的实现复杂性。 Monofacial CLS 220p PV串已经利用了具有在线实施的充分实验设置。已经测量和估计了1080个IV曲线,其中整体RMSE +/- STD低于0.02 +/- 1E-16. NDEBCO优于本日公布的作品,为文献中的常用案例研究,具有两种根均线的文献中的常见案例研究错误(RMSE)目标函数即Lambert W功能(LWF)和经典。它产生7.73006268E-4的RMSE,7.8785e -18,STD,2150 NFE,ODM,LWF用于RTC法国PV电池。已经评估了双脉冲PV模块,并且电气参数已经在小于1.36秒的CPU运行时间内提取,而不是& 8.0299631E-3 +/- 6.9096e-3 +/- 6.9096e-3 +/- 6.9096e-3 +/- 6.9096e-3 +/- 6.9096e-16的RMSE +/- STD,适用于前面和后面。此外,参数识别过程已经很好地验证,以模拟研究的PV串的实际部分着色方案,其RMSE小于0.045和0.397%的功率最大点绝对误差。

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