紫外光传感器建模数值平台性能的改进

Bel Hadj Jrad Elyes, Belhaj Marwa, Dridi Cherif
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引用次数: 2

摘要

紫外光传感器是许多领域中应用最广泛的光电探测器之一。这种类型的光电二极管的发展一直是现代光电子领域研究人员的兴趣。在此背景下,我们提出了一些基于Lambert W的平台的改进,用于提取传统和创新的ZnO NRs光电二极管的电气参数。lambert方法允许我们求解电流与电压的非线性方程,而增强的Nelder Mead算法和RMSE函数分别是迭代计算和优化方法。改进是为了达到更小的误差,使理论模型尽可能接近所研究传感器的I-V特性。该方法应用于氧化锌纳米棒ZnO NRs和PPV-C6/ZnO NRs异质结作为照明下的紫外光传感器,这是我们团队最近研究的。改进后的平台误差范围更小(RMSE~10-7),计算时间更短,参数更准确。
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Improvement of the UV light sensors modeling numerical platform performances
UV Light sensors are among the most widely used photodetectors in many fields. The development of this type of photodiodes has been the interest of researchers in the field of modern optoelectronics. In this context, we propose some improvements on the Lambert W based platform for the extraction of the electrical parameters of traditional and innovative ZnO NRs based photodiodes. The lambert method allowed us to solve the nonlinear equation that relates the current to the voltage, while the enhanced Nelder Mead algorithm and the RMSE function are iterative calculation and optimization methods respectively. The improvements were done in order to reach much smaller errors, keeping the theoretical model as close as possible to the I-V characteristic of the studied sensors. The method was applied for Zinc Oxide nanorods ZnO NRs and for the PPV-C6/ZnO NRs based heterojunctions as UV light sensors under illumination which have been studied by our team very recently. Thanks to the proposed improvements, the enhanced platform showed lower margin of error (RMSE~10-7) which results in more accurate parameters, with a less calculation time.
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