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首页> 外文期刊>Journal of Cleaner Production >Photovoltaic system failure diagnosis based on adaptive neuro fuzzy inference approach: South Algeria solar power plant
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Photovoltaic system failure diagnosis based on adaptive neuro fuzzy inference approach: South Algeria solar power plant

机译:基于自适应神经模糊推理方法的光伏系统故障诊断:南阿尔及利亚太阳能发电厂

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The present work proposes a new solar power station surveillance approach based on the photovoltaic module failures diagnosis using an adaptive neuro-fuzzy inference approach. Indeed, the main aim of this proposed approach is to ensure and increased energy efficiency and improved reliability of the studied solar power station. This approach is used to generate faults indicators, to detect, locate and isolate the faults based on modeling of the main characteristic variables based on an adaptive neurofuzzy inference, where the main aim is the prediction of the expected studied system behavior based on the actual collected measurements of the studied system. Where, the investigation field of this work is implanted on an area of 60 ha it contains 120120 solar panels with an efficiency of 15-20% with a total power of 30 MW connected to the electrical network of 30 KV. The obtained results confirm the validity of the proposed approach in improving the reliability and the overall efficiency of the studied power system. It was proved experimentally that after a sandstorm, the normal operating mode thresholds were exceeded and absolute overshoots of 35.5, 5.6 and 13 were registered for the output power, the output voltage and the output current respectively. These registrations have permitted to identify the failures and to set up a decision for the cleaning of the photovoltaic module. Indeed, It has been proved in this work that the operation state mode can be maintained based on failure detection and its maintenance which can be achieved in time thanks to the proposed approach. (C) 2018 Elsevier Ltd. All rights reserved.
机译:本工作提出了一种新的太阳能电站监视方法,该方法基于光伏模块故障诊断,使用了自适应神经模糊推理方法。实际上,该提议方法的主要目的是确保并提高所研究的太阳能电站的能源效率和可靠性。该方法用于生成故障指标,基于基于自适应神经模糊推理的主要特征变量的建模来检测,定位和隔离故障,其中主要目的是根据实际收集到的预期系统行为进行预测测量研究系统。这项工作的研究领域植入60公顷的区域,其中包含120120块太阳能电池板,效率为15-20%,总功率为30 MW,连接到30 KV的电网。获得的结果证实了该方法在提高所研究电力系统的可靠性和整体效率方面的有效性。实验证明,在沙尘暴之后,超过了正常工作模式阈值,并且分别针对输出功率,输出电压和输出电流分别记录了35.5、5.6和13的绝对过冲。这些注册允许识别故障并制定清洁光伏模块的决定。确实,在这项工作中已经证明,由于所提出的方法,可以基于故障检测及其维护来维持操作状态模式,并且可以及时实现其维护。 (C)2018 Elsevier Ltd.保留所有权利。

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