深度学习的静脉曲线图自动诊断

Haohui Liu, Manav Arora, Kang Jian, Lu Zhao
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引用次数: 0

摘要

IV曲线跟踪是诊断光伏阵列性能不佳问题的有效方法。它的形状和值可以揭示设备的内部健康问题,这些问题是由退化、不匹配、电池裂纹或操作环境的外部问题(如阴影和污染)引起的。近年来,串形逆变器有提供IV扫描功能的趋势,可以为光伏电站提供大规模的高通量IV曲线诊断。对于这个应用程序,重要的是要有自动诊断和报告,而不是手动解释。在这项工作中,我们提出了一个基于深度学习的诊断框架,用于从IV曲线中分类各种直流性能不佳问题或故障。最初的模型训练是通过模拟各种可能场景的IV曲线来完成的。初步结果表明,该模型能够以非常高的精度识别主要类别的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic IV Curve Diagnosis with Deep Learning
IV curve tracing is a useful method for diagnosing PV array underperformance problems. Its shape and values can reveal internal health issues of devices, caused by degradation, mismatch, cell cracks, or external issues of operating environment, such as shading and soiling. In recent years, there is a trend for string inverters to provide IV scanning function, which enables large scale high throughput IV curve diagnosis for PV farms. For this application, it is important to have automatic diagnosis and reporting instead of manual interpretation. In this work, we propose a diagnosis framework based on deep learning to classify various DC underperformance issues or faults from IV curves. The initial model training is accomplished by simulation of IV curves for a wide range of possible scenarios. Preliminary results indicate that the model is capable of discerning major classes of issues to a very high degree of accuracy.
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