Fault Prediction Using Fuzzy Convolution Neural Network on IOT Environment with Heterogeneous Sensing Data Fusion

Gokul S., Madhorubagan G.E., Sasipriya M.
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Abstract

Because of the developing worldwide familiarity with natural issues, the expansion of sun-based power plants has turned into an unmistakable element of the energy scene. Nonetheless, keeping up with these sunlights-based offices, especially with regards to recognizing breaking down photovoltaic (PV) cells inside huge scope or far off establishments, presents critical difficulties. The focal goal of our exploration project is to resolve this issue by empowering the convenient identification of flaws in PV cells, consequently possibly saving significant time, exertion, and upkeep costs, especially as for the pivoting gear ordinarily utilized in sun-based power plants. I have developed a non-contact vibration pickup system that makes it possible to collect vibration data from PV cells operating at various speeds and loads without having to physically connect them to machine tools. In addition, I rank and select the most relevant features for accurate fault detection using the Sequential Floating Forward Selection (SFFS) method and Principal Component Analysis (PCA) to reduce the extracted features dimensionality. This thorough methodology offers a promising answer for improve the effectiveness and dependability of sun-oriented power plant upkeep while adding to the more extensive objectives of supportable energy creation and natural safeguarding.
利用模糊卷积神经网络在物联网环境中融合异构传感数据进行故障预测
由于全世界对自然问题的认识不断提高,太阳能发电厂的发展已成为能源领域一个无可争议的因素。然而,与这些太阳能发电站保持同步,特别是在识别巨大范围或偏远地区的光伏(PV)电池故障方面,存在着严重困难。我们的探索项目的重点目标是解决这一问题,它能方便地识别光伏电池中的缺陷,从而节省大量时间、精力和维护成本,特别是对于阳光发电厂通常使用的旋转设备。我已经开发出一种非接触式振动拾取系统,可以收集以各种速度和负载运行的光伏电池的振动数据,而无需将其与机床进行物理连接。此外,我还使用顺序浮动前向选择 (SFFS) 方法和主成分分析 (PCA) 对最相关的特征进行排序和选择,以准确检测故障,从而降低提取特征的维度。这种全面的方法为提高面向太阳的发电厂维护的有效性和可靠性提供了一个有前途的答案,同时也为实现可支持的能源创造和自然保护的更广泛目标提供了补充。
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