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Short Term Performance Investigation of Solar PV Module: A Machine Learning Based Approach

机译:太阳能光伏模块的短期性能调查:基于机器学习的方法

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This study presents a short-term performance analysis of the photovoltaic (PV) module considering weather impact in the context of Bangladesh by using machine learning. A Multilayer perceptron model is used to analyze the data and to predict the output. To collect the weather data and the output data, a weather station has been developed and deployed on the rooftop of a 7-story building in Gabtoli, Dhaka, Bangladesh. All the sensor data can be accessed remotely. In this study data from 1st November 2019 to 28th February 2020 are used in four separate data set for training purpose. It is observed that the output energy prediction improves with the increase in training data. The result shows that the temperature has the highest linear correlation with the module short circuit current among all the weather parameters i.e. humidity, wind speed, and air pressure.
机译:本研究介绍了考虑到孟加拉国的背景下的光伏(PV)模块通过使用机器学习的天气影响的短期性能分析。多层Perceptron模型用于分析数据并预测输出。要收集天气数据和输出数据,天气站已经开发并部署在孟加拉国达卡达卡的一个7层大楼的屋顶上。可以远程访问所有传感器数据。在本研究中,2019年11月1日至28日 th 2020年2月用于四个单独的数据集以进行培训目的。观察到输出能量预测随着训练数据的增加而改善。结果表明,温度与所有天气参数中的模块短路电流具有最高的线性相关性,即湿度,风速和空气压力。

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