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Modeling of soiled photovoltaic modules with neural networks using particle size composition of soil

机译:利用土壤粒度组成的神经网络对光伏组件进行建模

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The performance of PV systems is said to be affected due to soiling predominantly in dry and arid regions. It is therefore necessary to develop methods for estimating the losses that occur due to soiling. For development of this model the particle size composition of the soil is taken as the quantifying parameter. Particle size composition was determined from Sieve Analysis. A series of experiments were conducted on PV panel by artificially soiling with five different soils taken from Shekhawati region of Rajasthan in India. A neural network based modelling of a soiled PV module using particle size composition is proposed. The experimental data obtained is then used to train and develop a neural network which is the approximate model of a soiled solar PV panel using which the power losses of a soiled panel can be predicted.
机译:据说光伏系统的性能会受到影响,这主要是由于干旱和干旱地区的污染。因此,有必要开发一种方法来估计由于弄脏而造成的损失。为了开发该模型,将土壤的粒度组成作为量化参数。粒度组成由筛分析确定。通过用来自印度拉贾斯坦邦Shekhawati地区的五种不同土壤进行人工污染,在PV面板上进行了一系列实验。提出了一种基于神经网络的颗粒尺寸建模的光伏组件的建模方法。然后将获得的实验数据用于训练和开发神经网络,该神经网络是被污染的太阳能PV面板的近似模型,通过该模型可以预测被污染的面板的功率损耗。

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