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Neural network adaptive wavelets for sizing of stand-alone photovoltaic systems

机译:顶级光伏系统尺寸的神经网络自适应小波

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Single layer feed-forward neural networks with hidden nodes, and an adaptive wavelet functions have been successfully demonstrated to have potential in many applications. An application to sizing of standalone PV systems design method of an unknown optimal sizing combination is presented. These optimal sizing combinations allow to the users of stand-alone PV systems to determine the number of solar panel modules and storage batteries necessary to satisfy a given consumption, especially in isolated sites where the global solar radiation data is not always available. A developed model combine between multilayer perceptron (MLP) and infinite impulse filter (MR), this IIR recurrent structures is combined by cascading to the network to provide double locale structure resulting in improving speed of learning. The MLP-IIR model has been trained by using 200 known sizing combinations data corresponding to 200 locations. In this way, the adaptive model was trained to accept and even handle a number of unusual cases. Known sizing coefficients were subsequently used to investigate the accuracy of estimation. The training MLP-IIR model was performed with adequate accuracy. Subsequently, the unknown validation sizing coefficients set produced very set accurate estimation with the correlation coefficient between the actual and the MLP-IIR model estimated data of 98% was obtained. This result indicates that the proposed method can be successfully used for estimating of optimal sizing combinations of stand-alone PV systems for any locations in Algeria, but the methodology can be generalized using different locations in the world. Also, obtained results by feed-forward (MLP), radial basis function (RBF) and an adaptive MLP-IIR model have been compared with measured data in order to illustrate the importance of the new developed model. Possible application can be found in: rural sites, pumping water, electrification in isolated sites.
机译:已经成功地证明了具有隐藏节点的单层前馈神经网络,以及自适应小波函数在许多应用中具有潜力。介绍了对独立PV系统尺寸的应用,介绍了未知最佳尺寸组合的设计方法。这些最佳尺寸组合允许对独立式PV系统的用户来确定满足给定消耗所需的太阳能电池板模块和存储电池的数量,尤其是在全球太阳辐射数据并不总是可用的隔离位点。开发的模型组合在多层erceptron(MLP)和无限脉冲滤光器(MR)之间,通过级联到网络来组合到网络以提供双地区结构,从而提高学习速度。通过使用对应于200个位置的200个已知的大小尺寸组合数据训练了MLP-IIR模型。通过这种方式,自适应模型培训接受甚至处理许多不寻常的情况。随后用于研究估计的精度已知的大小尺寸系数。培训MLP-IIR模型以足够的准确性进行。随后,在获得的实际和MLP-IIR模型之间的相关系数获得了98%的MLP-IIR模型之间的相关系数产生的未知验证大小估计。该结果表明,所提出的方法可以成功地用于估计阿尔及利亚任何位置的独立光伏系统的最佳施胶组合,但是可以使用世界上的不同位置广泛地推广。此外,已经通过馈通(MLP),径向基函数(RBF)和自适应MLP-IIR模型获得了通过测量数据获得的结果,以说明新开发模型的重要性。可能的应用可以在:农村地点,泵送水,隔离位点的电气化。

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