基于凸增量学习机的神经网络方法预测太阳漫射辐射

E. Lazarevska
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引用次数: 2

摘要

本文介绍了一种基于极限学习机方法的太阳漫射辐射建模方法,这种方法在目前的科学研究中越来越受到关注。采用经典、增量和凸增量极值学习算法建立了几个模型,并将它们相互比较,以及与其他可用模型进行比较,以评估它们的逼近能力和精度。随着模型的建立,讨论了学习算法的一些重要特征,并为一些学习步骤提供了替代解决方案。也就是说,所进行的研究清楚地表明,隐层参数的随机选择显著影响经典极限学习机的逼近能力。本文提供了一个解决这个问题的简单方法。此外,研究证实,增量式极限学习机确实没有达到尽可能小的逼近误差,因为在每增加一个新的隐藏节点后,隐藏节点的输出参数没有重新调整。本文还提供了一个简单的解决方案。最后,凸增量极值学习机倾向于解决增量极值学习机的精度问题。但是,与本文提出的解决方案相比,其精度仍然较小。尽管如此,本研究的仿真结果清楚地表明,极限学习机方法确实具有极简单、极好的近似性能和极快的计算速度等特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network approach based on convex incremental learning machine for prediction of diffuse solar radiation
This paper introduces an alternative way of modeling the solar diffuse radiation based on extreme learning machine methods, which are gaining a growing interest in the scientific and research community nowadays. Several models are built that employ the classic, incremental and convex incremental extreme learning algorithm, and are compared to each other, as well as to other available models, in order to evaluate their approximation capability and accuracy. Along with the models, a few important features of the learning algorithms are discussed and alternative solutions are offered for some learning steps. Namely, the conducted research has clearly showed that the random selection of the hidden layer parameters significantly influences the approximation capacity of the classic extreme learning machine. The paper offers a simple solution to the problem. In addition, the research has confirmed that the incremental extreme learning machine indeed does not achieve the smallest possible approximation error due to the fact that the output parameters of the hidden nodes are not readjusted after the addition of each new hidden node. The paper also offers a simple solution to this problem. Finally, the convex incremental extreme learning machine tends to solve the accuracy problem of the incremental extreme learning machine. However, it still achieves smaller accuracy than the proposed solution in this paper. Nevertheless, the simulation results within this research show clearly that the extreme learning machine methods indeed possess the attributes of extreme simplicity, extremely good approximation performance, and extremely fast computation.
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