A Multi-Layer Perceptron (MLP) Neural Networks for Stellar Classification: A Review of Methods and Results

A. H. Abdel-aziem, Tamer H. M. Soliman
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引用次数: 1

Abstract

The remarkable capacity of artificial intelligence (AI) to analyze enormous quantities of information and create precise forecasts has led to its growing prominence in the field of scientific Astrophysics. Stellar categorization is the process by which stars are sorted according to the characteristics revealed by their spectra. To analyze the star's electromagnetic radiation, a diffraction or prism screen separates it into a spectrum with an assortment of hues and spectral lines used to categorize the star. Star wavelengths are an extremely important piece of data for space-based photography studies. Employing data from over 100,000 cases and a variety of AI models, this study demonstrates how to categorize stellar properties as either a Galaxy or a Star. This paper used the multi-layer perceptron (MLP) neural network (NN) for stellar classification. The MLP is applied in 18 features. This paper showed the correlation between these features. This paper achieved 97% accuracy from the MLP model. This study compared various optimizers to show the best optimizer. The Adagrad optimizer is the best optimizer due to getting the highest validation accuracy.
一种用于恒星分类的多层感知器(MLP)神经网络:方法和结果综述
人工智能(AI)在分析大量信息和创造精确预测方面的卓越能力,使其在科学天体物理学领域日益突出。恒星分类是根据恒星光谱显示的特征对其进行分类的过程。为了分析恒星的电磁辐射,衍射屏或棱镜屏将其分成光谱,其中包含各种色调和光谱线,用于对恒星进行分类。恒星波长是天基摄影研究中极其重要的数据。这项研究使用了来自10万多个案例和各种人工智能模型的数据,展示了如何将恒星属性分类为星系或恒星。本文采用多层感知器(MLP)神经网络(NN)进行恒星分类。MLP在18个特性中得到应用。本文展示了这些特征之间的相关性。本文从MLP模型获得了97%的准确率。本研究比较了各种优化器,以显示最佳优化器。Adagrad优化器是最好的优化器,因为它获得了最高的验证精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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