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Nuclear binding energy predictions based on BP neural network

机译:基于BP神经网络的核绑定能量预测

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Nuclear masses are of great importance in nuclear physics and astrophysics. Descriptive experimental data on nuclear masses and the prediction of unknown masses based on residual proton-neutron interactions are a focus in nuclear physics. The accuracy of the residual interaction determines the accuracy of the nuclear mass values, so the study of residual interactions is essential. Before we carry out this study, there are many papers using artificial neural networks in nuclear physics. But no one uses BP neural network to study residual interactions. In this paper, we obtained a description and prediction model for residual interactions based on BP neural network. By combining experimental values with residual interactions model, we successfully calculate the nuclear masses of A >= 100. Results demonstrate that the differences between our calculated values and experimental values (AME2003, AME2012 and AME2016) show that the root-mean-squared deviations (RMSDs) are small (comparing with AME2003, the odd-A nuclei RMSD and the even-A nuclei RMSD are 112 and 128 keV; comparing with AME2012, the odd-A nuclei RMSD and the even-A nuclei RMSD are 103 and 121 keV; comparing with AME2016, the RMSD of odd-A nuclei and even-A nuclei are 106 and 122 keV, respectively). In addition, we obtained some predicted masses based on AME2003 and AME2012, the predicted values have good accuracy and compared well with experimental values (AME2012 and AME2016). The results show that the study of residual interactions using the proposed BP neural network method is feasible and accurate. This method is helpful for analyzing and extracting useful information from a large number of experimental values and then providing a reference for discovering physical laws and support for physical experiments.
机译:核心群体在核物理学和天体物理学中具有重要意义。基于残余质子 - 中子相互作用的核心和未知质量预测的描述性实验数据是核物理学的重点。残余相互作用的准确性决定了核质量值的准确性,因此残留相互作用的研究至关重要。在我们开展这项研究之前,有许多在核物理学中使用人工神经网络的论文。但没有人使用BP神经网络来研究残留互动。本文基于BP神经网络获得了对基于BP神经网络的残余交互的描述和预测模型。通过将实验值与残余相互作用模型相结合,我们成功地计算了A> = 100的核心。结果表明我们计算的值和实验值(AME2003,AME2012和AME2016)的差异表明了根本平均方形偏差( RMSDS)很小(与AME2003相比,奇数核RMSD和偶数核RMSD为112和128keV;与AME2012相比,奇核RMSD和偶数核RMSD为103和121 keV ;与AME2016相比,奇核核和偶核的RMSD分别为106和122keV)。此外,我们基于AME2003和AME2012获得了一些预测的质量,预测值具有良好的准确性和良好的实验值(AME2012和AME2016)。结果表明,使用所提出的BP神经网络方法研究残留相互作用是可行和准确的。该方法有助于从大量实验值分析和提取有用信息,然后为发现物理定律和对物理实验的支持提供参考。

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