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Nuclear mass systematics using neural networks

机译:使用神经网络的核质量系统学

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New global statistical models of nuclidic (atomic) masses based on multilayered feedforward networks are developed. One goal of such studies is to determine how well the existing data, and only the data, determines the mapping from the proton and neutron numbers to the mass of the nuclear ground state. Another is to provide reliable predictive models that can be used to forecast mass values away from the valley of stability. Our study focuses mainly on the former goal and achieves substantial improvement over previous neural-network models of the mass table by using improved schemes for coding and training. The results suggest that with further development this approach may provide a valuable complement to conventional global models. (C) 2004 Elsevier B.V. All rights reserved.
机译:开发了基于多层前馈网络的新的全球核(原子)质量统计模型。此类研究的目标之一是确定现有数据(仅数据)确定从质子和中子数到核基态质量的映射的程度。另一个是提供可靠的预测模型,该模型可用于预测远离稳定谷的质量值。我们的研究主要集中在前一个目标上,并且通过使用改进的编码和训练方案,对质量表的先前神经网络模型进行了实质性改进。结果表明,随着进一步的发展,这种方法可能为常规的全局模型提供有价值的补充。 (C)2004 Elsevier B.V.保留所有权利。

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