论文标题
使用神经网络预测X射线复合AGN的黑洞质量和相关性
Predicting the black hole mass and correlations in X-ray reverberating AGN using neural networks
论文作者
论文摘要
我们开发了神经网络模型,以使用XMM-Newton档案中的22个混响AGN样品来预测黑洞质量。模型功能包括2-10 KEV频段中的分数过剩方差($ f _ {\ rm var} $),FE-K滞后幅度,2-10 KEV光子计数和RedShift。我们发现,神经网络模型的预测准确性显着高于传统线性回归方法获得的预测准确性。我们的预测质量可以限制在$ \ pm(2 $ -5)的真实价值之内,这表明神经网络技术是限制黑洞质量的一种有前途且独立的方式。 We also apply the model to 21 non-reverberating AGN to rule out their possibility to exhibit the lags (some have too small mass and $F_{\rm var}$, while some have too large mass and $F_{\rm var}$ that contradict the $F_{\rm var}$-lag-mass relation in reverberating AGN).我们还使用来自神经网络模型的多功能参数空间来模拟3200个回弹AGN样品,以研究全局关系,如果Reverblinging AGN的数量增加。我们发现$ f _ {\ rm var} $ - 质量反相关可能会随着新发现的回响AGN数量的增加而可能更强。相反,要维持滞后缩放关系,必须保留滞后和$ f _ {\ rm var} $之间的紧密反相关。在极端情况下,滞后质量相关系数可以显着降低,如果观察到,可以表明其观察到的滞后更受冠状特性而不是几何形状驱动的扩展的电晕框架。
We develop neural network models to predict the black hole mass using 22 reverberating AGN samples in the XMM-Newton archive. The model features include the fractional excess variance ($F_{\rm var}$) in 2-10 keV band, Fe-K lag amplitude, 2-10 keV photon counts and redshift. We find that the prediction accuracy of the neural network model is significantly higher than what is obtained from the traditional linear regression method. Our predicted mass can be confined within $\pm (2$-5) per cent of the true value, suggesting that the neural network technique is a promising and independent way to constrain the black hole mass. We also apply the model to 21 non-reverberating AGN to rule out their possibility to exhibit the lags (some have too small mass and $F_{\rm var}$, while some have too large mass and $F_{\rm var}$ that contradict the $F_{\rm var}$-lag-mass relation in reverberating AGN). We also simulate 3200 reverberating AGN samples using the multi-feature parameter space from the neural network model to investigate the global relations if the number of reverberating AGN increases. We find that the $F_{\rm var}$-mass anti-correlation is likely stronger with increasing number of newly-discovered reverberating AGN. Contrarily, to maintain the lag-mass scaling relation, the tight anti-correlation between the lag and $F_{\rm var}$ must preserve. In an extreme case, the lag-mass correlation coefficient can significantly decrease and, if observed, may suggest the extended corona framework where their observed lags are more driven by the coronal property rather than geometry.