The dynamical stability of quadruple-star systems has traditionally been treated as a problem involving two `nested' triples which constitute a quadruple. In this novel study, we employed a machine learning algorithm, the multi-layer perceptron (MLP), to directly classify 2+2 and 3+1 quadruples based on their stability (or long-term boundedness). The training data sets for the classification, comprised of $5\times10^5$ quadruples each, were integrated using the highly accurate direct $N$-body code MSTAR. We also carried out a limited parameter space study of zero-inclination systems to directly compare quadruples to triples. We found that both our quadruple MLP models perform better than a `nested' triple MLP approach, which is especially significant for 3+1 quadruples. The classification accuracies for the 2+2 MLP and 3+1 MLP models are 94% and 93% respectively, while the scores for the `nested' triple approach are 88% and 66% respectively. This is a crucial implication for quadruple population synthesis studies. Our MLP models, which are very simple and almost instantaneous to implement, are available on GitHub, along with Python3 scripts to access them.
翻译:四星系统的动态稳定性历来被视为一个问题,涉及构成四倍的两“新”三三“新”系统。在这项新研究中,我们采用了机器学习算法,即多层过宽(MLP),直接根据2+2和3+1四分之一的稳定性对2+2和3+1进行分类,这对3+1四分之一的稳定性尤其重要。由每组5美元组成的培训数据集,分别使用高度精确的直接直线美元体代码MSTAR整合为94%和93%。我们还对零入门系统进行了有限的参数空间空间研究,直接将四倍对四倍进行比较。我们发现,我们的四倍MLP模型比三“破”三倍MLP方法效果更好,对于3+1四倍的模型尤其重要。 2+2 MLP和3+1 MLP模型的分类精确度分别为94%和93 %,而“零入门三分方法”的分数是88 %和66个ML模型。这对GiRO3的合成模型来说,这都是非常关键的。