Smullen Rachel A, Volk Kathryn
Department of Astronomy, University of Arizona, 933 N Cherry Ave., Tucson 85719 USA.
Lunar and Planetary Laboratory, University of Arizona, 1629 E. University Blvd., Tucson 85719 USA.
Mon Not R Astron Soc. 2020 Sep;497(2):1391-1403. doi: 10.1093/mnras/staa1935. Epub 2020 Jul 6.
In the outer solar system, the Kuiper Belt contains dynamical sub-populations sculpted by a combination of planet formation and migration and gravitational perturbations from the present-day giant planet configuration. The subdivision of observed Kuiper Belt objects (KBOs) into Different dynamical classes is based on their current orbital evolution in numerical integrations of their orbits. Here we demonstrate that machine learning algorithms are a promising tool for reducing both the computational time and human effort required for this classification. Using a Gradient Boosting Classifier, a type of machine learning regression tree classifier trained on features derived from short numerical simulations, we sort observed KBOs into four broad, dynamically distinct populations-classical, resonant, detached, and scattering- with a >97 per cent accuracy for the testing set of 542 securely classified KBOs. Over 80 per cent of these objects have a > 3 probability of class membership, indicating that the machine learning method is classifying based on the fundamental dynamical features of each population. We also demonstrate how, by using computational savings over traditional methods, we can quickly derive a distribution of class membership by examining an ensemble of object clones drawn from the observational errors. We find two major reasons for misclassification: inherent ambiguity in the orbit of the object-for instance, an object that is on the edge of resonance-and a lack of representative examples in the training set. This work provides a promising avenue to explore for fast and accurate classification of the thousands of new KBOs expected to be found by surveys in the coming decade.
在外太阳系中,柯伊伯带包含了由行星形成与迁移以及当今巨行星构型的引力扰动共同塑造的动力学亚群。将观测到的柯伊伯带天体(KBO)划分为不同的动力学类别,是基于它们在轨道数值积分中的当前轨道演化。在此,我们证明机器学习算法是一种很有前景的工具,可减少这种分类所需的计算时间和人力。使用梯度提升分类器(一种基于从简短数值模拟得出的特征进行训练的机器学习回归树分类器),我们将观测到的柯伊伯带天体分为四大类、动力学上截然不同的群体——经典、共振、离散和散射——对于542个分类明确的柯伊伯带天体测试集,准确率超过97%。这些天体中超过80%具有超过3的群体成员概率,这表明机器学习方法是基于每个群体的基本动力学特征进行分类的。我们还展示了如何通过比传统方法节省计算资源,通过检查从观测误差中抽取的一组天体克隆来快速得出群体成员分布。我们发现误分类的两个主要原因:天体轨道中固有的模糊性——例如,处于共振边缘的天体——以及训练集中缺乏代表性示例。这项工作为探索快速准确地分类未来十年预计通过勘测发现的数千个新柯伊伯带天体提供了一条很有前景的途径。