论文标题
部分可观测时空混沌系统的无模型预测
Topology-based Phase Identification of Bulk, Interface, and Confined Water using Edge-Conditioned Convolutional Graph Neural Network
论文作者
论文摘要
水在各种物理化学和生物学过程中起着重要作用。了解和识别各种系统(例如散装,界面和受限水)中的水相对于改善和工程最先进的纳米驱动器至关重要。已经开发了各种订单参数,以区分水相,包括键盘参数,局部结构指数和四面体订单参数。这些顺序参数通常是通过同质体系系统的假设来开发的,而大多数应用涉及异质和非膨胀系统,因此限制了它们的普遍性。我们的研究开发了一种基于图神经网络的方法,以将水相直接与数据区分开并学习特征而不是预先定义它们。我们提供了使用常规订单参数作为特征训练的基线方法的比较,以及使用径向距离和氢键信息训练的图形神经网络模型,用于相分类和散装,界面和限制系统的水的相位转变,并具有连续和不连续的相位过渡。
Water plays a significant role in various physicochemical and biological processes. Understanding and identifying water phases in various systems such as bulk, interface, and confined water is crucial in improving and engineering state-of-the-art nano-devices. Various order parameters have been developed to distinguish water phases, including bond-order parameters, local structure index, and tetrahedral order parameters. These order parameters are often developed with the assumption of homogenous bulk systems, while most applications involve heterogeneous and non-bulk systems, thus, limiting their generalizability. Our study develops a methodology based on the graph neural network to distinguish water phases directly from data and to learn features instead of predefining them. We provide comparisons between baseline methods trained using conventional order-parameters as features, and a graph neural network model trained using radial distance and hydrogen-bonding information for phase classification and phase transition of water in bulk, interface, and confined systems with continuous and discontinuous phase transitions.