论文标题
无监督的机器学习方法,用于接地光谱聚类和选择
An Unsupervised Machine Learning Approach for Ground-Motion Spectra Clustering and Selection
论文作者
论文摘要
序列数据的聚类分析继续解决工程设计中的许多应用,并在应用科学中机器学习的快速增长方面得到了帮助。本文提出了一种无监督的机器学习算法,以提取地震地面运动光谱的定义特征,也称为潜在特征,以帮助进行地面运动选择(GMS)。在这种情况下,潜在特征是通过神经网络自动编码器的非线性关系学到的低维机划分的光谱特征。机器发现的潜在特征可以与传统上定义的强度度量结合使用,并且可以从大型接地套件中选择一个代表性的子组。高效GM的目的是选择代表结构在其一生中可能会经历的特征记录。提出了三个示例以验证这种方法,包括使用合成和现场记录的地面动作数据集。地面运动光谱的深层嵌入聚类具有三个主要优点:1。定义特征代表通过训练自动编码器的培训,有效地发现了地面运动的稀疏光谱含量,2。域知识将域知识纳入了机器学习框架中,并在深层嵌入方案方案和3。方法中表现出优秀的表现出色的表现。
Clustering analysis of sequence data continues to address many applications in engineering design, aided with the rapid growth of machine learning in applied science. This paper presents an unsupervised machine learning algorithm to extract defining characteristics of earthquake ground-motion spectra, also called latent features, to aid in ground-motion selection (GMS). In this context, a latent feature is a low-dimensional machine-discovered spectral characteristic learned through nonlinear relationships of a neural network autoencoder. Machine discovered latent features can be combined with traditionally defined intensity measures and clustering can be performed to select a representative subgroup from a large ground-motion suite. The objective of efficient GMS is to choose characteristic records representative of what the structure will probabilistically experience in its lifetime. Three examples are presented to validate this approach, including the use of synthetic and field recorded ground-motion datasets. The presented deep embedding clustering of ground-motion spectra has three main advantages: 1. defining characteristics the represent the sparse spectral content of ground-motions are discovered efficiently through training of the autoencoder, 2. domain knowledge is incorporated into the machine learning framework with conditional variables in the deep embedding scheme, and 3. method exhibits excellent performance when compared to a benchmark seismic hazard analysis.