基于小波去噪和分形特征选择的手机加速度计模拟地震信号分类

Tieta Antaresti, A. Nugraha, I. Putra, S. Yazid
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引用次数: 1

摘要

这项工作是一项初步研究,旨在帮助人们在地震发生时,即使手机没有连接到互联网,也能提供有关地震的信息。在本研究中,我们通过机器学习识别来自手机加速度计的模拟地震信号的模式。在将数据处理到分类器之前,通过静态开窗和去噪来提高分类器的准确率。从预去噪数据中提取分形特征,即盒数维特征和赫斯特系数。执行静态窗口的目的是获得更多的特性,以便我们可以拥有尽可能多的潜在有用的候选属性。采用小波去噪方法去除会影响分类精度的噪声。使用支持向量机和多层感知器分类器进行分类,准确率分别为81%和82.15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wavelet denoising and fractal feature selection for classifying simulated earthquake signal from mobile phone accelerometer
This work is an initial study of the research that aims to help people by giving an information about the earthquake while it happens eventhough the phone is not connected to the internet. In this research, we identify the pattern of the simulated earthquake signal from the mobile phone accelerometer via machine learning. Before the data is processed into the classifier, static windowing and denoising was done to boost up the accuracy. Another fractal features are extracted from the pre-denoised data, which are the box counting dimension feature and the Hurst coefficient. The purpose of doing static windowing is to obtain more features so that we can have many potential useful attribute candidates as possible. Denoising with symlet wavelet is done to remove the noises which can worsen the classification accuracy. The classification is done using support vector machine and multilayer perceptron classifier with the accuracy of 81% and 82.15%, respectively.
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