@article{9fb7eaa0fe6d4cbbb779510f59c2b21e,
title = "Detection method of unlearned pattern using support vector machine in damage classification based on deep neural network",
abstract = "Deep neural networks (DNNs) are a powerful tool for structural health monitoring because they can automatically identify features that are useful for classifying and recognizing damage patterns of a target structure with high accuracy. However, it can misclassify input data of an unlearned damage pattern as any of the learned damage patterns. To address this shortcoming, this paper presents a method to detect unlearned damage patterns by using the collective decision of support vector machines (SVMs). SVMs are constructed using feature vectors from training data, which are stored in the output layer of a DNN. To validate the proposed method, we used two different datasets, one containing experimental data of a steel frame structure and the other containing simulated and experimental data of a wooden house. In both cases, it correctly identified data of both learned and unlearned damage patterns. The proposed method can enhance the effectiveness of structural health monitoring (SHM). In addition, because it does not employ SHM-specific characteristics, it can be used in various pattern recognition applications, such as image and audio processing.",
keywords = "acceleration response, deep learning, deep neural network, feature vector, pattern recognition, support vector machine",
author = "Masayuki Kohiyama and Kazuya Oka and Takuzo Yamashita",
note = "Funding Information: The work was a part of E‐Simulator development project performed in the Earthquake Disaster Mitigation Research Division at NIED under the support of E‐Simulator development committee (Leader: Prof. Makoto Ohsaki of Kyoto University). It is also supported by JSPS KAKENHI Grant Number JP24760463.The authors appreciate Ms. Misaki Seikai, Mr. Kenta Watanabe, and Mr. Motoki Futemma of Keio University and Dr. Mahendra Kumar Pal and Dr. Tomohiro Sasaki of NIED for their assistance in data acquisition and the processing of shaking table tests using a steel frame structure.The authors also acknowledge contributions of Mr. Kazutoshi Matsuzaki and Mr. Yuji Mori of Mizuho Information & Research Institute, Inc. to development of deep learning code. Publisher Copyright: {\textcopyright} 2020 The Authors. Structural Control and Health Monitoring published by John Wiley & Sons Ltd",
year = "2020",
month = aug,
day = "1",
doi = "10.1002/stc.2552",
language = "English",
volume = "27",
journal = "Structural Control and Health Monitoring",
issn = "1545-2255",
publisher = "John Wiley and Sons Ltd",
number = "8",
}