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CONTENTS | |
Volume 33, Number 4, April 2024 |
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- Dual-loss CNN: A separability-enhanced network for current-based fault diagnosis of rolling bearings Lingli Cui, Gang Wang, Dongdong Liu, Jiawei Xiang and Huaqing Wang
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Abstract; Full Text (2405K) . | pages 253-262. | DOI: 10.12989/sss.2024.33.4.253 |
Abstract
Current-based mechanical fault diagnosis is more convenient and low cost since additional sensors are not required. However, it is still challenging to achieve this goal due to the weak fault information in current signals. In this paper, a dual-loss convolutional neural network (DLCNN) is proposed to implement the intelligent bearing fault diagnosis via current signals. First, a novel similarity loss (SimL) function is developed, which is expected to maximize the intra-class similarity and minimize the inter-class similarity in the model optimization operation. In the loss function, a weight parameter is further introduced to achieve a balance and leverage the performance of SimL function. Second, the DLCNN model is constructed using the presented SimL and the cross-entropy loss. Finally, the two-phase current signals are fused and then fed into the DLCNN to provide more fault information. The proposed DLCNN is tested by experiment data, and the results confirm that the DLCNN achieves higher accuracy compared to the conventional CNN. Meanwhile, the feature visualization presents that the samples of different classes are separated well.
Key Words
convolutional neural network; fault diagnosis; feature representation; information fusion; rolling bearing
Address
(1) Lingli Cui, Gang Wang, Dongdong Liu:
Key Laboratory of Advanced Manufacturing Technology, Beijing University of Technology, Beijing 100124, China;
(2) Jiawei Xiang:
College of Mechanical and Electrical Engineering, Wenzhou University, Wenzhou 325035, China;
(3) Huaqing Wang:
College of Mechanical and Electrical Engineering, Beijing University of Chemical Technology, Beijing 100029, China.
- Review for vision-based structural damage evaluation in disasters focusing on nonlinearity Sifan Wang and Mayuko Nishio
open access | ||
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Abstract; Full Text (2078K) . | pages 263-279. | DOI: 10.12989/sss.2024.33.4.263 |
Abstract
With the increasing diversity of internet media, available video data have become more convenient and abundant. Related video data-based research has advanced rapidly in recent years owing to advantages such as noncontact, low-cost data acquisition, high spatial resolution, and simultaneity. Additionally, structural nonlinearity extraction has attracted increasing attention as a tool for damage evaluation. This review paper aims to summarize the research experience with the recent developments and applications of video data-based technology for structural nonlinearity extraction and damage evaluation. The most regularly used object detection images and video databases are first summarized, followed by suggestions for obtaining video data on structural nonlinear damage events. Technologies for linear and nonlinear system identification based on video data are then discussed. In addition, common nonlinear damage types in disaster events and prevalent processing algorithms are reviewed in the section on structural damage evaluation using video data uploaded on online platform. Finally, a discussion regarding some potential research directions is proposed to address the weaknesses of the current nonlinear extraction technology based on video data, such as the use of uni-dimensional time-series data as leverage to further achieve nonlinear extraction and the difficulty of real-time detection, including the fields of nonlinear extraction for spatial data, real-time detection, and visualization.
Key Words
computer vision; damage evaluation; nonlinear structural dynamics; system identification; video data
Address
(1) Sifan Wang:
Department of Engineering Mechanics and Energy, University of Tsukuba, 1-1-1 Tennodai, Tsukuba, Ibaraki 305-8577, Japan;
(2) Mayuko Nishio:
Institute of Systems and Information Engineering, University of Tsukuba, 1-1-1 Tennodai, Tsukuba, Ibaraki 305-8577, Japan.
- Nonlinear dynamics of an adaptive energy harvester with magnetic interactions and magnetostrictive transduction Pedro V. Savi and Marcelo A. Savi
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Abstract; Full Text (2832K) . | pages 281-290. | DOI: 10.12989/sss.2024.33.4.281 |
Abstract
This work investigates the mechanical energy harvesting from smart and adaptive devices using magnetic interactions. The energy harvester is built from an elastic beam connected to an electric circuit by a magnetostrictive material that promotes energy transduction. Besides, magnetic interactions define the system stability characterizing multistable configurations. The adaptiveness is provided by magnets that can change their position with respect to the beam, changing the system configuration. A mathematical model is proposed considering a novel model to describe magnetic interactions based on the single-point magnet dipole method, but employing multiple points to represent the magnetic dipole, which is more effective to match experimental data. The adaptive behavior allows one to alter the system stability and therefore, its dynamical response. A nonlinear dynamics analysis is performed showing the possibilities to enhance energy harvesting capacity from the magnet position change. The strategy is to perform a system dynamical characterization and afterward, alter the energetic barrier according to the environmental energy sources. Results show interesting conditions where energy harvesting capacity is dramatically increased by changing the system characteristics.
Key Words
adaptive systems; magnetic interaction; mechanical energy harvesting; nonlinear dynamics; smart materials
Address
Universidade Federal do Rio de Janeiro, COPPE – Mechanical Engineering, Center for Nonlinear Mechanics, 21.941.972 – Rio de Janeiro – RJ – Brazil.
- Nonlinear intelligent control systems subjected to earthquakes by fuzzy tracking theory Z.Y. Chen, Y.M. Meng, Ruei-Yuan Wang and Timothy Chen
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Abstract; Full Text (1565K) . | pages 291-300. | DOI: 10.12989/sss.2024.33.4.291 |
Abstract
Uncertainty of the model, system delay and drive dynamics can be considered as normal uncertainties, and the main source of uncertainty in the seismic control system is related to the nature of the simulated seismic error. In this case, optimizing the management strategy for one particular seismic record will not yield the best results for another. In this article, we propose a framework for online management of active structural management systems with seismic uncertainty. For this purpose, the concept of reinforcement learning is used for online optimization of active crowd management software. The controller consists of a differential controller, an unplanned gain ratio, the gain of which is enhanced using an online reinforcement learning algorithm. In addition, the proposed controller includes a dynamic status forecaster to solve the delay problem. To evaluate the performance of the proposed controllers, thousands of ground motion data sets were processed and grouped according to their spectrum using fuzzy clustering techniques with spatial hazard estimation. Finally, the controller is implemented in a laboratory scale configuration and its operation is simulated on a vibration table using cluster location and some actual seismic data. The test results show that the proposed controller effectively withstands strong seismic interference with delay. The goals of this paper are towards access to adequate, safe and affordable housing and basic services, promotion of inclusive and sustainable urbanization and participation, implementation of sustainable and disaster-resilient buildings, sustainable human settlement planning and manage. Simulation results is believed to achieved in the near future by the ongoing development of AI and control theory.
Key Words
damage identification; fuzzy monitoring; Kalman filter; measurement problems; nonlinear hysteresis equation; unknown inputs
Address
(1) Z.Y. Chen, Y.M. Meng, Ruei-Yuan Wang and Timothy Chen:
Guangdong University of Petrochem Technology, School of Science, Maoming 525000, Peoples Republic of China;
(2) Timothy Chen:
Division of Engineering and Applied Science, California Institute of Technology, Pasadena, CA 91125, USA.
- Crack growth prediction on a concrete structure using deep ConvLSTM Man-Sung Kang and Yun-Kyu An
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Abstract; Full Text (4635K) . | pages 301-311. | DOI: 10.12989/sss.2024.33.4.301 |
Abstract
This paper proposes a deep convolutional long short-term memory (ConvLSTM)-based crack growth prediction technique for predictive maintenance of structures. Since cracks are one of the critical damage types in a structure, their regular inspection has been mandatory for structural safety and serviceability. To effectively establish the structural maintenance plan using the inspection results, crack propagation or growth prediction is essential. However, conventional crack prediction techniques based on mathematical models are not typically suitable for tracking complex nonlinear crack propagation mechanism on civil structures under harsh environmental conditions. To address the technical issue, a field data-driven crack growth prediction technique using ConvLSTM is newly proposed in this study. The proposed technique consists of the four steps: (1) time-series crack image acquisition, (2) target image stabilization, (3) deep learning-based crack detection and quantification and (4) crack growth prediction. The performance of the proposed technique is experimentally validated using a concrete mock-up specimen by applying step-wise bending loads to generate crack growth. The validation test results reveal the prediction accuracy of 94% on average compared with the ground truth obtained by field measurement.
Key Words
crack growth prediction; data-driven; deep learning; image stabilization; predictive maintenance
Address
Department of Architectural Engineering, Sejong University, 209, Neungdong-ro, Gwangjin-gu, Seoul, 05006, Republic of Korea.
- A deep neural network to automatically calculate the safety grade of a deteriorating building Seungho Kim, Jae-Min Lee, Moonyoung Choi and Sangyong Kim
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Abstract; Full Text (4995K) . | pages 313-323. | DOI: 10.12989/sss.2024.33.4.313 |
Abstract
Deterioration of buildings is one of the biggest problems in modern society, and the importance of a safety diagnosis for old buildings is increasing. Therefore, most countries have legal maintenance and safety diagnosis regulations. However, the reliability of the existing safety diagnostic processes is reduced because they involve subjective judgments in the data collection. In addition, unstructured tasks increase rework rates, which are time-consuming and not cost-effective. Therefore, This paper proposed the method that can calculate the safety grade of deterioration automatically. For this, a DNN structure is generated by using existing precision inspection data and precision safety diagnostic data, and an objective building safety grade is calculated by applying status evaluation data obtained with a UAV, a laser scanner, and reverse engineering 3D models. This automated process is applied to 20 old buildings, taking about 40% less time than needed for a safety diagnosis from the existing manual operation based on the same building area. Subsequently, this study compares the resulting value for the safety grade with the already existing value to verify the accuracy of the grade calculation process, constructing the DNN with high accuracy at about 90%. This is expected to improve the reliability of aging buildings in the future, saving money and time compared to existing technologies, improving economic efficiency.
Key Words
field measurement; infrastructure maintenance; nondestructive evaluation; smart system; smart technology; structural health monitoring
Address
(1) Seungho Kim:
Department of Architecture, Yeungnam University College, 170 Hyeonchung-ro, Nam-gu, Daegu 42415, Republic of Korea;
(2) Jae-Min Lee, Moonyoung Choi , Sangyong Kim:
School of Architecture, Yeungnam University, 280 Daehak-ro Gyeongsan-si, Gyeongsangbuk-do 38541, Republic of Korea.