• 제목/요약/키워드: Structural Anomalies

검색결과 75건 처리시간 0.02초

The Anomalies of Supercooled Water

  • Yoon, Byoung-Jip;Jhon, Mu-Shik
    • Bulletin of the Korean Chemical Society
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    • 제5권2호
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    • pp.82-86
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    • 1984
  • The anomalous behaviors of supercooled water are explained by using a two-solid-like structure model in which an equilibrium is assumed between open structures and closed structures. Besides these structures, small fraction of monomer exists in liquid water. The anomalies of liquid water are classified into two groups: structural and energetic. The structural anomalies appear in enlarged fashions in a supercooled state where the free volume is small.

Data anomaly detection for structural health monitoring of bridges using shapelet transform

  • Arul, Monica;Kareem, Ahsan
    • Smart Structures and Systems
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    • 제29권1호
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    • pp.93-103
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    • 2022
  • With the wider availability of sensor technology through easily affordable sensor devices, several Structural Health Monitoring (SHM) systems are deployed to monitor vital civil infrastructure. The continuous monitoring provides valuable information about the health of the structure that can help provide a decision support system for retrofits and other structural modifications. However, when the sensors are exposed to harsh environmental conditions, the data measured by the SHM systems tend to be affected by multiple anomalies caused by faulty or broken sensors. Given a deluge of high-dimensional data collected continuously over time, research into using machine learning methods to detect anomalies are a topic of great interest to the SHM community. This paper contributes to this effort by proposing a relatively new time series representation named "Shapelet Transform" in combination with a Random Forest classifier to autonomously identify anomalies in SHM data. The shapelet transform is a unique time series representation based solely on the shape of the time series data. Considering the individual characteristics unique to every anomaly, the application of this transform yields a new shape-based feature representation that can be combined with any standard machine learning algorithm to detect anomalous data with no manual intervention. For the present study, the anomaly detection framework consists of three steps: identifying unique shapes from anomalous data, using these shapes to transform the SHM data into a local-shape space and training machine learning algorithms on this transformed data to identify anomalies. The efficacy of this method is demonstrated by the identification of anomalies in acceleration data from an SHM system installed on a long-span bridge in China. The results show that multiple data anomalies in SHM data can be automatically detected with high accuracy using the proposed method.

Detection of multi-type data anomaly for structural health monitoring using pattern recognition neural network

  • Gao, Ke;Chen, Zhi-Dan;Weng, Shun;Zhu, Hong-Ping;Wu, Li-Ying
    • Smart Structures and Systems
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    • 제29권1호
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    • pp.129-140
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    • 2022
  • The effectiveness of system identification, damage detection, condition assessment and other structural analyses relies heavily on the accuracy and reliability of the measured data in structural health monitoring (SHM) systems. However, data anomalies often occur in SHM systems, leading to inaccurate and untrustworthy analysis results. Therefore, anomalies in the raw data should be detected and cleansed before further analysis. Previous studies on data anomaly detection mainly focused on just single type of data anomaly for denoising or removing outliers, meanwhile, the existing methods of detecting multiple data anomalies are usually time consuming. For these reasons, recognising multiple anomaly patterns for real-time alarm and analysis in field monitoring remains a challenge. Aiming to achieve an efficient and accurate detection for multi-type data anomalies for field SHM, this study proposes a pattern-recognition-based data anomaly detection method that mainly consists of three steps: the feature extraction from the long time-series data samples, the training of a pattern recognition neural network (PRNN) using the features and finally the detection of data anomalies. The feature extraction step remarkably reduces the time cost of the network training, making the detection process very fast. The performance of the proposed method is verified on the basis of the SHM data of two practical long-span bridges. Results indicate that the proposed method recognises multiple data anomalies with very high accuracy and low calculation cost, demonstrating its applicability in field monitoring.

Data anomaly detection for structural health monitoring using a combination network of GANomaly and CNN

  • Liu, Gaoyang;Niu, Yanbo;Zhao, Weijian;Duan, Yuanfeng;Shu, Jiangpeng
    • Smart Structures and Systems
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    • 제29권1호
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    • pp.53-62
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    • 2022
  • The deployment of advanced structural health monitoring (SHM) systems in large-scale civil structures collects large amounts of data. Note that these data may contain multiple types of anomalies (e.g., missing, minor, outlier, etc.) caused by harsh environment, sensor faults, transfer omission and other factors. These anomalies seriously affect the evaluation of structural performance. Therefore, the effective analysis and mining of SHM data is an extremely important task. Inspired by the deep learning paradigm, this study develops a novel generative adversarial network (GAN) and convolutional neural network (CNN)-based data anomaly detection approach for SHM. The framework of the proposed approach includes three modules : (a) A three-channel input is established based on fast Fourier transform (FFT) and Gramian angular field (GAF) method; (b) A GANomaly is introduced and trained to extract features from normal samples alone for class-imbalanced problems; (c) Based on the output of GANomaly, a CNN is employed to distinguish the types of anomalies. In addition, a dataset-oriented method (i.e., multistage sampling) is adopted to obtain the optimal sampling ratios between all different samples. The proposed approach is tested with acceleration data from an SHM system of a long-span bridge. The results show that the proposed approach has a higher accuracy in detecting the multi-pattern anomalies of SHM data.

A new geophysical exploration method based on electrical resistivity to detect underground utility lines and geological anomalies: Theory and field demonstrations

  • Jo, Seon-Ah;Kim, Kyoung-Yul;Ryu, Hee-Hwan
    • Geomechanics and Engineering
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    • 제18권5호
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    • pp.527-534
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    • 2019
  • Although ground investigation had carried out prior to the construction, many problems have arisen during the civil-engineering works because of the presence of the unexpected underground utility lines or anomalies. In this study, a new geophysical exploration method was developed to solve those problems by improving and supplementing the existing methods. This new method was based on the difference of electrical resistance values between anomalies and surrounding ground medium. A theoretical expression was suggested to define the characteristics of the anomalies such as location, size and direction, by applying the electric field analysis. An inverse analysis algorithm was also developed to solve the theoretical expression using the measured electrical resistance values which were generated by the voltage flowing the subsurface medium. To verify the developed method, field applications were conducted at the sites under construction or planned. From the results of the field tests, it was found that not only the new method was more predictive than the existing methods, but its results were good agreed with the measured ones. Therefore, it is expected that application of the new exploration method reduces the unexpected accidents caused by the underground uncertainties during the underground construction works.

터너증후군에서 핵형에 따른 임상질환의 발병양상 (Clinical disease characteristics according to karyotype in Turner syndrome)

  • 여채영;김찬종;우영종;이대열;김민선;김은영;김종덕
    • Clinical and Experimental Pediatrics
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    • 제53권2호
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    • pp.158-162
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    • 2010
  • 목 적 : 터너증후군은 45,X의 전형적인 핵형 이외에도 다양한 정도의 X 염색체의 이상을 가진 질환으로 신장, 심혈관 기형, 갑상샘질환 및 청력이상을 동반하는 빈도가 많다. 본 연구에서는 핵형에 따른 동반질환의 발생빈도와 양상을 조사하였다. 방 법 : 1998년 1월부터 2007년 12월까지 호남지역 4개 병원에서 염색체검사상 터너증후군으로 확진된 90명의 의무기록을 후향적으로 분석하였다. 이들의 핵형을 45,X 군, 모자이시즘군, 구조적 이상군으로 분류하고 신장 및 심장초음파, 갑상샘기능검사, 청력검사 등을 통하여 동반질환의 발생빈도를 조사하였다. 결 과 : 45,X 군은 47.8%, 모자이시즘군은 34.4%, 구조적 이상군은 17.8%의 분포를 보였다. 신장, 심혈관 기형, 갑상샘질환, 청력이상은 각각 순서대로 4.4%, 10.0%, 11.1%, 5.6%의 빈도를 보였다. 45,X 군은 신장 기형이 7.0%, 심혈관 기형이 18.6% 갑상샘 질환이 9.3%, 청력이상이 11.6%에서 나타났다. 모자이시즘군은 신장기형이 3.2%, 갑상샘 질환이 12.9%의 발생율을 보였고 심혈관 기형과 청력이상이 있는 환자는 없었다. 구조적 이상군은 심혈관 기형이 6.3%, 갑상샘질환이 12.5%에서 나타났다. 45,X 군에서는 심혈관 질환의 발생율이 다른 두군에 비하여 통계적으로 유의하게 높았다(P =0.025). 결 론 : 터너증후군에서 핵형별로 동반질환의 분포가 다른 양상을 보였으며 적절한 선별검사를 통해 질환을 조기 진단하여 적절한 관리가 필요하리라 생각된다.

의료기관 프로세스 통합 관리를 위한 비즈니스 프로세스 모델 정형화 및 구조적 이상 현상 검증 기법 (Business Process Model Formalization and Structural Anomaly Verification Techniques for Integrated Process Management of Medical Institutions)

  • 김건우;김성혁
    • 한국콘텐츠학회논문지
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    • 제18권7호
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    • pp.177-193
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    • 2018
  • 상시적으로 변화하는 의료 환경에 적응하고 다양한 외부 의료기관과의 정보 공유를 위해 의료기관 프로세스를 통합 관리할 수 있는 비즈니스 프로세스 관리 시스템에 대한 중요성이 증가하고 있다. 비즈니스 프로세스 관리 시스템은 그래프 기반의 BPMN 프로세스 모델을 웹서비스 환경의 실행언어인 WS-BPEL로 변환한 후 프로세스 엔진을 통해 실행하는 자동화 프로세스 도구이다. 하지만 BPMN 프로세스 모델은 다수의 모호성 및 구조적 불일치로 인해 WS-BPEL로의 변환이 어려울 수 있으며 프로세스 실행 시 실행 오류를 초래할 수 있는 구조적 이상 현상들을 포함할 수 있다. 본 논문에서는 의료기관 프로세스 통합 관리를 위해 모호성 및 구조적 불일치가 제거된 정형화된 BPMN 프로세스 모델 및 구조적 이상 현상 검출 방법을 제시한다. IHE 프로파일을 적용한 사례연구를 통해 정형화된 BPMN 프로세스 모델을 제시하고 및 구조적 이상 현상 검증을 실시한다. 기존의 연구 방법과의 비교 실험을 통해 제안된 기법의 우수성을 보인다.

Experimental validation of dynamic based damage locating indices in RC structures

  • Fayyadh, Moatasem M.;Razak, Hashim Abdul
    • Structural Engineering and Mechanics
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    • 제84권2호
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    • pp.181-206
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    • 2022
  • This paper presents experimental modal analysis and static load testing results to validate the accuracy of dynamic parameters-based damage locating indices in RC structures. The study investigates the accuracy of different dynamic-based damage locating indices compared to observed crack patterns from static load tests and how different damage levels and scenarios impact them. The damage locating indices based on mode shape curvature and mode shape fourth derivate in their original forms were found to show anomalies along the beam length and at the supports. The modified forms of these indices show higher sensitivity in locating single and multi-cracks at different damage scenarios. The proposed stiffness reduction index shows good sensitivity in detecting single and multi-cracks. The proposed anomalies elimination procedure helps to remove the anomalies along the beam length. Also, the adoption of the proposed weighting method averaging procedure and normalization procedure help to draw the overall crack pattern based on the adopted set of modes.

SHM data anomaly classification using machine learning strategies: A comparative study

  • Chou, Jau-Yu;Fu, Yuguang;Huang, Shieh-Kung;Chang, Chia-Ming
    • Smart Structures and Systems
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    • 제29권1호
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    • pp.77-91
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    • 2022
  • Various monitoring systems have been implemented in civil infrastructure to ensure structural safety and integrity. In long-term monitoring, these systems generate a large amount of data, where anomalies are not unusual and can pose unique challenges for structural health monitoring applications, such as system identification and damage detection. Therefore, developing efficient techniques is quite essential to recognize the anomalies in monitoring data. In this study, several machine learning techniques are explored and implemented to detect and classify various types of data anomalies. A field dataset, which consists of one month long acceleration data obtained from a long-span cable-stayed bridge in China, is employed to examine the machine learning techniques for automated data anomaly detection. These techniques include the statistic-based pattern recognition network, spectrogram-based convolutional neural network, image-based time history convolutional neural network, image-based time-frequency hybrid convolution neural network (GoogLeNet), and proposed ensemble neural network model. The ensemble model deliberately combines different machine learning models to enhance anomaly classification performance. The results show that all these techniques can successfully detect and classify six types of data anomalies (i.e., missing, minor, outlier, square, trend, drift). Moreover, both image-based time history convolutional neural network and GoogLeNet are further investigated for the capability of autonomous online anomaly classification and found to effectively classify anomalies with decent performance. As seen in comparison with accuracy, the proposed ensemble neural network model outperforms the other three machine learning techniques. This study also evaluates the proposed ensemble neural network model to a blind test dataset. As found in the results, this ensemble model is effective for data anomaly detection and applicable for the signal characteristics changing over time.

Renal Problems in Early Adult Patients with Turner Syndrome

  • Yu, Dong Uk;Ku, Jae Kyun;Chung, Woo Yeong
    • Childhood Kidney Diseases
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    • 제19권2호
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    • pp.154-158
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    • 2015
  • Purpose: This study aimed to evaluate the status of renal function and the presence of urinary abnormalities in early adult patients with Turner syndrome (TS). Methods: Sixty-three girls with TS, who are attending pediatric endocrine clinics in Busan Paik Hosp., were studied. Urine and blood chemistry tests were performed in every visiting times. Renal ultrasonography was performed in all patients at the initial diagnosis, and intravenous pyelography, DMSA renal scan and renal CT were also performed, if necessary. Results: Of the 63 patients, the karyotype showed 45,X in 32 (50.8%), mosaicism in 22 (34.9%) and structural aberration in 9 (14.3%). The renal function at the latest visit was shown as normal in all patients. Nephrotic syndrome had developed in one patient. Hematuria was observed in seven patients. Renal anomalies were observed in 20 of the 63 TS (31.7%). Of the 32 TS patients with 45,X karyotype, 13 (40.6%) had renal anomalies, while these were found in 7 (22.6%) of 31 TS patients with mosaicism/structural aberration. But there was no significant statistical difference between two karyotype groups. Conclusion: Based on this study, most of the patients with TS do not have any significant problems related to renal function until early adulthood, regardless of renal malformation or hematuria.