• 제목/요약/키워드: ELM

검색결과 227건 처리시간 0.03초

ELM을 이용한 주거용 부하의 부하모델링 기법 개발 (Development of ELM based Load Modeling Method for Residential Loads)

  • 정영택;지평식
    • 전기학회논문지P
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    • 제61권1호
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    • pp.29-34
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    • 2012
  • Due to the increasing of nonlinear loads such as converters and inverters connected to the electric power distribution system, and extensive application of harmonic generation sources with power electronic devices, disturbance of the electric power system and its influences on industries have been continuously increasing. Thus, it is difficult to construct accurate load model for active and reactive power in environments with harmonics. In this research, we develop a load modeling method based on Extreme Learning Machine(ELM) with fast learning procedure for residential loads. Using data sets acquired from various residential loads, the proposed method has been intensively tested. As the experimental results, we confirm that the proposed method makes it possible to effective estimate active and reactive powers than conventional methods.

Adsoprtion Characteristic of Fancy Veneer Overlaid Charcoal Board Composite

  • Kang, Seog-Goo;Lee, Hwa-Hyoung
    • Journal of the Korean Wood Science and Technology
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    • 제38권5호
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    • pp.385-390
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    • 2010
  • This study was carried out to manufacture very thin natural elm veneer overlaid charcoal board for enhancing aesthetic value of charcoal board for the indoor application, and to use the advantageous properties of the charcoal as a building material for solving the sick house problem. The thin elm veneer had 26.9% opening ratio. The experiment results showed that the spreading area and the nonvolatile content of adhesive did not affect the gas adsoprtion of fancy veneer overlaid charcoal board. The natural thin elm veneer overlaid charcoal board enhanced not only the aesthetic beauty but also showed the same gas adsorption by the charcoal board.

FCM과 ELM을 이용한 전력용 변압기의 모니터링 알고리즘 (A Monitoring Algorithm using FCM and ELM for Power Transformer)

  • 지평식;임재윤
    • 전기학회논문지P
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    • 제61권4호
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    • pp.228-233
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    • 2012
  • In power system, substation facilities have become too complex and larger according to an extended power system. Also, customers require the high quality of electrical power system. However, some facilities become old and often break down unexpectedly. The unexpected failure may cause a break in power system and loss of profits. Therefore it is important to prevent abrupt faults by monitoring the condition of power systems. Among the various power facilities, power transformers play an important role in the transmission and distribution systems. In this research, we develop intelligent diagnosis technique for monitoring of power transformer by FCM(Fuzzy c-means) and ELM(Extreme Learning Machine). The proposed technique make it possible to diagnosis the faults occurred in transformer. To demonstrate the validity of proposed method, various experiments are performed and their results are presented.

ELM을 이용한 일별 최대 전력 수요 예측 알고리즘 개발 (Development of Daily Peak Power Demand Forecasting Algorithm using ELM)

  • 지평식;김상규;임재윤
    • 전기학회논문지P
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    • 제62권4호
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    • pp.169-174
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    • 2013
  • Due to the increase of power consumption, it is difficult to construct an accurate prediction model for daily peak power demand. It is very important work to know power demand in next day to manage and control power system. In this research, we develop a daily peak power demand prediction method based on Extreme Learning Machine(ELM) with fast learning procedure. Using data sets between 2006 and 2010 in Korea, the proposed method has been intensively tested. As the prediction results, we confirm that the proposed method makes it possible to effective estimate daily peak power demand than conventional methods.

상관성 분석과 ELM을 이용한 태양광 고장진단 알고리즘 개발 (Development of Fault Diagnosis Algorithm using Correlation Analysis and ELM)

  • 임재윤;지평식
    • 전기학회논문지P
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    • 제65권3호
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    • pp.204-209
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    • 2016
  • It is difficult to establish accurate modeling of PV power system because of various uncertainty. However, it is important work to modeling of PV for fault diagnosis. This paper proposes modeling and fault diagnosis method using correlation analysis and ELM(Extreme Learning Machine). Rather than using total data, we select optimal time interval with higher corelation between PV power and solar irradiation. Also, we use average value during 60 minute to avoid rapid variation of PV power. To show the effectiveness of the proposed method, we performed various experiments by dataset.

A novel liquefaction prediction framework for seismically-excited tunnel lining

  • Shafiei, Payam;Azadi, Mohammad;Razzaghi, Mehran Seyed
    • Earthquakes and Structures
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    • 제22권4호
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    • pp.401-419
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    • 2022
  • A novel hybrid extreme machine learning-multiverse optimizer (ELM-MVO) framework is proposed to predict the liquefaction phenomenon in seismically excited tunnel lining inside the sand lens. The MVO is applied to optimize the input weights and biases of the ELM algorithm to improve its efficiency. The tunnel located inside the liquefied sand lens is also evaluated under various near- and far-field earthquakes. The results demonstrate the superiority of the proposed method to predict the liquefaction event against the conventional extreme machine learning (ELM) and artificial neural network (ANN) algorithms. The outcomes also indicate that the possibility of liquefaction in sand lenses under far-field seismic excitations is much less than the near-field excitations, even with a small magnitude. Hence, tunnels designed in geographical areas where seismic excitations are more likely to be generated in the near area should be specially prepared. The sand lens around the tunnel also has larger settlements due to liquefaction.

글리치 감소를 통한 저전력 16비트 ELM 덧셈기 구현 (An Implemention of Low Power 16bit ELM Adder by Glitch Reduction)

  • 류범선;이기영;조태원
    • 전자공학회논문지C
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    • 제36C권5호
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    • pp.38-47
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    • 1999
  • 저전력을 실현하기 위하여 구조, 논리 및 트랜지스터레벨에서 16비트 덧셈기를 설계하였다. 기존의 ELM덧셈기는 입력 비트 패턴에 의해 계산되는 블록캐리발생신호 (block carry generation signal) 때문에 특정 입력 비트 패턴이 인가되었을 때에는 G셀에서 글리치(glitch)가 발생하는 단점이 있다. 따라서 구조레벨에서는 특정 입력 비트 패턴에 대해서 글리치를 피하기 위해 자동적으로 각각의 블록캐리발생신호를 마지막 레벨의 G셀에 전달하는 저전력 덧셈기 구조를 제안하였다. 또한, 논리레벨에서는 정적 CMOS(static CMOS)논리형태와 저전력 XOR게이트로 구성된 저전력 소모에 적합한 조합형 논리형태(combination of logic style)를 사용하였다. 게다가 저전력을 위하여 트랜지스터레벨에서는 각 비트 전파의 논리깊이(logic depth)에 따라서 가변 크기 셀들(variable-sized cells)을 사용하였다. 0.6㎛ 단일폴리 삼중금속 LG CMOS 표준 공정변수를 가지고 16비트 덧셈기를 HSPICE로 모의 실험한 결과, 고정 크기 셀(fixed-sized cell)과 정적 CMOS 논리형태만으로 구성된 기존의 ELM 덧셈기에 비해 본 논문에서 제안된 덧셈기가 전력소모면에서는 23.6%, power-delay-product면에서는 22.6%의 향상을 보였다.

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유한차분 모형에 의한 일차원 이송-확산방정식 계산결과의 비교 (Comparison of the Results of Finite Difference Method in One-Dimensional Advection-Dispersion Equation)

  • 이희영;이재철
    • 물과 미래
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    • 제28권4호
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    • pp.125-136
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    • 1995
  • 특정곡선을 고려한 ELM을 이송-확산방정식에 적용하여 그 결과를 Eulerian 기법(Stone-Brian, QUICKEST)과 비교하였다. 이송항의 계산을 위해서는 Lagrangian 보간법과 Cubic spline 보간법을 이용하였고 확산항의 계산에 있어서는 Crank-Nicholson 방법을 이용하였다. 수치모형의 적용결과는 다음과 같다. (1) Gaussian hill에의 적용:Lagrangian 보간법을 사용하여 계산한 경우가 가장 정확한 결과를 보였다. Cubic spline 보간법을 사용한 경우와 QUICKEST 방법의 경우에는 Peclet수가 50인 경우에 감쇠현상을 보였다. Stone-Brian방법은 Peclet수 10,50에서 위상오차가 발생하였다. (2) Advanced front에의 적용: 모든 방법이 Peclet수 1,4에서 정확한 결과를 얻었다. Peclet수가 50인 경우에 Lagrangian 보간법을 사용하여 계산한 경우와 Stone-Brian 방법은 증폭오차가 발생하였고 Cubic spline 보간법을 사용한 경우와 QUICKEST 방법의 경우는 수치진동 현상을 보였다.

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Application of Extreme Learning Machine (ELM) and Genetic Programming (GP) to design steel-concrete composite floor systems at elevated temperatures

  • Shariati, Mahdi;Mafipour, Mohammad Saeed;Mehrabi, Peyman;Zandi, Yousef;Dehghani, Davoud;Bahadori, Alireza;Shariati, Ali;Trung, Nguyen Thoi;Salih, Musab N.A.;Poi-Ngian, Shek
    • Steel and Composite Structures
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    • 제33권3호
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    • pp.319-332
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    • 2019
  • This study is aimed to predict the behaviour of channel shear connectors in composite floor systems at different temperatures. For this purpose, a soft computing approach is adopted. Two novel intelligence methods, including an Extreme Learning Machine (ELM) and a Genetic Programming (GP), are developed. In order to generate the required data for the intelligence methods, several push-out tests were conducted on various channel connectors at different temperatures. The dimension of the channel connectors, temperature, and slip are considered as the inputs of the models, and the strength of the connector is predicted as the output. Next, the performance of the ELM and GP is evaluated by developing an Artificial Neural Network (ANN). Finally, the performance of the ELM, GP, and ANN is compared with each other. Results show that ELM is capable of achieving superior performance indices in comparison with GP and ANN in the case of load prediction. Also, it is found that ELM is not only a very fast algorithm but also a more reliable model.

하이브리드 균형 표본 유전 알고리즘과 극한 기계학습에 기반한 암 아류형 분류기 (Cancer subtype's classifier based on Hybrid Samples Balanced Genetic Algorithm and Extreme Learning Machine)

  • ;;최용수
    • 디지털콘텐츠학회 논문지
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    • 제17권6호
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    • pp.565-579
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    • 2016
  • 본 논문에서는 극한 기계학습을 이용하는 하이브리드 균형 표본 유전자 알고리즘(hSBGA-ELM)을 기반으로 한 새로운 암 아류형 분류자를 제안하였다. 제안 된 암 아류형 분류자는 정확한 암 아류형 분류기 설계를 위해 공개 전체암지도 (Global Cancer Map)로부터 15063개의 유전자 발현 데이터를 사용합니다. 제안된 방법에서는 14가지(유방암, 전립선 암, 폐암, 대장 암, 림프종, 방광, 흑색 종, 자궁, 백혈병, 신장, 췌장, 난소, 중피종 및 CNS)의 암 아류형을 효율적으로 분류합니다. 제안 된 hSBGA-ELM은 유전자 선택 절차 및 암 아류형 분류를 하나의 프레임 워크로 단일화 한다. 제안 된 하이브리드 균형 표본 유전 알고리즘은 GCM 데이터베이스에서 이용 가능한 16,063 개의 유전자로부터 암 아류형 분류를 담당하는 축소된 강인 유전자 셋을 찾는다. 선택/축소된 유전자 세트는 익스트림 기계학습을 이용하여 암 아류형 분류기를 구성하는데 사용된다. 결과적으로, 크기가 축소된 강인 유전자 집합이 제안하는 암 아류형 분류기의 안정된 일반화 성능을 보장하게 한다. 제안 된 hSBGA-ELM은 암에 관여하는 것으로 예측되는 95개의 유전자를 발견하였으며 기존의 암 아류형 분류기와의 비교를 통해 제안 된 방법의 효율을 보여준다.