• 제목/요약/키워드: memory accuracy

검색결과 648건 처리시간 0.03초

서브 그리딩 유한 차분 시간 영역법을 이용한 계단형 임피던스 저역 통과 필터 해석 (Analysis of the Stepped-Impedance Low Pass Filter using Sub-Gridding Finite-Difference Time-Domain Method)

  • 노범석;최재훈;이상선;정제명
    • 한국전자파학회논문지
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    • 제13권2호
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    • pp.217-224
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    • 2002
  • FDTD 해석법에서 공간적 셀의 크기는 해석의 정확도를 결정하는 중요한 요소이다. 하지만 정확도를 향상시키기 위하여 진의 크기를 줄이게 되면, 해석시간과 기억용량의 증가를 초래하게 되는데 서브 그리딩을 사용하여 이를 해결할 수 있다. 본 논문에서는 관심영역만 세밀하게 해석할 수 있는 3차원 서브 그리딩법을 기술하고 이를 응용하여 몇 가지의 구조를 해석하였다. 제안한 방범의 타당성을 화인하기 위하여 균일 그리딩과 서브 그리딩을 적용하여 특성을 해석하고 그 격과를 비교하였다. 제안한 방법을 사용하였을 경우 동일한 정확도에서 균일 그리딩에 비하여 6배의 해석시간의 줄었고 기억용량은 2.5배 정도 줄어들었다.

Enhancing the Text Mining Process by Implementation of Average-Stochastic Gradient Descent Weight Dropped Long-Short Memory

  • Annaluri, Sreenivasa Rao;Attili, Venkata Ramana
    • International Journal of Computer Science & Network Security
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    • 제22권7호
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    • pp.352-358
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    • 2022
  • Text mining is an important process used for analyzing the data collected from different sources like videos, audio, social media, and so on. The tools like Natural Language Processing (NLP) are mostly used in real-time applications. In the earlier research, text mining approaches were implemented using long-short memory (LSTM) networks. In this paper, text mining is performed using average-stochastic gradient descent weight-dropped (AWD)-LSTM techniques to obtain better accuracy and performance. The proposed model is effectively demonstrated by considering the internet movie database (IMDB) reviews. To implement the proposed model Python language was used due to easy adaptability and flexibility while dealing with massive data sets/databases. From the results, it is seen that the proposed LSTM plus weight dropped plus embedding model demonstrated an accuracy of 88.36% as compared to the previous models of AWD LSTM as 85.64. This result proved to be far better when compared with the results obtained by just LSTM model (with 85.16%) accuracy. Finally, the loss function proved to decrease from 0.341 to 0.299 using the proposed model

LSTM을 이용한 표면 근전도 분석을 통한 서로 다른 손가락 움직임 분류 정확도 향상 (Improvement of Classification Accuracy of Different Finger Movements Using Surface Electromyography Based on Long Short-Term Memory)

  • 신재영;김성욱;이윤성;이형탁;황한정
    • 대한의용생체공학회:의공학회지
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    • 제40권6호
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    • pp.242-249
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    • 2019
  • Forearm electromyography (EMG) generated by wrist movements has been widely used to develop an electrical prosthetic hand, but EMG generated by finger movements has been rarely used even though 20% of amputees lose fingers. The goal of this study is to improve the classification performance of different finger movements using a deep learning algorithm, and thereby contributing to the development of a high-performance finger-based prosthetic hand. Ten participants took part in this study, and they performed seven different finger movements forty times each (thumb, index, middle, ring, little, fist and rest) during which EMG was measured from the back of the right hand using four bipolar electrodes. We extracted mean absolute value (MAV), root mean square (RMS), and mean (MEAN) from the measured EMGs for each trial as features, and a 5x5-fold cross-validation was performed to estimate the classification performance of seven different finger movements. A long short-term memory (LSTM) model was used as a classifier, and linear discriminant analysis (LDA) that is a widely used classifier in previous studies was also used for comparison. The best performance of the LSTM model (sensitivity: 91.46 ± 6.72%; specificity: 91.27 ± 4.18%; accuracy: 91.26 ± 4.09%) significantly outperformed that of LDA (sensitivity: 84.55 ± 9.61%; specificity: 84.02 ± 6.00%; accuracy: 84.00 ± 5.87%). Our result demonstrates the feasibility of a deep learning algorithm (LSTM) to improve the performance of classifying different finger movements using EMG.

Forecasting Fish Import Using Deep Learning: A Comprehensive Analysis of Two Different Fish Varieties in South Korea

  • Abhishek Chaudhary;Sunoh Choi
    • 스마트미디어저널
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    • 제12권11호
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    • pp.134-144
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    • 2023
  • Nowadays, Deep Learning (DL) technology is being used in several government departments. South Korea imports a lot of seafood. If the demand for fishery products is not accurately predicted, then there will be a shortage of fishery products and the price of the fishery product may rise sharply. So, South Korea's Ministry of Ocean and Fisheries is attempting to accurately predict seafood imports using deep learning. This paper introduces the solution for the fish import prediction in South Korea using the Long Short-Term Memory (LSTM) method. It was found that there was a huge gap between the sum of consumption and export against the sum of production especially in the case of two species that are Hairtail and Pollock. An import prediction is suggested in this research to fill the gap with some advanced Deep Learning methods. This research focuses on import prediction using Machine Learning (ML) and Deep Learning methods to predict the import amount more precisely. For the prediction, two Deep Learning methods were chosen which are Artificial Neural Network (ANN) and Long Short-Term Memory (LSTM). Moreover, the Machine Learning method was also selected for the comparison between the DL and ML. Root Mean Square Error (RMSE) was selected for the error measurement which shows the difference between the predicted and actual values. The results obtained were compared with the average RMSE scores and in terms of percentage. It was found that the LSTM has the lowest RMSE score which showed the prediction with higher accuracy. Meanwhile, ML's RMSE score was higher which shows lower accuracy in prediction. Moreover, Google Trend Search data was used as a new feature to find its impact on prediction outcomes. It was found that it had a positive impact on results as the RMSE values were lowered, increasing the accuracy of the prediction.

인지정보처리의 개인차와 문단의 이해: 구조모형 연구 (The Effect of the Individual differences in Cognitive Processes on Paragraph Comprehension: Structural Equation Modeling)

  • 이윤형;권유안
    • 인지과학
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    • 제23권4호
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    • pp.487-515
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    • 2012
  • 본 연구의 목적은 다양한 방식으로 개개인의 인지능력을 측정하고 문단 이해 능력을 살펴보는 것을 통해 문단이해에 영향을 미치는 인지정보처리 기제를 살펴보는 것이다. 이를 위하여 본 연구에서는 어휘판단 과제와 형태비교 과제를 사용하여 하위 인지능력을 측정하였고 숫자폭 과제, 작업폭 과제와 읽기폭 과제를 통하여 작업기억의 개인차를 측정하였다. 또한 논리적으로 유효한 추론과 유효하지 않은 추론의 처리 속도와 정확도를 살펴보는 것을 통해 고차 인지능력을 측정하였다. 문단이해 능력을 측정하기 위해서는 목표 문장 앞에 원인 문장이 있는 경우와 그렇지 않은 경우에 실험참여자들의 문장의 읽기 속도와 정확도를 측정하였다. 구조 모형을 통해 문단이해에 영향을 미치는 요인들을 살펴본 결과 하위 인지처리의 속도는 고차 인지처리의 속도와 상관이 있고 하위 인지처리의 정확도는 고차인지 처리의 정확도와 상관이 있었으나 고차 인지처리와 하위 인지처리에서 모두 속도와 정확도간의 상관은 나타나지 않았다. 또한 작업기억은 고차 인지처리 및 하위 인지처리의 정확도와는 상관이 있었으나 인지처리의 속도와는 상관이 없었다. 보다 중요하게 문단이해의 속도에는 하위 인지처리의 속도만이 영향을 미쳤지만 문단이해의 정확도에는 작업기억과 고차인지처리 기제가 영향을 미치는 것으로 나타났다. 문단이해의 속도는 문단이해의 정확도에 영향을 미치지 않았다.

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Performance analyses of antagonistic shape memory alloy actuators based on recovered strain

  • Shi, Zhenyun;Wang, Tianmiao;Da, Liu
    • Smart Structures and Systems
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    • 제14권5호
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    • pp.765-784
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    • 2014
  • In comparison with conventional shape memory actuated structures, antagonistic shape memory alloy (SMA) actuators permits a fully reversible two-way response and higher response frequency. However, excessive internal stress could adversely reduce the stroke of the actuators under repeated use. The two-way shape memory effect might further decrease the range of the recovered strain under actuation of an antagonistic SMA actuator unless additional components (e.g., spring and stopper) are added to regain the overall actuation capability. In this paper, the performance of all four possible types of SMA actuation schemes is investigated in detail with emphasis on five key properties: recovered strain, cyclic degradation, response frequency, self-sensing control accuracy, and controllable maximum output. The testing parameters are chosen based on the maximization of recovered strain. Three types of these actuators are antagonistic SMA actuators, which drive with two active SMA wires in two directions. The antagonistic SMA actuator with an additional pair of springs exhibits wider displacement range, more stable performance under reuse, and faster response, although accurate control cannot be maintained under force interference. With two additional stoppers to prevent the over stretch of the spring, the results showed that the proposed structure could achieve significant improvement on all five properties. It can be concluded that, the last type actuator scheme with additional spring and stopper provide much better applicability than the other three in most conditions. The results of the performance analysis of all four SMA actuators could provide a solid basis for the practical design of SMA actuators.

시계열 분석을 이용한 진동만의 용존산소량 예측 (Prediction of Dissolved Oxygen in Jindong Bay Using Time Series Analysis)

  • 한명수;박성은;최영진;김영민;황재동
    • 해양환경안전학회지
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    • 제26권4호
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    • pp.382-391
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    • 2020
  • 본 연구에서는 인공지능기법을 이용하여 진동만의 용존산소량 예측을 하였다. 관측자료에 존재하는 결측 구간을 보간하기 위해 양방향재귀신경망(BRITS, Bidirectional Recurrent Imputation for Time Series) 딥러닝 알고리즘을 이용하였고, 대표적 시계열 예측 선형모델인 ARIMA(Auto-Regressive Integrated Moving Average)과 비선형모델 중 가장 많이 이용되고 있는 LSTM(Long Short-Term Memory) 모델을 이용하여 진동만의 용존산소량을 예측하고 그 성능을 평가했다. 결측 구간 보정 실험은 표층에서 높은 정확도로 보정이 가능했으나, 저층에서는 그 정확도가 낮았으며, 중층에서는 실험조건에 따라 정확도가 불안정하게 나타났다. 실험조건에 따라 정확도가 불안정하게 나타났다. 결과로부터 LSTM 모델이 중층과 저층에서 ARIMA 모델보다 우세한 정확도를 보였으나, 표층에서는 ARIMA모델의 정확도가 약간 높은 것으로 나타났다.

이변수 다항식 문제에 대한 새로운 메타 휴리스틱 개발 (Development of New Meta-Heuristic For a Bivariate Polynomial)

  • 장성호;권문수;김근태;이종환
    • 산업경영시스템학회지
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    • 제44권2호
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    • pp.58-65
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    • 2021
  • Meta-heuristic algorithms have been developed to efficiently solve difficult problems and obtain a global optimal solution. A common feature mimics phenomenon occurring in nature and reliably improves the solution through repetition. And at the same time, the probability is used to deviate from the regional optimal solution and approach the global optimal solution. This study compares the algorithm created based on the above common points with existed SA and HS to show advantages in time and accuracy of results. Existing algorithms have problems of low accuracy, high memory, long runtime, and ignorance. In a two-variable polynomial, the existing algorithms show that the memory increases and the accuracy decrease. In order to improve the accuracy, the new algorithm increases the number of initial inputs and increases the efficiency of the search by introducing a direction using vectors. And, in order to solve the optimization problem, the results of the last experiment were learned to show the learning effect in the next experiment. The new algorithm found a solution in a short time under the experimental conditions of long iteration counts using a two-variable polynomial and showed high accuracy. And, it shows that the learning effect is effective in repeated experiments.

AlphaPose를 활용한 LSTM(Long Short-Term Memory) 기반 이상행동인식 (LSTM(Long Short-Term Memory)-Based Abnormal Behavior Recognition Using AlphaPose)

  • 배현재;장규진;김영훈;김진평
    • 정보처리학회논문지:소프트웨어 및 데이터공학
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    • 제10권5호
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    • pp.187-194
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    • 2021
  • 사람의 행동인식(Action Recognition)은 사람의 관절 움직임에 따라 어떤 행동을 하는지 인식하는 것이다. 이를 위해서 영상처리에 활용되는 컴퓨터 비전 태스크를 활용하였다. 사람의 행동인식은 딥러닝과 CCTV를 결합한 안전사고 대응서비스로서 안전관리 현장 내에서도 적용될 수 있다. 기존연구는 딥러닝을 활용하여 사람의 관절 키포인트 추출을 통한 행동인식 연구가 상대적으로 부족한 상태이다. 또한 안전관리 현장에서 작업자를 지속적이고 체계적으로 관리하기 어려운 문제점도 있었다. 본 논문에서는 이러한 문제점들을 해결하기 위해 관절 키포인트와 관절 움직임 정보만을 이용하여 위험 행동을 인식하는 방법을 제안하고자 한다. 자세추정방법(Pose Estimation)의 하나인 AlphaPose를 활용하여 신체 부위의 관절 키포인트를 추출하였다. 추출된 관절 키포인트를 LSTM(Long Short-Term Memory) 모델에 순차적으로 입력하여 연속적인 데이터로 학습을 하였다. 행동인식 정확률을 확인한 결과 "누워있기(Lying Down)" 행동인식 결과의 정확도가 높음을 확인할 수 있었다.

RF 전력 증폭기 메모리 효과의 효율적인 측정과 모델링 기법 (Effective Measurement and modeling of memory effects in Power Amplifier)

  • 김원호;황보훈;나완수;박천석;김병성
    • 대한전기학회:학술대회논문집
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    • 대한전기학회 2004년도 학술대회 논문집 정보 및 제어부문
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    • pp.261-264
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    • 2004
  • In this paper, we identify the memory effect of high power(125W) laterally diffused metal oxide-semiconductor(LDMOS) RF Power Amplifier(PA) by two tone IMD measurement. We measure two tone IMD by changing the tone spacing and the power level. Different asymmetric IMD is founded at different center frequency measurements. We propose the Tapped Delay Line-Neural Network(TDNN) technique as the modeling method of LDMOS PA based on two tone IMD data. TDNN's modeling accuracy is highly reasonable compared to the memoryless adaptive modeling method.

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