• Title/Summary/Keyword: 모듈라 신경망

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Development of The Freeway Operating Time Prediction Model Using Toll Collection System Data (고속도로 통행료수납자료를 이용한 통행시간 예측모형 개발)

  • 강정규;남궁성
    • Journal of Korean Society of Transportation
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    • v.20 no.4
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    • pp.151-162
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    • 2002
  • The object of this study is to develop an operating time prediction model for expressways using toll collection data. A Prediction model based on modular neural network model was developed and tested using real data. Two toll collection system(TCS) data set. Seoul-Suwon section for short range and Seoul-Daejeon section for long range, in Kyongbu expressway line were collected and analyzed. A time series analysis on TCS data indicated that operating times on both ranges are in reasonable prediction ranges. It was also found that prediction for the long section was more complex than that for the short section. However, a long term prediction for the short section turned out to be more difficult than that for the long section because of the higher sensitivity to initial condition. An application of the suggested model produced accurate prediction time. The features of suggested prediction model are in the requirement of minimum (3) input layers and in the ability of stable operating time prediction.

Optimal Structure Design of Modular Neural Network (모듈라 신경망의 최적구조 설계)

  • Kim, Seong-Joo;Jeon, Hong-Tae
    • Journal of the Korean Institute of Intelligent Systems
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    • v.13 no.1
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    • pp.6-11
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    • 2003
  • Recently, the modular network was proposed in a way to keep the size of the neural network small. The modular network solves the problem by splitting it into sub-problems. In this aspect, fuzzy systems act in a similar way. However, in a fuzzy system, there must be an expert rule which separates the input space. To overcome this, fuzzy-neural network has been used. However, the number of fuzzy rules grows exponentially as the number of input variables grow. In this paper, we would like to solve the size problem of neural networks using modular network with the hierarchic structure. In the hierarchic structure, the output of precedent module affects only the THEN part of the rule. Finally, the rules become shorter being compared to the rule of fuzzy-neural system. Also, the relations between input and output could be understood more easily in the Proposed modular network and that makes design easier.

Intelligent Data Classification Module in Foot Scanning System (Foot Scanning System에서 지능형 데이터 분류 모듈)

  • Kim Yeong-Tak;Lee Chang-Gyu;Park Ju-Won;Kim Jae-Wan;Tak Han-Ho;Lee Sang-Bae
    • Proceedings of the Korean Institute of Intelligent Systems Conference
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    • 2006.05a
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    • pp.374-377
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    • 2006
  • 본 논문은 역설계 기법을 이용하여 비접촉 방법으로 인체의 발을 3차원으로 복원하고, 발에 관련된 분야에서 필요한 데이터를 추출하는 시스템에서 신발 제작에 필요한 데이터를 지능 기법을 이용하여 분류하는 모듈을 제안한다. 신발의 경우 개개인의 신체조건이 다르고 유행과 개성을 추구하고자 하기 때문에 기존의 생산체계로는 한계가 있다. 측정데이터를 기반으로 하는 맞춤 신발은 기존의 전통적인 수제화 방식과 대량생산 방식의 장점만을 취하여 저렴하고 편리하게 제작된다. 또한 3차원 측정기를 이용하여 측정한 화형 데이터를 적당하게 분류한다면 기성화와 수제화 제작에 필요한 라스트 생성과 개인의 발의 구조 분석에 활용 가능 할 것이다. 따라서 본 논문에서는 획득된 발 데이터를 미리 정해 놓은 그룹으로 결정하기위해 신경망을 사용하여 신발 제작에 필요한 최적의 라스트 데이터를 선택하게 한다.

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Modular Neural Network Recognition System for Robot Endeffector Recognition (로봇 Endeffector 인식을 위한 다중 모듈 신경회로망 인식 시스템)

  • 신진욱;박동선
    • The Journal of Korean Institute of Communications and Information Sciences
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    • v.29 no.5C
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    • pp.618-626
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    • 2004
  • In this paper, we describe a robot endeffector recognition system based on a Modular Neural Networks (MNN). The proposed recognition system can be used for vision system which track a given object using a sequence of images from a camera unit. The main objective to achieve with the designed MNN is to precisely recognize the given robot endeffector and to minimize the processing time. Since the robot endeffector can be viewed in many different shapes in 3- D space, a MNN structure, which contains a set of feedforwared neural networks, can be more attractive in recognizing the given object. Each single neural network learns the endeffector with a cluster of training patterns. The training MNN patterns for a neural network share the similar characteristics so that they can be easily trained. The trained UM is les s sensitive to noise and it shows the better performance in recognizing the endeffector. The recognition rate of MNN is enhanced by 14% over the single neural network. A vision system with the MNN can precisely recognize the endeffector and place it at the center of a display for a remote operator.

Model for Cerebral Cortex Using Modular Neural Network (모듈라 신경망을 이용한 대뇌피질의 모델링)

  • 김성주;연정흠;조현찬;전홍태
    • Proceedings of the IEEK Conference
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    • 2002.06c
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    • pp.139-142
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    • 2002
  • The brain of the human is the best model for the artificial intelligence and is studied by many natural, medical scientists and engineers. In the engineering department, the brain model becomes a main subject in the area of development of a system that can represent and think like human. In this paper, we approach and define the function of the brain biologically and especially, make a model for the function of cerebral cortex, known as a part that performs behavior inference and decision for sensitive information from the thalamus. Therefore, we try to make a model for the transfer process of the brain. The brain takes the sensory information from sensory organ, proceeds behavior inference and decision and finally, commands behavior to the motor nerves. We use the modular neural network in this model. finally, we would like to design the intelligent system that can sense, recognize, think and decide like the brain by learning the information process in the brain with the modular neural network.

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A Modular Design of Neural Networks for Real-time Transmission of Information Data (정보자료의 실시간 전송을 위한 신경망 모듈라)

  • Kim, Jong-Man;Hwang, Jong-sun
    • Proceedings of the Korean Institute of Electrical and Electronic Material Engineers Conference
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    • 2004.11b
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    • pp.7-12
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    • 2004
  • New modular Lateral Information Propagation Networks(LIPN) has been designed. The LIPN has shown to be useful for interpolation of information[3]. The problem is the fact that only the small number of nodes can be implemented in a IC chip with the circuit VLSI technology. The proposed modular architecture is for enlarging the neural network through inter module connections. For such inter module connections, the host(computer or logic) mediates the exchange of information among modules. Also border nodes in each module have capacitors for temporarily retaining the information from outer modules. Simulation of interpolation with the designed LIPN has been done through various experiments.

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Improving the performance for Relation Networks using parameters tuning (파라미터 튜닝을 통한 Relation Networks 성능개선)

  • Lee, Hyun-Ok;Lim, Heui-Seok
    • Proceedings of the Korea Information Processing Society Conference
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    • 2018.05a
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    • pp.377-380
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    • 2018
  • 인간의 추론 능력이란 문제에 주어진 조건을 보고 문제 해결에 필요한 것이 무엇인지를 논리적으로 생각해 보는 것으로 문제 상황 속에서 일정한 규칙이나 성질을 발견하고 이를 수학적인 방법으로 법칙을 찾아내거나 해결하는 능력을 말한다. 이러한 인간인지 능력과 유사한 인공지능 시스템을 개발하는데 있어서 핵심적 도전은 비구조적 데이터(unstructured data)로부터 그 개체들(object)과 그들간의 관계(relation)에 대해 추론하는 능력을 부여하는 것이라고 할 수 있다. 지금까지 딥러닝(deep learning) 방법은 구조화 되지 않은 데이터로부터 문제를 해결하는 엄청난 진보를 가져왔지만, 명시적으로 개체간의 관계를 고려하지 않고 이를 수행해왔다. 최근 발표된 구조화되지 않은 데이터로부터 복잡한 관계 추론을 수행하는 심층신경망(deep neural networks)은 관계추론(relational reasoning)의 시도를 이해하는데 기대할 만한 접근법을 보여주고 있다. 그 첫 번째는 관계추론을 위한 간단한 신경망 모듈(A simple neural network module for relational reasoning) 인 RN(Relation Networks)이고, 두 번째는 시각적 관찰을 기반으로 실제대상의 미래 상태를 예측하는 범용 목적의 VIN(Visual Interaction Networks)이다. 관계 추론을 수행하는 이들 심층신경망(deep neural networks)은 세상을 객체(objects)와 그들의 관계(their relations)라는 체계로 분해하고, 신경망(neural networks)이 피상적으로는 매우 달라 보이지만 근본적으로는 공통관계를 갖는 장면들에 대하여 객체와 관계라는 새로운 결합(combinations)을 일반화할 수 있는 강력한 추론 능력(powerful ability to reason)을 보유할 수 있다는 것을 보여주고 있다. 본 논문에서는 관계 추론을 수행하는 심층신경망(deep neural networks) 중에서 Sort-of-CLEVR 데이터 셋(dataset)을 사용하여 RN(Relation Networks)의 성능을 재현 및 관찰해 보았으며, 더 나아가 파라미터(parameters) 튜닝을 통하여 RN(Relation Networks) 모델의 성능 개선방법을 제시하여 보았다.

A Modular System of the Propagation Neural Networks For Reconstruction of Lost Information (소실 정보의 복원을 위한 전송신경망 모듈라 시스템)

  • Kim, Jong-Man;Kim, Yeong-Min;Hwang, Jong-Sun;Kim, Hyun-Chul
    • Proceedings of the Korean Institute of Electrical and Electronic Material Engineers Conference
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    • 2002.05b
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    • pp.119-123
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    • 2002
  • A new modular Lateral Information Propagation Networks(LIPN) has been designed. The LIPN has shown to be useful for reconstruction of information[3]. The problem is the fact that only the small number of nodes can be implemented in a IC chip with the circuit VLSI technology. The proposed modular architecture is propagated the neural network through inter module connections. For such inter module connections, the host (computer or logic) mediates the exchange of information among modules. Also border nodes in each module have capacitors for temporarily retaining the information from outer modules. The LIPN with $4{\times}4$ modules has been designed and simulation of interpolation with the designed LIPN has been done.

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