• 제목/요약/키워드: Intersection based Network

검색결과 102건 처리시간 0.024초

A many-objective optimization WSN energy balance model

  • Wu, Di;Geng, Shaojin;Cai, Xingjuan;Zhang, Guoyou;Xue, Fei
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제14권2호
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    • pp.514-537
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    • 2020
  • Wireless sensor network (WSN) is a distributed network composed of many sensory nodes. It is precisely due to the clustering unevenness and cluster head election randomness that the energy consumption of WSN is excessive. Therefore, a many-objective optimization WSN energy balance model is proposed for the first time in the clustering stage of LEACH protocol. The four objective is considered that the cluster distance, the sink node distance, the overall energy consumption of the network and the network energy consumption balance to select the cluster head, which to better balance the energy consumption of the WSN network and extend the network lifetime. A many-objective optimization algorithm to optimize the model (LEACH-ABF) is designed, which combines adaptive balanced function strategy with penalty-based boundary selection intersection strategy to optimize the clustering method of LEACH. The experimental results show that LEACH-ABF can balance network energy consumption effectively and extend the network lifetime when compared with other algorithms.

Q 학습을 이용한 교통 제어 시스템 (Traffic Control using Q-Learning Algorithm)

  • 장정;승지훈;김태영;정길도
    • 한국산학기술학회논문지
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    • 제12권11호
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    • pp.5135-5142
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    • 2011
  • 이 논문에서는 도심 지역의 교통 제어 시스템의 동적 응답 성능 향상을 위하여 적응형 Q-Learning 강화 학습 메커니즘을 설계 하였다. 도로, 자동차, 교통 제어 시스템을 지능 시스템으로 모델링 하고, 자동차와 도로 사이는 무선 통신을 이용한 네트워크가 구성된다. 도로와 대로변에 필요한 센터네트워크가 설치되고 Q-Learning 강화 학습은 제안한 메커니즘의 구현을 위해 핵심 알고리즘으로 채택하였다. 교통 신호 제어 규칙은 자동차와 도로에서 매 시간 업데이트된 정보에 따라서 결정되며, 이러한 방법은 기존의 교통 제어 시스템에 비하여 도로를 효율적으로 활용하며 결과적으로 교통 흐름을 개선 한다. 알고리즘을 활용한 최적의 신호 체계는 온라인상에서 자동으로 학습함으로서 구현된다. 시뮬레이션을 통하여 제안한 알고리즘이 기존 시스템에 비하여 효율성 개선과 차량의 대개 시간에 대한 성능 지수가 모두 30% 이상 향상되었다. 실험 결과를 통하여 제안한 시스템이 교통 흐름을 최적화함을 확인하였다.

네트웍의 확장없이 방향별 지체를 고려하는 통행배정모형의 개발 (A Variational Inequality Model of Traffic Assignment By Considering Directional Delays Without Network Expansion)

  • SHIN, Seongil;CHOI, Keechoo;KIM, Jeong Hyun
    • 대한교통학회지
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    • 제20권1호
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    • pp.77-90
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    • 2002
  • 네트웤확장은 평형통행배정모형에서 교차로의 지체와 같이 방향별로 발생하는 교차로의 움직임을 고려하기위한 필수불가결한 방법으로 사용되어져 왔다. 그러나 이 방법은 교차로에서 발생하는 가능한 방향별움직임을 가상 링크를 추가하여 표현함으로 네트웤의 복잡성이 증가하고 계산노력이 많이 요구되어진다. 본 연구에서는 이러한 방향별지체와 이에 관련된 움직임을 네트웤의 구조를 확장함이 없이 이용가능한 사용자최적통행배정모형을 새로운 변동부등식를 통해 제안한다. 제안된 식에 회전지체함수가 직접적으로 내재되므로 네트웤의 어떤 변화도 요구되지 않으며 교차로의 방향별움직임에서 나타나는 상호연관성이 변동부등식의 특성을 통해 명쾌하게 반영된다. 제안된 변동부등식의 해법으로서 변형된 대 각화알고리즘이 제안되며 이때 링크표지덩굴망알고리즘이 각 교차로에서 발생하는 방향별지체를 고려하여 최적경로를 발견하는데 응용된다. 제안된 모델을 통한 실험결과로서 자용자최적평형조건이 만족됨이 확인되었으며 교차로주변에서 회전금지와 함께 목격되는 유턴, 피턴과 같이 두번 이상 같은 교차로를 통과하는 통행행태가 운전자의 경로파악시 발생됨을 확인되었다. 본 연구에서 제안된 모델은 네트웤의 교차로의 움직임을 파악하기위해 구축하는데 요구되는 노력을 감축하고, 컴퓨터계산노력을 절감하며, 향후 첨단여행정보시스템을 구축하는데 기여할 것으로 기대된다.

Pixel-based crack image segmentation in steel structures using atrous separable convolution neural network

  • Ta, Quoc-Bao;Pham, Quang-Quang;Kim, Yoon-Chul;Kam, Hyeon-Dong;Kim, Jeong-Tae
    • Structural Monitoring and Maintenance
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    • 제9권3호
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    • pp.289-303
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    • 2022
  • In this study, the impact of assigned pixel labels on the accuracy of crack image identification of steel structures is examined by using an atrous separable convolution neural network (ASCNN). Firstly, images containing fatigue cracks collected from steel structures are classified into four datasets by assigning different pixel labels based on image features. Secondly, the DeepLab v3+ algorithm is used to determine optimal parameters of the ASCNN model by maximizing the average mean-intersection-over-union (mIoU) metric of the datasets. Thirdly, the ASCNN model is trained for various image sizes and hyper-parameters, such as the learning rule, learning rate, and epoch. The optimal parameters of the ASCNN model are determined based on the average mIoU metric. Finally, the trained ASCNN model is evaluated by using 10% untrained images. The result shows that the ASCNN model can segment cracks and other objects in the captured images with an average mIoU of 0.716.

GPS-based monitoring and modeling of the ionosphere and its applications for high accuracy correction in China

  • Yunbin, Yuan;Jikun, Ou;Xingliang, Huo;Debao, Wen;Genyou, Liu;Yanji, Chai;Renggui, Yang;Xiaowen, Luo
    • 한국항해항만학회:학술대회논문집
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    • 한국항해항만학회 2006년도 International Symposium on GPS/GNSS Vol.2
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    • pp.203-208
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    • 2006
  • The main research conducted previously on GPS ionosphere in China is first introduced. Besides, the current investigations include as follows: (1) GPS-based spatial environmental, especially the ionosphere, monitoring, modeling and analysis, including ground/space-based GPS ionosphere electron density (IED) through occultation/tomography technologies with GPS data from global/regional network, development of a GNSS-based platform for imaging ionosphere and atmosphere (GPFIIA), and preliminary test results through performing the first 3D imaging for the IED over China, (2) The atmospheric and ionospheric modeling for GPS-based surveying, navigation and orbit determination, involving high precisely ionospheric TEC modeling for phase-based long/median range network RTK system for achieving CM-level real time positioning, next generation GNSS broadcast ionospheric time-delay algorithm required for higher correction accuracy, and orbit determination for Low-Earth-orbiter satellites using single frequency GPS receivers, and (3) Research products in applications for national significant projects: GPS-based ionospheric effects modeling for precise positioning and orbit determination applied to China's manned space-engineering, including spatial robot navigation and control and international space station intersection and docking required for related national significant projects.

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대도시 도심교통문제의 개선을 위한 가로망체계의 개편방안에 관한 연구 (A study on Restructuring the Street Network for the Improvement of Traffic Problems in Metropolitan Central Area)

  • 임강원;임강원
    • 대한교통학회지
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    • 제5권2호
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    • pp.81-95
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    • 1987
  • In line with the continued growth of car ownership, the traffic problems in central area of metropoles such as Seoul would become increasingly degraded. comparing with most western cities, the problems in Seoul are characterized by the improportionately high rates of intersection delay, station congestion, traffic accidents caused by weaving conflicts and pedestrian congestion. It is caused by the lack of flexibility I street network, which is prerequisite for upholding the efficacy of traffic management and control, resulted from the simplicity of network graph in terms of connectivity, street density and distribution by width. This pattern has been resulted from the prolonged policy pursuing the street-widening of the nagging bottleneck in such a short period since the 1950s, comparing that most western cities had undergone over several centuries an age of horse-and-vehicle transportation. In order to improve the expected traffic problems in central area over the coming periods of motorization, it is imperative to restructure the street network in Central Seoul so that the efficacy of traffic management and control may be operative. Based upon the long-range planning the street network should be restructured by stages so that cenral traffic may be controled by one-way operation and most through-traffic be detoured around fringe area.

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Improvement of Three Mixture Fragrance Recognition using Fuzzy Similarity based Self-Organized Network Inspired by Immune Algorithm

  • Widyanto, M.R.;Kusumoputro, B.;Nobuhara, H.;Kawamoto, K.;Yoshida, S.;Hirota, K.
    • 한국지능시스템학회:학술대회논문집
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    • 한국퍼지및지능시스템학회 2003년도 ISIS 2003
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    • pp.419-422
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    • 2003
  • To improve the recognition accuracy of a developed artificial odor discrimination system for three mixture fragrance recognition, Fuzzy Similarity based Self-Organized Network inspired by Immune Algorithm (F-SONIA) is proposed. Minimum, average, and maximum values of fragrance data acquisitions are used to form triangular fuzzy numbers. Then the fuzzy similarity treasure is used to define the relationship between fragrance inputs and connection strengths of hidden units. The fuzzy similarity is defined as the maximum value of the intersection region between triangular fuzzy set of input vectors and the connection strengths of hidden units. In experiments, performances of the proposed method is compared with the conventional Self-Organized Network inspired by Immune Algorithm (SONIA), and the Fuzzy Learning Vector Quantization (FLVQ). Experiments show that F-SONIA improves recognition accuracy of SONIA by 3-9%. Comparing to the previously developed artificial odor discrimination system that used FLVQ as pattern classifier, the recognition accuracy is increased by 14-25%.

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Feature Selection for Abnormal Driving Behavior Recognition Based on Variance Distribution of Power Spectral Density

  • Nassuna, Hellen;Kim, Jaehoon;Eyobu, Odongo Steven;Lee, Dongik
    • 대한임베디드공학회논문지
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    • 제15권3호
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    • pp.119-127
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    • 2020
  • The detection and recognition of abnormal driving becomes crucial for achieving safety in Intelligent Transportation Systems (ITS). This paper presents a feature extraction method based on spectral data to train a neural network model for driving behavior recognition. The proposed method uses a two stage signal processing approach to derive time-saving and efficient feature vectors. For the first stage, the feature vector set is obtained by calculating variances from each frequency bin containing the power spectrum data. The feature set is further reduced in the second stage where an intersection method is used to select more significant features that are finally applied for training a neural network model. A stream of live signals are fed to the trained model which recognizes the abnormal driving behaviors. The driving behaviors considered in this study are weaving, sudden braking and normal driving. The effectiveness of the proposed method is demonstrated by comparing with existing methods, which are Particle Swarm Optimization (PSO) and Convolution Neural Network (CNN). The experiments show that the proposed approach achieves satisfactory results with less computational complexity.

유비쿼터스 주차관리를 위한 차량충돌 검증시스템 (Car Collision Verification System for the Ubiquitous Parking Management)

  • 마테오 로미오;양현호;이재완
    • 인터넷정보학회논문지
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    • 제12권5호
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    • pp.101-111
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    • 2011
  • WSN기반 주차관리 시스템에서 대부분의 연구는 주차장에서 사건을 통제하기 위해 무선 센서를 이용하지만, 주차장에서의 차량충돌에 대한 연구는 거의 수행되지 않았다. 시간에 따른 자세한 차량의 위치는 충돌 사건을 분석하는데 매우 중요하다. 본 연구는 주차장에서 차량 충돌사건을 감지하여 분석하고, 이를 차주에게 통보하는 충돌감지 방법을 제시한다. 차량의 위치 및 이동 방향을 감지하기 위해, 움직임 센서로부터의 정보를 활용하며, 빠른 OBB 교차 테스트를 사용하여 검증을 위한 객체를 추적한다. 성능평가 결과 위치추적 기법은 센서를 추가함에 따라 좀 더 정확함을 보였고, 제안한 OBB 충돌 테스트가 일반적인 OBB 교차테스트에 비해 속도가 향상됨을 나타내었다.

접근관제구역에서 다변측정감시시스템을 이용한 대안항법 방안 연구 (Alternative Positioning, Navigation and Timing Using Multilateration in a Terminal Control Area)

  • 조상훈;강자영
    • 한국항공운항학회지
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    • 제23권3호
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    • pp.35-41
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    • 2015
  • Multilateration(MLAT) is commonly used in civil and military surveillance applications to accurately locate an aircraft, vehicle or stationary emitter. MLAT calculates the TDOA of signals by transmitted aircraft and determines the aircraft's location. With more than four receivers it is possible to estimate the 3D position of the aircraft by calculating the intersection of the resulting hyperbolas and the system integrity. In this study, our objectives are to apply MLAT technique to Jeju terminal control area and to propose a MLAT receiver network to properly estimate the positions of aircraft approaching this area. Based on computer simulations, we determine locations of ground receivers in Jeju terminal control area, calculate estimated position errors of the aircraft with respect to the selected receiver networks, and find the best receiver network with the least position error.