• 제목/요약/키워드: Time Series Network Analysis

검색결과 280건 처리시간 0.023초

JXTA를 이용한 P2P 기반 자료공유시스템(JDSS)의 구현 (Implementation of a P2P-based Data Sharing System using JXTA)

  • 양광민;주형렬
    • Journal of Information Technology Applications and Management
    • /
    • 제10권3호
    • /
    • pp.1-22
    • /
    • 2003
  • P2P systems have been studied by many researchers in universities and commercial firms in recent years. In this study. we design and implement a system that makes UP for shortcomings of currently available P2P systems. Gnutella and Napster. The study also includes an efficiency analysis scheme conducted through a series of experimental data. The data sharing system of the study demonstrated duality of roles(client, service) of peers. But, their roles were separated from the existing client-server systems. Also, the study implements mechanism that shows the redundancy of data to communicate efficiently among peers for transferring data. The results of performance measure of the system shows that the amount of information shared by peers increases as the amount of peers increases but with no significant increase in response time. This constant response time is far more stable and faster than current file sharing systems. such as Gnutella and Napster. Business applications such as knowledge management, enterprise information portal management and transfer of data are done by use of supercomputers. They need to extend their systems to equip with more capacity and throughput as the number of clients increases. Moreover, they will face with more complicated problems if integration with new systems exists. If this JDSS is introduced to these business applications. it would easily augment scalability of the system with high performance at less expense.

  • PDF

인터넷 전자상거래 환경에서 부품구성기법 활용 연구 (Part Configuration Problem Solving for Electronic Commerce)

  • 권순범
    • 한국경영과학회:학술대회논문집
    • /
    • 한국경영과학회 1998년도 추계학술대회 논문집
    • /
    • pp.407-410
    • /
    • 1998
  • Configuration is a set of building block processes, a series of selection and combining parts or components which composes a whole thing. A whole thing could be such a configurable object as manufacturing product, network system, financial portfolio, system development plan, project team, etc. Configuration problem could happen during any phase of product life cycle: design, production, sales, installation, and maintenance. Configuration has long been one of cost and time consuming work, because only high salaried technical experts on product and components can do configuration. Rework for error adjustments of configurations at later process causes far much cost and time, so accurate configuration is required. Under the on-line electronic commerce environment, configuration problem solving becomes more important, because component-based sales should be done automatically on the merchant web site. Automated product search, order placement, order fulfillment and payment make that manual configuration is no longer feasible. Automated configuration means that all the constraints among components should be checked and confirmed by configuration engine automatically. In addition, technical constraints and customer preferences like price range and a specific function required should be considered. This paper gives an brief overview of configuration problems: characteristics, representation paradigms, and solving algorithms and introduce CRSP(Constraint and Rule Satisfaction Problem) method. CRSP method adopts both constraint and rule for configuration domain knowledge representation. A survey and analysis on web sites adopting configuration functions are provided. Future directions of configuration for EC is discussed in the three aspects: methodology itself, companies adopting configuration function, and electronic commerce industry.

  • PDF

Fault Diagnosis in Semiconductor Etch Equipment Using Bayesian Networks

  • Nawaz, Javeria Muhammad;Arshad, Muhammad Zeeshan;Hong, Sang Jeen
    • JSTS:Journal of Semiconductor Technology and Science
    • /
    • 제14권2호
    • /
    • pp.252-261
    • /
    • 2014
  • A Bayesian network (BN) based fault diagnosis framework for semiconductor etching equipment is presented. Suggested framework contains data preprocessing, data synchronization, time series modeling, and BN inference, and the established BNs show the cause and effect relationship in the equipment module level. Statistically significant state variable identification (SVID) data of etch equipment are preselected using principal component analysis (PCA) and derivative dynamic time warping (DDTW) is employed for data synchronization. Elman's recurrent neural networks (ERNNs) for individual SVID parameters are constructed, and the predicted errors of ERNNs are then used for assigning prior conditional probability in BN inference of the fault diagnosis. For the demonstration of the proposed methodology, 300 mm etch equipment model is reconstructed in subsystem levels, and several fault diagnosis scenarios are considered. BNs for the equipment fault diagnosis consists of three layers of nodes, such as root cause (RC), module (M), and data parameter (DP), and the constructed BN illustrates how the observed fault is related with possible root causes. Four out of five different types of fault scenarios are successfully diagnosed with the proposed inference methodology.

CNN-LSTM Coupled Model for Prediction of Waterworks Operation Data

  • Cao, Kerang;Kim, Hangyung;Hwang, Chulhyun;Jung, Hoekyung
    • Journal of Information Processing Systems
    • /
    • 제14권6호
    • /
    • pp.1508-1520
    • /
    • 2018
  • In this paper, we propose an improved model to provide users with a better long-term prediction of waterworks operation data. The existing prediction models have been studied in various types of models such as multiple linear regression model while considering time, days and seasonal characteristics. But the existing model shows the rate of prediction for demand fluctuation and long-term prediction is insufficient. Particularly in the deep running model, the long-short-term memory (LSTM) model has been applied to predict data of water purification plant because its time series prediction is highly reliable. However, it is necessary to reflect the correlation among various related factors, and a supplementary model is needed to improve the long-term predictability. In this paper, convolutional neural network (CNN) model is introduced to select various input variables that have a necessary correlation and to improve long term prediction rate, thus increasing the prediction rate through the LSTM predictive value and the combined structure. In addition, a multiple linear regression model is applied to compile the predicted data of CNN and LSTM, which then confirms the data as the final predicted outcome.

Application of an Optimized Support Vector Regression Algorithm in Short-Term Traffic Flow Prediction

  • Ruibo, Ai;Cheng, Li;Na, Li
    • Journal of Information Processing Systems
    • /
    • 제18권6호
    • /
    • pp.719-728
    • /
    • 2022
  • The prediction of short-term traffic flow is the theoretical basis of intelligent transportation as well as the key technology in traffic flow induction systems. The research on short-term traffic flow prediction has showed the considerable social value. At present, the support vector regression (SVR) intelligent prediction model that is suitable for small samples has been applied in this domain. Aiming at parameter selection difficulty and prediction accuracy improvement, the artificial bee colony (ABC) is adopted in optimizing SVR parameters, which is referred to as the ABC-SVR algorithm in the paper. The simulation experiments are carried out by comparing the ABC-SVR algorithm with SVR algorithm, and the feasibility of the proposed ABC-SVR algorithm is verified by result analysis. Continuously, the simulation experiments are carried out by comparing the ABC-SVR algorithm with particle swarm optimization SVR (PSO-SVR) algorithm and genetic optimization SVR (GA-SVR) algorithm, and a better optimization effect has been attained by simulation experiments and verified by statistical test. Simultaneously, the simulation experiments are carried out by comparing the ABC-SVR algorithm and wavelet neural network time series (WNN-TS) algorithm, and the prediction accuracy of the proposed ABC-SVR algorithm is improved and satisfactory prediction effects have been obtained.

토픽 모델링을 이용한 트위터 이슈 트래킹 시스템 (Twitter Issue Tracking System by Topic Modeling Techniques)

  • 배정환;한남기;송민
    • 지능정보연구
    • /
    • 제20권2호
    • /
    • pp.109-122
    • /
    • 2014
  • 현재 우리는 소셜 네트워크 서비스(Social Network Service, 이하 SNS) 상에서 수많은 데이터를 만들어 내고 있다. 특히, 모바일 기기와 SNS의 결합은 과거와는 비교할 수 없는 대량의 데이터를 생성하면서 사회적으로도 큰 영향을 미치고 있다. 이렇게 방대한 SNS 데이터 안에서 사람들이 많이 이야기하는 이슈를 찾아낼 수 있다면 이 정보는 사회 전반에 걸쳐 새로운 가치 창출을 위한 중요한 원천으로 활용될 수 있다. 본 연구는 이러한 SNS 빅데이터 분석에 대한 요구에 부응하기 위해, 트위터 데이터를 활용하여 트위터 상에서 어떤 이슈가 있었는지 추출하고 이를 웹 상에서 시각화 하는 트위터이슈 트래킹 시스템 TITS(Twitter Issue Tracking System)를 설계하고 구축 하였다. TITS는 1) 일별 순위에 따른 토픽 키워드 집합 제공 2) 토픽의 한달 간 일별 시계열 그래프 시각화 3) 토픽으로서의 중요도를 점수와 빈도수에 따라 Treemap으로 제공 4) 키워드 검색을 통한 키워드의 한달 간 일별 시계열 그래프 시각화의 기능을 갖는다. 본 연구는 SNS 상에서 실시간으로 발생하는 빅데이터를 Open Source인 Hadoop과 MongoDB를 활용하여 분석하였고, 이는 빅데이터의 실시간 처리가 점점 중요해지고 있는 현재 매우 주요한 방법론을 제시한다. 둘째, 문헌정보학 분야뿐만 아니라 다양한 연구 영역에서 사용하고 있는 토픽 모델링 기법을 실제 트위터 데이터에 적용하여 스토리텔링과 시계열 분석 측면에서 유용성을 확인할 수 있었다. 셋째, 연구 실험을 바탕으로 시각화와 웹 시스템 구축을 통해 실제 사용 가능한 시스템으로 구현하였다. 이를 통해 소셜미디어에서 생성되는 사회적 트렌드를 마이닝하여 데이터 분석을 통한 의미 있는 정보를 제공하는 실제적인 방법을 제시할 수 있었다는 점에서 주요한 의의를 갖는다. 본 연구는 JSON(JavaScript Object Notation) 파일 포맷의 1억 5천만개 가량의 2013년 3월 한국어 트위터 데이터를 실험 대상으로 한다.

응답면 기법에 의한 아치교량 시스템의 붕괴 위험성평가(I): 요소신뢰성 (Risk Assessment for the Failure of an Arch Bridge System Based upon Response Surface Method(I): Component Reliability)

  • 조태준;방명석
    • 한국안전학회지
    • /
    • 제21권6호
    • /
    • pp.74-81
    • /
    • 2006
  • Probabilistic Risk Assessment considering statistically random variables is performed for the preliminary design of a Arch Bridge. Component reliabilities of girders have been evaluated using the response surfaces of the design variables at the selected critical sections based on the maximum shear and negative moment locations. Response Surface Method(RSM) is successfully applied for reliability analyses for this relatively small probability of failure of the complex structure, which is hard to be obtained by Monte-Carlo Simulations or by First Order Second Moment Method that can not easily calculate the derivative terms of implicit limit state functions. For the analysis of system reliability, parallel resistance system composed of girders is changed into parallel series connection system. The upper and lower probabilities of failure for the structural system have been evaluated and compared with the suggested prediction method for the combination of failure modes. The suggested prediction method for the combination of failure modes reveals the unexpected combinations of element failures in significantly reduced time and efforts compared with the previous permutation method or system reliability analysis method.

인공신경망을 이용한 팔당호의 조류발생 모델 연구 (Study on the Modelling of Algal Dynamics in Lake Paldang Using Artificial Neural Networks)

  • 박혜경;김은경
    • 한국물환경학회지
    • /
    • 제29권1호
    • /
    • pp.19-28
    • /
    • 2013
  • Artificial neural networks were used for time series modelling of algal dynamics of whole year and by season at the Paldang dam station (confluence area). The modelling was based on comprehensive weekly water quality data from 1997 to 2004 at the Paldang dam station. The results of validation of seasonal models showed that the timing and magnitude of the observed chlorophyll a concentration was predicted better, compared with the ANN model for whole year. Internal weightings of the inputs in trained neural networks were obtained by sensitivity analysis for identification of the primary driving mechanisms in the system dynamics. pH, COD, TP determined most the dynamics of chlorophyll a, although these inputs were not the real driving variable for algal growth. Short-term prediction models that perform one or two weeks ahead predictions of chlorophyll a concentration were designed for the application of Harmful Algal Alert System in Lake Paldang. Short-term-ahead ANN models showed the possibilities of application of Harmful Algal Alert System after increasing ANN model's performance.

장단기 기억 신경망을 활용한 선박교통 해양사고 패턴 분석 및 예측 (Analysis and Prediction Methods of Marine Accident Patterns related to Vessel Traffic using Long Short-Term Memory Networks)

  • 장다운;김주성
    • 해양환경안전학회지
    • /
    • 제28권5호
    • /
    • pp.780-790
    • /
    • 2022
  • 해양사고 예방을 위해서는 사고의 원인과 결과에 대한 분석 및 진단뿐만 아니라, 사고의 발생 패턴과 변화 추이를 예측함으로써 정량적 위험도를 제시할 필요성이 있다. 선박교통과 관련된 해양사고 예측은 선박의 충돌위험도 분석 및 항해 경로 탐색 등 선박교통의 흐름에 관한 연구가 주로 수행되었으며, 해양사고의 발생 패턴에 대한 분석은 전통적인 통계 분석에 따라 제시되었다. 본 연구에서는 해양사고 통계 자료 중 선박교통관련 사고의 월별, 시간대별 발생 현황 데이터를 활용하여 해양사고 발생 예측 모델을 제시하고자 한다. 국내 해양사고 발생 현황 중 월별, 시간대별 데이터 집계가 가능한 1998년부터 2021년까지의 통계자료 중 선박교통 관련 데이터를 분류하여 정형 시계열 데이터로 변환하였으며, 대표적인 인공지능 모델인 순환 신경망 기반 장단기 기억 신경망을 통하여 예측 모델을 구축하였다. 검증데이터를 통하여 모델의 성능을 검증한 결과 RMSE는 초기 신경망 모델에서 월별 52.5471, 시간대별 126.5893으로 나타났으며, 관측값으로 신경망 모델을 업데이트한 결과 RMSE는 월별 31.3680, 시간대별 36.3967로 개선되었다. 본 연구에서 제안한 신경망 모델을 기반으로 다양한 해양사고의 특징 데이터를 학습하여 해양사고 발생 패턴을 예측할 수 있을 것이다. 향후 해양사고 발생 위험의 정량적 제시와 지역기반의 위험지도 개발 등에 관한 추가 연구가 필요하다.

NGN 운용과정의 QoS 관리를 위한 프레임워크 설계방법 (A Study on Designing Method of Framework for NGN QoS Management)

  • 노시춘;방기천
    • 디지털콘텐츠학회 논문지
    • /
    • 제9권1호
    • /
    • pp.101-107
    • /
    • 2008
  • 우리나라 NGN 이행은 Access Gateway 도입단계를 거쳐 NGN 통합망으로의 진화가 계속 진행되고 있다. 본 연구는 NGN 도입단계에서의 QoS 확보와 NGN 운용과정의 품질 보증을 위해 어떤 체계하에서 품질이 관리 되어야 하는지를 도출하기 위해서 VOIP와 멀티미디어 트래픽을 중심으로 NGN QoS 측정 프레임워크를 제시한다. 프레임워크는 NGN운용과정에서 QoS 측정메트릭스, 측정구간과 측정계위, 측정도구와 측정장비, 측정방법 및 측정결과분석에 대한 일련의 프로세스와 방법론을 모델화하여 향후 NGN QoS 보증활동에 대비토록 한다. 통신서비스 품질은 스스로 보장되지 않으며 끊임없이 측정되고 관리될 때에만 목표수준 확보가 가능하다. NGN 으로의 네트워크기술 패러다임 대 전환이 전개되고 있는 이시기적인 중요성을 볼때 NGN 운용상의 QoS 관리에 대한 연구는 앞으로 활발하게 추진되어야할 핵심 소재이다.

  • PDF