• 제목/요약/키워드: Machine to machine

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u-Manufacturing을 위한 M2M 표준화 및 진보된 Machine Concept (M2M Standard Model and Advanced Machine Concept for u-Manufacturing)

  • 김동훈;송준엽;차석근
    • 한국정밀공학회:학술대회논문집
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    • 한국정밀공학회 2006년도 춘계학술대회 논문집
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    • pp.345-346
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    • 2006
  • In the future, a machine will be more improved in the form of advanced concept with collaborative ability in M2M(Machine to Machine, Mobile to Machine) environment for u-Manufacturing system. This paper tried to standardize M2M and design advanced concept machine. The M2M is front-end system for implementing autonomous ubiquitous environment. The advanced machine in M2M will be a collaborative machine with knowledge-evolutionary ability such as u-Machine(Ubiquitous machine), Vortal(Vertical Portal) machine and P2P(Peer to Peer) machine. Such advanced concept machines will be the key subject for M2M cooperation.

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Analysis on Trends of No-Code Machine Learning Tools

  • Yo-Seob, Lee;Phil-Joo, Moon
    • International Journal of Advanced Culture Technology
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    • 제10권4호
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    • pp.412-419
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    • 2022
  • The amount of digital text data is growing exponentially, and many machine learning solutions are being used to monitor and manage this data. Artificial intelligence and machine learning are used in many areas of our daily lives, but the underlying processes and concepts are not easy for most people to understand. At a time when many experts are needed to run a machine learning solution, no-code machine learning tools are a good solution. No-code machine learning tools is a platform that enables machine learning functions to be performed without engineers or developers. The latest No-Code machine learning tools run in your browser, so you don't need to install any additional software, and the simple GUI interface makes them easy to use. Using these platforms can save you a lot of money and time because there is less skill and less code to write. No-Code machine learning tools make it easy to understand artificial intelligence and machine learning. In this paper, we examine No-Code machine learning tools and compare their features.

ZG-machine에서 기억 장소 재활용 체계의 영향 (Effect of Garbage Collection in the ZG-machine)

  • 우균;한태숙
    • 한국정보과학회논문지:소프트웨어및응용
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    • 제27권7호
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    • pp.759-768
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    • 2000
  • ZG-machine은 태그옮김이라는 간단한 부호화 기법을 채택한 공간 효율적인 G-machine이다. 기억 장소 재활용 체계 없이 실험한 이전 실험에서 ZG-machine은 G-machine과 비교하여 30%의 힙 공간을 절약할 수 있었고 수행 시간 부담은 6%를 넘지 않았었다. 이 논문에서는 ZG-machine에 기억 장소 재활용 체계를 장착하여 추가로 실험한 결과를 설명한다. 결과에 따르면, G-machine과 비교할 때, ZG-machine의 수행 시간은 34% 증가하였지만 최소 힙 사용량은 평균 34% 감소하였다. 수행 시간 부담이 커진 이유는 기억 장소 재활용 체계때문이다. 그러나 힙 공간을 최소 힙 사용량의 7 배 정도로 늘렸을 경우에 G-machine에 대한 수행 시간 부담은 12%를 넘지 않았다. ZG-machine에서 최소 힙 사용량이 줄어든 특성은 ZG-machine이 내장 체계와 같은 기억 장소가 제한된 응용 분야에 사용될 수 있음을 의미한다. 또한 보다 효율적인 기억 장소 재활용 쳬계를 개발함으로써 수행 시간은 상당히 줄어들 것으로 예상 된다.

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Analysis of Automatic Machine Learning Solution Trends of Startups

  • Lee, Yo-Seob
    • International Journal of Advanced Culture Technology
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    • 제8권2호
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    • pp.297-304
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    • 2020
  • Recently, open source automatic machine learning solutions have been applied in many fields. To apply open source automated machine learning to real world problems, you need to write code with expertise in machine learning. Writing code without machine learning knowledge is challenging. To solve this problem, the automatic machine learning solutions provided by startups are made easy to use with a clean user interface. In this paper, we review automatic machine learning solutions of startups.

Machine Socialization 기술개발을 위한 스키마 제안 (Suggest Schema for Machine Socialization of Technical Development)

  • 박성현;김용운;유상근;정회경
    • 한국정보통신학회:학술대회논문집
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    • 한국정보통신학회 2014년도 추계학술대회
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    • pp.865-867
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    • 2014
  • IoT(Internet Of Things) 사업의 일종인 Machine Socialization은 각 기기가 지능을 가지고 M2M(Machine to Machine) 협업을 통하여 사용자의 상황을 인지하고 시나리오를 풀어나가는 것을 의미한다. 기존의 IoT는 단순한 센서 데이터를 통하여 1상황 1제어로 진행되었지만 Machine Socialization은 상황을 시나리오대로 풀어나가고 Machine Manager가 전체적 흐름을 통제하고 제어하는 것을 의미한다. 본 논문에서는 기존 H2H(Human to Human)의 SNS(Social Network Service)을 M2M에 적용하기 위한 스키마 제안하고 Machine Manager가 시나리오를 풀어나가야 하기 위한 각 기기의 정보를 스키마로 제안한다.

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머시닝센터의 기계능력지수 평가 및 기계특성과의 분석 (Machine Capability Index Evaluation of Machining Center and Comparative Analysis with Machine Property)

  • 홍원표
    • 한국생산제조학회지
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    • 제22권3호
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    • pp.349-355
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    • 2013
  • Recently, there is an increasing need to produce more precise products with small deviations from defined target values. Machine capability is the ability of a machine tool to produce parts within a tolerance interval. Capability indices are a statistical way of describing how well a product is machined compared to defined target values and tolerances. Today, there is no standardized way to acquire a machine capability value. This paper describes a method for evaluating machine capability indices in machining centers. After the machining of specimens, the straightness, roundness, and positioning accuracy were measured by using CMM (coordinate measuring machine). These measured values and defined tolerances were used to evaluate the machine capability indices. It will be useful for the industry to have standardized ways to choose and calculate machine capability indices.

자기조직화 신경망을 이용한 셀 형성 문제의 기계 배치순서 결정 알고리듬 (Machine Layout Decision Algorithm for Cell Formation Problem Using Self-Organizing Map)

  • 전용덕
    • 산업경영시스템학회지
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    • 제42권2호
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    • pp.94-103
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    • 2019
  • Self Organizing Map (SOM) is a neural network that is effective in classifying patterns that form the feature map by extracting characteristics of the input data. In this study, we propose an algorithm to determine the cell formation and the machine layout within the cell for the cell formation problem with operation sequence using the SOM. In the proposed algorithm, the output layer of the SOM is a one-dimensional structure, and the SOM is applied to the parts and the machine in two steps. The initial cell is formed when the formed clusters is grouped largely by the utilization of the machine within the cell. At this stage, machine cell are formed. The next step is to create a flow matrix of the all machine that calculates the frequency of consecutive forward movement for the machine. The machine layout order in each machine cell is determined based on this flow matrix so that the machine operation sequence is most reflected. The final step is to optimize the overall machine and parts to increase machine layout efficiency. As a result, the final cell is formed and the machine layout within the cell is determined. The proposed algorithm was tested on well-known cell formation problems with operation sequence shown in previous papers. The proposed algorithm has better performance than the other algorithms.

Knowledge- Evolutionary Intelligent Machine-Tools - Part 1 : Design of Dialogue Agent based on Standard Platform

  • Kim, Dong-Hoon;Song, Jun-Yeob
    • Journal of Mechanical Science and Technology
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    • 제20권11호
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    • pp.1863-1872
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    • 2006
  • In FMS (Flexible Manufacturing System) and CIM (Computer Integrated Manufacturing), machine-tools have been the target of integration in the last three decades. The conventional concept of integration is being changed into the autonomous manufacturing device based on the knowledge evolution by applying advanced information technology in which an open architecture controller, high-speed network and internet technology are included. In the advanced environment, the machine-tools is not the target of integration anymore, but has been the key subject of cooperation. In the near future, machine-tools will be more improved in the form of a knowledge-evolutionary intelligent device. The final goal of this study is to develop an intelligent machine having knowledge-evolution capability and a management system based on internet operability. The knowledge-evolutionary intelligent machine-tools is expected to gather knowledge autonomically, by producing knowledge, understanding knowledge, reasoning knowledge, making a new decision, dialoguing with other machines, etc. The concept of the knowledge-evolutionary intelligent machine is originated from the machine control being operated by human experts' sense, dialogue and decision. The structure of knowledge evolution in M2M (Machine to Machine) and the scheme for a dialogue agent among agent-based modules such as a sensory agent, a dialogue agent and an expert system (decision support agent) are presented in this paper, with intent to develop the knowledge-evolutionary machine-tools. The dialogue agent functions as an interface for inter-machine cooperation. To design the dialogue agent module in an M2M environment, FIPA (Foundation of Intelligent Physical Agent) standard platform and the ping agent based on FIPA are analyzed in this study. In addition, the dialogue agent is designed and applied to recommend cutting conditions and thermal error compensation in a tapping machine. The knowledge-evolutionary machine-tools are expected easily implemented on the basis of this study and shows a good assistance to sensory and decision support agents.

대체공정이 있는 기계-부품 그룹 형성 (Machine-Part Grouping with Alternative Process Plans)

  • 이종섭;강맹규
    • 대한산업공학회지
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    • 제31권1호
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    • pp.20-26
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    • 2005
  • This paper proposes the heuristic algorithm for the generalized GT problems to consider the restrictions which are given the number of machine cell and maximum number of machines in machine cell as well as minimum number of machines in machine cell. This approach is split into two phase. In the first phase, we use the similarity coefficient which proposes and calculates the similarity values about each pair of all machines and sort these values descending order. If we have a machine pair which has the largest similarity coefficient and adheres strictly to the constraint about birds of a different feather (BODF) in a machine cell, then we assign the machine to the machine cell. In the second phase, we assign parts into machine cell with the smallest number of exceptional elements. The results give a machine-part grouping. The proposed algorithm is compared to the Modified p-median model for machine-part grouping.

그리드 컴퓨팅을 이용한 기계-부품 그룹 형성 (Machine-Part Grouping Formation Using Grid Computing)

  • 이종섭;강맹규
    • 대한산업공학회지
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    • 제30권3호
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    • pp.175-180
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    • 2004
  • The machine-part group formation is to group the sets of parts having similar processing requirements into part families, and the sets of machines needed to process a particular part family into machine cells using grid computing. It forms machine cells from the machine-part incidence matrix by means of Self-Organizing Maps(SOM) whose output layer is one-dimension and the number of output nodes is the twice as many as the number of input nodes in order to spread out the machine vectors. It generates machine-part group which are assigned to machine cells by means of the number of bottleneck machine with processing part. The proposed algorithm was tested on well-known machine-part grouping problems. The results of this computational study demonstrate the superiority of the proposed algorithm.