• 제목/요약/키워드: Smart Machine

검색결과 846건 처리시간 0.027초

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.

Improving Malicious Web Code Classification with Sequence by Machine Learning

  • Paik, Incheon
    • IEIE Transactions on Smart Processing and Computing
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    • 제3권5호
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    • pp.319-324
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    • 2014
  • Web applications make life more convenient. Many web applications have several kinds of user input (e.g. personal information, a user's comment of commercial goods, etc.) for the activities. On the other hand, there are a range of vulnerabilities in the input functions of Web applications. Malicious actions can be attempted using the free accessibility of many web applications. Attacks by the exploitation of these input vulnerabilities can be achieved by injecting malicious web code; it enables one to perform a variety of illegal actions, such as SQL Injection Attacks (SQLIAs) and Cross Site Scripting (XSS). These actions come down to theft, replacing personal information, or phishing. The existing solutions use a parser for the code, are limited to fixed and very small patterns, and are difficult to adapt to variations. A machine learning method can give leverage to cover a far broader range of malicious web code and is easy to adapt to variations and changes. Therefore, this paper suggests the adaptable classification of malicious web code by machine learning approaches for detecting the exploitation user inputs. The approach usually identifies the "looks-like malicious" code for real malicious code. More detailed classification using sequence information is also introduced. The precision for the "looks-like malicious code" is 99% and for the precise classification with sequence is 90%.

Control of PKM machine tools using piezoelectric self-sensing actuators on basis of the functional principle of a scale with a vibrating string

  • Rudolf, Christian;Martin, Thomas;Wauer, Jorg
    • Smart Structures and Systems
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    • 제6권2호
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    • pp.167-182
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    • 2010
  • An adaptronic strut for machine tools with parallel kinematics for compensation of the influence of geometric errors is introduced. Implemented within the strut is a piezoelectric sensor-actuator unit separated in function. In the first part of this contribution, the functional principle of the strut is presented. For use of one piezoelectric transducer as both, sensor and actuator as so-called self-sensing actuator, the acquisition of the sensing signal while actuating simultaneously using electrical bridge circuits as well as filter properties are examined. In the second part the control concept developed for the adaptronic strut is presented. A co-simulation model of the strut for simulating the controlled multi-body behavior of the strut is set-up. The control design for the strut as a stand-alone system is tested under various external loads. Finally, the strut is implemented into a model of the complete machine tool and the influence of the controlled strut onto the behavior of the machine tool is examined.

실시간 운영체제 UbiFOSTM에서의 CVM 설계 및 구현 (Design and Implementation of CVM on Real-Time Operating System, UbiFOSTM)

  • 최찬우;이철훈
    • 한국콘텐츠학회:학술대회논문집
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    • 한국콘텐츠학회 2007년도 추계 종합학술대회 논문집
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    • pp.812-816
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    • 2007
  • IT 산업이 빠르게 발전하면서 리소스가 제한된 셋탑박스와 스마트폰 같은 중소형 디바이스의 사용이 비약적으로 증가하는 추세이다. 자바는 플랫폼 독립성(Platform Independency), 보안성(Security), 이동성(Mobility) 등의 장점을 가지고 있기 때문에 안정된 서비스를 제공해야 하는 중소형 디바이스들에게 중요한 핵심 소프트웨어 플랫폼이 되어가고 있다. 이러한 디바이스에서 자바애플리케이션을 실행하기 위해서는 자바가상머신(Java Virtual Machine)이 필요하다. C 가상 머신(Classic Virtual Machine : CVM)은 리소스가 제한된 임베디드 디바이스를 위해 고안된 자바가상머신이다. 본 논문에서는 실시간 운영체제 UbiFOS$^{TM}$상에 CDC(Connected Device Configuration) 에서 정의하고 있는 CVM을 설계 및 구현하였다.

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웨어러블 동작센서와 인공지능 학습모델 기반에서 행동인지의 개선 (Improvement of Activity Recognition Based on Learning Model of AI and Wearable Motion Sensors)

  • 안정욱;강운구;이영호;이병문
    • 한국멀티미디어학회논문지
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    • 제21권8호
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    • pp.982-990
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    • 2018
  • In recent years, many wearable devices and mobile apps related to life care have been developed, and a service for measuring the movement during walking and showing the amount of exercise has been provided. However, they do not measure walking in detail, so there may be errors in the total calorie consumption. If the user's behavior is measured by a multi-axis sensor and learned by a machine learning algorithm to recognize the kind of behavior, the detailed operation of walking can be autonomously distinguished and the total calorie consumption can be calculated more than the conventional method. In order to verify this, we measured activities and created a model using a machine learning algorithm. As a result of the comparison experiment, it was confirmed that the average accuracy was 12.5% or more higher than that of the conventional method. Also, in the measurement of the momentum, the calorie consumption accuracy is more than 49.53% than that of the conventional method. If the activity recognition is performed using the wearable device and the machine learning algorithm, the accuracy can be improved and the energy consumption calculation accuracy can be improved.

Application of compressive sensing and variance considered machine to condition monitoring

  • Lee, Myung Jun;Jun, Jun Young;Park, Gyuhae;Kang, To;Han, Soon Woo
    • Smart Structures and Systems
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    • 제22권2호
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    • pp.231-237
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    • 2018
  • A significant data problem is encountered with condition monitoring because the sensors need to measure vibration data at a continuous and sometimes high sampling rate. In this study, compressive sensing approaches for condition monitoring are proposed to demonstrate their efficiency in handling a large amount of data and to improve the damage detection capability of the current condition monitoring process. Compressive sensing is a novel sensing/sampling paradigm that takes much fewer data than traditional data sampling methods. This sensing paradigm is applied to condition monitoring with an improved machine learning algorithm in this study. For the experiments, a built-in rotating system was used, and all data were compressively sampled to obtain compressed data. The optimal signal features were then selected without the signal reconstruction process. For damage classification, we used the Variance Considered Machine, utilizing only the compressed data. The experimental results show that the proposed compressive sensing method could effectively improve the data processing speed and the accuracy of condition monitoring of rotating systems.

IoT와 기계학습을 이용한 스마트 환풍기 제어 시스템 구현 (Implementation of Smart Ventilation Control System using IoT and Machine Learning)

  • 이희은;최진구
    • 한국인터넷방송통신학회논문지
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    • 제20권2호
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    • pp.283-287
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    • 2020
  • 본 논문에서는 스마트폰 앱을 통하여 환풍기의 현재 상태 모니터링, on/off 기능 등 IoT를 지원하는 제어 시스템을 구현하였다. 기계학습(Machine Learning) 알고리즘 종류 중 하나인 지도학습에 포함되는 선형회귀(Linear Regression)를 적용하여 자율적으로 가정의 실내 온도, 습도의 데이터를 수집하여 상태를 진단하고 운전하면서 에너지를 최대한 효율적으로 사용하면서 사용자의 요구를 충족하도록 하였다. 구현한 시스템에서는 수동제어보다 같은 습도가 되는 데 필요한 환풍기의 작동 시간이 더 적다는 것으로 더 좋은 에너지 효율을 확인할 수 있었다. 이로 인해 사용자들은 기존의 환풍기보다 더욱 편리하고 효율적으로 사용할 수 있을 것으로 기대된다.

Machine-to-Machine (M2M) Communications in Vehicular Networks

  • Booysen, M.J.;Gilmore, J.S.;Zeadally, S.;Rooyen, G.J. Van
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제6권2호
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    • pp.529-546
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    • 2012
  • To address the need for autonomous control of remote and distributed mobile systems, Machine-to-Machine (M2M) communications are rapidly gaining attention from both academia and industry. M2M communications have recently been deployed in smart grid, home networking, health care, and vehicular networking environments. This paper focuses on M2M communications in the vehicular networking context and investigates areas where M2M principles can improve vehicular networking. Since connected vehicles are essentially a network of machines that are communicating, preferably autonomously, vehicular networks can benefit a lot from M2M communications support. The M2M paradigm enhances vehicular networking by supporting large-scale deployment of devices, cross-platform networking, autonomous monitoring and control, visualization of the system and measurements, and security. We also present some of the challenges that still need to be addressed to fully enable M2M support in the vehicular networking environment. Of these, component standardization and data security management are considered to be the most significant challenges.

An Availability of Low Cost Sensors for Machine Fault Diagnosis

  • SON, JONG-DUK
    • 한국소음진동공학회:학술대회논문집
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    • 한국소음진동공학회 2012년도 추계학술대회 논문집
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    • pp.394-399
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    • 2012
  • 최근 MEMS 센서는 기계상태감시에 있어서 전력소모, 크기, 비용, 이동성, 응용 등에 있어서 각광을 받고 있다. 특히, MEMS 센서는 스마트센서와 통합가능하고, 대량생산이 가능하여 가격이 저렴하다는 장점이 있다. 이와 관련한 기계상태감시를 위한 많은 실험적 연구가 수행되고 있다. 이 논문은 MEMS 센서들을 3 가지 인공지능 분류기 성능평가를 위한 비교연구에 대해 설명하고 있다. 회전기계에 MEMS 가속도와 전류센서들을 부착하여 데이터를 취득했고, 특징추출과 파라미터 최적화를 위해 Cross validation 기법을 사용하였다. MEMS 센서를 이용한 결함분류기 적용은 적합하다고 판단된다.

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웨이블렛변환과 서포트벡터머신을 이용한 저대비·불균일·무특징 표면 결함 분류에 관한 연구 (A Study on the Defect Classification of Low-contrast·Uneven·Featureless Surface Using Wavelet Transform and Support Vector Machine)

  • 김성주;김경범
    • 반도체디스플레이기술학회지
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    • 제19권3호
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    • pp.1-6
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    • 2020
  • In this paper, a method for improving the defect classification performance in steel plate surface has been studied, based on DWT(discrete wavelet transform) and SVM(support vector machine). Surface images of the steel plate have low contrast, uneven, and featureless, so that the contrast between defect and defect-free regions is not discriminated. These characteristics make it difficult to extract the feature of the surface defect image. In order to improve the characteristics of these images, a synthetic images based on discrete wavelet transform are modeled. Using the synthetic images, edge-based features are extracted and also geometrical features are computed. SVM was configured in order to classify defect images using extracted features. As results of the experiment, the support vector machine based classifier showed good classification performance of 94.3%. The proposed classifier is expected to contribute to the key element of inspection process in smart factory.