• 제목/요약/키워드: source address learning

검색결과 27건 처리시간 0.027초

Enhancing the Reliability of Wi-Fi Network Using Evil Twin AP Detection Method Based on Machine Learning

  • Seo, Jeonghoon;Cho, Chaeho;Won, Yoojae
    • Journal of Information Processing Systems
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    • 제16권3호
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    • pp.541-556
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    • 2020
  • Wireless networks have become integral to society as they provide mobility and scalability advantages. However, their disadvantage is that they cannot control the media, which makes them vulnerable to various types of attacks. One example of such attacks is the evil twin access point (AP) attack, in which an authorized AP is impersonated by mimicking its service set identifier (SSID) and media access control (MAC) address. Evil twin APs are a major source of deception in wireless networks, facilitating message forgery and eavesdropping. Hence, it is necessary to detect them rapidly. To this end, numerous methods using clock skew have been proposed for evil twin AP detection. However, clock skew is difficult to calculate precisely because wireless networks are vulnerable to noise. This paper proposes an evil twin AP detection method that uses a multiple-feature-based machine learning classification algorithm. The features used in the proposed method are clock skew, channel, received signal strength, and duration. The results of experiments conducted indicate that the proposed method has an evil twin AP detection accuracy of 100% using the random forest algorithm.

Utilization of Artificial Intelligence Techniques for Photovoltaic Applications

  • Juan, Ronnie O. Serfa;Kim, Jeha
    • Current Photovoltaic Research
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    • 제7권4호
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    • pp.85-96
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    • 2019
  • Renewable energy is emerging as a reliable alternative source of energy, it is much safer, cleaner than conventional sources and has contributed significantly in this sector. However, there are still some challenges that needed to address this evolving technology. Artificial Intelligence (A. I.) can assess the past, optimize the present, and forecast the future. Therefore, A. I. will resolve most of these problems. Artificial intelligence is complex in nature, but it reduces error and aims to reach a greater degree of precision which make renewables smarter. This paper provides an overview of frequently used A. I. methods in solar energy applications. A sample algorithm is also provided for literature purposes and knowledge transfer.

Ethernet Ring Protection Using Filtering Database Flip Scheme For Minimum Capacity Requirement

  • Rhee, June-Koo Kevin;Im, Jin-Sung;Ryoo, Jeong-Dong
    • ETRI Journal
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    • 제30권6호
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    • pp.874-876
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    • 2008
  • Ethernet ring protection is a new technology introduced in ITU-T Recommendation G.8032, which utilizes the generic Ethernet MAC functions. We introduce an alternative enhanced protection switching scheme to suppress penalty in the switching transient, in which the Ethernet MAC filtering database (FDB) is actively and directly modified by information disseminated from the nodes adjacent to failure. The modified FDB at all nodes are guaranteed to be consistent to form a complete new ring network topology immediately. This scheme can reduce the capacity requirement of the G.8032 by several times. This proposed scheme can be also applied in IP protection rings.

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Analysis of Impact Between Data Analysis Performance and Database

  • Kyoungju Min;Jeongyun Cho;Manho Jung;Hyangbae Lee
    • Journal of information and communication convergence engineering
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    • 제21권3호
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    • pp.244-251
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    • 2023
  • Engineering or humanities data are stored in databases and are often used for search services. While the latest deep-learning technologies, such like BART and BERT, are utilized for data analysis, humanities data still rely on traditional databases. Representative analysis methods include n-gram and lexical statistical extraction. However, when using a database, performance limitation is often imposed on the result calculations. This study presents an experimental process using MariaDB on a PC, which is easily accessible in a laboratory, to analyze the impact of the database on data analysis performance. The findings highlight the fact that the database becomes a bottleneck when analyzing large-scale text data, particularly over hundreds of thousands of records. To address this issue, a method was proposed to provide real-time humanities data analysis web services by leveraging the open source database, with a focus on the Seungjeongwon-Ilgy, one of the largest datasets in the humanities fields.

UAV와 딥러닝을 활용한 야적퇴비 탐지 및 관리등급 산정 (Detection and Grading of Compost Heap Using UAV and Deep Learning)

  • 박미소;김흥민;김영민;박수호;김탁영;장선웅
    • 대한원격탐사학회지
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    • 제40권1호
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    • pp.33-43
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    • 2024
  • 본 연구는 비점오염원 중 하나인 야적퇴비의 효율적인 탐지를 위해 You Only Look Once (YOLO)v8 모델과 DeepLabv3+ 모델의 적용 가능성을 평가하였다. 무인항공기(Unmanned Aerial Vehicle, UAV)를 이용하여 수집된 고해상도 영상을 바탕으로, 두 모델의 정량적 및 정성적 성능을 비교 분석하였다. 정량적 평가에서 YOLOv8 모델은 다양한 지표에서 우수한 성능을 나타내며, 특히 야적퇴비의 덮개 유무를 정확하게 식별할 수 있는 능력을 보였다. 이러한 결과는 YOLOv8 모델이 야적퇴비의 정밀한 탐지 및 분류에 효과적임을 시사하며, 이를 바탕으로 야적퇴비의 관리 등급을 산정하고 비점오염원 관리에 기여할 수 있는 새로운 접근 방법을 제공한다. 본 연구는 UAV와 딥러닝 기술을 활용한 야적퇴비 탐지 및 관리가 기존 현장 조사 방식의 한계를 극복하며 정확하고 효율적인 비점오염원 관리 전략 수립 및 수계환경 보호에 기여할 것으로 기대된다.

태양 에너지 수집형 IoT 엣지 컴퓨팅 환경에서 효율적인 오디오 딥러닝을 위한 에너지 적응형 데이터 전처리 기법 (Energy-Aware Data-Preprocessing Scheme for Efficient Audio Deep Learning in Solar-Powered IoT Edge Computing Environments)

  • 유연태;노동건
    • 대한임베디드공학회논문지
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    • 제18권4호
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    • pp.159-164
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    • 2023
  • Solar energy harvesting IoT devices prioritize maximizing the utilization of collected energy due to the periodic recharging nature of solar energy, rather than minimizing energy consumption. Meanwhile, research on edge AI, which performs machine learning near the data source instead of the cloud, is actively conducted for reasons such as data confidentiality and privacy, response time, and cost. One such research area involves performing various audio AI applications using audio data collected from multiple IoT devices in an IoT edge computing environment. However, in most studies, IoT devices only perform sensing data transmission to the edge server, and all processes, including data preprocessing, are performed on the edge server. In this case, it not only leads to overload issues on the edge server but also causes network congestion by transmitting unnecessary data for learning. On the other way, if data preprocessing is delegated to each IoT device to address this issue, it leads to another problem of increased blackout time due to energy shortages in the devices. In this paper, we aim to alleviate the problem of increased blackout time in devices while mitigating issues in server-centric edge AI environments by determining where the data preprocessed based on the energy state of each IoT device. In the proposed method, IoT devices only perform the preprocessing process, which includes sound discrimination and noise removal, and transmit to the server if there is more energy available than the energy threshold required for the basic operation of the device.

딥 러닝 기반의 이기종 무선 신호 구분을 위한 데이터 수집 효율화 기법 (An Efficient Data Collection Method for Deep Learning-based Wireless Signal Identification in Unlicensed Spectrum)

  • 최재혁
    • 전기전자학회논문지
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    • 제26권1호
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    • pp.62-66
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    • 2022
  • 최근 데이터 기반의 딥러닝 기술을 적용하여 비면허 대역의 다양한 통신 신호를 분류하는 연구가 활발히 수행되고 있다. 하지만, 복잡한 신경망 모델 사용을 기반으로 이뤄진 이러한 접근법은 높은 연산 능력을 필요로 하게 되어, 자원 제약적인 무선 인터페이스 및 사물인터넷(Internet of Things) 장비에서는 사용이 제약된다. 본 연구에서는 비면허 대역의 무선 이기종 기술을 인지하기 위한 데이터 기반의 접근 방법을 살펴보고, 신호의 특징 추출 및 데이터화의 효율화 문제를 다룬다. 구체적으로, 비면허 대역의 다른 종류의 무선 통신 기술을 구분하기 위해 수신 신호 강도 측정을 기반으로 한 시계열 데이터를 이용해 합성곱 신경망(Convolutional Neural Network, CNN) 모델을 학습시켜 신호를 분류하는 방법을 살펴본다. 이 과정에서 동일한 구조의 신경망 모델의 경량화를 위한 효율적 신호의 시계열 데이터 정보 수집시 주파수 대역의 특징을 함께 특징화하는 방법을 제안하고, 그 효과를 평가한다. Bluetooth 호환의 Ubertooth 장비를 이용한 실측 기반의 실험 결과는 제안된 샘플링 기법이 동일한 신경망에 대해서 10% 수준의 샘플링 데이터 이용만으로도 동일한 정확도를 유지함을 보여준다.

The Sequence Labeling Approach for Text Alignment of Plagiarism Detection

  • Kong, Leilei;Han, Zhongyuan;Qi, Haoliang
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제13권9호
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    • pp.4814-4832
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    • 2019
  • Plagiarism detection is increasingly exploiting text alignment. Text alignment involves extracting the plagiarism passages in a pair of the suspicious document and its source document. The heuristics have achieved excellent performance in text alignment. However, the further improvements of the heuristic methods mainly depends more on the experiences of experts, which makes the heuristics lack of the abilities for continuous improvements. To address this problem, machine learning maybe a proper way. Considering the position relations and the context of text segments pairs, we formalize the text alignment task as a problem of sequence labeling, improving the current methods at the model level. Especially, this paper proposes to use the probabilistic graphical model to tag the observed sequence of pairs of text segments. Hence we present the sequence labeling approach for text alignment in plagiarism detection based on Conditional Random Fields. The proposed approach is evaluated on the PAN@CLEF 2012 artificial high obfuscation plagiarism corpus and the simulated paraphrase plagiarism corpus, and compared with the methods achieved the best performance in PAN@CLEF 2012, 2013 and 2014. Experimental results demonstrate that the proposed approach significantly outperforms the state of the art methods.

경량화 MobileNet을 활용한 축산 데이터 음성 분석 (Analysis of Livestock Vocal Data using Lightweight MobileNet)

  • 정세연;김상철
    • 스마트미디어저널
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    • 제13권6호
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    • pp.16-23
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    • 2024
  • 돼지는 꿀꿀거림, 기침, 비명과 같은 다양한 소리로 환경에 대한 반응과 건강 상태를 나타낸다. 돼지 음성의 중요성으로 최근 들어 돼지의 음성은 축산업 종사자에게 매우 중요한 데이터로 활발하게 연구되고 있다. 이를 위해 돼지의 음성 패턴을 분석하여 농장 소음 속에서 돼지의 음성을 구분하고 음성과 기침 소리를 구분하는 경량화 MobileNet 모델을 제안한다. 이 MobileNet은 돈사 내에서 다양한 배경 잡음, 기침 소리 등의 다양한 소리 속에서 돼지의 음성만을 정밀하게 구분하고 분석할 수 있었다. 테스트 결과, 이 모델은 98.2%의 높은 정확도를 보여주었다. 이러한 결과를 바탕으로 향후 연구에서는 돼지의 감정 분석, 스트레스 파악 등의 문제 해결을 기대한다.

Comparative Study of Ship Image Classification using Feedforward Neural Network and Convolutional Neural Network

  • Dae-Ki Kang
    • International Journal of Internet, Broadcasting and Communication
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    • 제16권3호
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    • pp.221-227
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    • 2024
  • In autonomous navigation systems, the need for fast and accurate image processing using deep learning and advanced sensor technologies is paramount. These systems rely heavily on the ability to process and interpret visual data swiftly and precisely to ensure safe and efficient navigation. Despite the critical importance of such capabilities, there has been a noticeable lack of research specifically focused on ship image classification for maritime applications. This gap highlights the necessity for more in-depth studies in this domain. In this paper, we aim to address this gap by presenting a comprehensive comparative study of ship image classification using two distinct neural network models: the Feedforward Neural Network (FNN) and the Convolutional Neural Network (CNN). Our study involves the application of both models to the task of classifying ship images, utilizing a dataset specifically prepared for this purpose. Through our analysis, we found that the Convolutional Neural Network demonstrates significantly more effective performance in accurately classifying ship images compared to the Feedforward Neural Network. The findings from this research are significant as they can contribute to the advancement of core source technologies for maritime autonomous navigation systems. By leveraging the superior image classification capabilities of convolutional neural networks, we can enhance the accuracy and reliability of these systems. This improvement is crucial for the development of more efficient and safer autonomous maritime operations, ultimately contributing to the broader field of autonomous transportation technology.