• Title/Summary/Keyword: black-box

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A Study on Instructional Methods based on Computational Thinking Using Modular Data Analysis Tools for AI Education in Elementary School (모듈형 데이터 분석 도구를 활용한 컴퓨팅사고력 기반의 초등학교 인공지능교육 교수학습방법 연구)

  • Shin, Seungki
    • Journal of The Korean Association of Information Education
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    • v.25 no.6
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    • pp.917-925
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    • 2021
  • This study aims to specify a constructivism-based instructional method using a modular data analysis tool. The value and meaning of a modular data analysis tool have been examined to be applied in the national curriculum for artificial intelligence education and the process of cultivating problem-solving ability based on computational thinking. The modular data analysis tool visually expresses the cognitive thinking process that forms the schema in equilibrating through assimilation and adjustment. Artificial intelligence education has features that embody abstract knowledge and structure the data analysis module through the represented schema as a BlackBox implemented as an algorithm. Therefore, the value of the modular data analysis tool could be examined because it has the advantage of connecting the conceptual and implicit schema.

A Study on the Change of Quality in a Residential Sector of Single Person Households in Seoul during the COVID-19: Analyze Variable Importance and Causality with Artificial Neural Networks and Logistic Regression Analysis (서울시 1인 가구의 코로나 19 전후 주거의 질 변화 연구: 인공신 경망과 로지스틱 회귀모형을 활용한 변수 중요도 및 인과관계 분석)

  • Jaebin, Lim;Kiseong, Jeong
    • Land and Housing Review
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    • v.14 no.1
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    • pp.67-82
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    • 2023
  • Using the Artificial Neural Network model and Binary Logistic Regression model, this study investigates influence factors on the quality of life in terms of housing environment during the COVID-19 in Seoul. The results show that the lower the satisfaction level of housing policy, the lower the quality of life in the employment field and the lower the quality of residential field. On the other hand, permanent workers and self-employed respondents have experienced improvement in residential quality during the pandemic. A limitation of this study is associated with disentangling the causal relationship using the 'black box' characteristics of ANN method.

Data-Based Model Approach to Predict Internal Air Temperature in a Mechanically-Ventilated Broiler House (데이터 기반 모델에 의한 강제환기식 육계사 내 기온 변화 예측)

  • Choi, Lak-yeong;Chae, Yeonghyun;Lee, Se-yeon;Park, Jinseon;Hong, Se-woon
    • Journal of The Korean Society of Agricultural Engineers
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    • v.64 no.5
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    • pp.27-39
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    • 2022
  • The smart farm is recognized as a solution for future farmers having positive effects on the sustainability of the poultry industry. Intelligent microclimate control can be a key technology for broiler production which is extremely vulnerable to abnormal indoor air temperatures. Furthermore, better control of indoor microclimate can be achieved by accurate prediction of indoor air temperature. This study developed predictive models for internal air temperature in a mechanically-ventilated broiler house based on the data measured during three rearing periods, which were different in seasonal climate and ventilation operation. Three machine learning models and a mechanistic model based on thermal energy balance were used for the prediction. The results indicated that the all models gave good predictions for 1-minute future air temperature showing the coefficient of determination greater than 0.99 and the root-mean-square-error smaller than 0.306℃. However, for 1-hour future air temperature, only the mechanistic model showed good accuracy with the coefficient of determination of 0.934 and the root-mean-square-error of 0.841℃. Since the mechanistic model was based on the mathematical descriptions of the heat transfer processes that occurred in the broiler house, it showed better prediction performances compared to the black-box machine learning models. Therefore, it was proven to be useful for intelligent microclimate control which would be developed in future studies.

Analysis System for Public Interest Report Video of Traffic Law Violation based on Deep Learning Algorithms (딥러닝 알고리즘 기반 교통법규 위반 공익신고 영상 분석 시스템)

  • Min-Seong Choi;Mi-Kyeong Moon
    • The Journal of the Korea institute of electronic communication sciences
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    • v.18 no.1
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    • pp.63-70
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    • 2023
  • Due to the spread of high-definition black boxes and the introduction of mobile applications such as 'Smart Citizens Report' and 'Safety Report', the number of public interest reports for violations of Traffic Law has increased rapidly, resulting in shortage of police personnel to handle them. In this paper, we describe the development of a system that can automatically detect lane violations which account for the largest proportion of public interest reporting videos for violations of traffic laws, using deep learning algorithms. In this study, a method for recognizing a vehicle and a solid line object using a YOLO model and a Lanenet model, a method for tracking an object individually using a deep sort algorithm, and a method for detecting lane change violations by recognizing the overlapping range of a vehicle object's bounding box and a solid line object are described. Using this system, it is expected that the shortage of police personnel in charge will be resolved.

Physics informed neural networks for surrogate modeling of accidental scenarios in nuclear power plants

  • Federico Antonello;Jacopo Buongiorno;Enrico Zio
    • Nuclear Engineering and Technology
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    • v.55 no.9
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    • pp.3409-3416
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    • 2023
  • Licensing the next-generation of nuclear reactor designs requires extensive use of Modeling and Simulation (M&S) to investigate system response to many operational conditions, identify possible accidental scenarios and predict their evolution to undesirable consequences that are to be prevented or mitigated via the deployment of adequate safety barriers. Deep Learning (DL) and Artificial Intelligence (AI) can support M&S computationally by providing surrogates of the complex multi-physics high-fidelity models used for design. However, DL and AI are, generally, low-fidelity 'black-box' models that do not assure any structure based on physical laws and constraints, and may, thus, lack interpretability and accuracy of the results. This poses limitations on their credibility and doubts about their adoption for the safety assessment and licensing of novel reactor designs. In this regard, Physics Informed Neural Networks (PINNs) are receiving growing attention for their ability to integrate fundamental physics laws and domain knowledge in the neural networks, thus assuring credible generalization capabilities and credible predictions. This paper presents the use of PINNs as surrogate models for accidental scenarios simulation in Nuclear Power Plants (NPPs). A case study of a Loss of Heat Sink (LOHS) accidental scenario in a Nuclear Battery (NB), a unique class of transportable, plug-and-play microreactors, is considered. A PINN is developed and compared with a Deep Neural Network (DNN). The results show the advantages of PINNs in providing accurate solutions, avoiding overfitting, underfitting and intrinsically ensuring physics-consistent results.

Development of an App-Based Bicycle Riding System (앱 기반 자전거 라이딩 시스템 개발)

  • Dong-Jin Shin;Seung-Yeon Hwang;Jae-Kon Oh;Jeong-Joon Kim
    • The Journal of the Institute of Internet, Broadcasting and Communication
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    • v.23 no.3
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    • pp.113-118
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    • 2023
  • Recently, as more and more cyclists ride bicycles for their health and more people commute by bicycle, the number of cyclists has increased. However, as the number of users increases, many accidents occur, and the handling of bicycle accidents is unstable. It is inadequate to prepare for accidents in other ways except for safety equipment. Therefore, there is a need for a safe and convenient way for modern adults to ride. Unlike other apps, in this study, by adding a safety function, you can shoot a black box while riding, and a function to inform you that it is an accident-prone area is implemented. In addition, a function that can detect an accident using the Android built-in sensor and automatically make emergency contact is added. Cyclists can secure safety and convenience in one app without the need to use additional apps. Furthermore it develops an app system that allows you to talk about riding and share your route through the Riding Community bulletin board.

Quality Control Plan of Water Level in Agricultural Reservoirs using a Deep-Learning Based LSTM Model (딥러닝 기반 LSTM 모형을 이용한 농업용 저수지 수위자료 품질관리 방안)

  • Yang, Mi-Hye;Nam, Won-Ho;Shin, An-Kook;Kang, Mun-Sung;Kim, Taegon
    • Proceedings of the Korea Water Resources Association Conference
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    • 2020.06a
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    • pp.128-128
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    • 2020
  • 최근 농업환경의 변화와 기후변화에 대응하기 위해 농업용수 관리 정보화 및 과학화의 필요성이 증대되어 실시간으로 저수지 저수량과 농업용수 공급량을 파악하기 위해 자동 수위계측시설이 도입되었다. 농림축산식품부의 저수지 자동수위측정기 설치 및 운영지침에 따라 현재 농어촌공사 관리 저수지 1,734개소 및 수로부 1,880개소에 자동수위계가 설치되어 있으며, 저수지와 수로에서 10분 간격으로 수위자료가 생성되고 있다. 농업용 저수지 수문자료의 공인지점은 2016년 6개소에서 2019년 49개소로 증대되고 있으며, 데이터 품질 저하의 최소화 및 신뢰성 있는 수문자료 생성의 필요성이 증가함에 따라 농업용 저수지의 특성을 반영한 저수지 수위 오결측 데이터 보정 방안 및 수문 자료 품질관리 방안이 요구된다. 농업용 저수지의 수위 변화 및 강우-유출 현상은 물리적 모형을 구축하여 기상, 지형 등 영향 인자와 수위(또는 유출)와의 상관관계를 분석하는 것은 무적으로 불가능하였지만, 최근 인공신경망 (Artificial Neural Network, ANN) 등과 같이 black-box 형태의 모형을 이용하여 비선형적인 수문해석이 가능해졌다. 본 연구에서는 빅데이터와 인공신경망을 결합시킨 알고리즘인 딥러닝 (Deep Learning) 기반의 LSTM (Long Short-Term Memory) 모형을 활용하여 농업용 저수지 수위자료를 검토하여 자동계측기에서 발생하는 오류 보정을 위해 품질관리 방안을 제시하고자 한다.

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Analysis of runoff change in the lower Mekong River basin due to climate change using the LSTM model (LSTM 모형을 이용한 메콩강 하류의 미래 유출변화 분석)

  • Lee, Dae Eop;Jung, Sung Ho;Lee, Gi Ha;Kim, Seong Won;Kim, Yeon Su
    • Proceedings of the Korea Water Resources Association Conference
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    • 2020.06a
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    • pp.338-338
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    • 2020
  • 강우-유출 모형에 의한 유출해석은 하천의 기후변화 및 재난대응, 수자원확보, 유역개발 등의 정책수립을 위한 가장 기본적인 과정이다. 이를 위해 다양한 물리적 강우-유출모형이 개발되었으며 많은 연구들에 의해 유용성이 증명되었다. 그러나 메콩강 유역과 같이 물리적 데이터의 양적, 질적 신뢰도가 부족한 지역을 대상으로 하는 경우 모형의 기본적인 불확실성 외에 다양한 기초자료 및 매개변수의 결정 또는 추정에 의한 추가적인 불확실성이 포함된다. 본 연구에서는 물리적 강우-유출모형에 대한 대안으로 데이터 기반의 black-box 모형인 LSTM 모형을 이용하여 메콩강 본류 Kratie지점을 대상으로 강우-유출해석시스템을 구축하였다. 이후 기후변화시나리오를 적용하여 미래유출변화를 모의를 수행하였다. 도출된 결과는 물리적 강우-유출모형인 SWAT 모형의 유출해석결과의 비교를 수행하고 이를 통해 LSTM 모형의 적용성을 판단하였다. 관측유량 및 기온자료를 제외한 모형에서 요구되는 기초자료는 범용 입력자료를 이용하고 미래기간의 예측을 위해 편의보정 된 RCP 4.5 및 8.5 기후변화시나리오가 적용되었다. 두 모형의 Kratie 지점에 대한 미래 유출예측결과는 경향성 분석결과 두 모형 모두 시나리오 별 통계적으로 유의한 수준의 경향은 도출되지 않았으나 RCP 4.5 시나리오에 대비 RCP 8.5 시나리오에서 연평균 유량의 변동성이 크게 나타나는 것으로 분석되는 등 결과의 유사성을 보이고 있는 것으로 분석되었다. 이를 통해 LSTM 모형에 의한 유출예측결과가 단순 시계열 변화에 따른 유출변화 모의에 있어서 SWAT의 결과에 비해 높은 재현성을 보이는 것을 확인하였다. 본 연구와 같이 유출량의 시 계열 변화만을 필요로 하는 경우 적은 데이터만으로 비교적 정확한 결과를 도출하는 LSTM 모형은 매우 효과적으로 사용될 수 있다고 판단된다.

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The Horizon Run 5 Cosmological Hydrodynamical Simulation: Probing Galaxy Formation from Kilo- to Giga-parsec Scales

  • Lee, Jaehyun;Shin, Jihey;Snaith, Owain N.;Kim, Yonghwi;Few, C. Gareth;Devriendt, Julien;Dubois, Yohan;Cox, Leah M.;Hong, Sungwook E.;Kwon, Oh-Kyoung;Park, Chan;Pichon, Christophe;Kim, Juhan;Gibson, Brad K.;Park, Changbom
    • The Bulletin of The Korean Astronomical Society
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    • v.45 no.1
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    • pp.38.2-38.2
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    • 2020
  • Horizon Run 5 (HR5) is a cosmological hydrodynamical simulation which captures the properties of the Universe on a Gpc scale while achieving a resolution of 1 kpc. This enormous dynamic range allows us to simultaneously capture the physics of the cosmic web on very large scales and account for the formation and evolution of dwarf galaxies on much smaller scales. Inside the simulation box. we zoom-in on a high-resolution cuboid region with a volume of 1049 × 114 × 114 Mpc3. The subgrid physics chosen to model galaxy formation includes radiative heating/cooling, reionization, star formation, supernova feedback, chemical evolution tracking the enrichment of oxygen and iron, the growth of supermassive black holes and feedback from active galactic nuclei (AGN) in the form of a dual jet-heating mode. For this simulation we implemented a hybrid MPI-OpenMP version of the RAMSES code, specifically targeted for modern many-core many thread parallel architectures. For the post-processing, we extended the Friends-of-Friend (FoF) algorithm and developed a new galaxy finder to analyse the large outputs of HR5. The simulation successfully reproduces many observations, such as the cosmic star formation history, connectivity of galaxy distribution and stellar mass functions. The simulation also indicates that hydrodynamical effects on small scales impact galaxy clustering up to very large scales near and beyond the baryonic acoustic oscillation (BAO) scale. Hence, caution should be taken when using that scale as a cosmic standard ruler: one needs to carefully understand the corresponding biases. The simulation is expected to be an invaluable asset for the interpretation of upcoming deep surveys of the Universe.

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A Study on the analysis of ship motion using system identification method (시스템 식별법을 이용한 선체운동 해석에 관한 연구)

  • Song, Jaeyoung;Yim, Jeong-Bin
    • Proceedings of the Korean Institute of Navigation and Port Research Conference
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    • 2019.11a
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    • pp.271-271
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    • 2019
  • Estimating ship motion is difficult because it take place in complex environments.. Estimating ship motion is an important factor in ensuring the safety of ship, so accurate estimates are needed. Existing motion-related studies compare the apparent motion of the model acquired and the reference model by experimenting with the ship motion on a particular alignment, making it difficult to intuitively estimate the hull motion. This study introduces the concept of estimating the characteristics of ship motion as a transfer function through pole-zero interpretation and frequency response analysis by applying the method of transfer function of Linear-Time Invariant system. Ship motion analysis model using Linear-Time Invariant system is consist with 1) wave as input signal 2) ship motion as output signal 3) hull defined as black box. This model can be defined by numericalizing the ship motion as a transfer function and is expected to facilitate the characterization of the ship motion through pole-zero analysis and frequency response analysis.

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