• 제목/요약/키워드: Prediction of temperature and humidity

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원전 콘크리트 구조물의 중성화 진행 예측 기법에 관한 연구 (A Study on the Prediction Method of Carbonation Process for Concrete Structures of Nuclear Power Plant)

  • 고경택;김도겸;김성욱;조명석;송영철
    • 한국구조물진단유지관리공학회 논문집
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    • 제6권1호
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    • pp.149-158
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    • 2002
  • The carbonation process is affected by both the concrete material properties such as W/C ratio, types of cement and aggregates, admixture characteristics and the environmental factors such as $CO_2$ concentration, temperature, humidity. Based on results of preliminary study on carbonation, this study is to develop a carbonation prediction model by taking account of $CO_2$ concentration, temperature, humidity ad W/C ratio among major factor affecting the carbonation process. And to constitute a model formula which correspond to the mix design of the nuclear power plant, test coefficient that correspond to the design of the nuclear power plant is obtained based on the results of accelerated carbonation test. Also a field coefficient which is obtained based on results of the field examination is included to improve the conformity of the actual structures of nuclear power plant.

위치기반(LBS) 쇠퇴지역 재난재해 위험성 예측 시스템 구축 (Establishment of location-base service(LBS) disaster risk prediction system in deteriorated areas)

  • 변성준;조용한;최상근;조봉래;이건원;민병학
    • 한국산학기술학회논문지
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    • 제21권11호
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    • pp.570-576
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    • 2020
  • 본 논문에서는 비콘과 스마트폰 GPS(Global Positioning System) 수신기를 이용하여 위치기반 쇠퇴지역 재난재해 위험성 예측 시스템을 구축하였다. 비콘은 주로 실내에 설치되어 실내의 삼각측위를 이용한 이용자 위치 파악에 사용되었으나 실외에 설치되어 위험지역 등록위치 및 온습도 정보 수집에 활용하여 기존 연구들과 차별성이 있다. 또한, 실외에 설치되기 때문에 비콘 자체의 방수, 방습, 방진 기능이 필요하며 온습도 비콘의 경우 센서가 외부에 노출되어야 하기 때문에 별도의 컨테이너로 방수 기능을 보완하였다. 이러한 기능을 바탕으로 쇠퇴·취약 지역을 실시간으로 정보를 파악하고, 온도/습도 정보를 수집한다. 또한, 해당 지역의 날씨 및 미세먼지 정보를 제공하는 시스템을 제안한다. 비콘과 스마트폰 GPS 수신기를 통해 사용자 위치 데이터가 습득되며, 사용자가 쇠퇴·취약 지역을 전송할 시 데이터를 구축하여 위험지역을 확인할 수 있다. 또한, 미시공간의 온도/습도 데이터를 수집하고 이를 활용해 기후변화에 대응할 수 있는 데이터를 구축할 수 있다. 데이터를 활용하여 미시공간에서의 쇠퇴지역을 구체적으로 파악할 수 있으며, 축적되는 데이터를 통하여 다양한 분석이 가능하다.

온도와 습도의 변화에 따른 콘크리트 내부의 열, 수분 분포 예측 (Prediction of Heat and Water Distribution in Concrete due to Changes in Temperature and Humidity)

  • 박동천;이준해
    • 한국건축시공학회:학술대회논문집
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    • 한국건축시공학회 2020년도 봄 학술논문 발표대회
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    • pp.31-32
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    • 2020
  • Concrete changes its internal moisture distribution depending on the external environment, and changes in the condition of the material's interior over time affect the performance of the concrete. These effects are closely related to the long-term behavior and durability of concrete, and the degree of deterioration varies from climate to climate in each region. In this study, we use actual climate data from each region with distinct climates. A multi-physical analysis based on the method was conducted to predict the difference and degree of deterioration rate by climate.

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A Comparative Study Between Linear Regression and Support Vector Regression Model Based on Environmental Factors of a Smart Bee Farm

  • Rahman, A. B. M. Salman;Lee, MyeongBae;Venkatesan, Saravanakumar;Lim, JongHyun;Shin, ChangSun
    • 스마트미디어저널
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    • 제11권5호
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    • pp.38-47
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    • 2022
  • Honey is one of the most significant ingredients in conventional food production in different regions of the world. Honey is commonly used as an ingredient in ethnic food. Beekeeping is performed in various locations as part of the local food culture and an occupation related to pollinator production. It is important to conduct beekeeping so that it generates food culture and helps regulate the regional environment in an integrated manner in preserving and improving local food culture. This study analyzes different types of environmental factors of a smart bee farm. The major goal of this study is to determine the best prediction model between the linear regression model (LM) and the support vector regression model (SVR) based on the environmental factors of a smart bee farm. The performance of prediction models is measured by R2 value, root mean squared error (RMSE), and mean absolute error (MAE). From all analysis reports, the best prediction model is the support vector regression model (SVR) with a low coefficient of variation, and the R2 values for Farm inside temperature, bee box inside temperature, and Farm inside humidity are 0.97, 0.96, and 0.44.

대기-해양 결합 자료동화가 서해 연안지역의 기상예측에 미치는 영향 연구 (Effect of a Coupled Atmosphere-ocean Data Assimilation on Meteorological Predictions in the West Coastal Region of Korea)

  • 이성빈;송상근;문수환
    • 한국환경과학회지
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    • 제31권7호
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    • pp.617-635
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    • 2022
  • The effect of coupled data assimilation (DA) on the meteorological prediction in the west coastal region of Korea was evaluated using a coupled atmosphere-ocean model (e.g., COAWST) in the spring (March 17-26) of 2019. We performed two sets of simulation experiments: (1) with the coupled DA (i.e., COAWST_DA) and (2) without the coupled DA (i.e., COAWST_BASE). Overall, compared with the COAWST_BASE simulation, the COAWST_DA simulation showed good agreement in the spatial and temporal variations of meteorological variables (sea surface temperature, air temperature, wind speed, and relative humidity) with those of the observations. In particular, the effect of the coupled DA on wind speed was greatly improved. This might be primarily due to the prediction improvement of the sea surface temperature resulting from the coupled DA in the study area. In addition, the improvement of meteorological prediction in COAWST_DA simulation was also confirmed by the comparative analysis between SST and other meteorological variables (sea surface wind speed and pressure variation).

저장상대습도와 온도에 따른 통고추의 변색 및 흡습특성 (Color Changes and Sorption Characteristics of Whole Red Pepper with Relative Humidity and Temperature)

  • 김현구;박무현;신동화;민병용
    • 한국식품과학회지
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    • 제16권4호
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    • pp.437-442
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    • 1984
  • 건조통고추를 상대습도 11%에서 84%까지 7단계의 상대습도별로 $5^{\circ}C$, $15^{\circ}C$, $25^{\circ}C$, 및 $35^{\circ}C$ 온도구에 저장하면서 통고추의 변색 및 흡습특성을 조사하였다. RH 67% 이상에서는 갈변현상이, RH 84% 이상에서는 곰팡이가 발생하였고 RH 32% 이하에서는 탈색현상이 나타났다. 따라서 50% 내외의 RH 조건이 저장에 적합하였으며 탈색도 기준에서 저장 안전 수분함량은 $15.\;65{\sim}\;19.\;62%$ (DB) 였으며 이들 건조통고추의 monolayer value는 $5^{\circ}C$에서 9.23% (DB), $15^{\circ}C$에서 8.42% (DB), 25에서 7. 96% (DB) 및 $35^{\circ}C$에서 7. 52% (DB) 로서 온도가 낮을수록 monolayer value 는 다소 높아지는 경향을 보였으며 상대습도에 따라서 평형수분함량을 예측할 수 있는 3차 회귀방정식을 도출하였다.

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복사전달과정에서 지형효과에 따른 기상수치모델의 민감도 분석 (Sensitivity Analysis of Numerical Weather Prediction Model with Topographic Effect in the Radiative Transfer Process)

  • 지준범;민재식;장민;김부요;조일성;이규태
    • 대기
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    • 제27권4호
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    • pp.385-398
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    • 2017
  • Numerical weather prediction experiments were carried out by applying topographic effects to reduce or enhance the solar radiation by terrain. In this study, x and ${\kappa}({\phi}_o,\;{\theta}_o)$ are precalculated for topographic effect on high resolution numerical weather prediction (NWP) with 1 km spatial resolution, and meteorological variables are analyzed through the numerical experiments. For the numerical simulations, cases were selected in winter (CASE 1) and summer (CASE 2). In the CASE 2, topographic effect was observed on the southward surface to enhance the solar energy reaching the surface, and enhance surface temperature and temperature at 2 m. Especially, the surface temperature is changed sensitively due to the change of the solar energy on the surface, but the change of the precipitation is difficult to match of topographic effect. As a result of the verification using Korea Meteorological Administration (KMA) Automated Weather System (AWS) data on Seoul metropolitan area, the topographic effect is very weak in the winter case. In the CASE 1, the improvement of accuracy was numerically confirmed by decreasing the bias and RMSE (Root mean square error) of temperature at 2 m, wind speed at 10 m and relative humidity. However, the accuracy of rainfall prediction (Threat score (TS), BIAS, equitable threat score (ETS)) with topographic effect is decreased compared to without topographic effect. It is analyzed that the topographic effect improves the solar radiation on surface and affect the enhancements of surface temperature, 2 meter temperature, wind speed, and PBL height.

UM 자료를 이용한 노면온도예측모델(UM-Road)의 개발 (Development of Road Surface Temperature Prediction Model using the Unified Model output (UM-Road))

  • 박문수;주승진;손영태
    • 대기
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    • 제24권4호
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    • pp.471-479
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    • 2014
  • A road surface temperature prediction model (UM-Road) using input data of the Unified Model (UM) output and road physical properties is developed and verified with the use of the observed data at road weather information system. The UM outputs of air temperature, relative humidity, wind speed, downward shortwave radiation, net longwave radiation, precipitation and the road properties such as slope angles, albedo, thermal conductivity, heat capacity at maximum 7 depth are used. The net radiation is computed by a surface radiation energy balance, the ground heat flux at surface is estimated by a surface energy balance based on the Monin-Obukhov similarity, the ground heat transfer process is applied to predict the road surface temperature. If the observed road surface temperature exists, the simulated road surface temperature is corrected by mean bias during the last 24 hours. The developed UM-Road is verified using the observed data at road side for the period from 21 to 31 March 2013. It is found that the UM-Road simulates the diurnal trend and peak values of road surface temperature very well and the 50% (90%) of temperature difference lies within ${\pm}1.5^{\circ}C$ (${\pm}2.5^{\circ}C$) except for precipitation case.

MLR & ANN approaches for prediction of compressive strength of alkali activated EAFS

  • Ozturk, Murat;Cansiz, Omer F.;Sevim, Umur K.;Bankir, Muzeyyen Balcikanli
    • Computers and Concrete
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    • 제21권5호
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    • pp.559-567
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    • 2018
  • In this study alkali activation of Electric Arc Furnace Slag (EAFS) is studied with a comprehensive test program. Three different silicate moduli (1-1,5-2), three different sodium concentrations (4%-6%-8%) for each silicate module, two different curing conditions (45%-98% relative humidity) for each sodium concentration, two different curing temperatures ($400^{\circ}C-800^{\circ}C$) for each relative humidity condition and two different curing time (6h-12h) for each curing temperature variables are selected and their effects on compressive strength was evaluated then regression equations using multiple linear regressions methods are fitted. And then to select the best regression models confirm with using the variables, the regression models compared between itself. An Artificial Neural Network (ANN) models that use silicate moduli, sodium concentration, relative humidity, curing temperature and curing time variables, are formed. After the investigation of these ANN models' results, ANN and multiple linear regressions based models are compared with each other. After that, an explicit formula is developed with values of the ANN model. As a result of this study, the fluctuations of data set of the compressive strength were very well reflected using both of the methods, multiple linear regression with quadratic terms and ANN.

건물 냉방시스템의 예측제어를 위한 인공신경망 모델 개발 (Development of an Artificial Neural Network Model for a Predictive Control of Cooling Systems)

  • 강인성;양영권;이효은;박진철;문진우
    • KIEAE Journal
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    • 제17권5호
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    • pp.69-76
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    • 2017
  • Purpose: This study aimed at developing an Artificial Neural Network (ANN) model for predicting the amount of cooling energy consumption of the variable refrigerant flow (VRF) cooling system by the different set-points of the control variables, such as supply air temperature of air handling unit (AHU), condenser fluid temperature, condenser fluid pressure, and refrigerant evaporation temperature. Applying the predicted results for the different set-points, the control algorithm, which embedded the ANN model, will determine the most energy efficient control strategy. Method: The ANN model was developed and tested its prediction accuracy by using matrix laboratory (MATLAB) and its neural network toolbox. The field data sets were collected for the model training and performance evaluation. For completing the prediction model, three major steps were conducted - i) initial model development including input variable selection, ii) model optimization, and iii) performance evaluation. Result: Eight meaningful input variables were selected in the initial model development such as outdoor temperature, outdoor humidity, indoor temperature, cooling load of the previous cycle, supply air temperature of AHU, condenser fluid temperature, condenser fluid pressure, and refrigerant evaporation temperature. The initial model was optimized to have 2 hidden layers with 15 hidden neurons each, 0.3 learning rate, and 0.3 momentum. The optimized model proved its prediction accuracy with stable prediction results.