• 제목/요약/키워드: Ensembles

검색결과 114건 처리시간 0.022초

발한 Thermal manikin과 국제 표준 7730을 이용한 원자력 발전소 작업복의 열적 쾌적성 판별 (Determining thermal comfort properties of coverall worn in the atomic power plant using a sweating thermal manikin and ISO 7730)

  • 홍성애
    • 대한인간공학회지
    • /
    • 제15권1호
    • /
    • pp.91-103
    • /
    • 1996
  • For determining thermal comfort properties of work suit in an atomic power plant, three different coverall ensembles (PVE, PET/Rayon, PP Nonwoven) were selected and the resistance to dry and evaporative heat transfer were measured for each ensemble by using a sweating thermal manikin. Also, PMV (Predicted Mean Vote) and PPD(Predicted Percentage of Dissatisfied) indices were predicted according to ISO 7730. As a result, ideal environmental conditions in an atomic power plant were suggested to make workers feel thermally comfortable. In addition, ideal intrinsic insulation values of coverall ensembles as a work suit under the present environmental conditions in the at6omic power plant were provided. The information given in this paper can be used to control environmental conditions in the atomic power plant thermally comfortable and to select a proper work suit for providing thermal comfort to the workers.

  • PDF

Improved Upper Bounds on Low Density Parity Check Codes Performance for the Input Binary AWGN Channel

  • Yu Yi;Lee, Moon-Ho
    • 대한전자공학회:학술대회논문집
    • /
    • 대한전자공학회 2002년도 하계종합학술대회 논문집(1)
    • /
    • pp.323-326
    • /
    • 2002
  • In this paper, we study the improved bounds on the performance of low-density parity-check (LDPC) codes over binary-input additive white Gaussian noise (AWGN) channels with belief propagation (BP) decoding in log domain. We define an extended Gallager ensemble based on a new method of constructing parity check matrix and make use of this way to improve upper bound of LDPC codes. At the same time, many simulation results are presented in this paper. These results indicate the extended Gallager ensembles based on Hamming codes have typical minimum distance ratio, which is very close to the asymptotic Gilbert Varshamov bound and the superior performance which is better than the original Gallager ensembles.

  • PDF

Pruning the Boosting Ensemble of Decision Trees

  • Yoon, Young-Joo;Song, Moon-Sup
    • Communications for Statistical Applications and Methods
    • /
    • 제13권2호
    • /
    • pp.449-466
    • /
    • 2006
  • We propose to use variable selection methods based on penalized regression for pruning decision tree ensembles. Pruning methods based on LASSO and SCAD are compared with the cluster pruning method. Comparative studies are performed on some artificial datasets and real datasets. According to the results of comparative studies, the proposed methods based on penalized regression reduce the size of boosting ensembles without decreasing accuracy significantly and have better performance than the cluster pruning method. In terms of classification noise, the proposed pruning methods can mitigate the weakness of AdaBoost to some degree.

Nanostructured Materials and Nanotechnology : Overview

  • Muhammed, Mamoun;Tsakalakos, Thomas
    • 한국세라믹학회지
    • /
    • 제40권11호
    • /
    • pp.1027-1046
    • /
    • 2003
  • Nanostructured materials can be engineered by the controlled assembly of several suitable nano-objects as the building blocks. While, materials properties are determined by their atomic and molecular constituents and structure, their functionalities emerge when the microstructure of these early ensembles is in the nanometer regime. The properties and functionalities of these ensembles may be different as their size grows from the nano-regime to the micron regime and bulk structures. Nanotechnology, offers a unique possibility to manipulate the properties through the fabrication of materials using the nano-objects as building blocks. Nanotechnology is therefore considered an enabling technology by which existing materials, virtually all man-made materials, can acquire novel properties and functionalities making them suitable for numerous novel applications varying from structural and functional to advanced biomedical in-vivo and in-vitro applications.

기업부도 예측 앙상블 모형의 최적화 (The Optimization of Ensembles for Bankruptcy Prediction)

  • 김명종;윤우섭
    • 경영정보학연구
    • /
    • 제24권1호
    • /
    • pp.39-57
    • /
    • 2022
  • 본 연구에서는 범주 불균형 문제가 내재된 기업부도 예측 AdaBoost 앙상블 모형의 성과를 개선하기 위하여 GMOPTBoost 알고리즘을 제안한다. AdaBoost 알고리즘은 오분류 표본에 대하여 강건한 학습기회를 제공한다는 장점이 있지만, 산술평균 정확도에 기반하기 때문에 범주 불균형 문제를 효과적으로 해결하지 못한다는 한계점이 존재한다. GMOPTBoost는 가우시안 경사하강법(Gaussian gradient descent)을 적용하여 기하평균 정확도를 최적화하고 범주 불균형 문제를 효과적으로 해결할 수 있다는 장점이 있다. 본 연구에서는 첫째, 범주 불균형 문제가 예측 모형의 성과에 미치는 효과와 GMOPTBoost의 성과 개선 효과를 검증하기 위하여 5개의 범주 불균형 데이터를 구성하였으며, 둘째, 범주 균형 데이터에 대한 GMOPTBoost의 성과 개선 효과를 검증하기 위하여 데이터 샘플링 기법을 통하여 구성된 균형 데이터를 구성하였다. 30회의 교차타당성 분석의 주요 결과는 다음과 같다. 첫째, 범주 불균형 문제는 예측 성과에 부정적인 영향을 미친다. 둘째, GMOPTBoost는 불균형 데이터에 적용된 AdaBoost의 성과를 유의적으로 개선시키는 긍정적인 효과를 제공한다. 셋째, 데이터 샘플링 기법은 성과 개선에 긍정적인 영향을 미친다. 마지막으로 데이터 샘플링 기법을 적용한 범주 균형 데이터에서도 GMOPTBoost는 유의적인 성과 개선에 기여한다.

신경망 학습앙상블에 관한 연구 - 주가예측을 중심으로 - (A Study on Training Ensembles of Neural Networks - A Case of Stock Price Prediction)

  • 이영찬;곽수환
    • 지능정보연구
    • /
    • 제5권1호
    • /
    • pp.95-101
    • /
    • 1999
  • In this paper, a comparison between different methods to combine predictions from neural networks will be given. These methods are bagging, bumping, and balancing. Those are based on the analysis of the ensemble generalization error into an ambiguity term and a term incorporating generalization performances of individual networks. Neural Networks and AI machine learning models are prone to overfitting. A strategy to prevent a neural network from overfitting, is to stop training in early stage of the learning process. The complete data set is spilt up into a training set and a validation set. Training is stopped when the error on the validation set starts increasing. The stability of the networks is highly dependent on the division in training and validation set, and also on the random initial weights and the chosen minimization procedure. This causes early stopped networks to be rather unstable: a small change in the data or different initial conditions can produce large changes in the prediction. Therefore, it is advisable to apply the same procedure several times starting from different initial weights. This technique is often referred to as training ensembles of neural networks. In this paper, we presented a comparison of three statistical methods to prevent overfitting of neural network.

  • PDF

Skin Wettedness 분석을 통한 아웃도어웨어의 착용 쾌적성 평가 (Evaluation of the Wear Comfort of Outdoorwear by Skin Wettedness Analyses)

  • 정정림;김희은
    • 한국의류산업학회지
    • /
    • 제11권6호
    • /
    • pp.947-952
    • /
    • 2009
  • The purpose of this study is to analyze skin wettedness($w$) used as the rate index of thermal comfort, and to evaluate the wear comfort of outdoorwear. Skin wettedness is widely used to express the degree of thermal comfort. If skin wettedness exceeds a certain threshold, the body feels damp and discomfort. An experiment which consisted of rest(30 min), exercise(30 min) and recovery(20 min) periods was administered in a climate chamber with 10 healthy male participants. Two kinds of outdoorwears made of 100% cotton fabrics (Control) and specially engineered fabrics having feature of quick sweat absorbency and high speed drying fabric (Functional) were evaluated in the experiment. The condition of climate chamber was controlled according to the thermal insulation of 4 kinds of experimental ensembles(E1~E4). Total sweat loss, sweat loss absorbed into clothing and skin temperature were measured. Skin wettedness was calculated from the ratio of evaporative rate to the maximal evaporative capacity. Skin wettedness of 'Functional' was lower than 'Control' in the 3 kinds of ensembles(E1, E2, E4) because the materials of 'Functional' were composed of quick sweat absorbency and high speed drying fabrics, water vapour permeability and waterproof fabrics.

Direct Determination of Uric Acid in Human Serum Samples Using Polypyrrole Nanoelectrode Ensembles

  • Yang, Guangming;Tan, Lin;Shi, Ya;Wang, Suiping;Lu, Xuxiao;Bai, Huiping;Yang, Yunhui
    • Bulletin of the Korean Chemical Society
    • /
    • 제30권2호
    • /
    • pp.454-458
    • /
    • 2009
  • Polypyrrole (PPy) nanotubes have been synthesized by chemical oxidative polymerization of pyrrole within the pores of polycarbonate membrane using the technology of diffusion of solutes. The nanotubes array prepared by the proposed method can be considered as nanoelectrode ensembles (NEEs). An amperometric uric acid sensor based on PPy NEEs has been developed and used for determination of uric acid in human serum samples. The electrode can direct response to uric acid at potential of 0.60V vs. SCE with wide linear range of $1.52{\times}10^{-6}\;to\;1.54{\times}10^{-3}\;M.\;The\;detection\;limit\;is \;3.02{\times}10^{-7}$ M. This sensor has been used to determine uric acid in real serum samples. PPy NEEs is thought of as a good application in the foreground.

Metaheuristic-hybridized multilayer perceptron in slope stability analysis

  • Ye, Xinyu;Moayedi, Hossein;Khari, Mahdy;Foong, Loke Kok
    • Smart Structures and Systems
    • /
    • 제26권3호
    • /
    • pp.263-275
    • /
    • 2020
  • This research is dedicated to slope stability analysis using novel intelligent models. By coupling a neural network with spotted hyena optimizer (SHO), salp swarm algorithm (SSA), shuffled frog leaping algorithm (SFLA), and league champion optimization algorithm (LCA) metaheuristic algorithms, four predictive ensembles are built for predicting the factor of safety (FOS) of a single-layer cohesive soil slope. The data used to develop the ensembles are provided from a vast finite element analysis. After creating the proposed models, it was observed that the best population size for the SHO, SSA, SFLA, and LCA is 300, 400, 400, and 200, respectively. Evaluation of the results showed that the combination of metaheuristic and neural approaches offers capable tools for estimating the FOS. However, the SSA (error = 0.3532 and correlation = 0.9937), emerged as the most reliable optimizer, followed by LCA (error = 0.5430 and correlation = 0.9843), SFLA (error = 0.8176 and correlation = 0.9645), and SHO (error = 2.0887 and correlation = 0.8614). Due to the high accuracy of the SSA in properly adjusting the computational parameters of the neural network, the corresponding FOS predictive formula is presented to be used as a fast yet accurate substitution for traditional methods.

Strategies to improve the range verification of stochastic origin ensembles for low-count prompt gamma imaging

  • Hsuan-Ming Huang
    • Nuclear Engineering and Technology
    • /
    • 제55권10호
    • /
    • pp.3700-3708
    • /
    • 2023
  • The stochastic origin ensembles method with resolution recovery (SOE-RR) has been proposed to reconstruct proton-induced prompt gammas (PGs), and the reconstructed PG image was used for range verification. However, due to low detection efficiency, the number of valid events is low. Such a low-count condition can degrade the accuracy of the SOE-RR method for proton range verification. In this study, we proposed two strategies to improve the reconstruction of the SOE-RR algorithm for low-count PG imaging. We also studied the number of iterations and repetitions required to achieve reliable range verification. We simulated a proton beam (108 protons) irradiated on a water phantom and used a two-layer Compton camera to detect 4.44-MeV PGs. Our simulated results show that combining the SOE-RR algorithm with restricted volume (SOE-RR-RV) can reduce the error of the estimation of the Bragg peak position from 5.0 mm to 2.5 mm. We also found that the SOE-RR-RV algorithm initialized using a back-projection image could improve the convergence rate while maintaining accurate range verification. Finally, we observed that the improved SOE-RR algorithm set for 60,000 iterations and 25 repetitions could provide reliable PG images. Based on the proposed reconstruction strategies, the SOE-RR algorithm has the potential to achieve a positioning error of 2.5 mm for low-count PG imaging.