• Title/Summary/Keyword: 다중 주성분 분석

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적응형 인자모델과 배기속도지표를 이용한 건식 전공펌프 시스템의 실시간 상태진단

  • Lee, Gyu-Ho;Lee, Su-Gap;Im, Jong-Yeon;Jeong, Wan-Seop
    • Proceedings of the Korean Vacuum Society Conference
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    • 2011.02a
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    • pp.34-34
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    • 2011
  • 본 논문에서는 반도체의 제조공정 중 작동되는 건식 전공펌프에서 측정한 다중변수들의 통계적, 물리적 특성을 소개한다. 흡기부 및 배기부 압력과 부스터/드라이펌프의 소비전류와 같은 상태변수의 변위 분포는 2개 이상의 특징적인 구간으로 나뉘는 특성을 가지고 있다. 특히 흡기부 압력 데이터는 펌프의 성능상태를 직접적으로 나타내는 배기 속도를 유추할 수 있는 특성을 내포하고 있다. 이러한 관측을 통해 발견한 통계학적 특성을 나타내기 위해 적응형 인자모델(APM)을 이용한 진공펌프 시스템의 실시간 진단 기법을 개발하였다. 동시에 공정 중에 배기속도를 유추 할 수 있는 배기속도지표(PSI)를 제안하여 펌프의 성능 상태를 간접적인 방법으로 관찰하는 기법을 개발하여, 두 기법을 통한 진공펌프 시스템의 상태변화 진단 결과의 경향이 동일함을 확인하였다.

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PCA Covariance Model Based on Multiband for Speaker Verification (화자 확인을 위한 다중대역에 기반한 주성분 분석 공분산 모델)

  • Choi, Min-Jung;Lee, Youn-Jeong;Seo, Chang-Woo
    • Speech Sciences
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    • v.14 no.2
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    • pp.127-135
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    • 2007
  • Feature vectors of speech are generally extracted from whole frequency domain. The inherent character of a speaker is located in the low band or high band frequency. However, if the speech is corrupted by narrowband noise with concentrated energy, speaker verification performance is reduced as the individual characteristic is removed. In this paper, we propose a PCA Covariance Model based on the multiband to extract the robust feature vectors against the narrowband noise. First, we divide the overall frequency band into several subbands. Second, the correlation of feature vectors extracted independently from each subband is removed by PCA. The distance obtained from each subband has different distribution. To normalize against the different distribution, we moved the value into the normalized distribution through the mapping function. Finally, the represented value applying the weighting function is used for speaker verification. In the experiments, the proposed method shows better performance of the speaker verification and reduces the computation.

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Recent Research Trends of Process Monitoring Technology: State-of-the Art (공정 모니터링 기술의 최근 연구 동향)

  • Yoo, ChangKyoo;Choi, Sang Wook;Lee, In-Beum
    • Korean Chemical Engineering Research
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    • v.46 no.2
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    • pp.233-247
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    • 2008
  • Process monitoring technology is able to detect the faults and the process changes which occur in a process unpredictably, which makes it possible to find the reasons of the faults and get rid of them, resulting in a stable process operation, high-quality product. Statistical process monitoring method based on data set has a main merit to be a tool which can easily supervise a process with the statistics and can be used in the analysis of process data if a high quality of data is given. Because a real process has the inherent characteristics of nonlinearity, non-Gaussianity, multiple operation modes, sensor faults and process changes, however, the conventional multivariate statistical process monitoring method results in inefficient results, the degradation of the supervision performances, or often unreliable monitoring results. Because the conventional methods are not easy to properly supervise the process due to their disadvantages, several advanced monitoring methods are developed recently. This review introduces the theories and application results of several remarkable monitoring methods, which are a nonlinear monitoring with kernel principle component analysis (KPCA), an adaptive model for process change, a mixture model for multiple operation modes and a sensor fault detection and reconstruction, in order to tackle the weak points of the conventional methods.

A Presentation of Guidelines for Layout Techniques in Designing of the Floral-patterned Scarves based on Consumer Emotion : Part II (소비자 감성을 기반으로 한 꽃문양 스카프 디자인의 레이아웃 기법 제안 : 제 2보)

  • 조현승;이주현
    • Science of Emotion and Sensibility
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    • v.3 no.1
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    • pp.53-62
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    • 2000
  • 본 연구의 목적은 (1)꽃문양 스카프 디자인의 레이아웃 변인이 소비자의 감성에 미치는 영향을 본 연구의 제 1보의 결과 및 전통적인 디자인 이론들과 비교하고, (2) 소비자 감성분석을 기반으로 하여 꽃문양 스카프 디자인을 위한 레이아웃 프로토타입을 제시하는 데에 있다. 이를 위하여 두 종류의 꽃 모티브를 세 가지 레이아웃 변인에 따라 컴퓨터 시뮬레이션하여 총 20개의 자극물을 개발하였다. 또한 44개의 형용사쌍으로 구성된 7점의 의미미분척도를 개발하여 세 가지 레이아웃 변인에 따른 소비자의 감성효과를 측정하였다. 피험자는 편의표집된 110명의 20대 여성 소비자였으며, 이들에게 자극물을 제시하고 응답척도에 감성반응을 응답하게 하였다. 총 100부의 데이터를 사용하여 주성분분석, 다변량분석, 삼원변량분석 및 다중비교검정을 실시하였다. 본 연구의 결과를 요약하면 다음과 같다.: (1) 꽃문양 스카프 디자인에 대한 소비자의 감성은 ‘호오(좋아함-싫어함)·심미감’, ‘액센트감’, ‘온화함’ 그리고 ‘리듬감’의 네 가지 하위차원으로 구성하였으며, 이는 제 1보의 결과와 일치하였다. (2) 제 1보와 2보의 결과에 따르면, 꽃 모티브의 크기가 큰 비반복배열의 디자인이 다른 디자인들보다 더 ‘온화감’있게 느껴졌다. (3) 제 1보와 2보의 결과를 종합하여, 두 세트의 꽃문양 스카프 디자인의 레이아웃 프로토타입을 제시하였다.

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Defect Severity-based Dimension Reduction Model using PCA (PCA를 적용한 결함 심각도 기반 차원 축소 모델)

  • Kwon, Ki Tae;Lee, Na-Young
    • Journal of Software Assessment and Valuation
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    • v.15 no.1
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    • pp.79-86
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    • 2019
  • Software dimension reduction identifies the commonality of elements and extracts important feature elements. So it reduces complexity by simplify and solves multi-collinearity problems. And it reduces redundancy by performing redundancy and noise detection. In this study, we proposed defect severity-based dimension reduction model. Proposed model is applied defect severity-based NASA dataset. And it is verified the number of dimensions in the column that affect the severity of the defect. Then it is compares and analyzes the dimensions of the data before and after reduction. In this study experiment result, the number of dimensions of PC4's dataset is 2 to 3. It was possible to reduce the dimension.

Classification of Multi-temporal SAR Data by Using Data Transform Based Features and Multiple Classifiers (자료변환 기반 특징과 다중 분류자를 이용한 다중시기 SAR자료의 분류)

  • Yoo, Hee Young;Park, No-Wook;Hong, Sukyoung;Lee, Kyungdo;Kim, Yeseul
    • Korean Journal of Remote Sensing
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    • v.31 no.3
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    • pp.205-214
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    • 2015
  • In this study, a novel land-cover classification framework for multi-temporal SAR data is presented that can combine multiple features extracted through data transforms and multiple classifiers. At first, data transforms using principle component analysis (PCA) and 3D wavelet transform are applied to multi-temporal SAR dataset for extracting new features which were different from original dataset. Then, three different classifiers including maximum likelihood classifier (MLC), neural network (NN) and support vector machine (SVM) are applied to three different dataset including data transform based features and original backscattering coefficients, and as a result, the diverse preliminary classification results are generated. These results are combined via a majority voting rule to generate a final classification result. From an experiment with a multi-temporal ENVISAT ASAR dataset, every preliminary classification result showed very different classification accuracy according to the used feature and classifier. The final classification result combining nine preliminary classification results showed the best classification accuracy because each preliminary classification result provided complementary information on land-covers. The improvement of classification accuracy in this study was mainly attributed to the diversity from combining not only different features based on data transforms, but also different classifiers. Therefore, the land-cover classification framework presented in this study would be effectively applied to the classification of multi-temporal SAR data and also be extended to multi-sensor remote sensing data fusion.

Feature Extraction and Classification of Multi-temporal SAR Data Using 3D Wavelet Transform (3차원 웨이블렛 변환을 이용한 다중시기 SAR 영상의 특징 추출 및 분류)

  • Yoo, Hee Young;Park, No-Wook;Hong, Sukyoung;Lee, Kyungdo;Kim, Yihyun
    • Korean Journal of Remote Sensing
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    • v.29 no.5
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    • pp.569-579
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    • 2013
  • In this study, land-cover classification was implemented using features extracted from multi-temporal SAR data through 3D wavelet transform and the applicability of the 3D wavelet transform as a feature extraction approach was evaluated. The feature extraction stage based on 3D wavelet transform was first carried out before the classification and the extracted features were used as input for land-cover classification. For a comparison purpose, original image data without the feature extraction stage and Principal Component Analysis (PCA) based features were also classified. Multi-temporal Radarsat-1 data acquired at Dangjin, Korea was used for this experiment and five land-cover classes including paddy fields, dry fields, forest, water, and built up areas were considered for classification. According to the discrimination capability analysis, the characteristics of dry field and forest were similar, so it was very difficult to distinguish these two classes. When using wavelet-based features, classification accuracy was generally improved except built-up class. Especially the improvement of accuracy for dry field and forest classes was achieved. This improvement may be attributed to the wavelet transform procedure decomposing multi-temporal data not only temporally but also spatially. This experiment result shows that 3D wavelet transform would be an effective tool for feature extraction from multi-temporal data although this procedure should be tested to other sensors or other areas through extensive experiments.

Analyses of Power Consumption of the Heat Pump Dryer in the Automobile Drying Process by using the Principal Component Analysis and Multiple Regression (주성분 분석과 다중회귀모형을 사용한 자동차 건조 공정의 히트펌프 건조기 소모 전력 분석)

  • Lee, Chang-Yong;Song, Gensoo;Kim, Jinho
    • Journal of Korean Society of Industrial and Systems Engineering
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    • v.38 no.1
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    • pp.143-151
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    • 2015
  • In this paper, we investigate how the power consumption of a heat pump dryer depends on various factors in the drying process by analyzing variables that affect the power consumption. Since there are in general many variables that affect the power consumption, for a feasible analysis, we utilize the principal component analysis to reduce the number of variables (or dimensionality) to two or three. We find that the first component is correlated positively to the entrance temperature of various devices such as compressor, expander, evaporator, and the second, negatively to condenser. We then model the power consumption as a multiple regression with two and/or three transformed variables of the selected principal components. We find that fitted value from the multiple regression explains 80~90% of the observed value of the power consumption. This results can be applied to a more elaborate control of the power consumption in the heat pump dryer.

Dimensionality Reduction Methods Analysis of Hyperspectral Imagery for Unsupervised Change Detection of Multi-sensor Images (이종 영상 간의 무감독 변화탐지를 위한 초분광 영상의 차원 축소 방법 분석)

  • PARK, Hong-Lyun;PARK, Wan-Yong;PARK, Hyun-Chun;CHOI, Seok-Keun;CHOI, Jae-Wan;IM, Hon-Ryang
    • Journal of the Korean Association of Geographic Information Studies
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    • v.22 no.4
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    • pp.1-11
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    • 2019
  • With the development of remote sensing sensor technology, it has become possible to acquire satellite images with various spectral information. In particular, since the hyperspectral image is composed of continuous and narrow spectral wavelength, it can be effectively used in various fields such as land cover classification, target detection, and environment monitoring. Change detection techniques using remote sensing data are generally performed through differences of data with same dimensions. Therefore, it has a disadvantage that it is difficult to apply to heterogeneous sensors having different dimensions. In this study, we have developed a change detection method applicable to hyperspectral image and high spat ial resolution satellite image with different dimensions, and confirmed the applicability of the change detection method between heterogeneous images. For the application of the change detection method, the dimension of hyperspectral image was reduced by using correlation analysis and principal component analysis, and the change detection algorithm used CVA. The ROC curve and the AUC were calculated using the reference data for the evaluation of change detection performance. Experimental results show that the change detection performance is higher when using the image generated by adequate dimensionality reduction than the case using the original hyperspectral image.

A Study on Road Characteristic Classification using Exploratory Factor Analysis (탐색적 요인분석을 이용한 도로특성분류에 관한 연구)

  • Cho, Jun-Han;Kim, Seong-Ho;Rho, Jeong-Hyun
    • Journal of Korean Society of Transportation
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    • v.26 no.3
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    • pp.53-66
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    • 2008
  • This research is to the establishment of a conceptual framework that supports road characteristic classification from a new point of view in order to complement of the existing road functional classification and examine of traffic pattern. The road characteristic classification(RCC) is expected to use important performance criteria that produced a policy guidelines for transportation planning and operational management. For this study, the traffic data used the permanent traffic counters(PTCs) located within the national highway between 2002 and 2006. The research has described for a systematic review and assessment of how exploratory factor analysis should be applied from 12 explanatory variables. The optimal number of components and clusters are determined by interpretation of the factor analysis results. As a result, the scenario including all 12 explanatory variables is better than other scenarios. The four components is produced the optimal number of factors. This research made contributions to the understanding of the exploratory factor analysis for the road characteristic classification, further applying the objective input data for various analysis method, such as cluster analysis, regression analysis and discriminant analysis.