• 제목/요약/키워드: Sampling error

검색결과 822건 처리시간 0.024초

SPATIAL AND TEMPORAL INFLUENCES ON SOIL MOISTURE ESTIMATION

  • Kim, Gwang-seob
    • Water Engineering Research
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    • 제3권1호
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    • pp.31-44
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    • 2002
  • The effect of diurnal cycle, intermittent visit of observation satellite, sensor installation, partial coverage of remote sensing, heterogeneity of soil properties and precipitation to the soil moisture estimation error were analyzed to present the global sampling strategy of soil moisture. Three models, the theoretical soil moisture model, WGR model proposed Waymire of at. (1984) to generate rainfall, and Turning Band Method to generate two dimensional soil porosity, active soil depth and loss coefficient field were used to construct sufficient two-dimensional soil moisture data based on different scenarios. The sampling error is dominated by sampling interval and design scheme. The effect of heterogeneity of soil properties and rainfall to sampling error is smaller than that of temporal gap and spatial gap. Selecting a small sampling interval can dramatically reduce the sampling error generated by other factors such as heterogeneity of rainfall, soil properties, topography, and climatic conditions. If the annual mean of coverage portion is about 90%, the effect of partial coverage to sampling error can be disregarded. The water retention capacity of fields is very important in the sampling error. The smaller the water retention capacity of the field (small soil porosity and thin active soil depth), the greater the sampling error. These results indicate that the sampling error is very sensitive to water retention capacity. Block random installation gets more accurate data than random installation of soil moisture gages. The Walnut Gulch soil moisture data show that the diurnal variation of soil moisture causes sampling error between 1 and 4 % in daily estimation.

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표집오차(sampling error)와 표집분포(sampling distribution)의 용어 사용에 관한 연구 (A Study of Using the Terminology of Sampling Error and Sampling Distribution)

  • 김응환
    • 한국학교수학회논문집
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    • 제9권3호
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    • pp.309-316
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    • 2006
  • 이 논문에서는 현재 중등학교 수학의 통계교육에서 다루고 있는 통계용어의 의미상 혼선과 애매한 내용을 수학교사를 대상으로 알아보고, 표본평균의 확률분포에 대한 지도 영역에 있어서 표집(sampling, 표본추출)의 문맥에서 표집오차(sampling error)와 표본평균의 표집분포(sampling distribution)라는 용어를 도입하여 일관성 있게 사용할 것을 제안하였다. 현행 중고등학교의 수학과의 통계의 용어 정의와 개념설명에 있어서, 교육부가 검정한 12종의 검정 교과서와 국정교과서 간에서도 차이는 물론 의미의 혼선과 함께 정의의 일관성의 부족은 통계를 교육하는 수학교사와 학생들에게 심각한 오개념을 형성하게 만들고, 그 애매함으로 인하여 통계학의 학문 자체에 대한 흥미와 태도의 정의적인 면에서 부정적인 영향을 주고 있음이 발견되었다 본 연구에서는 표본평균의 확률분포의 효율적인 지도를 위한 표본오차 대신에 표집오차를 사용할 것과 표집분포의 용어를 도입함으로서 통계용어의 정확한 사용을 동하여 교사와 학생들에게 통계용어의 올바른 개념의 형성과 이해는 물론 통계교육의 일관성과 계열성 유지의 필요성을 제기하였다.

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A Sampling Inspection Plan with Human Error: Considering the Relationship between Visual Inspection Time and Human Error Rate

  • Lee, Yong-Hwa;Hong, Seung-Kweon
    • 대한인간공학회지
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    • 제30권5호
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    • pp.645-650
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    • 2011
  • Objective: The aim of this study is to design a sampling inspection plan with human error which is changing according to inspection time. Background: Typical sampling inspection plans have been established typically based on an assumption of the perfect inspection without human error. However, most of all inspection tasks include human errors in the process of inspection. Therefore, a sampling inspection plan should be designed with consideration of imperfect inspection. Method: A model for single sampling inspection plans were proposed for the cases that visual inspection error rate is changing according to inspection time. Additionally, a sampling inspection plan for an optimal inspection time was proposed. In order to show an applied example of the proposed model, an experiment for visual inspection task was performed and the inspection error rates were measured according to the inspection time. Results: Inspection error rates changed according to inspection time. The inspection error rate could be reflected on the single sampling inspection plans for attribute. In particular, inspection error rate in an optimal inspection time may be used for a reasonable single sampling plan in a practical view. Conclusion: Human error rate in inspection tasks should be reflected on typical single sampling inspection plans. A sampling inspection plan with consideration of human error requires more sampling number than a typical sampling plan with perfect inspection. Application: The result of this research may help to determine more practical sampling inspection plan rather than typical one.

Gy의 입자성 물질 시료채취이론에 근거한 토양 시료 채취량 결정 (Determination of Soil Sample Size Based on Gy's Particulate Sampling Theory)

  • 배범한
    • 한국지하수토양환경학회지:지하수토양환경
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    • 제16권6호
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    • pp.1-9
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    • 2011
  • A bibliographical review of Gy sampling theory for particulate materials was conducted to provide readers with useful means to reduce errors in soil contamination investigation. According to the Gy theory, the errors caused by the heterogeneous nature of soil include; the fundamental error (FE) caused by physical and chemical constitutional heterogeneity, the grouping and segregation error (GE) aroused from gravitational force, long-range heterogeneous fluctuation error ($CE_2$), the periodic heterogeneity fluctuation error ($CE_3$), and the materialization error (ME) generated during physical process of sample treatment. However, the accurate estimation of $CE_2$ and $CE_3$ cannot be estimated easily and only increasing sampling locations can reduce the magnitude of the errors. In addition, incremental sampling is the only method to reduce GE while grab sampling should be avoided as it introduces uncertainty and errors to the sampling process. Correct preparation and operation of sampling tools are important factors in reducing the incremental delimitation error (DE) and extraction error (EE) which are resulted from physical processes in the sampling. Therefore, Gy sampling theory can be used efficiently in planning a strategy for soil investigations of non-volatile and non-reactive samples.

Sampling Study on Environmental Observations: Precipitation, Soil Moisture and Land Cover Information

  • 유철상
    • 한국환경과학회지
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    • 제5권2호
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    • pp.103-112
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    • 1996
  • Observational date is integral in our understanding of present climate, its natural variability and any cnange roue to anturopogenic effects. This study incorporates a brief overview of sampling requirements using data from the first ISLSCP Field Experiment (FIFE) in 1987, which was a multi-disciplinary field experiment over a 15km grid in Konza Prairie, USA. Sampling strategies were designed for precipitation and soil moisture measurements and also detecting land cover type. It was concludes that up to 8 raingages would be needed for valuable precipitation measurements covering the whole FIFE catchment, but only one soil moisture station. Results show that as new gages or station are added to the catchment then the sampling error is reduced, but the Improvement in error performance is less as the number of gages or stations increases. Sampling from remoteiy sensed instruments shows different results. It can be seen that the sampling error at 1arger resolution sizes are small due to competing error contribution from both commission and omission error.

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회계감사예에 적용시켜본 오차로버스터적 모델표본론 (Error-robust model-based sampling in accounting)

  • 김영일
    • 응용통계연구
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    • 제6권1호
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    • pp.29-40
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    • 1993
  • 모델을 이용한 표본론에서는 오차에 대한 함수식이 불확실한 경우가 종종 발생되는데 이러 한 오차에 대한 지식이 결여 되었을 때 발생되는 잘못된 효과를 줄일 수 있는 방법이 연구 되었다. 제시된 표본방법론은 모든 가능한 오차함수식에 대한 비효율성에 대한 평균을 최소 화하는데 그 목적이 있다. 컴퓨터를 이용한 알고리즘이 제시되었고 회계감사에 관련된 특수 한 경우의 예를 들어 이러한 방법의 효율성을 알아 보았다.

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부분적 레이더 정보에 따른 면적평균강우의 관측오차 (Sampling Error of Areal Average Rainfall due to Radar Partial Coverage)

  • 유철상;김병수;김경준;윤정수
    • 한국방재학회:학술대회논문집
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    • 한국방재학회 2008년도 정기총회 및 학술발표대회
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    • pp.97-100
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    • 2008
  • This study estimated the error involved in the areal average rainfall derived incomplete radar information due to radar partial coverage of a basin or sub-basin. This study considers the Han River Basin as an application example for the rainfall observation using the Ganghwa rain radar. Among the total of 24 mid-sized sub-basins of the Han River Basin evaluated in this study, only five sub-basins are fully covered by the radar and three are totally uncovered. Remaining 16 sub-basins are partially covered by the radar leading incomplete radar information available. When only partial radar information is available, the sampling error decreases proportional to the size of the radar coverage, which also varies depending on the number of clusters. It is general that smaller sampling error can be expected when the number of clusters increases if the total area coverage remains the same. This study estimated the sampling error of the areal average rainfall of partially-covered mid-sized sub-basins of the Han River Basin, and the results show that the sampling error could be at least several % to maximum tens % depending on the relative coverage area.

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2008 총선 출구조사의 총조사오차 분석 (A Total Survey Error Analysis of the Exit Polling for General Election 2008 in Korea)

  • 김영원;곽은선
    • 한국조사연구학회지:조사연구
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    • 제11권3호
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    • pp.33-55
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    • 2010
  • 본 논문에서는 2008년 18대 총선의 출구조사 자료를 이용하여 출구조사의 정확성을 평가할 수 있는 총조사오차 개념을 새로 정의하고, 출구조사에서 발생하는 총조사오차가 투표소 추출오차와 투표자 선정 및 응답 과정에서 발생하는 실사오차 중 어떤 것에 더 많은 영향을 받는지 분석했다. 또한 선거구별 무응답률이 총조사오차와 실사오차에 미치는 영향을 분석하였고, 중앙선거관리위원회의 투표율 분석자료를 이용하여 출구조사 표본의 대표성을 검증했다. 분석 결과 선거구 내 표본 투표소 추출 관련 오차보다는 표본투표소 내에서 투표자 선택 및 응답 과정에서 발생하는 오차가 더 컸던 것으로 나타났다. 또한 무응답률과 실사오차는 양의 상관관계를 갖는 것으로 나타났으며, 이는 특정한 지지성향을 갖는 사람들의 응답 거절로 인해 표본의 대표성이 떨어지고, 결과적으로 오차가 커지는 것으로 해석될 수 있다. 아울러 선관위와 출구조사 자료에 대한 카이제곱 검정을 통해 성/연령대별 구성비에 유의한 차이가 있다는 것을 확인할 수 있었다.

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샘플링오차에 의한 품질통계 모형의 해석 (Interpretation of Quality Statistics Using Sampling Error)

  • 최성운
    • 대한안전경영과학회지
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    • 제10권2호
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    • pp.205-210
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    • 2008
  • The research interprets the principles of sampling error design for quality statistics models such as hypothesis test, interval estimation, control charts and acceptance sampling. Introducing the proper discussions of the design of significance level according to the use of hypothesis test, then it presents two methods to interpret significance by Neyman-Pearson and Fisher. Second point of the study proposes the design of confidence level for interval estimation by Bayesian confidence set, frequentist confidential set and fiducial interval. Third, the content also indicates the design of type I error and type II error considering both productivity and customer claim for control chart. Finally, the study reflects the design of producer's risk with operating charistictics curve, screening and switch rules for the purpose of purchasing and subcontraction.

RAINFALL SEASONALITY AND SAMPLING ERROR VARIATION

  • Yoo, Chul-sang
    • Water Engineering Research
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    • 제2권1호
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    • pp.63-72
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    • 2001
  • The variation of sampling errors was characterized using the Waymire-Gupta-Rodriguez-Iturbe multi-dimensional rainfall model(WGR model). The parameters used for this study are those derived by Jung et al. (2000) for the Han River Basin using a genetic algorithm technique. The sampling error problems considered are those for using raingauge network, satellite observation and also for both combined. The characterization of sampling errors was done for each month and also for the downstream plain area and the upstream mountain area, separately. As results of the study we conclude: (1) The pattern of sampling errors estimated are obviously different from the seasonal pattern of monthly rainfall amounts. This result may be understood from the fact that the sampling error is estimated not simply by considering the rainfall amounts, but by considering all the mechanisms controlling the rainfall propagation along with its generation and decay. As the major mechanism of moisture source to the Korean Peninsula is obviously different each month, it seems rather normal to provide different pattern of sampling errors from that of monthly rainfall amounts. (2) The sampling errors estimated for the upstream mountain area is about twice higher than those for the down stream plain area. It is believed to be because of the higher variability of rainfall in the upstream mountain arean than in the down stream plain area.

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