• Title/Summary/Keyword: Regression Analysis Method

Search Result 4,614, Processing Time 0.029 seconds

Analysis of Material Removal Rate of Glass in MR Polishing Using Multiple Regression Design (다중회귀분석을 이용한 BK7 글래스 MR Polishing 공정의 재료 제거 조건 분석)

  • Kim, Dong-Woo;Lee, Jung-Won;Cho, Myeong-Woo;Shin, Young-Jae
    • Journal of the Korean Society of Manufacturing Technology Engineers
    • /
    • v.19 no.2
    • /
    • pp.184-190
    • /
    • 2010
  • Recently, the polishing process using magnetorheological fluids(MR fluids) has been focused as a new ultra-precision polishing technology for micro and optical parts such as aspheric lenses, etc. This method uses MR fluid as a polishing media which contains required micro abrasives. In the MR polishing process, the surface roughness and material removal rate of a workpiece are affected by the process parameters, such as the properties of used nonmagnetic abrasives(particle material, size, aspect ratio and density, etc.), rotating wheel speed, imposed magnetic flux density and feed rate, etc. The objective of this research is to predict MRR according to the polishing conditions based on the multiple regression analysis. Three polishing parameters such as wheel speed, feed rates and current value were optimized. For experimental works, an orthogonal array L27(313) was used based on DOE(Design of Experiments), and ANOVA(Analysis of Variance) was carried out. Finally, it was possible to recognize that the sequence of the factors affecting MRR correspond to feed rate, current and wheel speed, and to determine a combination of optimal polishing conditions.

Estimation of Ship Resistance by Statistical Analysis and its Application to Hull Form Modification (통계해석에 의한 저항 추정 및 선형 개량)

  • S.W.,Hong;K.J.,Cho;D.S.,Yun;E.C.,Kim;W.C.,Jung
    • Bulletin of the Society of Naval Architects of Korea
    • /
    • v.25 no.4
    • /
    • pp.28-38
    • /
    • 1988
  • This paper describes the statistical analysis method of predicting the ship resistance. The equation for the wavemaking resistance coefficient is derived as the principal dimensions and sectional area coefficients by using the wavemaking resistance theory and its regression coefficients are determined from the regression analysis of the resistance test results. The equation for the form factor is derived by purely regression analysis of the principal dimensions, sectional area coefficients and resistance test results. Also, it is shown that the wavemaking resistance can be minimize by varying the sectional area curve without changing the principal dimensions of the ship. This methods were applied to the resistance prediction of a bulk carrier. And the, the modified hull form with minimum wavemaking resistance was obtained and the reduction of effective power was confirmed by the resistance test.

  • PDF

Frequent Items Mining based on Regression Model in Data Streams (스트림 데이터에서 회귀분석에 기반한 빈발항목 예측)

  • Lee, Uk-Hyun
    • The Journal of the Korea Contents Association
    • /
    • v.9 no.1
    • /
    • pp.147-158
    • /
    • 2009
  • Recently, the data model in stream data environment has massive, continuous, and infinity properties. However the stream data processing like query process or data analysis is conducted using a limited capacity of disk or memory. In these environment, the traditional frequent pattern discovery on transaction database can be performed because it is difficult to manage the information continuously whether a continuous stream data is the frequent item or not. In this paper, we propose the method which we are able to predict the frequent items using the regression model on continuous stream data environment. We can use as a prediction model on indefinite items by constructing the regression model on stream data. We will show that the proposed method is able to be efficiently used on stream data environment through a variety of experiments.

Relationship between porcine carcass grades and estimated traits based on conventional and non-destructive inspection methods

  • Lim, Seok-Won;Hwang, Doyon;Kim, Sangwook;Kim, Jun-Mo
    • Journal of Animal Science and Technology
    • /
    • v.64 no.1
    • /
    • pp.155-165
    • /
    • 2022
  • As pork consumption increases, rapid and accurate determination of porcine carcass grades at abattoirs has become important. Non-destructive, automated inspection methods have improved slaughter efficiency in abattoirs. Furthermore, the development of a calibration equation suitable for non-destructive inspection of domestic pig breeds may lead to rapid determination of pig carcass and more objective pork grading judgement. In order to increase the efficiency of pig slaughter, the correct estimation of the automated-method that can accommodate the existing pig carcass judgement should be made. In this study, the previously developed calibration equation was verified to confirm whether the estimated traits accord with the actual measured traits of pig carcass. A total of 1,069,019 pigs, to which the developed calibration equation, was applied were used in the study and the optimal estimated regression equation for actual measured two traits (backfat thickness and hot carcass weight) was proposed using the estimated traits. The accuracy of backfat thickness and hot carcass weight traits in the estimated regression models through stepwise regression analysis was 0.840 (R2) and 0.980 (R2), respectively. By comparing the actually measured traits with the estimated traits, we proposed optimal estimated regression equation for the two measured traits, which we expect will be a cornerstone for the Korean porcine carcass grading system.

Dynamical Polynomial Regression Prefetcher for DRAM-PCM Hybrid Main Memory (DRAM-PCM 하이브리드 메인 메모리에 대한 동적 다항식 회귀 프리페처)

  • Zhang, Mengzhao;Kim, Jung-Geun;Kim, Shin-Dug
    • Proceedings of the Korea Information Processing Society Conference
    • /
    • 2020.11a
    • /
    • pp.20-23
    • /
    • 2020
  • This research is to design an effective prefetching method required for DRAM-PCM hybrid main memory systems especially used for big data applications and massive-scale computing environment. Conventional prefetchers perform well with regular memory access patterns. However, workloads such as graph processing show extremely irregular memory access characteristics and thus could not be prefetched accurately. Therefore, this research proposes an efficient dynamical prefetching algorithm based on the regression method. We have designed an intelligent prefetch engine that can identify the characteristics of the memory access sequences. It can perform regular, linear regression or polynomial regression predictive analysis based on the memory access sequences' characteristics, and dynamically determine the number of pages required for prefetching. Besides, we also present a DRAM-PCM hybrid memory structure, which can reduce the energy cost and solve the conventional DRAM memory system's thermal problem. Experiment result shows that the performance has increased by 40%, compared with the conventional DRAM memory structure.

Special-Days Load Handling Method using Neural Networks and Regression Models (신경회로망과 회귀모형을 이용한 특수일 부하 처리 기법)

  • 고희석;이세훈;이충식
    • Journal of the Korean Institute of Illuminating and Electrical Installation Engineers
    • /
    • v.16 no.2
    • /
    • pp.98-103
    • /
    • 2002
  • In case of power demand forecasting, the most important problems are to deal with the load of special-days. Accordingly, this paper presents the method that forecasting long (the Lunar New Year, the Full Moon Festival) and short(the Planting Trees Day, the Memorial Day, etc) special-days peak load using neural networks and regression models. long and short special-days peak load forecast by neural networks models uses pattern conversion ratio and four-order orthogonal polynomials regression models. There are using that special-days peak load data during ten years(1985∼1994). In the result of special-days peak load forecasting, forecasting % error shows good results as about 1 ∼2[%] both neural networks models and four-order orthogonal polynomials regression models. Besides, from the result of analysis of adjusted coefficient of determination and F-test, the significance of the are convinced four-order orthogonal polynomials regression models. When the neural networks models are compared with the four-order orthogonal polynomials regression models at a view of the results of special-days peak load forecasting, the neural networks models which uses pattern conversion ratio are more effective on forecasting long special-days peak load. On the other hand, in case of forecasting short special-days peak load, both are valid.

Multivariate quantile regression tree (다변량 분위수 회귀나무 모형에 대한 연구)

  • Kim, Jaeoh;Cho, HyungJun;Bang, Sungwan
    • Journal of the Korean Data and Information Science Society
    • /
    • v.28 no.3
    • /
    • pp.533-545
    • /
    • 2017
  • Quantile regression models provide a variety of useful statistical information by estimating the conditional quantile function of the response variable. However, the traditional linear quantile regression model can lead to the distorted and incorrect results when analysing real data having a nonlinear relationship between the explanatory variables and the response variables. Furthermore, as the complexity of the data increases, it is required to analyse multiple response variables simultaneously with more sophisticated interpretations. For such reasons, we propose a multivariate quantile regression tree model. In this paper, a new split variable selection algorithm is suggested for a multivariate regression tree model. This algorithm can select the split variable more accurately than the previous method without significant selection bias. We investigate the performance of our proposed method with both simulation and real data studies.

Weekly Maximum Electric Load Forecasting Method for 104 Weeks Using Multiple Regression Models (다중회귀모형을 이용한 104주 주 최대 전력수요예측)

  • Jung, Hyun-Woo;Kim, Si-Yeon;Song, Kyung-Bin
    • The Transactions of The Korean Institute of Electrical Engineers
    • /
    • v.63 no.9
    • /
    • pp.1186-1191
    • /
    • 2014
  • Weekly and monthly electric load forecasting are essential for the generator maintenance plan and the systematic operation of the electric power reserve. This paper proposes the weekly maximum electric load forecasting model for 104 weeks with the multiple regression model. Input variables of the multiple regression model are temperatures and GDP that are highly correlated with electric loads. The weekly variable is added as input variable to improve the accuracy of electric load forecasting. Test results show that the proposed algorithm improves the accuracy of electric load forecasting over the seasonal autoregressive integrated moving average model. We expect that the proposed algorithm can contribute to the systematic operation of the power system by improving the accuracy of the electric load forecasting.

On the Performance Analysis of a Logistic regression based transient signal classifier (Logistic Regression 방법을 이용한 천이 신호 식별 알고리즘 및 성능 분석)

  • Heo, Sun-Cheol;Kim, Jin-Young;Yoon, Byoung-Soo;Nam, Sang-Won;Oh, Won-Cheon
    • Proceedings of the KIEE Conference
    • /
    • 1995.07b
    • /
    • pp.913-915
    • /
    • 1995
  • In this paper, a transient signal classification system using logistic regression and neural networks is presented, where four neural networks such as MLP, MLP-Class, RBF and LVQ are utilized to classify given transient signals, based on the logistic regression method. Also, some test results with experimental transient signal data are provided.

  • PDF

Estimation of software project effort with genetic algorithm and support vector regression (유전 알고리즘 기반의 서포트 벡터 회귀를 이용한 소프트웨어 비용산정)

  • Kwon, Ki-Tae;Park, Soo-Kwon
    • The KIPS Transactions:PartD
    • /
    • v.16D no.5
    • /
    • pp.729-736
    • /
    • 2009
  • The accurate estimation of software development cost is important to a successful development in software engineering. Until recent days, the model using regression analysis based on statistical algorithm and machine learning method have been used. However, this paper estimates the software cost using support vector regression, a sort of machine learning technique. Also, it finds the best set of optimized parameters applying genetic algorithm. The proposed GA-SVR model outperform some recent results reported in the literature.