• 제목/요약/키워드: Nonlinear Programming Problem

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단일할당 복합운송 허브 네트워크 설계 모형 개발 (A Single Allocation Hub Network Design Model for Intermodal Freight Transportation)

  • 김동규;강성철;박창호;고승영
    • 대한교통학회지
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    • 제27권1호
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    • pp.129-141
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    • 2009
  • 복합운송은 두 개 이상의 수송수단을 이용하는 기점에서 종점까지의 수송으로 정의될 수 있다. 복합운송이 허브 네트워크에 활용되면 집화된 수송량이 보다 적절한 수단들과 기술들에 의해 수송되기 때문에 네트워크 효율성이 제고될 수 있다. 이러한 장점에도 불구하고 문제의 복잡성 등으로 인하여 복합운송 허브 네트워크 설계 문제에 관한 연구는 그동안 활발하게 수행되지 않았다. 본 연구의 목적은 단일할당 전략을 이용하는 복합운송 허브 네트워크 설계 최적화 모형을 개발하는 것이다. 본 연구에서 개발된 모형은 수송비용, 재고비용, 서비스지체비용 등 복합운송 허브 네트워크에서 발생하는 다양한 비용요소들을 고려하는 한편, 운행빈도 변수를 사용함으로써 수송량 집화에 따른 수송 규모의 경제 효과를 내생적으로 결정할 수 있어 복합운송을 활용하는 실제 허브 네트워크의 특성들을 잘 반영할 수 있다. 개발된 모형은 비선형 정수계획 문제의 복잡한 구조를 가지고 있기 때문에, 본 연구에서는 모형에 대한 해석적 연구를 통하여 모형을 단순화함으로써 향후 알고리즘을 개발하기 위한 이론적 출발점을 제시한다. 본 연구는 복합운송 허브 네트워크의 설계뿐만 아니라 기존의 물류시스템 평가에도 기여할 수 있을 것으로 사료된다.

응력근사해법(應力近似解法)을 이용한 평면(平面)트러스구조물(構造物)의 형상최적화(形狀最適化)에 관한 연구(研究) (Optimization of the Truss Structures Using Member Stress Approximate method)

  • 이규원;유희중
    • 대한토목학회논문집
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    • 제13권2호
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    • pp.73-84
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    • 1993
  • 본(本) 연구(研究)에서는 분할기법(分割技法)을 이용하여 평면(平面)트러스구조물(構造物)의 형상최적화(形狀最適化)를 시도(試圖)하였다. 본(本) 연구(研究)의 제(第)1단계(段階)(Level 1)에서는 다른 연구(研究)와 달리 응력제약(應力制約)을 감도해석(感度解析)에 효율적(效率的)이라고 알려진 설계공간법(設計空間法)에 의해서 부재응력근사화(部材應力近似化)를 하므로서 비선형최적화문제(非線形最適化問題)가 선형계획문제(線形計劃問題)로 변환(變換)되어 해(解)를 효율적(效率的)으로 구할 수 있고 또한 감도해석(感度解析)을 위한 구조해석수(構造解析數)를 줄일 수 있다. 목적함수(目的凾數)는 구조물(構造物)의 중량(重量)이 최소(最小)가 되도록 중량함수(重量凾數)를 택하였다. 제약조건식(制約條件式)으로는 허용응력(許容應力), 좌굴응력(挫屈應力), 변위제약(變位制約) 및 설계변수(設計變數) 상하한치제약(上下限値制約)을 부과(附課)하였고 다(多) 재하조건(載荷條件)을 고려(考慮)하여 최적화문제(最適化問題)를 형성(形成)하였다. 제(第)2단계(段階)(Level 2)에서는 설계변수(設計變數) 및 조정변수(調整變數)를 절점좌표(節點座標)로 하고 목적함수(目的凾數)로는 중량함수(重量凾數)로 하여 최적화문제(最適化問題)를 형성(形成)하였다. 절점좌표(節點座標)만을 설계변수(設計變數)로 하므로서 무제약최적화문제(無制約最適化問題)로 형성(形成)되므로 최적화(最適化) 과정(過程)이 용이(容易)하다. 본(本) 연구(研究)의 제(第)1단계(段階)에서는 부재응력(部材應力)을 근사화(近似化)하여 단면(斷面)을 최적화(最適化)하고 제(第)2단계(段階)에서는 형상(形狀)만 최적화(最適化)하는 분할기법(分割技法)을 트러스구조물(構造物)에 적용(適用)한 결과 본(本) 연구(研究)는 트러스구조물(構造物)의 형태(形態), 제약조건식(制約條件式)에 구애받지 않고 최적해(最適解)에 부재응력근사화(部材應力近似化)로 인하여 효율적(效率的)으로 수렴(收斂)하였고 또한 타(他)의 연구(研究)와 거의 동일(同一)한 연구(研究) 결과(結果)를 얻었으며 형상최적화(形狀最適化)로 트러스구조물(構造物)의 중량(重量)을 5.4% - 15.4% 까지 감소(減少)시켰다.

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다분류 SVM을 이용한 DEA기반 벤처기업 효율성등급 예측모형 (The Prediction of DEA based Efficiency Rating for Venture Business Using Multi-class SVM)

  • 박지영;홍태호
    • Asia pacific journal of information systems
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    • 제19권2호
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    • pp.139-155
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    • 2009
  • For the last few decades, many studies have tried to explore and unveil venture companies' success factors and unique features in order to identify the sources of such companies' competitive advantages over their rivals. Such venture companies have shown tendency to give high returns for investors generally making the best use of information technology. For this reason, many venture companies are keen on attracting avid investors' attention. Investors generally make their investment decisions by carefully examining the evaluation criteria of the alternatives. To them, credit rating information provided by international rating agencies, such as Standard and Poor's, Moody's and Fitch is crucial source as to such pivotal concerns as companies stability, growth, and risk status. But these types of information are generated only for the companies issuing corporate bonds, not venture companies. Therefore, this study proposes a method for evaluating venture businesses by presenting our recent empirical results using financial data of Korean venture companies listed on KOSDAQ in Korea exchange. In addition, this paper used multi-class SVM for the prediction of DEA-based efficiency rating for venture businesses, which was derived from our proposed method. Our approach sheds light on ways to locate efficient companies generating high level of profits. Above all, in determining effective ways to evaluate a venture firm's efficiency, it is important to understand the major contributing factors of such efficiency. Therefore, this paper is constructed on the basis of following two ideas to classify which companies are more efficient venture companies: i) making DEA based multi-class rating for sample companies and ii) developing multi-class SVM-based efficiency prediction model for classifying all companies. First, the Data Envelopment Analysis(DEA) is a non-parametric multiple input-output efficiency technique that measures the relative efficiency of decision making units(DMUs) using a linear programming based model. It is non-parametric because it requires no assumption on the shape or parameters of the underlying production function. DEA has been already widely applied for evaluating the relative efficiency of DMUs. Recently, a number of DEA based studies have evaluated the efficiency of various types of companies, such as internet companies and venture companies. It has been also applied to corporate credit ratings. In this study we utilized DEA for sorting venture companies by efficiency based ratings. The Support Vector Machine(SVM), on the other hand, is a popular technique for solving data classification problems. In this paper, we employed SVM to classify the efficiency ratings in IT venture companies according to the results of DEA. The SVM method was first developed by Vapnik (1995). As one of many machine learning techniques, SVM is based on a statistical theory. Thus far, the method has shown good performances especially in generalizing capacity in classification tasks, resulting in numerous applications in many areas of business, SVM is basically the algorithm that finds the maximum margin hyperplane, which is the maximum separation between classes. According to this method, support vectors are the closest to the maximum margin hyperplane. If it is impossible to classify, we can use the kernel function. In the case of nonlinear class boundaries, we can transform the inputs into a high-dimensional feature space, This is the original input space and is mapped into a high-dimensional dot-product space. Many studies applied SVM to the prediction of bankruptcy, the forecast a financial time series, and the problem of estimating credit rating, In this study we employed SVM for developing data mining-based efficiency prediction model. We used the Gaussian radial function as a kernel function of SVM. In multi-class SVM, we adopted one-against-one approach between binary classification method and two all-together methods, proposed by Weston and Watkins(1999) and Crammer and Singer(2000), respectively. In this research, we used corporate information of 154 companies listed on KOSDAQ market in Korea exchange. We obtained companies' financial information of 2005 from the KIS(Korea Information Service, Inc.). Using this data, we made multi-class rating with DEA efficiency and built multi-class prediction model based data mining. Among three manners of multi-classification, the hit ratio of the Weston and Watkins method is the best in the test data set. In multi classification problems as efficiency ratings of venture business, it is very useful for investors to know the class with errors, one class difference, when it is difficult to find out the accurate class in the actual market. So we presented accuracy results within 1-class errors, and the Weston and Watkins method showed 85.7% accuracy in our test samples. We conclude that the DEA based multi-class approach in venture business generates more information than the binary classification problem, notwithstanding its efficiency level. We believe this model can help investors in decision making as it provides a reliably tool to evaluate venture companies in the financial domain. For the future research, we perceive the need to enhance such areas as the variable selection process, the parameter selection of kernel function, the generalization, and the sample size of multi-class.