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1.
另一种新的多指标综合评判方法   总被引:1,自引:0,他引:1  
指出由决策方案在理想方案上的投影及其到理想方案的距离还不能完全确定决策方案的优劣,应该综合考虑决策方案与理想方案的相似系数及其到理想方案的距离.构造了一种基于相似系数和距离的贴近度,给出了一种新的多指标综合评价方法.方法的有效性和合理性通过实例得到了验证.  相似文献   

2.
针对用TOPSIS法进行三元区间数型多属性决策的不足,用各方案到"理想方案"的"垂面"距离代替TOPSIS法中的欧氏距离,提出一种三元区间数型多属性决策正交投影模型.模型将"理想方案"平移至坐标原点后,转换为0向量,只用平移后的"负理想方案"计算各方案到"理想方案"的"垂面"距离,根据距离最小原则排序得到最终决策结果.通过一个边坡支护方案评价的例子进行了计算分析,并与用其他方法得到的结果进行了对比,说明了模型的有效性.  相似文献   

3.
基于Hausdauff度量的模糊TOPSIS方法研究   总被引:4,自引:0,他引:4  
针对模糊多属性决策中的模糊 TOPSIS方法 ,提出了一种基于 Hausdauff度量的模糊 TOPSIS方法 .首先由模糊极大集与模糊极小集确定模糊多属性决策问题的理想解与负理想解 ,进而由 Hausdauff度量获得不同备选方案到理想解与负理想解的距离及其贴近度 ,根据贴近度指标对方案进行排序 ,为决策者提供决策支持 .最后以 L-R梯形模糊数为例进行了实例研究 .  相似文献   

4.
联系向量距离与灰色关联度结合的理想解法   总被引:1,自引:0,他引:1  
针对传统理想解法采用欧氏距离计算的缺陷,提出了联系向量距离与灰色关联度结合的理想解法.首先将理想点与负理想点均视为确定不确定系统中相互对立的集合,计算各待决策方案与理想解和负理想解的联系向量距离;然后采用灰色关联度方法计算各待决策方案与理想解和负理想解之间的相似程度;其次通过定义新的综合距离和综合距离贴近度构建联系向量距离与灰色关联度结合的理想解法.该方法在有效地解决传统理想解法缺陷的基础上,还包含了待决策方案在趋势上的差异性,同时综合距离在权重分配上充分考虑了决策者的偏好或者专家意见,使评价结果更加有效.最后采用算例验证了该方法的可行性和有效性.  相似文献   

5.
针对用TOPSIS法进行多属性决策时备择方案可能既与"理想方案"距离最近,又与"负理想方案"距离最近的不足,用正交投影代替TOPSIS法中的相对贴近度,建立了区间数型多属性决策正交投影模型.模型首先将"理想方案"平移至坐标原点后,转换为0向量,只用平移后的"负理想方案"计算正交距离,然后将区间数转换为a+bi型联系数,根据联系数复运算排序得到最终决策结果.通过一个工程设计方案评价例子进行了计算分析,说明了模型的有效性.  相似文献   

6.
为了衡量TOPSIS方法中不同距离函数对油田开发最优决策方案的影响,综合考虑技术、经济和效益等指标,分别采用曼哈顿距离、欧式距离、切比雪夫距离和垂面距离来探究油田开发方案排序之间的差异性.同时,为解决这种差异,通过计算4种距离函数下方案排序对理想开发方案的隶属度,并采用加权组合决策的方法对4种优选结果进行综合决策.  相似文献   

7.
直觉模糊多属性决策的TOPSIS法   总被引:3,自引:0,他引:3  
属性值和权重都是直觉模糊集的多属性决策问题不同于一般的多属性决策问题,不能运用现有的决策方法求解。本文给出了直觉模糊正、负理想方案的定义及其与每个方案的欧氏距离,进而建立了每个方案与直觉模糊正理想方案的相对贴近度计算方法,从此产生所有方案的优序排序,即拓展了TOPSIS法。数值实例说明了该方法的有效性和实用性,可为解决直觉模糊多属性决策提供新途径。  相似文献   

8.
针对直觉模糊信息多属性决策中存在的问题,提出一种基于优化理论的多属性决策方法.该方法首先按照方案的属性类别确定直觉模糊"理想方案"和"负理想方案",然后计算各方案与"理想方案"和"负理想方案"的距离,运用扩展的最小二乘方准则构造目标函数求解,建立了直觉模糊信息多属性优化决策模型.最后,通过黄河下游公路大桥超深大直径钻孔...  相似文献   

9.
模糊多属性决策在装备质量评价中的应用   总被引:5,自引:0,他引:5  
从介绍装备质量的概念开始 ,揭示了装备质量评价的本质——模糊多属性决策 .建立了决策矩阵 ,采用层次分析法得到了各属性的权重 ,采用折衷型模糊多属性决策方法 ,在得到理想解与负理想解之后 ,计算了各方案与理想解和负理想解的欧几里得距离 ,并以远离负理想解为准则完成了装备方案的优选排序 .  相似文献   

10.
基于vague集投影及距离的模糊多指标决策   总被引:7,自引:1,他引:6  
提出了两个vague值投影和距离的概念,并在此基础上给出了考虑指标权重影响的基于vague集投影和距离的多指标模糊决策方法.在这个方法中,利用候选方案在理想方案上的投影和距离来求出最佳方案.此方法与文献现有的应用vague集相似度度量进行决策的方法相比较,新方法更加合理且弥补了现有方法的不足之处.最后对实例进行分析计算,算例验证了该方法的有效性.  相似文献   

11.
One of the most difficult tasks in multiple criteria decision analysis (MCDA) is determining the weights of individual criteria so that all alternatives can be compared based on the aggregate performance of all criteria. This problem can be transformed into the compromise programming of seeking alternatives with a shorter distance to the ideal or a longer distance to the anti-ideal despite the rankings based on the two distance measures possibly not being the same. In order to obtain consistent rankings, this paper proposes a measure of relative distance, which involves the calculation of the relative position of an alternative between the anti-ideal and the ideal for ranking. In this case, minimizing the distance to the ideal is equivalent to maximizing the distance to the anti-ideal, so the rankings obtained from the two criteria are the same. An example is used to discuss the advantages and disadvantages of the proposed method, and the results are compared with those obtained from the TOPSIS method.  相似文献   

12.
在模糊多属性决策中,属性权重的确定对于整个评价工作有十分重要的意义.如果评价属性数量过多,指标间的相关性将影响评价的科学性和公平性.本文建立了评价值为梯形模糊数的"相似"概念和模糊相似评价模型,并基于格序决策的理论,得到了一种新的模糊格序决策方法.结合传统的TOPSIS方法,通过计算将各方案的属性值的中心进行加权后与正负理想中心的贴近度的大小,实现备选方案的格序化排序.实例分析的结果表明:方法合理、易行.  相似文献   

13.
The aim of this article is further extending the linear programming techniques for multidimensional analysis of preference (LINMAP) to develop a new methodology for solving multiattribute decision making (MADM) problems under Atanassov’s intuitionistic fuzzy (IF) environments. The LINMAP only can deal with MADM problems in crisp environments. However, fuzziness is inherent in decision data and decision making processes. In this methodology, Atanassov’s IF sets are used to describe fuzziness in decision information and decision making processes by means of an Atanassov’s IF decision matrix. A Euclidean distance is proposed to measure the difference between Atanassov’s IF sets. Consistency and inconsistency indices are defined on the basis of preferences between alternatives given by the decision maker. Each alternative is assessed on the basis of its distance to an Atanassov’s IF positive ideal solution (IFPIS) which is unknown a prior. The Atanassov’s IFPIS and the weights of attributes are then estimated using a new linear programming model based upon the consistency and inconsistency indices defined. Finally, the distance of each alternative to the Atanassov’s IFPIS can be calculated to determine the ranking order of all alternatives. A numerical example is examined to demonstrate the implementation process of this methodology. Also it has been proved that the methodology proposed in this article can deal with MADM problems under not only Atanassov’s IF environments but also both fuzzy and crisp environments.  相似文献   

14.
针对模糊群体多属性决策问题,给出一种基于理想点法(TOPSIS)的多属性决策方法.方法先用三角模糊数的形式表示专家评价值的模糊性和不确定性,而后考虑了专家在不同评价属性中的重要程度和意见的相似度,并将专家意见进行集结得到专家群体关于方案集的模糊决策矩阵,最后定义了三角模糊数形式的正负理想方案,通过计算各方案与正负理想方案的距离以及各方案与理想点的相对接近度,最终确定最优方案.通过实例分析说明了该方法的可行性和有效性.  相似文献   

15.
Groups often face complex decisions; decisions in which the decision alternatives are not clearly defined and the criteria for choosing an alternative are subject to dispute within the group. We present a Group Decision Support System that will use judgments from the group to visualize the decision problem in a probabilistic geometric space. In this geometric representation, actual decision alternatives and an ideal alternative—an artificial alternative that identifies the ideal solution to the group's decision dilemma—are portrayed as distributions in a multi-dimensional space. Dispersions of the distributions measure the uncertainties of the decision process. The psychometric theory used to develop the probabilistic geometric representation is described. Preliminary research is presented which demonstrates that geometric representations of this type help groups both to understand better the decision they face and to find better solutions.  相似文献   

16.
The aim of this paper is to develop a new fuzzy closeness (FC) methodology for multi-attribute decision making (MADM) in fuzzy environments, which is an important research field in decision science and operations research. The TOPSIS method based on an aggregating function representing “closeness to the ideal solution” is one of the well-known MADM methods. However, while the highest ranked alternative by the TOPSIS method is the best in terms of its ranking index, this does not mean that it is always the closest to the ideal solution. Furthermore, the TOPSIS method presumes crisp data while fuzziness is inherent in decision data and decision making processes, so that fuzzy ratings using linguistic variables are better suited for assessing decision alternatives. In this paper, a new FC method for MADM under fuzzy environments is developed by introducing a multi-attribute ranking index based on the particular measure of closeness to the ideal solution, which is developed from the fuzzy weighted Minkowski distance used as an aggregating function in a compromise programming method. The FC method of compromise ranking determines a compromise solution, providing a maximum “group utility” for the “majority” and a minimum individual regret for the “opponent”. A real example of a personnel selection problem is examined to demonstrate the implementation process of the method proposed in this paper.  相似文献   

17.
With respect to multiple attribute decision making (MADM) problems in which the attribute value takes the form of intuitionistic trapezoidal fuzzy number, and the attribute weight is unknown, a new decision making analysis methods are developed. Firstly, some operational laws and expected values of intuitionistic trapezoidal fuzzy numbers, and distance between two intuitionistic trapezoidal fuzzy numbers, are introduced. Then information entropy method is used to determine the attribute weight, and the grey relational projection method combined grey relational analysis method and projection method is proposed, and to rank the alternatives are done by the relative closeness to PIS which combines grey relational projection values from the positive ideal solution and negative ideal solution to each alternative. Finally, an illustrative example is given to verify the developed approach and to demonstrate its practicality and effectiveness.  相似文献   

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