Graphical Method for Solving Neutrosophical Nonlinear Programming Models

Maissam Jdid, F. Smarandache
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引用次数: 2

Abstract

An important method for finding the optimal solution for linear and nonlinear models is the graphical method, which is used if the linear or nonlinear mathematical model contains one, two, or three variables. The models that contain only two variables are among the most models for which the optimal solution has been obtained graphically, whether these models are linear or non-linear in references and research that are concerned with the science of operations research, when the data of the issue under study is classical data. In this research, we will present a study through, which we present the graphical method for solving Neutrosophical nonlinear models in the following case: A nonlinear programming issue, the objective function is a nonlinear function, and the constraints are linear functions. Note that we can use the same method if (i) the objective function follower is a linear follower and the constraints are nonlinear; (ii) the objective function is a non-linear follower and the constraints are non-linear. In the three cases, the nonlinear models are neutrosophic, and as we know, the mathematical model is a nonlinear model if any of the components of the objective function or the constraints are nonlinear expressions, and the nonlinear expressions may be in both. At the left end of the constraints are neutrosophic values, at least one or all of them. Then, the possible solutions to the neutrosophic nonlinear programming problem are the set of rays NX ∈ Rn that fulfills all the constraints. As for the region of possible solutions, it is the region that contains all the rays that fulfill the constraints. The optimal solution is the beam that fulfills all constraints and at which the function reaches a maximum or minimum value, depending on the nature of the issue under study (noting that it is not necessary to be alone).
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求解中性非线性规划模型的图解方法
寻找线性和非线性模型最优解的一个重要方法是图解法,当线性或非线性数学模型包含一个、两个或三个变量时使用。在运筹学相关的文献和研究中,无论这些模型是线性的还是非线性的,当所研究问题的数据是经典数据时,仅包含两个变量的模型都是得到图形化最优解最多的模型之一。在本研究中,我们将通过一项研究,在以下情况下,我们提出求解中性哲学非线性模型的图解方法:非线性规划问题,目标函数是非线性函数,约束是线性函数。注意,如果(i)目标函数从动器是线性从动器,约束是非线性的,我们可以使用相同的方法;(ii)目标函数是非线性从者,约束条件也是非线性的。在这三种情况下,非线性模型是中性的,正如我们所知,如果目标函数的任何一个分量或约束是非线性表达式,则数学模型是非线性模型,非线性表达式可能同时存在于两者中。在约束条件的左端是中性值,至少一个或全部。则中性非线性规划问题的可能解为满足所有约束条件的射线集NX∈Rn。至于可能解的区域,它是包含所有满足约束条件的射线的区域。最优解是满足所有约束且函数达到最大值或最小值的梁,这取决于所研究问题的性质(注意不一定是单独的)。
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