A new solution for solving a multi-objective integer programming problem with probabilistic multi-objective optimization

Maošeng Dženg, Đai Ju
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Abstract

Introduction/purpose: In this paper, a new solution for solving a multiobjective integer programming problem with probabilistic multi - objective optimization is formulated. Furthermore, discretization by means of the good lattice point and sequential optimization are employed for a successive simplifying treatment and deep optimization. Methods: In probabilistic multi - objective optimization, a new concept of preferable probability has been introduced to describe the preference degree of each performance utility of a candidate; each performance utility of a candidate contributes a partial preferable probability and the product of all partial preferable probabilities deduces the total preferable probability of a candidate; the total preferable probability thus transfers a multi-objective problem into a single-objective one. Discretization by means of the good lattice point is employed to conduct discrete sampling for a continuous objective function and sequential optimization is used to perform deep optimization. At first, the requirements of integers in the treatment could be given up so as to simply conduct above procedures. Finally, the optimal solutions of the input variables must be rounded to the nearest integers. Results: This new scheme is used to deal with two production problems, i.e., maximizing profit while minimizing pollution and determining a purchasing plan for spending as little money as possible while getting as large amount of raw materials as possible. Promising results are obtained for the above two problems from the viewpoint of the probability theory for simultaneous optimization of multiple objectives. Conclusion: This method properly considers simultaneous optimization of multiple objectives in multi-objective integer programming, which naturally reflects the essence of multi-objective programming, and opens a new way of solving multi-objective problems.
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基于概率多目标优化的多目标整数规划问题的一种新解
简介/目的:本文给出了求解具有概率多目标优化的多目标整数规划问题的一种新解法。此外,利用良好格点的离散化方法和序贯优化方法进行了逐次简化处理和深度优化。方法:在概率多目标优化中,引入了优选概率的概念来描述候选对象各性能效用的优选程度;候选物的每个性能效用贡献部分优选概率,所有部分优选概率的乘积推导出候选物的总优选概率;总优选概率将多目标问题转化为单目标问题。采用良好格点离散化方法对连续目标函数进行离散采样,采用顺序优化方法进行深度优化。首先,可以放弃处理中整数的要求,简单地进行上述程序。最后,输入变量的最优解必须四舍五入到最接近的整数。结果:这个新方案解决了两个生产问题,即利润最大化同时污染最小化和确定采购计划,以尽可能少的钱获得尽可能多的原材料。从多目标同时优化概率论的观点出发,对上述两个问题都得到了令人满意的结果。结论:该方法恰当地考虑了多目标整数规划中的多目标同时优化问题,自然地体现了多目标规划的本质,为解决多目标问题开辟了一条新的途径。
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0.00%
发文量
24
审稿时长
12 weeks
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