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The Advantages of Fuzzy Optimization Models in Practical Use

机译:模糊优化模型在实际应用中的优势

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摘要

Classical mathematical programming models require well-defined coefficients and right hand sides. In order to avoid a non satisfying modeling usually a broad information gathering and processing is necessary. In case of real problems some model parameters can be only roughly estimated. While in case of classical models the vague data is replaced by "average data", fuzzy models offer the opportunity to model subjective imaginations of the decision maker as precisely as a decision maker will be able to describe it. Thus the risk of applying a wrong model of the reality and selecting solutions which do not reflect the real problem can be clearly reduced. The modeling of real problems by means of deterministic and stochastic models requires extensive information processing. On the other hand we know that an optimum solution is finally defined only by few restrictions. Especially in case of larger systems we notice afterwards that most of the information is useless. The dilemma of data processing is due to the fact that first we have to calculate the solution in order to define, whether the information must be well-defined or whether vague data may be sufficient. Based on multicriteria programming problems it should be demonstrated that the dilemma of data processing in case of real programming problems can be handled adequately by modeling them as fuzzy system combined with an interactive problem-solving. Describing the real problem by means of a fuzzy system first of all only the available information or such information which can be achieved easily will be considered. Then we try to develop an optimum solution. With reference to the cost-benefit relation further information can be gathered in order to describe the solution more precisely. Furthermore it should be pointed out that some interactive fuzzy solution algorithms, e.g. FULPAL provide the opportunity to solve mixed integer multicriteria programming models as well
机译:经典的数学编程模型需要定义明确的系数和右手边。为了避免不满意的建模,通常需要广泛的信息收集和处理。在实际问题的情况下,只能粗略估计一些模型参数。虽然在经典模型的情况下,模糊数据被“平均数据”代替,但模糊模型提供了对决策者的主观想象力建模的机会,就像决策者将能够描述的那样。因此,可以明显降低应用错误的现实模型并选择不反映实际问题的解决方案的风险。通过确定性和随机模型对实际问题进行建模需要大量的信息处理。另一方面,我们知道最优解决方案最终仅由很少的限制来定义。尤其是在大型系统的情况下,我们随后会注意到大多数信息都是无用的。数据处理的困境是由于以下事实:首先我们必须计算解决方案以便进行定义,信息是否必须定义良好,或者模糊数据是否足够。基于多准则编程问题,应该证明通过将它们建模为模糊系统并与交互式问题解决相结合,可以充分解决实际编程问题下的数据处理难题。首先将考虑通过模糊系统描述实际问题,首先仅考虑可用信息或可以轻松实现的此类信息。然后,我们尝试开发一种最佳解决方案。参考成本-收益关系,可以收集更多信息,以便更准确地描述解决方案。此外,应该指出的是,一些交互式的模糊解算法,例如FULPAL还提供了解决混合整数多准则编程模型的机会

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