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Expected Value Model and Algorithm for Network Bottleneck Capacity Expansion Under Fuzzy Environment

机译:模糊环境下网络瓶颈容量扩张的预期价值模型及算法

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This paper considers the capacities of the elements in a set E efficiently so that the total cost for the increment of capacity can be decrease to maximum extent while the final expansion capacity of a given family F of subsets of E is with a given limit bound. The paper supposes the cost w is a fuzzy variable. Network bottleneck capacity expansion problem with fuzzy cost is originally formulated as Expected value model according to some criteria. For solving the fuzzy model efficiently, network bottleneck capacity algorithm, fuzzy simulation, neural network(NN) and genetic algorithm(GA) are integrated to produce a hybrid intelligent algorithm.
机译:本文将元素有效地考虑了集合E中的元件的能力,使得能力增量的总成本可以减少到最大程度,而E子集的给定系列F的最终扩展容量是具有给定限制的余额。本文假设成本W是模糊变量。网络瓶颈容量扩展问题与模糊成本最初根据一些标准制定为预期值模型。为了有效地解决模糊模型,集成了网络瓶颈容量算法,模糊模拟,神经网络(NN)和遗传算法(GA)以产生混合智能算法。

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