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An optimization method combined genetic algorithm with neural network

机译:遗传算法与神经网络相结合的优化方法

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Based on genetic arithmetic and neural network theory, aggregate gradation of asphalt stabilized base course mixtures was optimized. In the course of optimization, the target function was asphalt mixtures fatigue properties, and the decisive parameter were the weight passed through 9.5mm sieve and ore powder dose. Compared to Superpave aggregate gradation, the optimized one fixed in with Superpavegradation prescript totally. Through fatigue experiment, the optimized asphalt mixtures fatigue properties was the longest. It is shown that the optimization method based on genetic arithmetic and neural network can be used to optimize asphalt mixtures aggregate gradation. This method is available to optimize involved target function that cannot be expressed by the decisive parameter apparently.
机译:基于遗传算法和神经网络理论,优化了沥青稳定基层混合料的骨料级配。在优化过程中,目标功能是沥青混合料的疲劳性能,而决定性参数是通过9.5毫米筛的重量和矿粉剂量。相对于Superpave骨料级配,优化后的骨料全部采用Superpavegradation规范固定。通过疲劳试验,优化后的沥青混合料疲劳性能最长。结果表明,基于遗传算法和神经网络的优化方法可用于优化沥青混合料的骨料级配。该方法可用于优化所涉及的目标功能,而目标功能显然无法通过决定性参数来表达。

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