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OPTIMIZATION OF A GAS TURBINE ENGINE ROTOR DISC USING CASE-BASED REASONING AND THE GATE GENETIC ALGORITHM

机译:基于案例推理和门遗传算法的燃气轮机转子盘优化

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The implementation of an automated decision support system in the field of structural design and optimization can give a significant advantage to any industry working on mechanical design. Such a system can reduce the project cycle time or allow more time to produce a better design by providing solution ideas to a designer or by upgrading existing design solutions while the designer is not at work.This paper presents an approach to automating the process of designing a gas turbine engine rotor disc using case-based reasoning (CBR), combined with a new genetic algorithm, the Genetic Algorithm with Territorial core Evolution (GATE). GATE was specifically created to solve problems in the mechanical structural design field, and is essentially a real number genetic algorithm that prevents new individuals from being born too close to previously evaluated solutions. The restricted area becomes smaller or larger during optimization to allow global or local searches when necessary.The CBR process uses a databank filled with every known solution to similar design problems. The closest solutions to the current problem in terms of specifications are selected, along with an estimated solution from an artificial neural network. Each solution selected by the CBR is then used to initialize the population of a GATE island.Our results show that CBR may significantly upgrade the performance of an optimization algorithm when sufficient preliminary information is known about the design problem. It provides an average solution 5.0% lighter than the average solution found using random initialization.The results are compared to other results obtained for the same problems by four optimization algorithms from the I-SIGHT 3.5 software: the sequential quadratic programming algorithm (SQP), the insular genetic algorithm (GA), the Hookes & Jeeves generalized pattern search (HJ) and POINTER.Results show that GATE can be a very good candidate for automating and accelerating the structural design of a gas turbine engine rotor disc, providing an average disc 18.9% lighter than SQP, 11.2% lighter than HJ, 23.9% lighter than GA and 4.3% lighter than POINTER, even when starting with the same solution set.
机译:在结构设计和优化领域中,自动化决策支持系统的实施可以为从事机械设计的任何行业带来显着优势。通过向设计人员提供解决方案思想或在设计人员不工作时升级现有设计解决方案,这样的系统可以减少项目周期时间或留出更多时间来生成更好的设计。 本文提出了一种基于案例推理(CBR)的燃气轮机转子盘自动化设计方法,该方法结合了一种新的遗传算法,即具有地核演化的遗传算法(GATE)。 GATE是专门为解决机械结构设计领域中的问题而创建的,本质上是一种实数遗传算法,可防止新个体出生时过于接近先前评估的解决方案。在优化过程中,限制区域会变小或变大,以便在必要时进行全局或局部搜索。 CBR流程使用一个数据库,其中装有解决类似设计问题的每个已知解决方案。在规格方面,选择与当前问题最接近的解决方案,以及来自人工神经网络的估计解决方案。然后,将CBR选择的每个解决方案用于初始化GATE岛的填充。 我们的结果表明,当了解有关设计问题的足够初步信息时,CBR可能会显着提升优化算法的性能。它提供的平均解决方案比使用随机初始化发现的平均解决方案轻5.0%。 将结果与通过I-SIGHT 3.5软件的四种优化算法针对相同问题获得的其他结果进行比较:顺序二次编程算法(SQP),岛遗传算法(GA),胡克斯和吉夫斯广义模式搜索(HJ) )和POINTER。 结果表明,GATE是自动化和加速燃气轮机转子盘结构设计的很好候选者,其平均盘比SQP轻18.9%,比HJ轻11.2%,比GA轻23.9%,比GA轻4.3%即使使用相同的解决方案集,也比POINTER更好。

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