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Integrated System-Level Optimization for Concurrent Engineering With Parametric Subsystem Modeling

机译:参数子系统建模的并行工程集成系统级优化

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摘要

The introduction of concurrent design practices to the aerospace industry has greatly increased the productivity of engineers and teams during design sessions as demonstrated by JPL's Team X. Simultaneously, advances in computing power have given rise to a host of potent numerical optimization methods capable of solving complex multidisciplinary optimization problems containing hundreds of variables, constraints, and governing equations. Unfortunately, such methods are tedious to set up and require significant amounts of time and processor power to execute, thus making them unsuitable for rapid concurrent engineering use. This paper proposes a framework for Integration of System-Level Optimization with Concurrent Engineering (ISLOCE). It uses parametric neural-network approximations of the subsystem models. These approximations are then linked to a system-level optimizer that is capable of reaching a solution quickly due to the reduced complexity of the approximations. The integration structure is described in detail and applied to the multiobjective design of a simplified Space Shuttle external fuel tank model. Further, a comparison is made between the new framework and traditional concurrent engineering (without system optimization) through an experimental trial with two groups of engineers. Each method is evaluated in terms of optimizer accuracy, time to solution, and ease of use. The results suggest that system-level optimization, running as a background process during integrated concurrent engineering sessions, is potentially advantageous as long as it is judiciously implemented.
机译:正如JPL的Team X所展示的,将并行设计实践引入航空航天业极大地提高了工程师和团队在设计会议期间的生产率。同时,计算能力的进步也带来了许多能够解决复杂问题的有效数值优化方法。包含数百个变量,约束和控制方程的多学科优化问题。不幸的是,这样的方法设置起来很麻烦,并且需要大量时间和处理器能力来执行,因此使它们不适合快速并发工程使用。本文提出了一个系统级优化与并行工程集成的框架(ISLOCE)。它使用子系统模型的参数神经网络近似。然后,将这些近似值链接到系统级优化器,该系统级优化器由于降低了近似值的复杂性而能够快速找到解决方案。详细描述了该集成结构,并将其应用于简化的航天飞机外部燃油箱模型的多目标设计。此外,通过两组工程师的试验性试验,对新框架与传统并发工程(无系统优化)进行了比较。每种方法均根据优化程序的准确性,求解时间和易用性进行评估。结果表明,只要明智地实施,在集成并发工程会话期间作为后台进程运行的系统级优化就可能具有优势。

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