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Guiding Genetic Algorithms using importance measures for reliable design of embedded systems

机译:使用重要性度量指导遗传算法实现嵌入式系统的可靠设计

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Reliability importance measures (IMs) support analysts in understanding the contributions of components to the reliability of the system under investigation. This understanding can be of use to improve the reliability of a system and at the same time, restrict the cost penalty by upgrading only the highly important components to more reliable ones. This paper studies how IMs can enhance the design of embedded systems, more specifically to guide the optimization process. The observations are later employed to modify a well-known Genetic Algorithm (GA) to create new offsprings using the IMs of the components of their parents. The experimental results prove the efficiency of the proposed algorithm which not only seeks for more reliable designs, but also reckons with other design objectives-in this paper resource cost and power consumption-concurrently to ensure that they are not degraded through the optimization process.
机译:可靠性重要性度量(IM)支持分析人员了解组件对所调查系统的可靠性的影响。这种理解可用于提高系统的可靠性,同时通过仅将非常重要的组件升级为更可靠的组件来限制成本损失。本文研究了IM如何增强嵌入式系统的设计,更具体地说,是指导优化过程。后来将这些观察结果用于修改众所周知的遗传算法(GA),以使用其父级组件的IM创建新的后代。实验结果证明了该算法的有效性,该算法不仅寻求更可靠的设计,而且还考虑了其​​他设计目标-本文同时考虑了资源成本和功耗,以确保它们不会在优化过程中退化。

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