动态环境下可预测行为的内在演化

Peter Tawdross, S. Lakshmanan, A. König
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引用次数: 12

摘要

传感器电子性能容易受到静态和动态偏差的影响。即使激光切边也不能处理所有的偏差。最近,模拟可重构电子提供了一种解决方案来补偿这些影响。目前的技术使用遗传算法(GA)来查找任意拓扑以满足给定的规范,这可能导致硬件具有不可预测的行为。在任何环境变化的情况下,最先进的技术从头开始进化。考虑到重构方法的鲁棒性,我们使用粒子群优化(PSO)[13]作为遗传算法的替代方案,用于可编程传感器电子器件的重构。在本文中,我们扩展了我们的工作,研究动态环境中的PSO方法,其中硬件可以跟踪环境变化而无需从头开始。我们在真正的硬件上运行算法(内在进化)。我们的硬件是这样设计的,它的性能可以通过使用标准电路拓扑来预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrinsic Evolution of Predictable Behavior Evolvable Hardware in Dynamic Environment
Sensor electronics performance is susceptible to static and dynamic deviations. Even laser trimming still can¿t deal with all the deviations. Recently, analog reconfigurable electronics offers a solution to compensate these effects. The state of the art uses genetic algorithm (GA) to find an arbitrary topology to fulfill the given specifications, which can cause hardware with unpredictable behavior. In case of any environmental change, the state of the art starts the evolution from scratch. Considering the robustness of the reconfiguration approach, we used the particle swarm optimization (PSO) [13] as an alternative to GA for reconfiguration of programmable sensor electronics. In this paper, we extend our work to investigate the PSO methods for dynamic environment in which the hardware can track the environmental change without starting from scratch. We run the algorithm on a real hardware (intrinsic evolution). Our hardware was designed in such a way that its performance is predictable by employing standard circuit topologies.
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