分类灰尘中的魔鬼:边缘AI

Jared Riley, S. Williams, Corey Reyna, Ethan R. Adams, Arthur C. Depoian, Colleen P. Bailey, P. Guturu
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引用次数: 1

摘要

未来几年,NASA最具挑战性和最重要的目标之一就是成功地将人类送上火星。在过去的60年里,对卫星和漫游者任务的安全问题的关注,成为人类乘客更重要的考虑因素。火星的大气和地表条件可能会突然变化,导致通信中断、设备故障和潜在的安全威胁。突然发生的沙尘暴,或者更常见的尘暴,会干扰大气进入、地面机械设备、太阳能充电系统等等。本文提出将传统的信号处理技术与高效的机器学习算法相结合,对这颗红色星球上的大气扰动进行高精度分类。
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Classifying the Devil in the Dust: Edge AI
One of the most challenging and significant objectives of NASA over the coming years is to successfully send humans to Mars. The past six decades of safety concerns addressed for satellite and rover missions, become an even more important consideration with human passengers. Atmospheric and surface conditions of Mars can change abruptly, leading to communication breaks, equipment failures, and potential safety threats. The sudden onset of a dust storm, or a more common dust devil, can interfere with atmospheric entry, ground mechanical equipment, solar charging systems, and much more. By combining traditional signal processing techniques and with an efficient machine learning algorithm, this paper proposes to classify atmospheric disturbances on the red planet with a high level of accuracy.
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