智能系统的可持续自治:挑战与展望

R. Kozma
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引用次数: 0

摘要

在海量计算资源和大数据的支持下,尖端自主系统在许多需要在已知条件下进行智能数据处理的重要任务中表现出色。然而,当数据受到干扰或环境发生动态变化时,由于自然影响或人为干扰,这些系统的性能可能会急剧下降。由于可用数据、能源和计算能力的限制,在边缘计算场景和资源有限的板载应用中,挑战尤其艰巨,同时必须以稳健的方式快速做出关键决策。在这种情况下,神经形态的观点提供了至关重要的支持。人类大脑是使用20瓦功率(就像一个灯泡一样!)的高效设备,这远远低于今天需要兆瓦功率才能以创新的方式解决特定学习任务的超级计算机的功耗。这是不可持续的。大脑利用时空振荡来实现基于模式的计算,超越了传统图灵机的顺序符号操作范式。神经形态脉冲芯片,包括忆阻器技术,为该领域提供了至关重要的支持。应用实例包括车载信号处理,分布式传感器系统,自主机器人导航和控制,以及紧急情况的快速响应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sustainable Autonomy of Intelligent Systems: Challenges and Perspectives
Cutting-edge autonomous systems demonstrate outstanding performance in many important tasks requiring intelligent data processing under well-known conditions, supported by massive computational resources and big data. However, the performance of these systems may drastically deteriorate when the data are perturbed, or the environment dynamically changes, either due to natural effects or caused by manmade disturbances. The challenges are especially daunting in edge computing scenarios and on-board applications with limited resources, due to constraints on the available data, energy, computational power, while critical decisions must be made rapidly, in a robust way. A neuromorphic perspective provides crucial support under such conditions. Human brains are efficient devices using 20W power (just like a light bulb!), which is drastically less than the power consumption of today’s supercomputers requiring MWs to solve specific learning tasks in an innovative way. This is not sustainable. Brains use spatio-temporal oscillations to implement pattern-based computing, going beyond the sequential symbol manipulation paradigm of traditional Turing machines. Neuromorphic spiking chips, including memristor technology, provide crucial support to the field. Application examples include on-board signal processing, distributed sensor systems, autonomous robot navigation and control, and rapid response to emergencies.
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