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4.2 A 12nm Autonomous-Driving Processor with 60.4TOPS, 13.8TOPS/W CNN Executed by Task-Separated ASIL D Control

机译:4.2 12nm自主驱动处理器,具有60.4秒,13.8tops / w CNN由任务分离的ASIL D控制执行

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Autonomous driving systems, when deployed to market, will require accurate and high-speed recognition, judgment and operation. Convolutional neural networks (CNNs) require large amounts of computation for pattern recognition. The CNN performance required for level-3 autonomous driving systems is 120TOPS or higher. As shown in Fig. 4.2.1, recent CNN implementations are oriented toward high performance and low power [1] –[4]. In previously reported SoCs for autonomous driving [5], power consumption is more than 70W, requiring a heavy and expensive water-cooling system. To save weight and cost by using an air-cooling system for an in-vehicle electronics control unit (ECU), power consumption less than 25W is indispensable and around half of that can be assigned for the SoC. Consequently, achieving 120TOPS with 10TOPS/W is necessary for an autonomous driving system. At the same time, achieving the ASIL D standard, the highest safety level defined in ISO 26262, is also required for SoCs for autonomous driving. Dual-core lock step (DCLS) is a technique to satisfy ASIL D by comparing the results of parallel execution of the same process in duplicated hardware. However, simple full-time DCLS doubles power consumption and degrades power efficiency. In this paper, we achieve 60.4TOPS CNN performance with 13.8TOPS/W efficiency in an application processor having high-reliability ASIL D targeted safety mechanisms for autonomous driving system. One and two-device configurations achieving performance of 60 and 120TOPS, respectively, for ADAS and autonomous driving offer practical solutions for products.
机译:部署到市场的自动驾驶系统需要准确,高速识别,判断和操作。卷积神经网络(CNNS)需要大量的模式识别计算。第3级自主驱动系统所需的CNN性能为120亿或更高。如图4.2.1所示,最近的CNN实施方式朝向高性能和低功率[1] - [4]。在先前报告的自主驾驶[5]中,功耗超过70W,需要沉重和昂贵的水冷系统。通过使用空气冷却系统,用于车载电子控制单元(ECU),功耗小于25W节省重量和成本是不可缺少的,并围绕一半的可分配用于在SoC。因此,对于自主驱动系统,需要实现10TOPS / W的120秒。同时,实现ASIL D标准,ISO 26262中定义的最高安全水平也是用于自主驾驶的SOC。双核锁定步骤(DCLS)是通过比较在重复硬件中的并行执行的并行执行结果来满足ASIL D的技术。但是,简单的全日制DCLS将功耗倍增,降低功率效率。在本文中,我们在具有高可靠性ASIL D针对自动驱动系统的应用处理器的应用处理器中实现了60.4秒的CNN性能。对于ADA和自主驾驶,分别实现了60和120tops性能的一个和双器件配置为产品提供了实用的解决方案。

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