Efficient Pathfinding Co-Processors for FPGAs

A. S. Nery, A. Sena, Leandro S. Guedes
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引用次数: 4

Abstract

Pathfinding algorithms are at the heart of several classes of applications, such as network appliances (routing), GPS navigation and autonomous cars, which are related to recent trends in Artificial Intelligence and Internet of Things (IoT). Moreover, advances in semiconductor miniaturization technologies have enabled the design of efficient Systems-on-Chip (SoC) devices, with demanding performance requirements and energy consumption constraints. Such systems might include Field Programmable Gate Arrays (FPGAs) to allow the design of customized co-processors that yield lower power consumption and higher performance. Therefore, this work aims at designing and evaluating four efficient pathfinding co-processors, each one implementing a different well-known pathfinding algorithm: breadth-first, dijkstra, greedy and a-star. Each co-processor is designed using Xilinx High-Level Synthesis (HLS) compiler and is implemented in the programming logic of a Xilinx FPGA embedded with an ARM microprocessor, which is in charge of controlling the set of co-processors. Extensive performance, circuit-area and energy consumption results shows that each co-processor can efficiently execute a pathfinding algorithm, paving the way for novel dedicated accelerators.
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fpga的高效寻路协处理器
寻路算法是几类应用的核心,例如网络设备(路由)、GPS导航和自动驾驶汽车,这些应用与人工智能和物联网(IoT)的最新趋势有关。此外,半导体小型化技术的进步使设计高效的片上系统(SoC)器件成为可能,但要求苛刻的性能和能耗限制。这样的系统可能包括现场可编程门阵列(fpga),允许设计定制的协处理器,从而产生更低的功耗和更高的性能。因此,本工作旨在设计和评估四种高效的寻路协处理器,每个协处理器实现不同的知名寻路算法:宽度优先,dijkstra,贪婪和a-star。每个协处理器使用Xilinx High-Level Synthesis (HLS)编译器设计,并在Xilinx FPGA的编程逻辑中实现,FPGA内嵌ARM微处理器,负责控制协处理器的集合。广泛的性能、电路面积和能耗结果表明,每个协处理器都可以有效地执行寻路算法,为新型专用加速器铺平了道路。
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