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Thermal-aware floorplanning using genetic algorithms

机译:使用遗传算法的热感知平面规划

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In this work, we present a genetic algorithm based thermal-aware floorplanning framework that aims at reducing hot spots and distributing temperature evenly across a chip while optimizing the traditional design metric, chip area. The floorplanning problem is formulated as a genetic algorithm problem, and a tool called HotSpot is used to calculate floorplanning temperature based on the power dissipation, the physical dimension, and the location of modules. Area and/or temperature optimizations guide the genetic algorithm to generate the final fittest solution. The experimental results using MCNC benchmarks and a face detection chip show that our combined area and thermal optimization technique decreases the peak temperature sufficiently while providing floorplans that are as compact as the traditional area-oriented techniques.
机译:在这项工作中,我们提出了一种基于遗传算法的热感知平面规划框架,旨在减少热点并在整个芯片上均匀分布温度,同时优化传统的设计指标(芯片面积)。将布局规划问题表述为遗传算法问题,并使用称为HotSpot的工具基于功耗,物理尺寸和模块位置来计算布局规划温度。面积和/或温度优化可指导遗传算法生成最终的优胜劣汰解决方案。使用MCNC基准测试和面部检测芯片的实验结果表明,我们结合的面积和热优化技术可充分降低峰值温度,同时提供与传统的面向区域的技术一样紧凑的平面图。

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