Effective Compression Modeling for Packaged Integrated Circuit with Compressive Sensing

Xinsheng Wang, Bin Sun
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Abstract

In this paper, the compressive sensing theory is applied to the integrated circuit compression modeling. The microprocessor chip is divided into a number of dense micro-regions, and the temperature information of each region in a certain time domain is collected to form a temperature parameter matrix of the time domain and the region. The high-dimensional temperature parameter matrix is mapped to the low-dimensional space by principal component analysis to obtain the critical point temperature of the chip. By observing the critical point temperature, the chip can be used to recover the temperature parameter of the dense distribution. This is the compression modeling method of integrated circuit chips, which is of great significance for the early warning and protection of integrated circuit reliability. The experiment compares the effects of the compressed sensing modeling method and the traditional modeling method. The experimental results show that the recovery efficiency and accuracy of the model are improved by nearly 1.5 times.
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基于压缩感知的封装集成电路有效压缩建模
本文将压缩感知理论应用于集成电路的压缩建模。将微处理器芯片划分为多个密集的微区域,收集每个区域在某一时域内的温度信息,形成该时域和该区域的温度参数矩阵。通过主成分分析,将高维温度参数矩阵映射到低维空间,得到芯片的临界点温度。通过对临界点温度的观测,芯片可以恢复密度分布的温度参数。这是集成电路芯片的压缩建模方法,对集成电路可靠性的预警和保护具有重要意义。实验比较了压缩感知建模方法与传统建模方法的效果。实验结果表明,该模型的恢复效率和精度提高了近1.5倍。
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