A novel use of deep learning to optimize solution space exploration for signal integrity analysis

Mruganka Kashyap, Kumar Keshavan, A. Varma
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引用次数: 6

Abstract

The enhanced complexity of electrical devices has increased the number of variables that directly or indirectly affect the output. Consequently, it has become imperative to explore the massive solution space during integrity analyses, without sacrificing accuracy and development time. In this paper, we offer a simple hybrid algorithm based on a Multi-Layer Perceptron that significantly works better than traditional methods like Least Squares, by balancing the requirements for high accuracy and less development time.
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一种新颖的使用深度学习来优化信号完整性分析的解空间探索
电气设备复杂性的提高增加了直接或间接影响输出的变量的数量。因此,在不牺牲准确性和开发时间的情况下,在完整性分析期间探索大量的解决方案空间变得势在必行。在本文中,我们提供了一种基于多层感知器的简单混合算法,通过平衡高精度和更短的开发时间的要求,该算法明显优于最小二乘等传统方法。
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