XGBIR: An XGBoost-based IR Drop Predictor for Power Delivery Network

C. Pao, An-Yu Su, Yu-Min Lee
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引用次数: 9

Abstract

This work utilizes the XGBoost to build a machine-learning-based IR drop predictor, XGBIR, for the power grid. To capture the behavior of power grid, we extract its several features and employ its locality property to save the extraction time. XGBIR can be effectively applied to large designs and the average error of predicted IR drops is less than 6 mV.
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基于xgboost的输电网红外下降预测器
这项工作利用XGBoost为电网构建了一个基于机器学习的红外下降预测器XGBIR。为了捕获电网的行为,我们提取了电网的多个特征,并利用其局部性来节省提取时间。XGBIR可以有效地应用于大型设计,预测红外降的平均误差小于6 mV。
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