基于预测模型的快速分层系统综合

Adil Brik, L. Labrak, I. O’Connor, D. Saias
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引用次数: 0

摘要

基于帕累托前沿的预测模型是理解和利用电子电路和系统设计中的权衡的关键工具。这些预测模型主要用于加速设计和强制重用[4]。主要的缺点是它们的生成需要大量的时间,这取决于模拟和多目标优化时间。本文提出了一种利用宏观模型仿真工具(Tactyle)和优化软件(MIDACO)快速、准确地建立预测模型的有效方法。从系统预测模型出发,开发了自顶向下的流程,将系统约束传播到较低层次的块,从而设计出满足系统规范要求的子块。该方法应用于降压变换器电路
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Fast hierarchical system synthesis based on predictive models
Predictive models based on Pareto fronts are key tools to understand and leverage tradeoffs in electronic circuit and system design. These predictive models are mostly used to accelerate design and enforce reuse [4]. The main drawback is that their generation requires a huge time which depends on both simulation and multi objective optimization time. This paper presents an efficient method to build predictive models with more speed and accuracy employing macro models simulation tool (Tactyle) and optimization software (MIDACO). Starting from system predictive model, we developed a Top-down flow which propagate the system constraints to lower level blocks, so we can design the sub-blocks in order to meet the system specifications. This approach is applied to a buck converter circuit
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