PTrace:双准则设计权衡的无导数局部跟踪

Amith Singhee
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引用次数: 3

摘要

本文提出了一种新颖的PTrace方法,用于局部和一致地跟踪凸双准则pareto最优前沿的双准则优化问题,与现有方法不同,该方法不需要目标对设计变量的导数。该方法从起点沿用户指定的方向沿前方计算一系列点,使得这些点根据用户的间距约束大致均匀间隔。在每次迭代中,前线的局部二次模型用于估计目标的适当加权和,优化后,将给出前线上的下一个点。然后对这个加权和进行单目标优化,生成实际的点,然后用于构建新的局部模型。该方法使用基于凸性的启发式算法来改进优化器的轻度次优结果,并重用缓存点来提高优化速度和质量。我们在合成和6-T SRAM功率性能权衡测试案例上测试了该方法,以证明其有效性。
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PTrace: Derivative-free local tracing of bicriterial design tradeoffs
This paper presents a novel method, PTrace, to locally and uniformly trace convex bicriterial Pareto-optimal fronts for bicriterial optimization problems that, unlike existing methods, does not require derivatives of the objectives with respect to the design variables. The method computes a sequence of points along the front in a user-specified direction from a starting point, such that the points are roughly uniformly spaced as per a spacing constraint from the user. At each iteration, a local quadratic model of the front is used to estimate an appropriate weighted sum of objectives that, on optimization, will give the next point on the front. A single objective optimization on this weighted sum then generates the actual point, which is then used to build a new local model. The method uses convexity-based heuristics to improve on mildly sub-optimal results from the optimizer and reuses cached points to improve the optimization speed and quality. We test the method on a synthetic and a 6-T SRAM power-performance tradeoff test case to demonstrate its effectiveness.
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