关联ReLU阵列暂态分析的收敛波形松弛方案

I. Elfadel
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引用次数: 0

摘要

在电路理论论文中,我们建立了以整流线性单元(ReLU)为激活函数的模拟关联阵列下波形松弛(WR)算法全局收敛的一个新结果。在一般模拟电路上证明WR收敛性的传统方法依赖于使用指数加权规范来控制大模拟区间内瞬态波形的行为。本文的主要贡献是表明,在模拟关联ReLU阵列的特殊情况下,大模拟区间的WR收敛不需要指数加权范数,而是可以使用一致收敛的公共范数来确定。利用结合律阵的连通性矩阵,给出了保证WR收敛的实用准则。
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Convergent Waveform Relaxation Schemes for the Transient Analysis of Associative ReLU Arrays
In this circuit-theoretic paper, we establish a new result for the global convergence of the waveform relaxation (WR) algorithm in the specific context of analog associative arrays having the Rectified Linear Unit (ReLU) as an activation function. The traditional methods for proving WR convergence on generic analog circuits rely on the use of exponentially weighted norms to control the behavior of the transient waveforms for large simulation intervals. The main contribution of this paper is to show that in the particular case of analog associative ReLU arrays, WR convergence for large simulation intervals does not require exponentially weighted norms and can instead be ascertained using the common norm of uniform convergence. Using the connectivity matrix of the associativity array, a practical criterion for guaranteeing WR convergence is provided.
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