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Estimation of switching activity in sequential circuits using dynamic Bayesian networks

机译:动态贝叶斯网络估算顺序电路切换活动

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We propose a novel, non-simulative, probabilistic model for switching activity in sequential circuits, capturing both spatio-temporal correlations at internal nodes and higher order temporal correlations due to feedback. This model, which we refer to as the temporal dependency model (TDM), can be constructed from the logic structure and is shown to be a dynamic Bayesian network. Dynamic Bayesian networks are extremely powerful in modeling high order temporal as well as spatial correlations; it is an exact model for the underlying conditional independencies. The attractive feature of this graphical representation of the joint probability function is that not only does it make the dependency relationships amongst the nodes explicit but it also serves as a computational mechanism for probabilistic inference. We report average errors in switching probability of 0.006, with errors tightly distributed around the mean error values, on IS-CAS'89 benchmark circuits involving up to 10000 signals.
机译:我们提出了一个新颖的,非模拟,概率模型在时序电路交换活性,在由于反馈内部节点和较高阶时间相关性捕获两者的空间 - 时间相关性。此模型中,我们称之为为时间依赖模型(TDM),可以从逻辑结构被构造和被示出为一个动态贝叶斯网络。动态贝叶斯网络是在模拟高阶时间以及空间相关性极其强大;它是用于底层的条件independencies的精确模型。联合概率函数的这个图形表示的吸引人之处在于,它不仅使节点之间的依赖关系明确的,但它也可以作为概率推理的计算机制。我们在切换的概率0.006报告平均误差,有错误紧紧围绕平均误差值分布,对涉案金额高达10000个信号IS-CAS'89基准电路。

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