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首页> 外文期刊>Emerging and Selected Topics in Circuits and Systems, IEEE Journal on >Hardware Implementation of Associative Memories Based on Multiple-Valued Sparse Clustered Networks
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Hardware Implementation of Associative Memories Based on Multiple-Valued Sparse Clustered Networks

机译:基于多值稀疏聚类网络的关联存储器的硬件​​实现

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This paper presents algorithms and hardware implementations of associative memories based on multiple-valued sparse clustered networks (MV-SCNs). SCNs are recently-introduced binary-weighted associative memories that significantly improve the storage and retrieval capabilities over the prior state-of-the art. However, deleting or updating the messages stored in binary-weighted connections result in a significant increase in the data retrieval error probability as the binary-weighted connections deleted may be shared for several data patterns. In order to address the problem, the proposed algorithm exploits multiple-valued weighted connections of the network for storing the messages while maintaining the number of computation nodes in a cluster. The use of the multiple-valued weighted connections reduces the probability of deleting the shared connections compared to the binary-weighted connections. As a result, the proposed algorithm lowers the error rate by an order of magnitude for our sample network with 60% deleted contents compared to the conventional algorithm when the same amount of memory is used. For performance comparisons in hardware, the proposed SCNs are designed using Verilog-HDL and synthesized on TSMC 65 nm CMOS technology. The synthesis results show that the proposed MV-SCNs are around 10% smaller than the conventional binary-weighted SCNs as the number of computation nodes in the proposed SCNs is smaller than that of the conventional SCNs with the comparable speed and memory size.
机译:本文介绍了基于多值稀疏群集网络(MV-SCN)的关联存储器的算法和硬件实现。 SCN是最近引入的二进制加权关联存储器,与现有技术相比,它大大提高了存储和检索能力。但是,删除或更新存储在二进制加权连接中的消息会导致数据检索错误概率的显着增加,因为删除的二进制加权连接可能会为多个数据模式共享。为了解决该问题,提出的算法利用网络的多值加权连接来存储消息,同时保持集群中计算节点的数量。与二进制加权连接相比,使用多值加权连接减少了删除共享连接的可能性。结果,与使用相同数量内存的常规算法相比,对于具有删除内容60%的样本网络,该算法将错误率降低了一个数量级。为了比较硬件性能,建议的SCN使用Verilog-HDL设计并在TSMC 65 nm CMOS技术上合成。综合结果表明,提出的MV-SCN比传统的二进制加权SCN小约10%,因为在速度和内存大小可比的情况下,提出的SCN中的计算节点数少于传统的SCN。

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