A Scalable Framework for Defect Isolation of DNA Self-assemlbled Networks

Masaru Fukushi, S. Horiguchi, Luke Demoracski, F. Lombardi
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引用次数: 3

Abstract

This paper presents and evaluates an approach for defect isolation of DNA self-assembled networks made of a large number of processing nodes. A previous framework based on a broadcast algorithm isolates defective nodes by using no redundancy (for the nodes) and an external defect map. Its disadvantage is the limited scalability, thus making it unsuitable for extremely large scale networks built through DNA self-assembly. Our framework improves upon the previous framework by involving three algorithmic tiers; namely, 1-hop wave expansion, efficient via placement, and unsafe node defection. The efficiency of the proposed framework is evaluated and compared with the original framework by considering large scale networks (up to 1000 times 1000 nodes), and a novel gross defect model (as well as the conventional random defect model assumed in previous manuscripts). Simulation results indicate that the proposed framework outperforms the original framework in broadcast latency and coverage, and shows excellent scalability features for DNA self-assembled nano-scale networks.
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DNA自组装网络缺陷分离的可扩展框架
本文提出并评价了一种由大量加工节点组成的DNA自组装网络的缺陷分离方法。先前基于广播算法的框架通过使用无冗余(对于节点)和外部缺陷映射来隔离缺陷节点。它的缺点是可扩展性有限,因此不适合通过DNA自组装构建的超大规模网络。我们的框架通过涉及三个算法层来改进之前的框架;即,一跳波扩展,有效的通过放置,和不安全的节点偏离。通过考虑大规模网络(多达1000 × 1000个节点)和一种新的总缺陷模型(以及以前文献中假设的传统随机缺陷模型),评估了所提框架的效率,并与原始框架进行了比较。仿真结果表明,该框架在广播时延和覆盖范围上优于原框架,并在DNA自组装纳米网络中表现出良好的可扩展性。
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