Trustworthy DNN Partition for Blockchain-enabled Digital Twin in Wireless IIoT Networks
Xiumei Deng, Jun Li, Long Shi, Kang Wei, Ming Ding, Yumeng Shao, Wen Chen, Shi Jin

TL;DR
This paper introduces a blockchain-enabled digital twin framework for wireless IIoT networks that uses DNN partitioning and reputation-based consensus to improve efficiency and trustworthiness, with optimized resource allocation.
Contribution
It proposes a novel DNN partitioning and reputation-based consensus mechanism combined with stochastic optimization for resource management in blockchain-enabled digital twins.
Findings
Reduces system latency compared to baseline methods.
Ensures trustworthiness through reputation-based consensus.
Improves DNN inference efficiency in wireless IIoT networks.
Abstract
Digital twin (DT) has emerged as a promising solution to enhance manufacturing efficiency in industrial Internet of Things (IIoT) networks. To promote the efficiency and trustworthiness of DT for wireless IIoT networks, we propose a blockchain-enabled DT (B-DT) framework that employs deep neural network (DNN) partitioning technique and reputation-based consensus mechanism, wherein the DTs maintained at the gateway side execute DNN inference tasks using the data collected from their associated IIoT devices. First, we employ DNN partitioning technique to offload the top-layer DNN inference tasks to the access point (AP) side, which alleviates the computation burden at the gateway side and thereby improves the efficiency of DNN inference. Second, we propose a reputation-based consensus mechanism that integrates Proof of Work (PoW) and Proof of Stake (PoS). Specifically, the proposed…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Blockchain Technology Applications and Security · Brain Tumor Detection and Classification
