2019
DOI: 10.3390/su11143974
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BlockDeepNet: A Blockchain-Based Secure Deep Learning for IoT Network

Abstract: The recent development in IoT and 5G translates into a significant growth of Big data in 5G—envisioned industrial automation. To support big data analysis, Deep Learning (DL) has been considered the most promising approach in recent years. Note, however, that designing an effective DL paradigm for IoT has certain challenges such as single point of failure, privacy leak of IoT devices, lack of valuable data for DL, and data poisoning attacks. To this end, we present BlockDeepNet, a Blockchain-based secure DL th… Show more

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Cited by 82 publications
(53 citation statements)
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“…All the transactions are gathered, checked, and synthesized in specific blocks-which create the blockchain for the SolarCoin. It is a high-trust database underlying the project: A distributed, trustworthy, and verifiable ledger of the total energy produced by PV panels [55][56][57]. It remunerates the producers of solar power with blockchain-based tokens at a rate of 1 SolarCoin (SLR) for each 1 MWh of produced solar energy [58][59][60].…”
Section: Comparison Of the Advanced Methods For Energy Transactionmentioning
confidence: 99%
“…All the transactions are gathered, checked, and synthesized in specific blocks-which create the blockchain for the SolarCoin. It is a high-trust database underlying the project: A distributed, trustworthy, and verifiable ledger of the total energy produced by PV panels [55][56][57]. It remunerates the producers of solar power with blockchain-based tokens at a rate of 1 SolarCoin (SLR) for each 1 MWh of produced solar energy [58][59][60].…”
Section: Comparison Of the Advanced Methods For Energy Transactionmentioning
confidence: 99%
“…Privacy preserving deep learning [117] , [118] approaches such as collaborative deep learning or federated learning also need to be explored to train and deploy local models at the edge devices. A Blockchain-based secure DL [119] that combines DL and Blockchain to support secure collaborative DL in IoT. Collaborative DL approach is performed at the edge device level to avoid the third party, whereas Blockchain is engaged to verify the confidentiality and integrity of collaborative DL in IoT.…”
Section: Open Challenges and Future Directionsmentioning
confidence: 99%
“…In these cases, there is a need for automatic and secure methods for transferring money. Recent proposals for the automatic and secure transfer of money in scenarios characterized by little mutual trust among interacting subjects are based on distributed ledgers such as blockchain, and on smart contracts built on top of them (e.g., [3], [42], [43], [44], [45]). While such an approach is certainly promising in data market scenarios (where an owner could sell data to a consumer through a smart contract), there are a number of issues that need to be solved.…”
Section: Pricing and Fairnessmentioning
confidence: 99%