Internet of Things Communication protocols optimization using Blockchain Technology integrated with Reinforcement Learning

M. Kumari, Dr. Mahendra Gaikwad, Dr. Salim A Chavhan
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Abstract

Under the IoT vision, conventional items become sophisticated and self-contained. This ideal has become an actuality due to its technological breakthroughs, although there are still challenges to face. Especially in the field of security, like data accuracy. All academia and commerce are curious about the combined study of block chain and computational modelling (ML) because it may offer significant advantages for achieving decentralized, safe, intelligent, and advanced information management operations and administration. Considering the expected IoT will have to establish relationships in this massive incoming data stream as it evolves in the coming years Data sharing will change as a result of the crucial software known as the blockchain. A scientific innovation that can transform several industries, such as the Internet of Things, is the capacity to make connections within dispersed systems without the need for power. As a result, the controller operates well and may be modified to fit into different, dynamic contexts. Additionally, since greater-level systems are taught with deep reinforcement learning, the machine can expect to study even after it is put into use, which makes it perfect for practical uses. Based on their personal experience with the employment of an agent, learning through Reinforcement: S (State), A (Action), and R (Reaction) are the parameters (Reward Under the IoT vision, ordinary items become clever and self-contained. This paper investigates this relationship, analyses issues with blockchain and IoT systems, and assesses the most pertinent studies in order to establish how blockchain with reinforcement learning may enhance IoT. Depending on the finding, the study then suggests using supervised learning techniques to address some of the major problems faced by blockchain-enabled IIoT systems, such as block time reduction and operations throughput development. There will be a thorough case study that demonstrates how a Q-learning strategy can be used to minimize latency problems for a miner and hence lower the likelihood of forking events.
结合强化学习的区块链技术优化物联网通信协议
在物联网的愿景下,传统的物品变得复杂和独立。由于技术上的突破,这一理想已经成为现实,尽管仍面临挑战。尤其是在安全领域,比如数据的准确性。所有学术界和商界都对区块链和计算建模(ML)的结合研究感到好奇,因为它可能为实现分散、安全、智能和先进的信息管理操作和管理提供显着优势。考虑到预期的物联网将不得不在未来几年的发展中在这个庞大的传入数据流中建立关系,数据共享将由于被称为区块链的关键软件而改变。一项可以改变物联网等多个行业的科学创新是在不需要电力的情况下在分散的系统内建立连接的能力。因此,控制器运行良好,并且可以进行修改以适应不同的动态环境。此外,由于更高级的系统是通过深度强化学习来学习的,因此即使在投入使用后,机器也可以期望学习,这使得它非常适合实际应用。根据他们个人使用agent的经验,通过强化学习:S (State), A (Action), R (Reaction)是参数(Reward)。在物联网的愿景下,普通的物品变得智能和独立。本文研究了这种关系,分析了区块链和物联网系统的问题,并评估了最相关的研究,以确定区块链与强化学习如何增强物联网。根据研究结果,该研究建议使用监督学习技术来解决支持区块链的工业物联网系统面临的一些主要问题,例如减少块时间和操作吞吐量发展。将有一个全面的案例研究,演示如何使用Q-learning策略来最小化矿工的延迟问题,从而降低分叉事件的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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