利用遗传算法将可持续路由与车载物联网整合的联合学习模型

Sushovan Khatua , Debashis De , Somnath Maji , Samir Maity , Izabela Ewa Nielsen
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引用次数: 0

摘要

一种名为联合学习的分布式机器学习技术允许众多物联网(IoT)边缘设备协同工作,在不共享原始数据的情况下训练模型。车载物联网(IoVT)是智慧城市中移动物体的重要工具,如了解交通模式、路况、车辆行为等。为了加强交通管理和优化路线,联合学习和物联网必须共同发挥作用,这可以在许多方面实现可持续发展目标(SDG)。本研究概述了智慧城市车辆网络中的联合学习系统。建议的架构考虑到了这种情况下网络连接受限、隐私问题和安全问题所带来的困难。该框架采用了一种混合方法,将集中服务器上的联合学习与单辆汽车上的本地训练整合在一起。通过物联网设备对智能城市的真实数据集进行了评估。研究结果表明,所建议的方法成功地提高了模型的准确性,同时保护了数据的机密性和安全性。在这项研究中,我们采用了联邦学习模型,该模型可以获取任意节点之间的所有信息,并得出交通流量、燃料成本、安全性、停车成本和运输成本,从而获得更好的路由选择方法。建议的框架可用于提高交通系统的效率,减少智能城市的拥堵,改善交通管理。我们采用了一种改进的遗传算法(iGA),该算法具有依赖于世代的偶数突变,可解决智能环境中的排放问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A federated learning model for integrating sustainable routing with the Internet of Vehicular Things using genetic algorithm

A federated learning model for integrating sustainable routing with the Internet of Vehicular Things using genetic algorithm

A distributed machine learning technique called federated learning allows numerous Internet of Things (IoT) edge devices to work together to train a model without sharing their raw data. Internet of Vehicular Things (IoVT) are an important tool in smart cities for moving objects, such as knowing the traffic patterns, road conditions, vehicle behavior, etc. To enhance traffic management and optimize routes, federated learning, and IoT must work jointly, which may achieve sustainable development goals (SDG) in many ways. This research outlines a system for federated learning in vehicular networks in smart cities. The suggested architecture considers the difficulties presented by such situations’ restricted network connectivity, privacy issues, and security concerns. The framework employs a hybrid methodology integrating federated learning on a centralized server with local training on individual cars. The proposed framework is assessed based on a real-world dataset from a smart city through IoT devices. The findings demonstrate that the suggested method successfully increases model accuracy while preserving the confidentiality and security of the data. In this investigation, we incorporated the Federated Learning model, which can fetch all the information between arbitrary nodes and derive the Traffic, Fuel Cost, Safety, Parking Cost, and Transportation cost for a better routing approach. The suggested framework can be utilized to increase the effectiveness of the transportation system, decrease congestion in smart cities, and improve traffic management. We employ an improved genetic algorithm (iGA) with generation-dependent even mutation to tackle the emission in the smart environment.

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