A Federated Learning-enabled Smart Street Light Monitoring Application: Benefits and Future Challenges

Diya Anand, Ioannis Mavromatis, P. Carnelli, Aftab Khan
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引用次数: 2

Abstract

Data-enabled cities are recently accelerated and enhanced with automated learning for improved Smart Cities applications. In the context of an Internet of Things (IoT) ecosystem, the data communication is frequently costly, inefficient, not scalable and lacks security. Federated Learning (FL) plays a pivotal role in providing privacy-preserving and communication efficient Machine Learning (ML) frameworks. In this paper we evaluate the feasibility of FL in the context of a Smart Cities Street Light Monitoring application. FL is evaluated against benchmarks of centralised and (fully) personalised machine learning techniques for the classification task of the lampposts operation. Incorporating FL in such a scenario shows minimal performance reduction in terms of the classification task, but huge improvements in the communication cost and the privacy preserving. These outcomes strengthen FL's viability and potential for IoT applications.
联邦学习智能路灯监控应用:优势与未来挑战
数据驱动型城市最近通过自动化学习得到加速和增强,以改进智能城市应用。在物联网(IoT)生态系统的背景下,数据通信通常成本高、效率低、不可扩展且缺乏安全性。联邦学习(FL)在提供隐私保护和通信高效的机器学习(ML)框架方面发挥着关键作用。在本文中,我们评估了FL在智慧城市路灯监控应用中的可行性。FL是根据灯柱操作分类任务的集中式和(完全)个性化机器学习技术的基准进行评估的。在这样的场景中加入FL,在分类任务方面的性能降低很小,但在通信成本和隐私保护方面有很大的改进。这些结果加强了FL在物联网应用中的可行性和潜力。
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