基于无人机群网络的空气质量指数预测的联邦学习

P. Chhikara, Rajkumar Tekchandani, Neeraj Kumar, S. Tanwar, J. Rodrigues
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引用次数: 8

摘要

人需要呼吸,包括植物和动物在内的其他生物也需要呼吸。空气污染对自然、人类福祉和相关国家经济的影响不容忽视。对空气污染的监测和对未来空气质量的预测最近显示出一个至关重要的问题。需要对空气质量指数进行高精度预测;实时预防人们因空气污染造成的健康问题。在无人机机载传感器的帮助下,我们可以轻松地收集空气质量数据。提出了一种分布式和去中心化的无人机群内联邦学习方法。传感器积累的数据被用作长短期记忆(LSTM)模型的输入。在将本地模型传输到中央基站之前,每架无人机使用其本地收集的数据来训练模型。中央基站将FL过程中参与无人机的所有无人机的局部模型权值组合,生成一个主模型,并将其传输给后续周期中的所有无人机。使用来自印度首都(即德里)的测试数据,使用各种评估指标,与其他机器学习模型一起评估所提出模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Learning for Air Quality Index Prediction using UAV Swarm Networks
People need to breathe, and so do other living beings, including plants and animals. It is impossible to overlook the impact of air pollution on nature, human well-being, and concerned countries' economies. Monitoring of air pollution and future predictions of air quality have lately displayed a vital concern. There is a need to predict the air quality index with high accuracy; on a real-time basis to prevent people from health issues caused by air pollution. With the help of Unmanned Aerial Vehicle's onboard sensors, we can collect air quality data easily. The paper proposes a distributed and decentralized Federated Learning approach within a UAV swarm. The accumulated data by the sensors are used as an input to the Long Short Term Memory (LSTM) model. Each UAV used its locally gathered data to train a model before transmitting the local model to the central base station. The central base station creates a master model by combining all the UAV's local model weights of the participating UAVs in the FL process and transmits it to all UAV s in the subsequent cycles. The effectiveness of the proposed model is evaluated with other machine learning models using various evaluation metrics using test data from the capital city of India, i.e., Delhi.
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