论文标题

Aquafel-PSO:一种基于多模式PSO和联合学习的自动表面车辆的水资源监测系统

AquaFeL-PSO: A Monitoring System for Water Resources using Autonomous Surface Vehicles based on Multimodal PSO and Federated Learning

论文作者

Kathen, Micaela Jara Ten, Johnson, Princy, Flores, Isabel Jurado, Reina, Daniel Guti errez

论文摘要

近几十年来,对水资源的保存,监测和控制一直是一个重大挑战。必须不断监控水资源以了解水的污染水平。为了满足这一目标,本文提出了一个使用自动表面车辆的水量监测系统,该车辆配备了水质传感器,基于多模式粒子群优化和联合学习技术,并以高斯工艺为替代模型,Aquafel-PSO算法。提出的监测系统有两个阶段,分别是勘探阶段和开发阶段。在勘探阶段,车辆检查了水资源的表面,并通过水质传感器获得的数据,在中央服务器中估算了第一个水质模型。在剥削阶段,使用在勘探阶段估计的模型将区域分为动作区域,以更好地利用污染区。为了获得水资源的最终水质模型,将两个阶段中获得的模型组合在一起。结果表明,拟议的路径策划者在获得污染区的水质模型中的效率,比其他路径计划者比其他路径计划者提高了14 $ \%$,而整个水资源(获得400美元$ \%$更好的模型)以及在检测污染峰值中,该案例研究中的改善是4,000美元$ \%$ \%。还证明,通过应用联合学习技术获得的结果与集中式系统的结果非常相似。

The preservation, monitoring, and control of water resources has been a major challenge in recent decades. Water resources must be constantly monitored to know the contamination levels of water. To meet this objective, this paper proposes a water monitoring system using autonomous surface vehicles, equipped with water quality sensors, based on a multimodal particle swarm optimization, and the federated learning technique, with Gaussian process as a surrogate model, the AquaFeL-PSO algorithm. The proposed monitoring system has two phases, the exploration phase and the exploitation phase. In the exploration phase, the vehicles examine the surface of the water resource, and with the data acquired by the water quality sensors, a first water quality model is estimated in the central server. In the exploitation phase, the area is divided into action zones using the model estimated in the exploration phase for a better exploitation of the contamination zones. To obtain the final water quality model of the water resource, the models obtained in both phases are combined. The results demonstrate the efficiency of the proposed path planner in obtaining water quality models of the pollution zones, with a 14$\%$ improvement over the other path planners compared, and the entire water resource, obtaining a 400$\%$ better model, as well as in detecting pollution peaks, the improvement in this case study is 4,000$\%$. It was also proven that the results obtained by applying the federated learning technique are very similar to the results of a centralized system.

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