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Large-Scale Water Quality Prediction Using Federated Sensing and Learning: A Case Study with Real-World Sensing Big-Data

机译:使用联合传感和学习的大规模水质预测:以真实世界传感大数据为例

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摘要

Green tide, which is a serious water pollution problem, is caused by the complex relationships of various factors, such as flow rate, several water quality indicators, and weather. Because the existing methods are not suitable for identifying these relationships and making accurate predictions, a new system and algorithm is required to predict the green tide phenomenon and also minimize the related damage before the green tide occurs. For this purpose, we consider a new network model using smart sensor-based federated learning which is able to use distributed observation data with geologically separated local models. Moreover, we design an optimal scheduler which is beneficial to use real-time big data arrivals to make the overall network system efficient. The proposed scheduling algorithm is effective in terms of (1) data usage and (2) the performance of green tide occurrence prediction models. The advantages of the proposed algorithm is verified via data-intensive experiments with real water quality big-data.
机译:绿色潮汐是一个严重的水污染问题,是由各种因素的复杂关系引起的,例如流速,几个水质指标和天气。因为现有方法不适合识别这些关系并做出准确的预测,所以需要一种新的系统和算法来预测绿色潮汐现象,并在绿色潮汐发生之前最小化相关损坏。为此目的,我们考虑使用基于智能传感器的联合学习的新网络模型,其能够使用具有地质分离的本地模型的分布式观测数据。此外,我们设计了一个最佳调度器,这有利于使用实时大数据到达,以使整体网络系统有效。所提出的调度算法在(1)数据使用方面是有效的,并且(2)绿潮发生预测模型的性能。通过具有实际水质大数据的数据密集型实验来验证所提出的算法的优点。

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