使用机器学习对物联网网关进行数据输入

C. M. França, R. S. Couto, P. B. Velloso
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引用次数: 3

摘要

IoT(物联网)网关从数千个传感器接收数据并将其发送到运行智能服务的云。但是,由于网络问题、传感器损坏、安全攻击等各种原因,收集到的数据可能存在缺失值或异常值。数据缺失和噪声会影响未来的决策,因此物联网网关需要将一致的数据传输到云端。本文提出了一种基于神经网络回归的物联网网关缺失数据的估算方法。我们使用位于里约热内卢的一个气象站的六年天气数据验证了这种方法,考虑了不同的数据缺失百分比。结果表明,回归模型在预测传感器测量值时具有大于0.92的r平方分数和较低的误差。此外,我们证明了神经网络的实现可以在物联网网关上运行,因为它的执行时间短,内存利用率低。最后,我们表明,即使在丢失50%数据的情况下,单个模型也表现良好,突出了所提出方法的通用性。
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Data imputation on IoT gateways using machine learning
IoT (Internet of Things) gateways receive data from thousands of sensors and send it to the cloud, which runs intelligent services. However, collected data might have missing or anomalous values due to various reasons, such as network problems, damaged sensors, or security attacks. Missing and noisy data can affect future decision-making, so IoT gateways need to transmit consistent data to the cloud. This work proposes a method to impute missing data on IoT gateways based on neural network regression. We validate this method using six years of weather data from a station located in Rio de Janeiro, considering different percentages of missing data. The results show that the regression models have more than a 0.92 R-squared score and low errors when predicting sensor measurements. Furthermore, we show that the neural network implementation can run on IoT gateways due to its short execution time and low memory utilization. Finally, we show that a single model performs well even when 50% of the data is missing, highlighting the proposed approach's generality.
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