Department of Informatics, Faculty of Science, University of Split, 21000 Split, Croatia.
Institute of Oceanography and Fisheries, Šetalište I. Meštrovića 63, 21000 Split, Croatia.
Sensors (Basel). 2021 May 18;21(10):3507. doi: 10.3390/s21103507.
The experiments conducted on the wind data provided by the European Centre for Medium-range Weather Forecasts show that 1% of the data is sufficient to reconstruct the other 99% with an average amplitude error of less than 0.5 m/s and an average angular error of less than 5 degrees. In a nutshell, our method provides an approach where a portion of the data is used as a proxy to estimate the measurements over the entire domain based only on a few measurements. In our study, we compare several machine learning techniques, namely: linear regression, K-nearest neighbours, decision trees and a neural network, and investigate the impact of sensor placement on the quality of the reconstruction. While methods provide comparable results the results show that sensor placement plays an important role. Thus, we propose that intelligent location selection for sensor placement can be done using k-means, and show that this indeed leads to increase in accuracy as compared to random sensor placement.
对欧洲中期天气预报中心提供的风数据进行的实验表明,只需 1%的数据就足以用平均幅度误差小于 0.5 米/秒和平均角度误差小于 5 度来重建其余 99%的数据。简而言之,我们的方法提供了一种方法,其中一部分数据用作代理,仅基于少数测量值来估计整个区域的测量值。在我们的研究中,我们比较了几种机器学习技术,即:线性回归、K 最近邻、决策树和神经网络,并研究了传感器位置对重建质量的影响。虽然这些方法提供了可比的结果,但结果表明传感器位置起着重要作用。因此,我们提出可以使用 K-均值进行智能位置选择来进行传感器放置,并表明这确实会导致与随机传感器放置相比准确性的提高。