Jin Xue-Bo, Yu Xing-Hong, Su Ting-Li, Yang Dan-Ni, Bai Yu-Ting, Kong Jian-Lei, Wang Li
Artificial Intelligence College, Beijing Technology and Business University, Beijing 10048, China.
China Light Industry Key Laboratory of Industrial Internet and Big Data Beijing Technology and Business University, Beijing 10048, China.
Entropy (Basel). 2021 Feb 11;23(2):219. doi: 10.3390/e23020219.
Trend prediction based on sensor data in a multi-sensor system is an important topic. As the number of sensors increases, we can measure and store more and more data. However, the increase in data has not effectively improved prediction performance. This paper focuses on this problem and presents a distributed predictor that can overcome unrelated data and sensor noise: First, we define the causality entropy to calculate the measurement's causality. Then, the series causality coefficient (SCC) is proposed to select the high causal measurement as the input data. To overcome the traditional deep learning network's over-fitting to the sensor noise, the Bayesian method is used to obtain the weight distribution characteristics of the sub-predictor network. A multi-layer perceptron (MLP) is constructed as the fusion layer to fuse the results from different sub-predictors. The experiments were implemented to verify the effectiveness of the proposed method by meteorological data from Beijing. The results show that the proposed predictor can effectively model the multi-sensor system's big measurement data to improve prediction performance.
基于多传感器系统中传感器数据的趋势预测是一个重要的课题。随着传感器数量的增加,我们能够测量和存储越来越多的数据。然而,数据量的增加并没有有效提高预测性能。本文聚焦于这一问题,并提出了一种能够克服无关数据和传感器噪声的分布式预测器:首先,我们定义因果熵来计算测量的因果关系。然后,提出了序列因果系数(SCC)以选择高因果性的测量作为输入数据。为了克服传统深度学习网络对传感器噪声的过拟合问题,使用贝叶斯方法来获取子预测器网络的权重分布特征。构建一个多层感知器(MLP)作为融合层,以融合来自不同子预测器的结果。通过来自北京的气象数据进行实验,以验证所提方法的有效性。结果表明,所提预测器能够有效地对多传感器系统的大量测量数据进行建模,从而提高预测性能。