基于粒子群优化的神经网络集成算法在车联网中的应用

Zhang Li, Lu Fei, Zhao Yong-yi
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引用次数: 3

摘要

车联网作为一个新兴产业,正在逐步普及和应用。基于车联网系统中多传感器数据融合的关键技术,提出了一种新的神经网络集成构建方法,有效解决了车辆交通信息采集等问题。独立训练一组神经网络,然后使用离散粒子群优化(PSO)算法描述多维空间中粒子值为0或1时所有可能的神经网络集合。预测网络集成误差的估计值用组成集成的单个网络之间的关联度来表示,作为优化过程中的适应度函数。我们将选择在神经网络集成中涉及的各个部分之间有很大差异的单个网络。
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Based on the Particle Swarm Optimization_Neural Network integration algorithm in Internet of Vehicles application
Internet of Vehicles, an emerging industry, is being gradually popularized and applied. This paper is to propose a new construction method to neural network ensembles that based on the key technology to multi-sensor data fusion of Internet of Vehicles system, which is an effective solution to the problems such as the information collection about vehicle traffic. Training a group of neural networks Independently, and then use discrete particle swarm optimization (PSO) algorithm and describe all possible neural network ensemble when the value of particles is 0 or 1 in multi-dimensional space. The estimated value to predict error of the network integration is expressed by correlation degree among individual networks that made up of integration, and it will be used as the fitness function during the optimization process. We will select the individual networks which has much differences among the parts that get involved in neural network ensemble.
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