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Weigh-in-motion based on multi-sensor and RBF neural network

机译:基于多传感器和RBF神经网络的运动称重

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The work presented in this paper focuses on several aspects of weigh-in-motion. According to the mathematical model of weigh-in-motion, this paper proposed the methods of multi-sensor data acquisition and axle weight detection by using quadratic mean. The Radial Basis Function (RBF) neural network was used to construct the weighing system. In the modeling and training of RBF neural network, three different types of test were given: dead load, normal load and overweight. The results have indicated that using RBF neural network in weigh-in-motion has a significant effect on weighing test precision.
机译:本文介绍的工作集中在运动称重的几个方面。根据运动称量的数学模型,提出了采用二次均值的多传感器数据采集和轴重检测方法。径向基函数(RBF)神经网络用于构建称重系统。在RBF神经网络的建模和训练中,给出了三种不同类型的测试:静载荷,正常载荷和超重。结果表明,在运动中称重中使用RBF神经网络对称重测试精度有重要影响。

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