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A BP Neural Network Based on Improved Particle Swarm Optimization and its Application in Reliability Forecasting

机译:基于改进粒子群算法的BP神经网络及其在可靠性预测中的应用

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The basic Particle Swarm Optimization (PSO) algorithm and its principle have been introduced, the Particle Swarm Optimization has low accelerate speed and can be easy to fall into local extreme value, so the Particle Swarm Optimization based on the improved inertia weight is presented. This method means using nonlinear decreasing weight factor to change the fundamental ways of PSO. To allow full play to the approximation capability of the function of BP neural network and overcome the main shortcomings of its liability to fall into local extreme value and the study proposed a concept of applying improved PSO algorithm and BP network jointly to optimize the original weight and threshold value of network and incorporating the improved PSO algorithm into BP network to establish a improved PSO-BP network system. This method improves convergence speed and the ability to search optimal value. We apply the improved particle swarm algorithm to reliability prediction. Compared with the traditional BP method, this kind of algorithm can minimize errors and improve convergence speed at the same time.
机译:介绍了基本的粒子群算法(PSO)及其原理,该粒子群算法具有较低的加速速度,容易陷入局部极值,因此提出了一种基于改进的惯性权重的粒子群算法。此方法意味着使用非线性递减权重因子来更改PSO的基本方法。为了充分发挥BP神经网络功能的逼近能力并克服其责任陷入局部极值的主要缺点,该研究提出了一种将改进的PSO算法和BP网络联合应用以优化原始权重的概念。将网络阈值与改进的PSO算法结合到BP网络中,以建立改进的PSO-BP网络系统。该方法提高了收敛速度并提高了搜索最佳值的能力。我们将改进的粒子群算法应用于可靠性预测。与传统的BP算法相比,该算法可以最大程度地减少误差,同时提高收敛速度。

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