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Research of converter transformer fault diagnosis based on improved PSO-BP algorithm

机译:基于改进PSO-BP算法的转换器变压器故障诊断研究

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To overcome those disadvantages that BP (Back Propagation) neural network and conventional Particle Swarm Optimization (PSO) converge at the global best particle repeatedly in early stage and is easy trapped in local optima and with low diagnosis accuracy when being applied in converter transformer fault diagnosis, we come up with the improved PSO-BP neural network to improve the accuracy rate. This algorithm improves the inertia weight Equation by using the attenuation strategy based on concave function to avoid the premature convergence of PSO algorithm and Time-Varying Acceleration Coefficient (TVAC) strategy was adopted to balance the local search and global search ability. At last the simulation results prove that the proposed approach has a better ability in optimizing BP neural network in terms of network output error, global searching performance and diagnosis accuracy.
机译:为了克服那些BP(反向传播)神经网络和常规粒子群优化(PSO)在早期阶段重复地收敛的那些缺点,并且当应用于转换器变压器故障诊断时,易于捕获在全球最佳粒子中并易于捕获。 ,我们提出了改进的PSO-BP神经网络,提高了准确率。该算法通过使用基于凹函数的衰减策略来改善惯性重量方程,以避免PSO算法的过早收敛,并采用时变加速度系数(TVAC)策略来平衡本地搜索和全球搜索能力。最后,仿真结果证明,在网络输出误差,全局搜索性能和诊断精度方面,所提出的方法具有更好的优化BP神经网络。

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