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首页> 外文期刊>Recent advances in electrical & electronic engineering >Prediction of Equivalent Salt Deposit Density of Insulators Using Adaptive Quantum Particle Swarm Optimization Algorithm
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Prediction of Equivalent Salt Deposit Density of Insulators Using Adaptive Quantum Particle Swarm Optimization Algorithm

机译:采用自适应量子粒子群优化算法预测绝缘子的等效盐沉积密度

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Background: The Equivalent Salt Deposit Density (ESDD) is the basis of determining pollution classes and mapping grid pollution areas. The influence of environmental factors on the ESDD is complex, and it is difficult to establish an accurate mathematical model to fit the nonlinear relationship between them. Methods: In order to predict effectively the ESDD, a model of Adaptive Quantum Particle Swarm Optimized BP neural network (AQPSO-BP) was proposed. In this algorithm, the encoding mechanism based on probability amplitude of quantum bits was used to expand the ergodicity of population. The position and velocity information of each particle was applied to adaptively adjust the inertia factor. At the same time, the non-linear dynamic adjustment strategy of acceleration factors and mutation operation were introduced to reduce the probabilities of trapping in the local optima solution. Results: The prediction results show that the average relative error, the mean absolute error, the mean squared error and the coefficient of determination are 0.1393%, 1.27E-04, 2.33E-06 and 0.9830, respectively; the average relative variance is 0.0171. Conclusion: Compared with the Particle Swarm Optimized BP network (PSO-BP) and Quantum Particle Swarm Optimized BP network (QPSO-BP) models, the AQPSO-BP algorithm has higher prediction accuracy and stronger generalization ability, and is suitable for evaluating the contamination level to prevent flashover on polluted insulators.
机译:背景:等效盐沉积密度(ESDD)是确定污染等级和映射网格污染区域的基础。环境因素对ESDD的影响是复杂的,并且很难建立准确的数学模型以适应它们之间的非线性关系。方法:为了有效地预测ESDD,提出了一种自适应量子粒子群优化的BP神经网络(AQPSO-BP)的模型。在该算法中,基于量子位概率幅度的编码机制用于扩大群体的遍历。施加每种颗粒的位置和速度信息以自适应地调节惯性因子。同时,引入了加速因子和突变操作的非线性动态调整策略,以减少捕获本地最佳解决方案的概率。结果:预测结果表明,平均相对误差,平均绝对误差,平均平均误差和测定系数分别为0.1393%,1.27e-04,2.33e-06和0.9830;平均相对方差为0.0171。结论:与粒子群优化的BP网络(PSO-BP)和量子粒子群优化的BP网络(QPSO-BP)模型相比,AQPSO-BP算法具有更高的预测精度和更强的泛化能力,适用于评估污染水平防止污染绝缘体的闪光灯。

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