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Temperature prediction study of cable joint conductor based on the PSO algorithms of BP neural network

机译:基于BP神经网络PSO算法的电缆接头导体温度预测研究

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Summary form only given. In power system, cable line is a quite important equipment while cable joint is one of its weak link, which may cause severe losses once break down . Allowing that the cable joint will be accompanied by a rise in temperature no matter what kind of failure occurs, a principle that real-time monitoring and predicting temperature of cable joint is available to own a comprehensive understanding of the cable line's operation, and discover the hidden trouble in cable and improving the safe operation performance of cable wires . Compared with the low monitoring configuration sensitivity, high maintenance cost and low prediction accuracy of traditional monitoring methods, this paper proposes an algorithm based on the PSO(Particle Swarm Optimization) of BP neural network to predict the temperature of wire cable joint which can make up for the present method's temperature detection insufficiency of the cable joint conductor effectively and improve the faults of low prediction accuracy, high initial weight sensitivity of the single BP neural network purposefully . For the collected temperature monitoring data of cable joint, first of all, we should delete some error data that because of misoperation or measuring error, find out the factors which closely associated with forecast . and then imported in MATLAB for data classification, weight setting, data normalization preprocessing, etc . The last is to build the network . In this paper, it is assigned that the individual values optimized by PSO algorithm to the BP network's initial weight and threshold, through training, simulating and obtaining the prediction results for building the new BP neural network . The simulation results show that the BP neural network whose initial weights and threshold optimized by the PSO algorithm has higher prediction precision of conductor temperature and good local searching ability, and also possess the lower probability of network into a local optimum, compared wi- h the single BP neural network . The simulation results as shown in figure 1 Prediction curve of the BP neural network and the PSO algorithms of BP neural network; Figure 2 Error curve of the BP neural network and the PSO algorithms of BP neural network
机译:摘要表格仅给出。在电力系统中,电缆线是一个非常重要的设备,而电缆接头是其薄弱环节,这可能会导致一旦出现故障严重的损失之一。允许该电缆接头会因温度上升而伴随着不管是什么样的故障发生时,一个原则,实时监控和预测电缆接头的温度是提供给自己的电缆线路的操作的全面的了解,并发现在电缆隐患和提高电缆线的安全运行性能。与低监测配置灵敏度,高维护成本,传统的监测方法低的预测精度进行比较,提出了基于神经网络的PSO(粒子群优化)的算法来预测电线电缆接头的温度可弥补用于有效的电缆接头的导体的本发明方法的温度检测不全和改善预测精度,单个神经网络的目的地高初始重量灵敏度的故障。对采集的温度监控电缆接头的数据,首先,我们应该删除,由于误操作或测量误差的一些错误数据,找出与预期密切相关的因素。然后在MATLAB对数据进行分类,重量的设定,数据归一化的预处理等导入。最后是构建网络。在本文中,它被分配,通过PSO算法优化,以BP网络的初始权重和门限的各个值,通过培训,模拟和获得用于建立新的BP神经网络的预测结果。仿真结果表明,神经网络,它的初始权值和阈值由所述PSO算法优化具有导体温度和良好的局部搜索能力的更高的预测精度,并且还具有网络陷入局部最优的较低概率,相比的Wi-小时单一的BP神经网络。仿真结果如在神经网络和神经网络的算法PSO的图1中的预测曲线示出;神经网络的神经网络和所述PSO图2误差曲线的算法

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