Comparison of Neural Networks and Logistic Regression in Assessing the Occurrence of Failures in Steel Structures of Transmission Lines

A.C.G Bissacot, S.A.B. Salgado, P. Balestrassi, A. P. Paiva, A. C. Souza, R. Wazen
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引用次数: 5

Abstract

In this work, we evaluate the probability of falling metal structures from transmission lines. It is our objective to extract knowledge about which variables influence the mechanical behavior of the operating lines and can be used to diagnose potential falling towers. Those pieces of information can become a basis for directing the investments of reinforcement structures, avoiding the occurrence of long turn offs and high costs as a consequence of damage to towers of transmission lines. The results are obtained using the history of 181 metal structures currently in operation in the state of Paraná/Brazil. For the classification of transmission lines susceptible to failures it is proposed to identify the most likely lines considering the following parameters: operating voltage, wind and relief of the region, air masses, temperature, land type, mechanical capacity, function and foundation structure. The classic technique of classifying binary events used in this type of problem is the logistic regression (LR). The more recent technique for classification, using Artificial Neural Networks (ANN) can also be applied. The results are compared through the area under receiver operating characteristics (ROC) curves.
神经网络与逻辑回归在输电线路钢结构失效评估中的比较
在这项工作中,我们评估了金属结构从输电线路上坠落的概率。我们的目标是提取有关哪些变量影响操作线的机械行为的知识,并可用于诊断潜在的倒塌塔。这些信息可以成为指导加固结构投资的基础,避免由于输电线路塔损坏而发生长时间的关闭和高成本。该结果是利用目前在巴西帕拉纳州运行的181个金属结构的历史获得的。对于易发生故障的输电线路的分类,建议考虑以下参数来确定最可能发生故障的线路:运行电压、区域风力和地形起伏、气团、温度、土地类型、机械能力、功能和基础结构。在这类问题中,对二元事件进行分类的经典技术是逻辑回归(LR)。最近的分类技术,使用人工神经网络(ANN)也可以应用。通过受试者工作特征(ROC)曲线下面积对结果进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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