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Power Loss Classification on Shifts Based on SMS(Singlemode-Multimode-Singlemode)Structured Fiber Optic Using Gaussian Naive Bayes Method

机译:基于SMS(Singlemode-Multimode-Singlemode)结构光纤的换档电力损耗分类使用高斯天真贝叶斯方法

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Singlemode-multimode-singlemode based optical fiber can be used as a good communication medium,but energy or power carried by light will be weakened(losses)due to leakage or due to lack of clarity or shift in optical fibers.In this study,power losses in fiber optics based on SMS will be classified based on changes in the values of power losses to shifts and divided them according to three classes,there are good,average,and bad.The shift will be used as a classification variable that is between 0 μm to 450 μm with an increment of 50 μm for every interval.The SMS optical fiber structure used is 5.5 with 25 attempts on different optical fibers.The classification method used is Naive Bayes with a Gaussian distribution.Gaussian distribution is used in Naive Bayes because the dataset will be processed in the form of continuous values.From the results of testing based on TP+TN=6,FP=6 FN =6 on confusion matrix,the classification accuracy value was 42.86%.This indicates that this classification method is still less effective for classifying fiber optic power losses with an SMS structure.For further study,another classification methods can be used in the power loss classification to get better results.
机译:基于Singlemode-Multimode-Singlemode的光纤可用作良好的通信介质,但由于泄漏而导致的光线(损失)或由于光纤中缺乏清晰度或转变,因此损失的能量或功率。这项研究中,电力基于SMS的光纤中光纤损失将根据电源损耗值的变化进行分类,并根据三个类划分它们,存在良好,平均和糟糕。班次将用作介于之间的分类变量每间隔0μm至450μm,每个间隔的增量为50μm。使用的SMS光纤结构为5.5,在不同的光纤上有25次尝试。使用的分类方法是高斯分布的天真贝叶斯。在幼稚贝叶斯使用了幼兽分布因为数据集将以连续值的形式处理。从基于TP + Tn = 6的测试结果,FP = 6 fn = 6对混淆矩阵,分类精度值为42.86%。这表明这个分类方法对使用SMS结构进行分类光纤功率损耗的方法仍然不太有效。进一步研究,可以在功率损耗分类中使用另一种分类方法以获得更好的结果。

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