Spectrum Usage Estimating and Predicting

B. Bolat, Mehmet Oğuz Kelek
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Abstract

In this study, made from observations in 4 different locations in Doha, the first location is close to the education campus with an open and flat area, the second location is the trade zone, the third location is a region with high buildings near the city center, and the fourth location is selected as the factory and workshop area. Three different algorithms, Bayes Based Analysis, Largest Sense Estimation, and Naive Bayes classifier, were used to estimate and predict spectrum usage on a data set, with 1 minute observation for each location, with a total of 4320 different readings in the 700 - 3000 MHz spectrum. The optimum solution was sought for the prediction and estimation of its use. After the optimum method was chosen, the relationship of the chosen method with the past and previous situations was examined. As a result of these algorithms, Bayes Based algorithm was chosen as the most suitable algorithm and performance was measured as %88:94.
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频谱使用估算与预测
在本研究中,通过对多哈4个不同地点的观察,第一个地点靠近教育校园,面积开阔平坦,第二个地点是贸易区,第三个地点是市中心附近高楼林立的地区,第四个地点是工厂和车间区。使用三种不同的算法,基于贝叶斯的分析,最大意义估计和朴素贝叶斯分类器,来估计和预测数据集上的频谱使用情况,每个位置1分钟观察,在700 - 3000 MHz频谱中总共有4320个不同的读数。寻求最优解,对其使用效果进行预测和评价。在选定最优方法后,考察了所选方法与过去和以前情况的关系。结果表明,基于贝叶斯的算法是最合适的算法,性能为%88:94。
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