基于过滤划分级联机器学习模型增强室内定位

Shutchon Premchaisawatt, N. Ruangchaijatupon
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引用次数: 1

摘要

本文提出了一种滤波器划分机器学习分类(FPMLC)方法。它可以使用机器学习算法和突出接入点(ap)来提高基于指纹的室内定位的准确性。FPMLC从信号强度组中选择有限的信息,并将聚类任务和分类任务相结合。FPMLC中有三个过程,即特征选择(feature selection)选择突出ap,聚类(clustering)确定近似位置,分类(classification)确定精细位置。这项工作演示了FPMLC创建的过程。利用实测数据,将FPMLC方法与原始方法的结果进行了比较。FPMLC与著名的机器学习分类器,即决策树、朴素贝叶斯和人工神经网络进行了比较。通过分类位置与实际位置的精度和误差距离进行性能比较。在聚类过程中,选择适当数量的突出ap和分配适当数量的集群。研究结果表明,FPMLC可以提高所有分类器的室内定位性能。此外,FPMLC是使用决策树作为分类器的最优化模型。
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Enhancing indoor positioning based on filter partitioning cascade machine learning models
This paper proposes a method, called the filter partitioning machine learning classification (FPMLC). It can enhance the accuracy of indoor positioning based on fingerprinting using machine learning algorithms and prominent access points (APs). FPMLC selects limited information from groups of signal strengths and combines a clustering task and a classification task. There are three processes in FPMLC, i.e., feature selection to choose prominent APs, clustering to determine approximated positions, and classification to determine fine positions. This work demonstrates the procedure for FPMLC creation. The results of FPMLC are compared with those of a primitive method using measured data. FPMLC is compared with well-known machine learning classifiers, i.e., Decision Tree, Naive Bayes, and Artificial Neural Networks. The performance comparison is done in terms of accuracy and error distance between classified positions and actual positions. The appropriate number of selected prominent APs and the number of clusters are assigned in the clustering process.  The result of this study shows that FPMLC can increase performance for indoor positioning of all classifiers. Additionally, FPMLC is the most optimized model using a Decision Tree as its classifier.
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来源期刊
Engineering and Applied Science Research
Engineering and Applied Science Research Engineering-Engineering (all)
CiteScore
2.10
自引率
0.00%
发文量
2
审稿时长
11 weeks
期刊介绍: Publication of the journal started in 1974. Its original name was “KKU Engineering Journal”. English and Thai manuscripts were accepted. The journal was originally aimed at publishing research that was conducted and implemented in the northeast of Thailand. It is regarded a national journal and has been indexed in the Thai-journal Citation Index (TCI) database since 2004. The journal now accepts only English language manuscripts and became open-access in 2015 to attract more international readers. It was renamed Engineering and Applied Science Research in 2017. The editorial team agreed to publish more international papers, therefore, the new journal title is more appropriate. The journal focuses on research in the field of engineering that not only presents highly original ideas and advanced technology, but also are practical applications of appropriate technology.
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