| Literature DB >> 31618884 |
Thiago Souza1, Andre L L Aquino2, Danielo G Gomes3.
Abstract
Here we propose an online method to explore the multiway nature of urban spaces data for outlier detection based on higher-order singular value tensor decomposition. Our proposal has two sequential steps: (i) the offline modeling step, where we model the outliers detection problem as a system; and (ii) the online modeling step, where the projection distance of each data vector is decomposed by a multidimensional method as new data arrives and an outlier statistical index is calculated. We used real data gathered and streamed by urban sensors from three cities in Finland, chosen during a continuous time interval: Helsinki, Tuusula, and Lohja. The results showed greater efficiency for the online method of detection of outliers when compared to the offline approach, in terms of accuracy between a range of 8.5% to 10% gain. We observed that online detection of outliers from real-time monitoring through the sliding window becomes a more adequate approach once it achieves better accuracy.Entities:
Keywords: HOSVD; MPCA; multiway analysis; online monitoring; outlier detection; smart cities
Year: 2019 PMID: 31618884 PMCID: PMC6832166 DOI: 10.3390/s19204464
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Diagram meaning.
| Notation | Meaning |
|---|---|
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| represent the environment and the process to be measured |
| ∣ | the study restricted to |
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| time-space domain and topological characteristics of the monitored area |
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| phenomenon of interest |
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| represent the domain, i.e., is the set of all possible phenomena |
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| |
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| denotes the collection of all positions of each node |
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| denotes the set of all characteristic functions |
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| a real-valued vector |
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| is the set of all operations on each node, |
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| |
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| is all outliers detected |
Figure 1Monitoring online: Sliding windows.
Figure 2Time series of data collected.
Figure 3Time series of other data collected.
Figure 4Online monitoring - Day #1 and Day #2.
Figure 5Online monitoring versus offline monitoring - Day #1.
Figure 6Threshold of online monitoring.
Figure 7Outliers detection for sliding windows.
Figure 8Detection performances of the methods, HOSVD online and MPCA online.
Figure 9Detection performances of the methods HOSVD offline × HOSVD online.
Figure 10Detection performances of the methods MPCA offline × MPCA online.