| Literature DB >> 27589758 |
Xiaobin Xu1, Fang Zhao2, Wendong Wang3, Hui Tian4.
Abstract
To collect important health information, WBAN applications typically sense data at a high frequency. However, limited by the quality of wireless link, the uploading of sensed data has an upper frequency. To reduce upload frequency, most of the existing WBAN data collection approaches collect data with a tolerable error. These approaches can guarantee precision of the collected data, but they are not able to ensure that the upload frequency is within the upper frequency. Some traditional sampling based approaches can control upload frequency directly, however, they usually have a high loss of information. Since the core task of WBAN applications is to collect health information, this paper aims to collect optimized information under the limitation of upload frequency. The importance of sensed data is defined according to information theory for the first time. Information-aware adaptive sampling is proposed to collect uniformly distributed data. Then we propose Adaptive Sampling-based Information Collection (ASIC) which consists of two algorithms. An adaptive sampling probability algorithm is proposed to compute sampling probabilities of different sensed values. A multiple uniform sampling algorithm provides uniform samplings for values in different intervals. Experiments based on a real dataset show that the proposed approach has higher performance in terms of data coverage and information quantity. The parameter analysis shows the optimized parameter settings and the discussion shows the underlying reason of high performance in the proposed approach.Entities:
Keywords: data collection; data sampling; information quantity; wireless body area networks
Mesh:
Year: 2016 PMID: 27589758 PMCID: PMC5038663 DOI: 10.3390/s16091385
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Results of sampling approaches, (a) original data; (b) uniform sampling; (c) Bernoulli sampling; (d) ASIC.
Figure 2A typical scenario of data sampling in WBAN.
Parameters Used in ASIC.
| Parameter | Meaning |
|---|---|
| Sensing frequency of body sensors. | |
| Uploading frequency of body sensors. | |
| Total number of values sensed by one body sensor in one upload cycle, | |
| Number of sensed values one packet can carry. | |
| Overall sampling probability, | |
| Number of bins in data discretization. | |
| Set of probabilities of values in different bins, computed and updated through ASP in every body sensor. | |
| Sampling probabilities of values in different bins, computed and updated through ASP in every body sensor. |
Figure 3Data range affected by sampling probability in a real dataset.
Figure 4Coverage of sampled data.
Figure 5Comparison of entropy.
Figure 6Effects of number of bins.
Figure 7Comparison of distributions of data collected from real dataset.
Figure 8Comparison of distributions of data collected from synthetic dataset.