Enhance the Quality of Crowdsensing for Fine-Grained Urban Environment Monitoring via Data Correlation
Abstract
:1. Introduction
- Temporal correlation of sensory data. Researchers of [17] revealed the pervasive existence of time stability feature among environmental phenomenons, such as temperature, humidity and light. This feature indicates that most environmental phenomenons will not change dramatically and maintain stable for a while. On the other hand, the frequency of participants sending their measurements is much higher than that of environment changing. Utilizing temporal correlation is to leverage measurement data in a correlated time period rather than a moment. Due to the dynamic feature of crowdsensing participants, a discrete participant at a moment is converted into a sensing trajectory in correlated time period (see Figure 1c), which could decrease the area of blank zones.
- Category correlation of sensory data. Many existing researches [20,21,22] show the strong correlation among some categories of sensory data (see Figure 1d). Taking air quality data for example, three mainly concerned atmospheric pollutants, the concentration of PM, PM10, and NO, have clear correlation. Therefore, if there exist some correlated sensory data in blank zones, then the correlated information is able to recover the target environmental phenomenon.
2. Urban Monitoring via Crowdsensing and Sensing Restriction of Crowdsensing
2.1. Generation of Sensing Image via Crowdsensing Network
- There is only one crowdsensing node in . For this case, the corresponding entry in matrix is equal to the sensory data provided by the only crowdsensing node.
- There are more than one crowdsensing nodes in . The corresponding is calculated by a weight sum of all the sensory data generated in . Considering the distribution of crowdsensing nodes in one grid, we build a voronoi diagram according to the locations of crowdsensing nodes (see Figure 3b), and then calculate the weight sum of sensory data where the area of the divided polygons are weights of sensory data.
- There is no crowdsensing node in . The corresponding is set to null.
2.2. Resolution of Crowdsensing
2.3. Linear Restriction
3. Enhanced Crowdsensing Approach
3.1. Data Modeling
- Region dimension, , denotes N regions which are transferred from grids, one region per grid, .
- Category dimension, , denotes Q signal categorise, where is the target signal and the others are correlated signals.
- Time dimension, , denotes K time slots. Here, we divide the monitoring time period into K time slots and the span of each time slot is decided by the sending intervals of crowdsensing nodes.
3.2. Collaborative Tensor Decomposition
3.3. Correlated Time Slots Combination
4. Numerical Simulation
4.1. Basic Models
4.2. Instance Illustration
4.3. Statistical Results
5. Case Study: Air Quality Monitoring in Beijing
5.1. Data Correlation Analysis
5.2. Data Modelling
5.3. Comparison of Generated Sensing Images
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
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Parameter | Value |
---|---|
Distance alpha | 3 |
Number of mobile nodes | 6000 |
Simulation area | |
Number of waypoints | 6000 |
Hurst parameter | 0.75 |
Time duration | 10 h |
Clustering range | 100 m |
Levy exponent for pause time | 1 |
Minimum/maximum pause time | 30 s/1800 s |
Value Ranges of | Number of Monitoring Stations | |
---|---|---|
13 | 0 | |
7 | 1 | |
1 | 19 | |
1 | 2 |
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Kang, X.; Liu, L.; Ma, H. Enhance the Quality of Crowdsensing for Fine-Grained Urban Environment Monitoring via Data Correlation. Sensors 2017, 17, 88. https://doi.org/10.3390/s17010088
Kang X, Liu L, Ma H. Enhance the Quality of Crowdsensing for Fine-Grained Urban Environment Monitoring via Data Correlation. Sensors. 2017; 17(1):88. https://doi.org/10.3390/s17010088
Chicago/Turabian StyleKang, Xu, Liang Liu, and Huadong Ma. 2017. "Enhance the Quality of Crowdsensing for Fine-Grained Urban Environment Monitoring via Data Correlation" Sensors 17, no. 1: 88. https://doi.org/10.3390/s17010088