A Wireless Sensor Network-Based Approach with Decision Support for Monitoring Lake Water Quality
Abstract
:1. Introduction
2. Related Work
3. Materials and Methods
3.1. WSN Challenges in a Lake-Water Quality Monitoring Environment
- (1)
- Flexibility in monitoring requirement. Given the varied requirements of the users, WSN configuration should be adapted to their target scenario. The flexibility of interaction between WSN and users is needed.
- (2)
- Flexibility in task scheduling and execution. Many changing and unpredictable situations are observed in lake water environments. For example, some monitoring indicators (such as the pH level of water) may be particularly abnormal in a certain area or over a certain period and should be given close attention. The WSN should have flexibility in task scheduling and execution, and it should be able to re-plan how to proceed from this abnormal state.
- (3)
- Flexibility in resource management [18]. WSN nodes have extremely limited energy, memory, and computing resources. Thus, the use of resources should not be static and predefined. The WSN should be able to change its resource configuration depending on the contextual information. For example, the WSN can switch the sample frequency and communication frequency to very slow if the battery has minimal power.
- (4)
- Flexibility in data management. Large amounts of data are generated during water monitoring, but not all of these data are usable. The WSN can change some data sampling behaviors flexibly to make them suitable for different situations. Some irrelevant data are filtered to save data management time.
3.2. Proposed WSN-Based Lake-Water Monitoring Ontology
3.2.1. Basic Ontological Framework
- (1)
- the WSN devices (for sensing, energy storage, and communication) and the device properties (measurement and communication);
- (2)
- monitoring task of WSN (chemical, physical, and biological observation);
- (3)
- environment status (water status, water area);
- (4)
- WSN states (observation, energy, water, and networking states).
- a device state perspective,
- a data state perspective,
- an observation-demand state perspective,
- a water-quality state perspective.
3.2.2. Semantic Knowledge in Ontology from the Device State Perspective
3.2.3. Sematic Knowledge in the Ontology from the Data State Perspective
3.2.4. Sematic Knowledge in Ontology from the Observation State Perspective
3.2.5. Sematic Knowledge in the Ontology from Water Quality State Perspective
3.3. Reasoning Engine and Rules Based on SWRL
3.3.1. Energy Rules
3.3.2. Data Rules
3.3.3. Networking State Rules
3.3.4. Observation Demand State Rules
3.4. Deployment of the Proposed Approach
4. Evaluation and Experiments
4.1. Evaluation
4.2. Experiments
4.2.1. Construction of Testing Platform
4.2.2. Experimental Preparation
Grade | Definition |
---|---|
Water_I | Mainly applicable to the source water or national nature preserves. |
Water_II | Mainly applicable to the first level of centralized drinking water source protection area, rare aquatic habitat, fish spawning grounds, larvae feeding etc. |
Water_III | Mainly applicable to the second level of centralized drinking water source protection area, fish and shrimp overwintering grounds, swimming channel, aquaculture areas. |
Water_IV | Mainly applicable to general industrial water district and the recreational water area with non-direct contact with human body. |
Water_V | Mainly applicable to agricultural water district and the general requirement of landscape waters |
Water Quality Item | Group 1 | Group 2 | Group 3 | Group 4 | Group 5 |
---|---|---|---|---|---|
Water temperature (°C) | 24.5 | 24.5 | 24.5 | 24.5 | 24.5 |
pH | 6.9 | 6.6 | 7.1 | 7.4 | 7.6 |
Conductivity (us/cm) | 276 | 430 | 657 | 1543 | 2000 |
DO (mg/L) | 7.3 | 5.9 | 4.7 | 2.85 | 1.2 |
4.2.3. Process and Analysis of Comparative Experiments
Node Name | Control Rules | Description | Hardware |
---|---|---|---|
Node 1 | Works continually without any control. | Has a constant sampling interval of 30 s and communicating interval of 5 min. | All nodes have hardware similar to those mentioned. |
Node 2 | Makes the communication device sleep after a certain period to approximately suit the electric quantity of the battery. | Has a constant sampling interval and communicating interval same as those of Node 1. However, the communicating device enters a dormancy state for 0.5 h after working continually for 2 h. | |
Node 3 | Uses the approach proposed in this paper. | Self-configures the sampling interval and communicating interval or enters a dormancy state with the decision of the reasoning engine, which considers four rules mentioned in Section 3.3. |
5. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Huang, X.; Yi, J.; Chen, S.; Zhu, X. A Wireless Sensor Network-Based Approach with Decision Support for Monitoring Lake Water Quality. Sensors 2015, 15, 29273-29296. https://doi.org/10.3390/s151129273
Huang X, Yi J, Chen S, Zhu X. A Wireless Sensor Network-Based Approach with Decision Support for Monitoring Lake Water Quality. Sensors. 2015; 15(11):29273-29296. https://doi.org/10.3390/s151129273
Chicago/Turabian StyleHuang, Xiaoci, Jianjun Yi, Shaoli Chen, and Xiaomin Zhu. 2015. "A Wireless Sensor Network-Based Approach with Decision Support for Monitoring Lake Water Quality" Sensors 15, no. 11: 29273-29296. https://doi.org/10.3390/s151129273
APA StyleHuang, X., Yi, J., Chen, S., & Zhu, X. (2015). A Wireless Sensor Network-Based Approach with Decision Support for Monitoring Lake Water Quality. Sensors, 15(11), 29273-29296. https://doi.org/10.3390/s151129273