Abstract:
Environment reconstruction is to rebuild the physical environment in the cyberspace using the sensory data collected by sensor networks, which is a fundamental method for...Show MoreMetadata
Abstract:
Environment reconstruction is to rebuild the physical environment in the cyberspace using the sensory data collected by sensor networks, which is a fundamental method for human to understand the physical world in depth. A lot of basic scientific work such as nature discovery and organic evolution heavily relies on the environment reconstruction. However, gathering large amount of environmental data costs huge energy and storage space. The shortage of energy and storage resources has become a major problem in sensor networks for environment reconstruction applications. Motivated by exploiting the inherent feature of environmental data, in this paper, we design a novel data gathering protocol based on compressive sensing theory and time series analysis to further improve the resource efficiency. This protocol adapts the duty cycle and sensing probability of every sensor node according to the dynamic environment, which cannot only guarantee the reconstruction accuracy, but also save energy and storage resources. We implement the proposed protocol on a 51-node testbed and conduct the simulations based on three real datasets from Intel Indoor, GreenOrbs and Ocean Sense projects. Both the experiment and simulation performances demonstrate that our method significantly outperforms the conventional methods in terms of resource efficiency and reconstruction accuracy.
Published in: The Computer Journal ( Volume: 58, Issue: 6, June 2015)
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- Index Terms
- Sensor Networks ,
- Environmental Reconstruction ,
- Time Series ,
- Energy Source ,
- Sensor Data ,
- Dynamic Environment ,
- Time Series Analysis ,
- Environmental Data ,
- Duty Cycle ,
- Resource Efficiency ,
- Reconstruction Accuracy ,
- Storage Space ,
- Storage Resources ,
- Energy Consumption ,
- Energy Efficiency ,
- Environmental Characteristics ,
- Real Applications ,
- Singular Value ,
- Singular Value Decomposition ,
- Wireless Sensor Networks ,
- Time Slot ,
- Sink Node ,
- Accuracy Requirements ,
- Autoregressive Integrated Moving Average Model ,
- Average Cycle ,
- Energy-efficient Method ,
- Efficient Storage ,
- Energy Constraints ,
- Low-rank Structure
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- Index Terms
- Sensor Networks ,
- Environmental Reconstruction ,
- Time Series ,
- Energy Source ,
- Sensor Data ,
- Dynamic Environment ,
- Time Series Analysis ,
- Environmental Data ,
- Duty Cycle ,
- Resource Efficiency ,
- Reconstruction Accuracy ,
- Storage Space ,
- Storage Resources ,
- Energy Consumption ,
- Energy Efficiency ,
- Environmental Characteristics ,
- Real Applications ,
- Singular Value ,
- Singular Value Decomposition ,
- Wireless Sensor Networks ,
- Time Slot ,
- Sink Node ,
- Accuracy Requirements ,
- Autoregressive Integrated Moving Average Model ,
- Average Cycle ,
- Energy-efficient Method ,
- Efficient Storage ,
- Energy Constraints ,
- Low-rank Structure
- Author Keywords