LiftingWiSe: a lifting-based efficient data processing technique in wireless sensor networks.
TL;DR: The aim of this paper is to propose a data processing technique that can work under constrained storage, processing, and energy resource conditions and is referred to as LiftingWiSe, which stands for Lifting-based efficient dataprocessing technique for Wireless Sensor Networks.
read more
Abstract: Monitoring thousands of objects which are deployed over large-hard-to-reach areas, is an important application of the wireless sensor networks (WSNs). Such an application requires disseminating a large amount of data within the WSN. This data includes, but is not limited to, the object's location and the environment conditions at that location. WSNs require efficient data processing and dissemination processes due to the limited storage, processing power, and energy available in the WSN nodes. The aim of this paper is to propose a data processing technique that can work under constrained storage, processing, and energy resource conditions. The proposed technique utilizes the lifting procedure in processing the disseminated data. Lifting is usually used in discrete wavelet transform (DWT) operations. The proposed technique is referred to as LiftingWiSe, which stands for Lifting-based efficient data processing technique for Wireless Sensor Networks. LiftingWiSe has been tested and compared to other relevant techniques from the literature. The test has been conducted via a simulation of the monitored field and the deployed wireless sensor network nodes. The simulation results have been analyzed and discussed.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Using DWT Lifting Scheme for Lossless Data Compression in Wireless Body Sensor Networks
Joseph Azar,Rony Darazi,Carol Habib,Abdallah Makhoul,Jacques Demerjian +4 more
- 25 Jun 2018
TL;DR: The presented technique is a lossless transform-based compression technique based on the Discrete Wavelet Transform using the lifting scheme extended with Lagrange polynomial interpolation that reduces the amount of data by up to 90% without losing any information.
Compression-based Data Reduction Technique for IoT Sensor Networks
TL;DR: In this paper, the CBDR (CBDR) algorithm was used for the first time in a CBDR-based CBDR task, where CBDR was used to train CBDR classifiers.
30
Data Compression Techniques in IoT-enabled Wireless Body Sensor Networks: A Systematic Literature Review and Research Trends for QoS Improvement
Ihab Nassra,Juan Vicente Capella +1 more
TL;DR: In this article , the authors provide a clear analysis and review of data compression mechanisms in IoT-enabled wearable WSNs, including communication compression, sampling compression, and data compression techniques.
29
Cluster-Based Quality-Aware Adaptive Data Compression for Streaming Data
Aseel Basheer,Kewei Sha +1 more
TL;DR: A novel data compression algorithm, Quality-Aware Adaptive data Compression (QAAC), is proposed to reduce the amount of data communication to save energy and achieve a much higher compression ratio than lossy and lossless compression algorithms.
15
Compressive Sensing-Based Data Aggregation Approaches for Dynamic WSNs
TL;DR: An approach which aims to keep the weight vectors of existing sensors unchanged but assign only optimized measurement vectors to the newly added nodes is proposed, and two efficient methods with good data aggregation performance are proposed.
13
References
A Method for the Construction of Minimum-Redundancy Codes
David A. Huffman
- 01 Sep 1952
TL;DR: A minimum-redundancy code is one constructed in such a way that the average number of coding digits per message is minimized.
6.1K
A method for the construction of minimum-redundancy codes
TL;DR: A minimum-redundancy code is one constructed in such a way that the average number of coding digits per message is minimized.
5.2K
•Book
Discrete-Event System Simulation
Jerry Banks,John S. Carson,Barry L. Nelson,David M. Nicol +3 more
- 21 Sep 1995
TL;DR: Beleska o autorima: str. XV-XVI. as mentioned in this paper - Bibliografija uz svako poglavlje. - Registar.
TAG: a Tiny AGgregation service for Ad-Hoc sensor networks
Samuel Madden,Michael J. Franklin,Joseph M. Hellerstein,Wei Hong +3 more
- 09 Dec 2002
TL;DR: This work presents the Tiny AGgregation (TAG) service for aggregation in low-power, distributed, wireless environments, and discusses a variety of optimizations for improving the performance and fault tolerance of the basic solution.
Energy conservation in wireless sensor networks: A survey
Giuseppe Anastasi,Marco Conti,Mario Di Francesco,Andrea Passarella +3 more
- 01 May 2009
TL;DR: This paper breaks down the energy consumption for the components of a typical sensor node, and discusses the main directions to energy conservation in WSNs, and presents a systematic and comprehensive taxonomy of the energy conservation schemes.