scispace - formally typeset
Proceedings ArticleDOI

Energy-Saving Data Approximation for Data and Queries in Sensor Networks

TLDR
Based on the correlation and frequency spectrum analysis results of some types of slowly varying sensor data, two data approximation methods to reduce data transmission while make queries easy to answer are presented.
Abstract
One way of conserving the scarce resources in a sensor network is to minimize the amount of data transmitted. This can be accomplished by data compression, aggregation or approximation. The current researches on sensor data compression mainly focus on lossless compression methods, they cannot achieve higher compression ratio than lossy data compression. In-network data aggregation and data approximation can be regarded as lossy data reduction methods. However, in-network data aggregation methods cannot record all the features of sensor data, thus queries referring to the historical data might not be answered. Moreover, the data cached in sensor networks should be used easily for answering queries. Based on the correlation and frequency spectrum analysis results of some types of slowly varying sensor data, we have presented two data approximation methods to reduce data transmission while make queries easy to answer. We have implemented these methods, tested on some real life data sets and compared with related methods. The results indicate that the algorithms are simple and deliver high data reduction ratios, while meeting the user's tolerance of errors.

read more

Citations
More filters
Journal ArticleDOI

Lossy Data Compression for IoT Sensors: A Review

TL;DR: In this article , a systematic review of the literature on lossy data compression algorithms that allow the systems to reduce the data detected by IoT devices is presented, and a taxonomy was proposed from the review results, and the main works were classified, analyzed, and discussed.
Journal ArticleDOI

Evaluation of tunable data compression in energy-aware wireless sensor networks.

TL;DR: A new criterion is proposed and a series of tunable compression algorithms are reevaluated, showing that the new criterion makes the evaluation more objective and indicates the situations when compression is unnecessary.
Journal ArticleDOI

Efficient traffic load reduction algorithms for mitigating query hotspots for wireless sensor networks

TL;DR: The results show that DMAS and GMAS can mitigate the traffic rate of hotspot about 50%, effectively, and the effect of the hotspot overlay avoidance.
Proceedings ArticleDOI

Performance study of data stream approximation algorithms in wireless sensor networks

TL;DR: A performance study and analysis of two data approximation algorithms for data reduction in sensor networks, maintaining the accuracy of query results within certain bounds with emphasis on the types of data for which the algorithms are appropriate.
Book ChapterDOI

An optimal distribution of data reduction in sensor networks with hierarchical caching

TL;DR: An optimization problem for the trade-off between the error cost and the resource cost of answering queries is formulated and its solution enables us to determine the optimal distribution of data reduction at each level.
References
More filters
Journal ArticleDOI

TAG: a Tiny AGgregation service for Ad-Hoc sensor networks

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.
Journal ArticleDOI

Issues in data stream management

TL;DR: The purpose of this paper is to review recent work in data stream management systems, with an emphasis on application requirements, data models, continuous query languages, and query evaluation.
Journal ArticleDOI

Distributed compression in a dense microsensor network

TL;DR: A new domain of collaborative information communication and processing through the framework on distributed source coding using syndromes, which enables highly effective and efficient compression across a sensor network without the need to establish inter-node communication, using well-studied and fast error-correcting coding algorithms.
Proceedings ArticleDOI

A survey on data compression in wireless sensor networks

TL;DR: Some of compression algorithms, which have been specifically designed for WSNs, are presented in this paper: coding by ordering, pipelined in-network compression, low-complexity video compression, and distributed compression.
Proceedings ArticleDOI

Data funneling: routing with aggregation and compression for wireless sensor networks

TL;DR: The proposed routing algorithm, called Data Funneling, allows the network to considerably reduce the amount of energy spent on communication setup and control, an important concern in low data-rate communication.
Related Papers (5)