Using Machine Learning Methods to Provision Virtual Sensors in Sensor-Cloud
The advent of sensor-cloud technology alleviates the limitations of traditional wireless sensor networks (WSNs) in terms of energy, storage, and computing, which has tremendous potential in various agricultural internet of things (IoT) applications. In the sensor-cloud environment, virtual sensor pr...
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doaj-9a04e98bbe5b4faa975741dca6bcd1eb2020-11-25T01:37:45ZengMDPI AGSensors1424-82202020-03-01207183610.3390/s20071836s20071836Using Machine Learning Methods to Provision Virtual Sensors in Sensor-CloudMing-Zheng Zhang0Liang-Min Wang1Shu-Ming Xiong2School of Computer Science and Communication Engineering, Jiangsu University, Zhenjiang 212013, ChinaSchool of Computer Science and Communication Engineering, Jiangsu University, Zhenjiang 212013, ChinaSchool of Computer Science and Communication Engineering, Jiangsu University, Zhenjiang 212013, ChinaThe advent of sensor-cloud technology alleviates the limitations of traditional wireless sensor networks (WSNs) in terms of energy, storage, and computing, which has tremendous potential in various agricultural internet of things (IoT) applications. In the sensor-cloud environment, virtual sensor provisioning is an essential task. It chooses physical sensors to create virtual sensors in response to the users’ requests. Considering the capricious meteorological environment of the outdoors, this paper presents an measurements similarity-based virtual-sensor provisioning scheme by taking advantage of machine learning in data analysis. First, to distinguish the changing trends, we classified all the physical sensors into several categories using historical data. Then, the <i>k</i>-means clustering algorithm was exploited for each class to cluster the physical sensors with high similarity. Finally, one representative physical sensor from each cluster was selected to create the corresponding virtual sensors. The experimental results show the reformation of our scheme with respect to energy efficiency, network lifetime, and data accuracy compared with the benchmark schemes.https://www.mdpi.com/1424-8220/20/7/1836sensor-cloudagricultural iotvirtual sensor provisioningmachine learningrepresentative sensors |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ming-Zheng Zhang Liang-Min Wang Shu-Ming Xiong |
spellingShingle |
Ming-Zheng Zhang Liang-Min Wang Shu-Ming Xiong Using Machine Learning Methods to Provision Virtual Sensors in Sensor-Cloud Sensors sensor-cloud agricultural iot virtual sensor provisioning machine learning representative sensors |
author_facet |
Ming-Zheng Zhang Liang-Min Wang Shu-Ming Xiong |
author_sort |
Ming-Zheng Zhang |
title |
Using Machine Learning Methods to Provision Virtual Sensors in Sensor-Cloud |
title_short |
Using Machine Learning Methods to Provision Virtual Sensors in Sensor-Cloud |
title_full |
Using Machine Learning Methods to Provision Virtual Sensors in Sensor-Cloud |
title_fullStr |
Using Machine Learning Methods to Provision Virtual Sensors in Sensor-Cloud |
title_full_unstemmed |
Using Machine Learning Methods to Provision Virtual Sensors in Sensor-Cloud |
title_sort |
using machine learning methods to provision virtual sensors in sensor-cloud |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2020-03-01 |
description |
The advent of sensor-cloud technology alleviates the limitations of traditional wireless sensor networks (WSNs) in terms of energy, storage, and computing, which has tremendous potential in various agricultural internet of things (IoT) applications. In the sensor-cloud environment, virtual sensor provisioning is an essential task. It chooses physical sensors to create virtual sensors in response to the users’ requests. Considering the capricious meteorological environment of the outdoors, this paper presents an measurements similarity-based virtual-sensor provisioning scheme by taking advantage of machine learning in data analysis. First, to distinguish the changing trends, we classified all the physical sensors into several categories using historical data. Then, the <i>k</i>-means clustering algorithm was exploited for each class to cluster the physical sensors with high similarity. Finally, one representative physical sensor from each cluster was selected to create the corresponding virtual sensors. The experimental results show the reformation of our scheme with respect to energy efficiency, network lifetime, and data accuracy compared with the benchmark schemes. |
topic |
sensor-cloud agricultural iot virtual sensor provisioning machine learning representative sensors |
url |
https://www.mdpi.com/1424-8220/20/7/1836 |
work_keys_str_mv |
AT mingzhengzhang usingmachinelearningmethodstoprovisionvirtualsensorsinsensorcloud AT liangminwang usingmachinelearningmethodstoprovisionvirtualsensorsinsensorcloud AT shumingxiong usingmachinelearningmethodstoprovisionvirtualsensorsinsensorcloud |
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