Data Quality and Energy Management Tradeoffs in Sensor Service Clouds

Cloud-based sensor data collection services are becoming an essential part of the Internet of Things (IoT). As the consumer demand grows for these services, the data quality (DQ) of the stream becomes an increasingly vital issue. Of particular interest is the inherent tradeoff between the DQ and the energy consumption of the sensor. Unfortunately, there has been very little research on the management of this tradeoff that allows data consumers to receive high quality data while simultaneously conserving energy. Our work seeks to explore this tradeoff in detail by combining DQ services for the data stream consumer with customizable energy efficient "EE" throttling algorithms for the data feed producers. These energy management services provide cost reduction rewards for consumers who would otherwise make poor DQ/EE decisions. Our primary contributions include cloud-based services for monitoring the tradeoff, an architecture that adjusts to DQ needs and a producer/consumer data stream best matching cloud service. We envision that our services architecture will reward energy efficiency decisions and profoundly affect consumer choices.

[1]  Lakshmish Ramaswamy,et al.  Towards a Quality-centric Big Data Architecture for Federated Sensor Services , 2013, 2013 IEEE International Congress on Big Data.

[2]  Alessandro A. Nacci,et al.  BlueSentinel: a first approach using iBeacon for an energy efficient occupancy detection system , 2014, BuildSys@SenSys.

[3]  Shaohua Jiang,et al.  Construction Site Environment Temperature Monitoring System Based on ZigBee and Virtual Instrument , 2013, J. Networks.

[4]  Jameela Al-Jaroodi,et al.  Service-Oriented Middleware Approaches for Wireless Sensor Networks , 2011, 2011 44th Hawaii International Conference on System Sciences.

[5]  Olivier Berder,et al.  A power manager with balanced quality of service for energy-harvesting wireless sensor nodes , 2014, ENSsys@SenSys.

[6]  Prem Prakash Jayaraman,et al.  MOSDEN: An Internet of Things Middleware for Resource Constrained Mobile Devices , 2013, 2014 47th Hawaii International Conference on System Sciences.

[7]  Ulrich Lampe,et al.  Pricing in Infrastructure Clouds - An Analytical and Empirical Examination , 2014, AMCIS.

[8]  Partha Pratim Bhattacharya,et al.  Designing Low Power Wireless SensorNetworks: A Brief Survey , 2013 .

[9]  Chuan-Ming Liu,et al.  Resource Provisioning with QoS in Cloud Storage , 2014, 2014 IEEE International Congress on Big Data.

[10]  Apostolos Papageorgiou,et al.  Auto-configuration System and Algorithms for Big Data-Enabled Internet-of-Things Platforms , 2014, 2014 IEEE International Congress on Big Data.

[11]  Lothar Thiele,et al.  Dynamic power management for long-term energy neutral operation of solar energy harvesting systems , 2014, SenSys.

[12]  Franco Zambonelli,et al.  A Bio-chemical Approach to Awareness in Pervasive Systems , 2013, SENSEMINE@SenSys.

[13]  Paul Zikopoulos,et al.  Understanding Big Data: Analytics for Enterprise Class Hadoop and Streaming Data , 2011 .

[14]  Lídice García Ríos,et al.  Big Data Infrastructure for analyzing data generated by Wireless Sensor Networks , 2014, 2014 IEEE International Congress on Big Data.

[15]  Dirk Pesch,et al.  Serviceware - A service based management approach for WSN cloud infrastructures , 2013, 2013 IEEE International Conference on Pervasive Computing and Communications Workshops (PERCOM Workshops).

[16]  Jens Mache,et al.  Practical error correction for resource-constrained wireless networks: unlocking the full power of the CRC , 2013, SenSys '13.

[17]  Chih-Hsien Hsia,et al.  Big Data Collection Gateway for Vision-Based Smart Meter Reading Network , 2014, 2014 IEEE International Congress on Big Data.