Review Article

Survey of Energy-Efficient Techniques for the Cloud-Integrated Sensor Network

Table 5

Energy-efficient advanced system designing for the sensor cloud.

ReferencesAlgorithm/methodProblem discussedBenefit/achievementDrawback/limitation

[25]Cloud orchestration approachDynamic workflow and coordination of servicesFlexible and energy efficientData mining and filtering techniques are yet to be analyzed
[26]Data predictionTo minimize energy consumption using data predictionEnergy efficient and provides less error rateDoes not support scalability and QoS
[27]Self-managed sensor cloudAutomation and aggregation of dataEnergy efficient and fast response in case of an emergencyHardware testing is yet to be implemented
[28]Publish or subscribe middlewareSatisfying sensing and removing redundant sensorsReduction in consumption of energy by 40% to 80%Data analysis is not performed
[29]Balancing energy consumption with respect to data qualityManaging the quality of the reception data while saving energyLess energy consumption and QoS is maintainedNot scalable
[30]GEMCloudTo support complex and parallel jobs in the distributed computing environmentEnergy efficientSecurity is yet to be analyzed
[31]Architecture based on virtual sinkProcessing and storing the information through many sinksEnergy efficient, less transmission error, and less end to end delayNot scalable
[32]Push/pull envelope with lazy samplingOptimal sampling for transmitting the sensor data between edge and sensorEnergy efficientEnergy-aware scheduling is yet to be implemented