Publication | Open Access
Impact of Big Data Analysis on Nanosensors for Applied Sciences Using Neural Networks
55
Citations
15
References
2021
Year
NanosensorsCurrent-generation Wireless SystemsEngineeringSensor ApplicationWireless Sensor SystemWearable TechnologyBiomedical EngineeringNanocomputingRecurrent Neural NetworkHealth Monitoring (Structural Health Monitoring)Health Monitoring (Biomedical Engineering)Big Data ModelData ScienceNanonetworkInternet Of ThingsNanosensorSensor Signal ProcessingNanotechnologyComputer EngineeringBig Data AnalysisMedia Access ControlBig Data AcquisitionBioelectronicsSensor HealthTechnologyWearable SensorBig Data
In the current-generation wireless systems, there is a huge requirement on integrating big data which can able to predict the market trends of all application systems. Therefore, the proposed method emphasizes on the integration of nanosensors with big data analysis which will be used in healthcare applications. Also, safety precautions are considered when this nanosensor is integrated where depth and reflection of signals are also observed using different time samples. In addition, to analyze the effect of nanosensors, six fundamental scenarios that provide good impact on real-time applications are also deliberated. Moreover, for proving the adeptness of the proposed method, the results are equipped in both online and offline analyses for investigating error measurement, sensitivity, and permeability parameters. Since nanosensors are introduced, the efficiency of the projected technique is increased by implementing media access control (MAC) protocol with recurrent neural network (RNN). Further, after observing the simulation results, it is proved that the proposed method is more effective for an average percentile of 67% when compared to the existing methods.
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