Optimization of IoT-Enabled Physical Location Monitoring Using DT and
VAR
- URL: http://arxiv.org/abs/2204.04664v1
- Date: Sun, 10 Apr 2022 11:39:46 GMT
- Title: Optimization of IoT-Enabled Physical Location Monitoring Using DT and
VAR
- Authors: Ajitkumar Sureshrao Shitole, Manoj Himmatrao Devare
- Abstract summary: The study reveals that decision tree (DT) and random forest give reasonably similar macro average f1-scores to predict a person using sensor data.
DT is the most reliable predictive model for the cloud datasets of three different physical locations to predict a person using timestamp with an accuracy of 83.99%, 88.92%, and 80.97%.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This study shows an enhancement of IoT that gets sensor data and performs
real-time face recognition to screen physical areas to find strange situations
and send an alarm mail to the client to make remedial moves to avoid any
potential misfortune in the environment. Sensor data is pushed onto the local
system and GoDaddy Cloud whenever the camera detects a person to optimize the
physical location monitoring system by reducing the bandwidth requirement and
storage cost onto the cloud using edge computation. The study reveals that
decision tree (DT) and random forest give reasonably similar macro average
f1-scores to predict a person using sensor data. Experimental results show that
DT is the most reliable predictive model for the cloud datasets of three
different physical locations to predict a person using timestamp with an
accuracy of 83.99%, 88.92%, and 80.97%. This study also explains multivariate
time series prediction using vector auto regression that gives reasonably good
root mean squared error to predict temperature, humidity, light-dependent
resistor, and gas time series.
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