A Predictive System for IoTs Reconfiguration Based on TensorFlow Framework

T Nguyen-Anh, Q Le-Trung - … Networks and Intelligent Systems: 6th EAI …, 2020 - Springer
Industrial Networks and Intelligent Systems: 6th EAI International Conference …, 2020Springer
IoTs are rapidly growing with the addition of new sensors and devices to existing IoTs. The
demand of IoT nodes keeps increasing to adapt to changing environment conditions and
application requirements, the need for reconfiguring these already existing IoTs is rapidly
increasing. It is also important to manage the intelligent context to execute when it will trigger
the appropriate behavior. Yet, many algorithms based on different models for time-series
sensor data prediction can be used for this purpose. However, each algorithm has its own …
Abstract
IoTs are rapidly growing with the addition of new sensors and devices to existing IoTs. The demand of IoT nodes keeps increasing to adapt to changing environment conditions and application requirements, the need for reconfiguring these already existing IoTs is rapidly increasing. It is also important to manage the intelligent context to execute when it will trigger the appropriate behavior. Yet, many algorithms based on different models for time-series sensor data prediction can be used for this purpose. However, each algorithm has its own advantages and disadvantages, resulting in different reconfiguration behavior predictions for each specific IoTs application. Developing an IoTs reconfiguration application has difficulty implementing many different data prediction algorithms for different sensor measurements to find the most suitable algorithm. In this paper, we propose IoTs Reconfiguration Prediction System (IRPS), a tool that helps IoT developers to choose the most suitable time-series sensor data prediction algorithms for trigger IoTs reconfiguration actions.
Springer
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