Abstract

Innovation in wireless communications and microtechnology has progressed day by day, and this has resulted in the creation of wireless sensor networks. This technology is utilised in a variety of settings, including battlefield surveillance, home security, and healthcare monitoring, among others. However, since tiny batteries with very little power are used, this technology has power and target monitoring issues. With the development of various architectures and algorithms, considerable research has been done to address these problems. The adaptive learning automata algorithm (ALAA) is a scheduling machine learning method that is utilised in this study. It offers a time-saving scheduling method. As a result, each sensor node in the network has been outfitted with learning automata, allowing them to choose their appropriate state at any given moment. The sensor is in one of two states: active or sleep. Several experiments were conducted to get the findings of the suggested method. Different parameters are utilised in this experiment to verify the consistency of the method for scheduling the sensor node so that it can cover all of the targets while using less power. The experimental findings indicate that the proposed method is an effective approach to schedule sensor nodes to monitor all targets while using less electricity. Finally, we have benchmarked our technique against the LADSC scheduling algorithm. All of the experimental data collected thus far demonstrate that the suggested method has justified the problem description and achieved the project’s aim. Thus, while constructing an actual sensor network, our suggested algorithm may be utilised as a useful technique for scheduling sensor nodes.

Highlights

  • The rate of advancement in the area of wireless communication is steadily rising.With the increased usage of wireless communication, many devices and applications are developing

  • The target monitoring phase is the last step, which begins with learning automata to choose the optimal action of sensors and concludes with a sensor that operates in accordance with that action

  • The adaptive learning automata algorithm is the name of this chine learning algorithm

Read more

Summary

Introduction

The rate of advancement in the area of wireless communication is steadily rising. With the increased usage of wireless communication, many devices and applications are developing. Learning automata is one of the planning techniques for an energy efficient wireless sensor network. This technique enables the sensor switch to detect its current condition and choose the appropriate state to extend battery life [18,19,20,21]. How can a wireless sensor network achieve energy-efficient target coverage?. The sensor is monitoring the target if the computed Euclidean distance is smaller than the sensing radius “R.” Sensor switches to the active state at this point. Otherwise, it will remain dormant and in a sleep condition. How should the sensor node be scheduled for maximum energy conservation in a wireless sensor network?

Related Work
System Model
Sensor Deployment
Target Deployment
Result
Initial Phase
Learning Phase
Target Monitoring Phase
It is illustrates
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call