In a network of low-powered wireless sensors, it is essential to capture as many environmental events as possible while still preserving the battery life of the sensor node. This paper focuses on a real-time learning algorithm to extend the lifetime of a sensor node to sense and transmit environmental events. A common method that is generally adopted in ad-hoc sensor networks is to periodically put the sensor nodes to sleep. The purpose of the learning algorithm is to couple the sensor's sleeping behavior to the natural statistics of the environment hence that it can be in optimal harmony with changes in the environment, the sensors can sleep when steady environment and stay awake when turbulent environment. This paper presents theoretical ...
In order to make better use of deep reinforcement learning in the creation of sensing policies for r...
Wireless sensor network applications, such as those for natural disaster warning, vehicular traffic ...
13 pagesInterest in remote monitoring has grown thanks to recent advancements in Internet-of-Things ...
In a network of low-powered wireless sensors, it is essential to capture as many environmental event...
The aim in this paper is to allocate the `sleep time' of the individual sensors in an intrusion dete...
AbstractWe are dealing with a host of challenging issues in wireless sensor networks like: limited e...
2011-10-04Sensors are increasingly used for collecting data from the field for monitoring and detect...
Wireless sensor networks are commonly used to remotely and automatically monitor environments.One of...
Day by day innovation in wireless communications and micro-technology has evolved in the development...
Prediction of sensor readings in event-based Internet-of-Things (IoT) applications is considered. A ...
We study the problem of tracking an object that is moving randomly through a dense network of wirele...
Edge devices are embedded sensing or actuation devices accessible via wireless sensor networks in ap...
In this paper, we propose the data fairness transmission and adaptive duty cycle through machine lea...
Wireless sensor networks (WSN) are extensively applied in civil and military areas. Localization is ...
Innovation in wireless communications and microtechnology has progressed day by day, and this has re...
In order to make better use of deep reinforcement learning in the creation of sensing policies for r...
Wireless sensor network applications, such as those for natural disaster warning, vehicular traffic ...
13 pagesInterest in remote monitoring has grown thanks to recent advancements in Internet-of-Things ...
In a network of low-powered wireless sensors, it is essential to capture as many environmental event...
The aim in this paper is to allocate the `sleep time' of the individual sensors in an intrusion dete...
AbstractWe are dealing with a host of challenging issues in wireless sensor networks like: limited e...
2011-10-04Sensors are increasingly used for collecting data from the field for monitoring and detect...
Wireless sensor networks are commonly used to remotely and automatically monitor environments.One of...
Day by day innovation in wireless communications and micro-technology has evolved in the development...
Prediction of sensor readings in event-based Internet-of-Things (IoT) applications is considered. A ...
We study the problem of tracking an object that is moving randomly through a dense network of wirele...
Edge devices are embedded sensing or actuation devices accessible via wireless sensor networks in ap...
In this paper, we propose the data fairness transmission and adaptive duty cycle through machine lea...
Wireless sensor networks (WSN) are extensively applied in civil and military areas. Localization is ...
Innovation in wireless communications and microtechnology has progressed day by day, and this has re...
In order to make better use of deep reinforcement learning in the creation of sensing policies for r...
Wireless sensor network applications, such as those for natural disaster warning, vehicular traffic ...
13 pagesInterest in remote monitoring has grown thanks to recent advancements in Internet-of-Things ...