Due to the severe damages of nuclear accidents, there is still an urgent need to develop efficient radiation detection wireless sensor networks (RDWSNs) that precisely monitor irregular radioactivity. It should take actions that mitigate the severe costs of accidental radiation leakage, especially around nuclear sites that are the primary sources of electric power and many health and industrial applications. Recently, leveraging machine learning (ML) algorithms to RDWSNs is a promising solution due to its several pros, such as online learning and self-decision making. This paper addresses novel and efficient ML-based RDWSNs that utilize millimeter waves (mmWaves) to meet future network requirements. Specifically, we leverage an online learn...
AbstractThe detection of materials or devices for nuclear or radiological weapons of mass destructio...
Radio frequency interference (RFI) is a risk for microwave radiometers due to their requirement of v...
Machine learning (ML) theories and methods are mainly based on probability theory and statistics. It...
Due to the severe damages of nuclear accidents, there is still an urgent need to develop efficient r...
From preventing the threat of nuclear weapons proliferation to monitoring the transportation of spec...
Abstract The detection of radioactive target is becoming more important recently in public safety an...
none4siDate of Publication: 16 June 2017Measuring radiation dosage rates is becoming more and more i...
The ability to quickly detect and locate stealthy radiological dispersal devices (RDDs) allows autho...
This report describes several experiments used to characterize and test a network of radiation senso...
In this paper a wireless sensor network (WSN) is designed from a group of radiation detector station...
AbstractMethods of detecting and locating nuclear radioac-tive targets via wireless sensor networks ...
A collection of static and mobile radiation sensors is tasked with deciding, within a fixed time int...
Internet of Things (IoTs) networks are responsible for monitoring an environment or targets such as ...
Each sensor node in WSN is typically equipped with a limited capacity small battery. Energy-efficien...
Next-generation wireless networks promise to provide extremely high data rates, especially exploitin...
AbstractThe detection of materials or devices for nuclear or radiological weapons of mass destructio...
Radio frequency interference (RFI) is a risk for microwave radiometers due to their requirement of v...
Machine learning (ML) theories and methods are mainly based on probability theory and statistics. It...
Due to the severe damages of nuclear accidents, there is still an urgent need to develop efficient r...
From preventing the threat of nuclear weapons proliferation to monitoring the transportation of spec...
Abstract The detection of radioactive target is becoming more important recently in public safety an...
none4siDate of Publication: 16 June 2017Measuring radiation dosage rates is becoming more and more i...
The ability to quickly detect and locate stealthy radiological dispersal devices (RDDs) allows autho...
This report describes several experiments used to characterize and test a network of radiation senso...
In this paper a wireless sensor network (WSN) is designed from a group of radiation detector station...
AbstractMethods of detecting and locating nuclear radioac-tive targets via wireless sensor networks ...
A collection of static and mobile radiation sensors is tasked with deciding, within a fixed time int...
Internet of Things (IoTs) networks are responsible for monitoring an environment or targets such as ...
Each sensor node in WSN is typically equipped with a limited capacity small battery. Energy-efficien...
Next-generation wireless networks promise to provide extremely high data rates, especially exploitin...
AbstractThe detection of materials or devices for nuclear or radiological weapons of mass destructio...
Radio frequency interference (RFI) is a risk for microwave radiometers due to their requirement of v...
Machine learning (ML) theories and methods are mainly based on probability theory and statistics. It...