In this paper, we use Bayesian Networks as a means for unsupervised learning and anomaly (event) detection in gas monitoring sensor networks for underground coal mines. We show that the Bayesian Network model can learn cyclical baselines for gas concentrations, thus reducing false alarms usually caused by flatline thresholds. Further, we show that the system can learn dependencies between changes of concentration in different gases and at multiple locations. We define and identify new types of events that can occur in a sensor network. In particular, we analyse joint events in a group of sensors based on learning the Bayesian model of the system, contrasting these events with merely aggregating single events. We demonstrate that anomalous e...
The ecological sciences have benefited greatly from recent advances in wireless sensor technologies....
Nowadays, gas turbines are equipped with an increasing number of sensors, of which the acquired data...
Multi-sensor networks are becoming more and more popular in order to assess the post-occupancy perfo...
We investigate the problem of identifying anomalies in monitoring critical gas concentrations using ...
Recent advances in sensor technology are facilitating the deployment of sensors into the environment...
This paper discusses the use of Bayesian networks in a class of contemporary gas detection/classific...
We seek to detect statistically significant temporal or spatial changes in either the underlying pro...
Abstract Anomaly detection is an important problem for environment, fault diag-nosis and intruder de...
With the advancement of Internet of Things (IoT) technology, smart sensors have become extensively u...
In the past couple of years, sensor networks have evolved into an important infrastructure component...
Learning the network structure of a large graph is computationally demanding, and dynamically monito...
Graduation date: 2008Remote sensors are becoming the standard for observing and recording ecological...
A novel technique has been developed for anomaly detection of rocket engine test stand (RETS) data. ...
© 2013 Dr. Masud MoshtaghiWireless Sensor Networks (WSNs) provide a cost-effective platform for moni...
The field of wireless sensor networks (WSNs), embedded systems with sensing and networking capabilit...
The ecological sciences have benefited greatly from recent advances in wireless sensor technologies....
Nowadays, gas turbines are equipped with an increasing number of sensors, of which the acquired data...
Multi-sensor networks are becoming more and more popular in order to assess the post-occupancy perfo...
We investigate the problem of identifying anomalies in monitoring critical gas concentrations using ...
Recent advances in sensor technology are facilitating the deployment of sensors into the environment...
This paper discusses the use of Bayesian networks in a class of contemporary gas detection/classific...
We seek to detect statistically significant temporal or spatial changes in either the underlying pro...
Abstract Anomaly detection is an important problem for environment, fault diag-nosis and intruder de...
With the advancement of Internet of Things (IoT) technology, smart sensors have become extensively u...
In the past couple of years, sensor networks have evolved into an important infrastructure component...
Learning the network structure of a large graph is computationally demanding, and dynamically monito...
Graduation date: 2008Remote sensors are becoming the standard for observing and recording ecological...
A novel technique has been developed for anomaly detection of rocket engine test stand (RETS) data. ...
© 2013 Dr. Masud MoshtaghiWireless Sensor Networks (WSNs) provide a cost-effective platform for moni...
The field of wireless sensor networks (WSNs), embedded systems with sensing and networking capabilit...
The ecological sciences have benefited greatly from recent advances in wireless sensor technologies....
Nowadays, gas turbines are equipped with an increasing number of sensors, of which the acquired data...
Multi-sensor networks are becoming more and more popular in order to assess the post-occupancy perfo...