AbstractFor mission critical (MC) applications such as bushfire emergency management systems (EMS), understanding the current situation as a disaster unfolds is critical to saving lives, infrastructure and the environment. Incident control-room operators manage complex information and systems, especially with the emergence of Big Data. They are increasingly making decisions supported by artificial intelligence (AI) and machine learning (ML) tools for data analysis, prediction and decision-making. As the volume, speed and complexity of information increases due to more frequent fire events, greater availability of myriad IoT sensors, smart devices, satellite data and burgeoning use of social media, the advances in AI and ML that help to mana...
The paper presents ENEA’s next step towards the development of Intelligent Decision Support Systems ...
The paper presents ENEA's next step towards the development of Intelligent Decision Support Sys...
This chapter introduces the role of machine learning (ML) in resilience engineering and discusses ac...
The advances in information technology have had a profound impact on emergency management by making ...
Emergency situations encompassing natural and human-made disasters, as well as their cascading effec...
The advances in information technology have had a profound impact on emergency management by making ...
Australia and the world are facing major emergencies and challenges around their emergency managemen...
In this paper we describe the approach adopted and experiences gained during a project to develop a ...
A country’s history and development can be shaped by its natural environment and the hazards it face...
As an occurrence that jeopardises vital national interests or the basic needs of the populace, a cri...
When hazardous events occurs in buildings or in large environments with different access points and...
Despite all efforts like the introduction of new training methods and personal protective equipment,...
This chapter highlights the key challenges of our ongoing project in developing an information techn...
Nowadays, we are witnessing a shift in the way emergencies are being managed. On the one hand, the a...
The use of Big Data technologies has been more common in recent years, spreading across other fields...
The paper presents ENEA’s next step towards the development of Intelligent Decision Support Systems ...
The paper presents ENEA's next step towards the development of Intelligent Decision Support Sys...
This chapter introduces the role of machine learning (ML) in resilience engineering and discusses ac...
The advances in information technology have had a profound impact on emergency management by making ...
Emergency situations encompassing natural and human-made disasters, as well as their cascading effec...
The advances in information technology have had a profound impact on emergency management by making ...
Australia and the world are facing major emergencies and challenges around their emergency managemen...
In this paper we describe the approach adopted and experiences gained during a project to develop a ...
A country’s history and development can be shaped by its natural environment and the hazards it face...
As an occurrence that jeopardises vital national interests or the basic needs of the populace, a cri...
When hazardous events occurs in buildings or in large environments with different access points and...
Despite all efforts like the introduction of new training methods and personal protective equipment,...
This chapter highlights the key challenges of our ongoing project in developing an information techn...
Nowadays, we are witnessing a shift in the way emergencies are being managed. On the one hand, the a...
The use of Big Data technologies has been more common in recent years, spreading across other fields...
The paper presents ENEA’s next step towards the development of Intelligent Decision Support Systems ...
The paper presents ENEA's next step towards the development of Intelligent Decision Support Sys...
This chapter introduces the role of machine learning (ML) in resilience engineering and discusses ac...