Design of a dynamic and self adapting system, supported with artificial
intelligence, machine learning and real time intelligence for predictive
cyber risk analytics in extreme environments, cyber risk in the colonisation
of Mars
- URL: http://arxiv.org/abs/2005.12150v2
- Date: Thu, 11 Feb 2021 20:36:26 GMT
- Title: Design of a dynamic and self adapting system, supported with artificial
intelligence, machine learning and real time intelligence for predictive
cyber risk analytics in extreme environments, cyber risk in the colonisation
of Mars
- Authors: Petar Radanliev, David De Roure, Kevin Page, Max Van Kleek, Omar
Santos, La Treall Maddox, Pete Burnap, Eirini Anthi, Carsten Maple
- Abstract summary: This paper surveys deep learning algorithms, IoT cyber security and risk models, and established mathematical formulas to identify the best approach.
The paper presents a new mathematical approach for integrating concepts for cognition engine design, edge computing and Artificial Intelligence and Machine Learning to automate anomaly detection.
This engine instigates a step change by applying Artificial Intelligence and Machine Learning embedded at the edge of IoT networks, to deliver safe and functional real time intelligence for predictive cyber risk analytics.
- Score: 13.561604830845024
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Multiple governmental agencies and private organisations have made
commitments for the colonisation of Mars. Such colonisation requires complex
systems and infrastructure that could be very costly to repair or replace in
cases of cyber attacks. This paper surveys deep learning algorithms, IoT cyber
security and risk models, and established mathematical formulas to identify the
best approach for developing a dynamic and self adapting system for predictive
cyber risk analytics supported with Artificial Intelligence and Machine
Learning and real time intelligence in edge computing. The paper presents a new
mathematical approach for integrating concepts for cognition engine design,
edge computing and Artificial Intelligence and Machine Learning to automate
anomaly detection. This engine instigates a step change by applying Artificial
Intelligence and Machine Learning embedded at the edge of IoT networks, to
deliver safe and functional real time intelligence for predictive cyber risk
analytics. This will enhance capacities for risk analytics and assists in the
creation of a comprehensive and systematic understanding of the opportunities
and threats that arise when edge computing nodes are deployed, and when
Artificial Intelligence and Machine Learning technologies are migrated to the
periphery of the internet and into local IoT networks.
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