Operation
❯
Predictive Maintenance
❯Knowledge representation - Bayesian Network
Deep learning technology combined with topological data analysis successfully estimates degree of internal damage to bridge infrastructure
Large Companies
Knowledge representation - Bayesian Network
Predictive maintenance of public housing lifts
Product failure prediction for critical IT infrastructure
Automated defect classification on product surfaces
Analysing and predicting acid treatment effectiveness on bottom hole zone
Machine learning-driven approach to identify weak spots in the manufacturing of circuit breakers.
Active antenna array satellite
Intelligent technology to control manual operations via video Norma
Jet engine predictive maintenance service
Carrier interference detection and removal for satellite communication
Large Companies
Manufacturing and Factories – Predictive Maintenance
Solution to detect signs of failures in wind power generation system
Machine learning-driven analysis of batch process operation data to identify causes of poor batch performance
Large Companies
Knowledge representation - Bayesian Network
For:
Process Engineers.Goal:
Improve Operation EfficiencyProblem addressed
Root cause analysis (RCA) and decision support is vital for industrial plant maintenance. Process Engineers are face with the challenging to task of assessing issues with ever increasingly complex industrial process under high workload and stress.
Diagnostic tools are needed to provide Process Engineers with decision support for determining the origin of a process distrubance or fault. Such tools must be transparent in their reasoning and provide an easily interpretable diagnosis in order to be optimally useful.
Scope of use case
Applying Bayesian Networks to root cause analysis of industrial processes.
Sensor Network - IOT
AI: Perceive
Bayesian network
AI: Understand
Diagnose
AI: Act