• Home
  • Video Courses
  • Tools – Cloud Comparison
  • Open Book & References
    • Google Anthos
    • Ethical AI
    • Production Ready Microservices Using Google Cloud
    • AI Chatbots
    • Enterprise IoT
    • Enterprise Blockchain
    • Cognitive IoT
  • Solution Bytes
    • AWS Solutions
    • GCP Solutions
    • Enterprise Architecture
    • Artificial Intelligence
  • About
  • Subscribe
  • Trends
  • Home
  • Video Courses
  • Tools – Cloud Comparison
  • Open Book & References
    • Google Anthos
    • Ethical AI
    • Production Ready Microservices Using Google Cloud
    • AI Chatbots
    • Enterprise IoT
    • Enterprise Blockchain
    • Cognitive IoT
  • Solution Bytes
    • AWS Solutions
    • GCP Solutions
    • Enterprise Architecture
    • Artificial Intelligence
  • About
  • Subscribe
  • Trends
home/Solution/Enterprise Architecture/How is Artificial Intelligence helping the cause of fully autonomous manufacturing

How is Artificial Intelligence helping the cause of fully autonomous manufacturing

A manufacturing system can be fully autonomous if it can fully understand its data and its surrounding environment and execute decisions with less human intervention.

Data in the manufacturing context can be broadly classified into 4 types – structured data (a sequence of data or time series information from sensors); unstructured data like images from cameras used by robots (automated robotic systems) for navigation or automated product classification; a combination of structured and unstructured data, like in case of augmented reality where you superimpose images and text to derive an outcome; and fourth being behavioural and surrounding data where devices learn from interactions and integration, the cognitive aspects of the devices.

Using AI technologies helps us to derive intelligent insights for each of the above data scenarios, For instance, machine learning models can be built for analysing the time series information from sensors for anomaly detection, condition or predictive based maintenance and output can be fed to other systems to take corrective action, like ordering new parts.

Deep learning models like convolutional neural networks can be used for computer vision, which can be used by robots for automating any activity involving image analysis, like production categorisation, product placement, navigation, etc. Optimisation models can be employed at every step of process to identify bottlenecks and improve efficiency. I also feel, there will always be some tasks that cannot be fully automated and humans and robots will work together to achieve the highest level of automation.

For more details, refer to the use case – Application Of IoT In Manufacturing

Was this helpful?

Yes  No
Related Articles
  • What is Proof of Work algorithm and how does it work with Ethereum blockchain
  • What is Blockchain and business benefits of Blockchain
  • What are building blocks of a Enterprise IoT Architecture
  • What are building blocks of a Enterprise Blockchain Architecture
  • How do I design an event driven microservices architecture
  • How do you build chatbot using chatbot platforms?
Leave A Comment Cancel reply

Popular Solutions
  • How do I enable outbound internet access for Private GKE Clusters
  • What is Anycast IP address and how does Google Cloud Load Balancer works
  • How to install Anthos Service Mesh on GKE
  • How does AWS implements Cross Region Load Balancing
  • How to setup a multi-tenant cluster with GKE
Solution Categories
  • Machine Learning & Artificial Intelligence
  • Enterprise Architecture
  • Amazon Web Services
  • Google Cloud
  • Metaverse
© 2021 Navveen Balani (https://navveenbalani.dev/) |. All rights reserved.