Improve Production Line Quality using Machine Learning at the Edge
VOLANSYS (An ACL Digital Company)
Trusted Technology Partner for Product Engineering and Digital Transformation Services
The industry 4.0 paradigm encourages the manufacturing industry to use machine learning, artificial intelligence, cloud computing and industrial internet of things (IIoT) technologies to improve industrial process, product quality, reduce cost and time to market.
Machine learning algorithms act as an intelligent decision support system for OEMs and is applicable to variety of manufacturing applications such as:
Smart factories and warehouses continuously collect and share massive data through connected devices and distributed infrastructure. Analyzing enormous volumes of data using complex machine learning algorithms requires significant computational capabilities. Existing on-premises and centralized cloud infrastructure are capable but they have their own limitations in terms of latency, huge bandwidth consumption, security related issues etc.?Some of the smart industrial applications require low latency to get real-time access to data. To reduce latency and bandwidth use,?Machine Learning on the Edge is the solution.?
The Bigger Picture: Machine Learning at the Edge in Smart Factories
Machine Learning at the Edge is a technique that enables data processing at the device level or local infrastructure at the “edge” of the network using machine learning or deep learning algorithms, reducing dependency on cloud networks. Edge computing allows for running computationally intensive machine learning algorithms on the edge. This helps to generate more real-time analytics and as a result, various types of applications are now possible for various industries.
In most cases, the Machine Learning model is programmed in frameworks like Tensorflow, Keras, Caffe etc. Using these frameworks, the programmed model is trained on high end platforms like a computer system (PC or Laptop), or cloud platforms like Microsoft Azure, Google cloud, Amazon AWS, etc. Once the model is trained, it is saved and deployed on the cloud platforms, or more relevant embedded platforms for real-time inference (predictions), like NXP IMX8M based devices.
AI/ML and especially ML at the Edge has become an important technology to drive the growth of Industry 4.0. It is playing a very important role to improve the quality of the product in the smart factories.
Applications of Machine Learning Models for Various Manufacturing Operations
With the advancement of semiconductor technology, it is possible to deploy these computationally heavy algorithms on the edge platform. With the integration of Graphics Processing Units, Digital Signal Processing, Neural Processing Unit in the various SoCs it is possible to achieve real-time performance on low power, low cost platforms.
How to Ensure Quality of Manufactured Products in the Smart Factories?
Some of the key factors that play a very important role in maintaining the quality of the product manufactured in the smart factories are:
At VOLANSYS, our teams are specialized in machine learning services to build optimized machine learning models across multiple data types, including image, video, speech, audio, and texts for end user applications like security, preventive maintenance, audio/video analytics, and many more, thus making us a preferred partner for machine learning services.
Originally published at https://volansys.com/