A digital twin for the plant

Sight Machine takes digitalization to the next level with the latest version of its manufacturing analytics platform. Flexible data models mirror the real time performance of the physical plant, delivering views to users via contextualized dashboards.

Sight Machine 2.0 expands its analytics platform by adding Global Ops View for real time visibility across the enterprise.
Sight Machine 2.0 expands its analytics platform by adding Global Ops View for real time visibility across the enterprise.

Last year, start up company Sight Machine entered the industrial space with the announcement of its manufacturing analytics platform. Built on an open source model, the technology uses artificial intelligence and machine learning algorithms and is designed to take in structured and unstructured data to develop data models. The system addresses the core challenge of a company’s need to cut through the complexity of analyzing the information coming from the plant floor, especially as the Industrial Internet of Things (IIoT) generates new forms of data.

Last month, the company introduced Sight Machine 2.0, expanding its analytics platform by adding Global Ops View for real time visibility across the enterprise. It includes contextualized dashboards that can be tailored for the needs of a user or function, and a tool that uses machine learning to determine the reasons for downtime.

The company also defined its version of the “digital twin.” It’s a term that is commonly used by product lifecycle management (PLM) suppliers, referring to the use of modeling software to reflect a physical product. Sight Machine has a little different spin, as it applies data models to the entire plant.

“We’ve been developing our technology for more than five years now and we realized in the last year that the term ‘digital twin’ is increasingly being used to describe what we do,” said Jon Sobel, CEO and co-founder of Sight Machine. “The term has been used mostly to describe challenging problems involving modeling a complex asset like a jet engine. What we’ve built is a digital twin of the factory as a system. It is the same concept of modeling something physical. But, in our case, we are modeling the entire plant.”

The value of Sight Machine is its ability to combine, reuse, and make sense of the data manufacturers collect. For example, typically data scientists, developers and operators will attack a single problem—like machine downtime—from different perspectives, and then stitch everything together. The idea of having a digital twin of the plant floor means that the same models can be used over and over, filling the data gap by building off the same model.

“It is the continuous way all relationships are being represented in the background that is filling that gap,” Sobel said.
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