Five ways to accelerate predictive maintenance

Credit to Author: Atin Chhabra| Date: Tue, 04 Dec 2018 07:44:19 +0000

The rapid pace at which technology in the modern world has developed is a tale to behold. However, the prevalence of this form of technology mandates the need for an efficient machine management system that can see to it that these innovations function as smoothly and efficiently as possible.

One can’t expect human beings to accomplish this lofty goal. Errors can happen at any time, which will lead to further problems down the line. To ensure that this problem doesn’t cause any significant issues in the long run, one needs to implement a system of predictive maintenance. Basically, by making sure of it that any potential errors or faults in this technology can be rectified before they end up causing major issues further down the line, digital problems can be mitigated to a massive extent, if not negated entirely.

Here are five forms of technology that are accelerating the rate at which predictive maintenance is becoming the norm in the industries of today:

Industrial Internet of Things

Industrial IoT services are quickly becoming commonplace all over the world. There’s no doubt in anyone’s mind that the industrial Internet of Things will quickly become the next big thing when it comes to the propagation of predictive maintenance in the modern world.

Big Data

It’s obvious that any technical industry would generate a sizeable volume of big data, and the manufacturing industry will definitely do the same as well. Thus, it’s important to set up certain systems that can analyse this data with the greatest of ease.

Augmented & Virtual Reality

The interfaces allowed through the advent of AR and VR will go a long way in allowing for greater transparency when it comes to the information given through the system of predictive maintenance.

Artificial Intelligence

The umbrella term of AI covers a large swath of concepts, which speaks volumes when it comes to the all-encompassing nature of this technology. Thus, this form of technology will aid you by leaps and bounds when it comes to the

Machine Learning

The concept of machine learning and data analytics has quickly gained prominence as one of the most important elements for predictive maintenance since it allows industries to carefully store, collect and analyse data efficiently in order to carry out any and all measures related to the concept of predictive maintenance in an industrial IoT scenario.

The forms of technology mentioned above will go a long way in ensuring that the system of predictive maintenance is carried out to its maximum potential.

The post Five ways to accelerate predictive maintenance appeared first on Schneider Electric Blog.

http://blog.schneider-electric.com/feed/