HomeNewsIndia NewsMathWorks Adds New Predictive Maintenance Product for MATLAB

MathWorks Adds New Predictive Maintenance Product for MATLAB

MathWorks announced Predictive Maintenance Toolbox, a new MATLAB product that helps engineers design and test condition monitoring and predictive maintenance algorithms.

Predictive Maintenance Toolbox offers capabilities and reference examples for engineers who are designing algorithms to organize data, design condition indicators, monitor machine health and estimate remaining useful life (RUL) to prevent equipment failures.

With Predictive Maintenance Toolbox, engineers can analyze and label sensor data imported from files that are stored locally or on cloud storage. They can also label simulated failure data generated from Simulink models to represent equipment failures.

Signal processing and dynamic modeling methods that build on techniques such as spectral analysis and time series analysis let engineers preprocess data and extract features that can be used to monitor the condition of the machine.

Using survival, similarity, and trend-based models to predict the RUL helps engineers estimate a machine’s time to failure.

The toolbox includes reference examples for motors, gearboxes, batteries, and other machines that can be reused for developing custom predictive maintenance and condition monitoring algorithms.

Now, engineers can develop and validate the algorithms needed to predict when an equipment failure might occur or to detect any underlying anomalies by monitoring sensor data.

These algorithms are developed by accessing historical data that is stored in local files, on cloud storage systems such as Amazon S3 and Windows Azure Blob Storage, or on a Hadoop Distributed File System.

Another source of data is simulation data from physical models of the equipment that incorporate failure dynamics.

Engineers can extract and select the most suitable features from this data, and then use interactive apps to train machine learning models with these features to predict or detect equipment failures.

“Predictive maintenance is a key application of the industrial Internet of Things.  This is critical to reduce unnecessary maintenance costs and eliminate unplanned downtime. Engineers who typically don’t have a background in machine learning or signal processing find designing algorithms for predictive maintenance particularly challenging,” said Paul Pilotte, technical marketing manager, MathWorks. “Now, these teams can quickly ramp up by using Predictive Maintenance Toolbox as a starting point for learning how to design and test these algorithms.”

Predictive Maintenance Toolbox is available worldwide, with more information available at mathworks.com.

ELE Times Research Desk
ELE Times Research Deskhttps://www.eletimes.ai
ELE Times provides a comprehensive global coverage of Electronics, Technology and the Market. In addition to providing in depth articles, ELE Times attracts the industry’s largest, qualified and highly engaged audiences, who appreciate our timely, relevant content and popular formats. ELE Times helps you build awareness, drive traffic, communicate your offerings to right audience, generate leads and sell your products better.

Related News

Must Read

Bosch and Qualcomm expand collaboration to strategic ADAS solutions

Cockpit Computers: 10 million units delivered • High-performance solutions: Bosch...

Gartner Forecasts Worldwide Semiconductor Revenue to Exceed $1.3 Trillion in 2026

Semiconductor Revenue to Grow 64% in 2026 DRAM...

Directed Energy Systems: Where Capability Ends and Control Begins

by Sukhendu Deb Roy, Industry Consultant Key Takeaways The economics...

Boundary scan in combination with automotive applications for CAN-FD and LIN bus

Serial communication remains the backbone of electronic communication in...

Why Every EV & 5G Phone Could Soon Be Powered by Gujarat

In a move that cements India’s transition from a...

WSCAD ELECTRIX AI Cuts 50% Engineering Effort For Alligator Automations

Alligator Automations India Pvt. Ltd., a manufacturer of end-of-line...

Govt Infuses ₹258 Crore Into 128 Startups to Drive DeepTech and IP Creation

In a major move to solidify India's standing as...