i3-Mechatronics Offers Solutions for Customers’ Smart Factories

The term “”IoT” or “industrie 4.0” has come to be used in a broad meaning in recent years because of advances in telecommunications technologies, and many things such as automobiles, factories, and home appliances are connected digitally. Yaskawa promotes i3-Mechatronics as a solution concept in response to such trends in IoT and industrie 4.0.

At i3-Mechatronics, we propose that in addition to automating “cells,” digital data should be used to manage these tasks. This enables us to manage the operation status of equipment with process data and the production status with status data as “numerical values” rather than “expert knowledge”. We want to provide our customers with data management that eliminates red lights that are out of service and keeps the green lights on at their factories.

Solutions offered by i3-Mechatronics


The i3-Mechatronics will proceed in three “i” steps: (1) integrated, (2) intelligent, and (3) innovative. Specifically, we will connect the factory cells and systems such as equipment and devices to the IT layer by (1) integrating data. Next, the collected data is analyzed and fully utilized (2) intelligently. By doing so, we will be able to achieve (3) innovative, such as the improvement of operating facilities and the stability of production quality, and consequently resolve business challenges that customers are seeking to build smart factories.

Let’s look at what you can do with i3-Mechatronics with each solution.

Data Visualization by YCP

First of all, in order to promote smart factories, it is important to visualize the situation in which the equipment/devices of factories such as industrial robots, machine tools, and sensors are integrated and operating in integrated, which is the first i of i3-Mechatronics.

The features of Yaskawa Cockpit (YCP), a software tool for this purpose, are the “collection, accumulation and analysis” of data through visualization. In the area of data collection and accumulation, it is possible to link various equipment and devices at production sites, including those of other companies, to YCP, to collect data in units of one-millionth of a second by combining the time series of each equipment, and to match the time stamp.

For data analysis, YCP enables you to execute analysis models such as inferences, created by AI, on upper-tier. Additional add-ons such as health monitoring and production count monitoring are also added, and IT vendors provide centralized control of the transfer of data to upper-tier systems such as ERP, MES and Big Data.

By introducing YCP, it is possible to perform predictive failure diagnosis, operation status monitoring/diagnosis, equipment abnormality diagnosis, quality defect detection, etc.


Shorter installation time

AI picking

AI Picking

By utilizing the AI technology “Alliom” developed by Yaskawa Group, the installation time to actual operation is drastically shortened, and the accuracy to actual machine can also be improved.


Flexible production

High variety and variable quantity production

High Variety and Variable Quantity Production

By using digital data to manage automated production lines, setup can be prepared automatically without manual intervention, enabling high variety and variable quantity production from a minimum of one unit.

Autonomous distributed manufacturing

Autonomous Distributed Manufacturing

Digital data such as the torque value, vibration value, and temperature of the servomotor is absorbed into the controller, and the robot can think for itself how to move.


Accuracy improvement

Accuracy improvement of defect cause analysis Yaskawa case

Accuracy Improvement of Defect Cause Analysis
< Yaskawa Case >

By “visualizing” the operation status of equipment/devices with Yaskawa Cockpit, it is possible to identify the root cause by comparing the normal value and abnormal value of the data in the factor analysis for defects in production.


Quality inspection

Automated product quality assessment with AI

Automated Product Quality Assessment with AI

When the quality inspection process is labor-saving, the use of an image judgement service that utilizes AI technology such as deep learning makes it possible to automatically determine complex No Good patterns with the same level of accuracy as humans.

Quality Quality

Failure prediction

Predictive failure diagnosis of equipment

Predictive Failure Diagnosis of Equipment

To reduce downtime to zero by performing planned maintenance in anticipation of equipment failure due to wear, etc., in response to concerns that production may become impossible due to the sudden shutdown or something else.


Recovery support

Investigating the cause of equipment failure

Investigating the Cause of Equipment Failure

By acquiring quality data on when, with which equipment, and how it was processed, it is possible to accurately identify the cause of the problem between which equipment and equipment at the time of failure.

Faster Recovery Simulation

Faster Recovery Simulation

The planning technology that Yaskawa developed automatically generates optimal paths, enabling simulation in a few minutes and dramatically reducing engineering time for recovery from sudden stop.


i3-Mechatronics Approach by Product

 Industrial robots
Industrial Robots
  • Digital application of industrial robots
  • Using AI with robots
  • Digital Twin
AC drive
AC Drives