To detect root causes of non-conforming parts - parts outside the tolerance limits - in production processes a high level of expert knowledge is necessary. This results in high costs and a low flexibility in the choice of personnel to perform analyses. In modern production a vast amount of process data is available and machine learning algorithms exist which model processes empirically. Aim of this paper is to introduce a procedure for an automated root cause analysis based on machine learning algorithms to reduce the costs and the necessary expert knowledge. Therefore, a decision tree algorithm is chosen. A procedure for its application in an automated root cause analysis is presented and simulations to prove its applicability are conducte...
Fault diagnosis is among the most crucial steps in maintenance strategies to sustain the health of m...
A production line is a set of sequential operations established in a factory where materials are put...
The intensive development of information and communication technologies in recent years has led to a...
Abstract: The identification of defect causes plays a key role in smart manufacturing as it can re...
Anomaly detection is a crucial aspect for both safety and efficiency of modern process industries. ...
reservedIn the Industry 4.0 scenario, the rising adoption of new technologies such as Internet of Th...
Today, a large amount of raw data are available within manufacturing industries. Unfortunately, most...
Model-based fault diagnosis tends to be too expensive or time-consuming to apply in the mineral proc...
In manufacturing processes the automated identification of faulty operating conditions that might le...
Expert systems can play a very important role in manufacturing processes by locating problems as soo...
The diagnosis of Cyber-Physical Production Systems (CPPS) comprises two main steps: (i) The identifi...
Today root causes of failures and quality deviations in manufacturing are usually identified using e...
We apply machine learning to automate the root cause analysis in agile software testing environments...
The purpose of this study is to explore application of Machine Learning algorithm in the Predictive ...
This thesis is to meet the needs of developing automation process on defective testing in thehard di...
Fault diagnosis is among the most crucial steps in maintenance strategies to sustain the health of m...
A production line is a set of sequential operations established in a factory where materials are put...
The intensive development of information and communication technologies in recent years has led to a...
Abstract: The identification of defect causes plays a key role in smart manufacturing as it can re...
Anomaly detection is a crucial aspect for both safety and efficiency of modern process industries. ...
reservedIn the Industry 4.0 scenario, the rising adoption of new technologies such as Internet of Th...
Today, a large amount of raw data are available within manufacturing industries. Unfortunately, most...
Model-based fault diagnosis tends to be too expensive or time-consuming to apply in the mineral proc...
In manufacturing processes the automated identification of faulty operating conditions that might le...
Expert systems can play a very important role in manufacturing processes by locating problems as soo...
The diagnosis of Cyber-Physical Production Systems (CPPS) comprises two main steps: (i) The identifi...
Today root causes of failures and quality deviations in manufacturing are usually identified using e...
We apply machine learning to automate the root cause analysis in agile software testing environments...
The purpose of this study is to explore application of Machine Learning algorithm in the Predictive ...
This thesis is to meet the needs of developing automation process on defective testing in thehard di...
Fault diagnosis is among the most crucial steps in maintenance strategies to sustain the health of m...
A production line is a set of sequential operations established in a factory where materials are put...
The intensive development of information and communication technologies in recent years has led to a...