Falut Diagnosis of Single Point Cutting Tool Through Online and Offline Monitoring Techniques
Date
2016
Authors
N, Gangadhar.
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Tool condition monitoring plays a crucial role in automated industry to monitor the
state of cutting tool. It prevents any hazards occurring to the machine, avoid
deterioration of the surface finish on end product and it helps to introduce a new tool
in an instant at which the existing tool has worn out toensure safety, productivity and
optimum performance of the metal cutting process.
In the present research work,fault diagnosis of single point cutting tool is investigated
based on the vibration signals and cutting force signals on an engine lathe. Vibration
signals and cutting force signals corresponding to a healthy insert (baseline)
anddifferent types of industrial practical worn out insertswere recorded. The research
work is carried out in three phases.
The first phase investigates fault diagnosis of cutting tool using signal processing
techniquessuch astime domain, spectrum, cepstrum, continuous wavelet transform
(CWT), recurrence plots (RPs) and recurrence quantification analysis (RQA). The
result shows that recurrence plots and recurrence quantification analysis were useful
for revealing post fault detection and diagnosis of worn states of the inserts.
The second phase of research workpresents fault diagnosis of cutting tool using
machine learning approach based on vibration signals. From the vibration signals,
statisticalfeatures, histogram features, discrete wavelet transform (DWT) features and
empirical mode decomposition (EMD) featureswere extracted. Principle component
analysis (PCA) and J48 algorithm (decision tree) were used for important feature
selection/reduction. Artificial neural network (ANN), Naïve Bayes, Bayes net,
support vector machine (SVM), K-star and J48 algorithm classifiers have been used to
classify the different fault conditions. Classification accuracy is found to be
reasonably good with J48 algorithm feature selection compared to PCA.
The third phase presents the results of investigations undertaken to find suitability of
vibration signals and cutting forces to detect the condition of tungsten carbide cutting
tool insert, surface roughness and type of chip formation. The results show that there
is an increase in the level of acceleration and cutting force at faulty tool condition ascompared with the healthy condition of the tool. Based on this finding, cutting tool
acceleration and cutting forces can be used to predict the cutting tool condition,
surface roughness and chip formation type. Qualitative comparisons of the
computational predicted forces are drawn by plotting the trends of the predicted forces
together with the measured forces. The Deform-3D has correctly predicted this trend
which is consistent with the experimental trends of the cutting forces components.
Tool wear analysis has been carried out on the worn tungsten carbide insert cutting
tools to find the tool wear mechanisms.Based on SEM micrographsof worn surface of
the cutting tool,micro-abrasion, micro-attrition, adhesion and micro-fatigue behaviors
are identified as the dominant kinds of wear mechanisms.
Description
Keywords
Department of Mechanical Engineering, Tool condition monitoring, Recurrence plots, Recurrence quantification analysis, Machine learning approach, Cutting forces, Surface roughness, Chip formation