This paper presents a fiber optic sensor system, artificial neural networks (fast back-propagation) are employed for the data processing. The use of the neural networks makes it possible for the sensor to be used both for surface roughness and displacement measurement at the same time. The results indicate 100% correct surface classification for ten different surfaces (different materials, different manufacturing methods, and different surface roughnesses) and displacement errors less then ±5 μm. The actual accuracy was restricted by the calibration machine. A measuring range of ±0.8 mm for the displacement measurement was achieved
Artificial neural network (ANN) based prediction of the response of a microbend fiber optic sensor i...
Methods and systems of neural network demodulation for an optical sensor. An optical sensor may be c...
Methods and systems of neural network demodulation for an optical sensor. An optical sensor may be c...
This project deals with the design and development of an optoelectronic sensor system and its possib...
In this present study, two optical methods employing diffusive and specular reflections from the ste...
In this study, a sensor tip with a metallic hemispherical nozzle tip (MHNT) design based on the Fabr...
The paper deals with the development of a fiber optic sensor for surface roughness measurement. A ne...
Abstract: Practical use of Machine Vision for surface roughness estimation faces many challenges, as...
A fiber optic displacement sensor is proposed to estimate the roughness of metal surface using the i...
Polishing is a highly skilled manufacturing process with a lot of constraints and interaction with e...
This article presents the development of a system for predicting surface roughness, using a feed-for...
A simple and inexpensive method using fiber optic displacement sensor is proposed for measurements o...
The measurement of surface roughness using the stylus equipment has several disadvantages. A non-con...
An inexpensive fiber-based noncontact distance sensor specific for monitoring short-range displaceme...
This paper describes artificial neural network ( ANN) based prediction of the response of a fiber op...
Artificial neural network (ANN) based prediction of the response of a microbend fiber optic sensor i...
Methods and systems of neural network demodulation for an optical sensor. An optical sensor may be c...
Methods and systems of neural network demodulation for an optical sensor. An optical sensor may be c...
This project deals with the design and development of an optoelectronic sensor system and its possib...
In this present study, two optical methods employing diffusive and specular reflections from the ste...
In this study, a sensor tip with a metallic hemispherical nozzle tip (MHNT) design based on the Fabr...
The paper deals with the development of a fiber optic sensor for surface roughness measurement. A ne...
Abstract: Practical use of Machine Vision for surface roughness estimation faces many challenges, as...
A fiber optic displacement sensor is proposed to estimate the roughness of metal surface using the i...
Polishing is a highly skilled manufacturing process with a lot of constraints and interaction with e...
This article presents the development of a system for predicting surface roughness, using a feed-for...
A simple and inexpensive method using fiber optic displacement sensor is proposed for measurements o...
The measurement of surface roughness using the stylus equipment has several disadvantages. A non-con...
An inexpensive fiber-based noncontact distance sensor specific for monitoring short-range displaceme...
This paper describes artificial neural network ( ANN) based prediction of the response of a fiber op...
Artificial neural network (ANN) based prediction of the response of a microbend fiber optic sensor i...
Methods and systems of neural network demodulation for an optical sensor. An optical sensor may be c...
Methods and systems of neural network demodulation for an optical sensor. An optical sensor may be c...