A Method For Automatic Fuzzy Set Generation Using Sensor Data (original) (raw)
Related papers
2006
This paper addresses the suitability of fuzzy logic for space monitoring and fault detection applications as it relates to decision support in mission control processes. Specifically, a general architecture for building a fuzzy inference system is presented and a development process is proposed. To illustrate the suitability of the approach, two applications from projects developed by UNINOVA for the European Space Agency (ESA) are briefly presented.
Fuzzy modeling of measurement data acquired from physical sensors
IEEE Transactions on Instrumentation and Measurement, 2000
The measurement uncertainty in physical sensors is often represented by a probabilistic approach, but such a representation is not always adapted to new intelligent systems. Therefore, a fuzzy representation, based on the possibility theory, can sometimes be preferred. We previously proposed a truncated triangular probability-possibility transformation to be applied to any unimodal and symmetric probability distribution which can be assimilated to one of the four most encountered probability laws (Gaussian, double-exponential, triangular, uniform). In this paper, we propose to build a fuzzy model of data acquired from physical sensors by applying this transformation. For this purpose, a minimum of knowledge about the probabilistic modeling of sensors is required. Three main situations will be considered and for each situation, an adapted fuzzy modeling will be proposed.
Fuzzy-based configuration of automated data acquisition systems for earthmoving operations
J. Inf. Technol. Constr., 2018
This paper presents a fuzzy-set-based method for the configuration of efficient and cost-effective on- site automated data acquisition systems for earthmoving operations. Due to the dynamic nature of construction projects, each project has unique characteristics that require distinctive customization of the utilized data acquisition system. The literature lacks a well-defined methodology for customization of the configuration of data acquisition systems. Several research efforts have focused on efficient utilization of different wireless sensing technologies, but the majority integrates black-box and off-the-shelf technologies, where there was no mean for customized configuration. Most widespread on-site data acquisition systems configuration depends on subjective views and market available technologies. The proposed method overcomes subjective configuration of data acquisition systems and provides a systematic selection procedure of the needed sensors. The proposed method first ide...
Recent advancements of fuzzy sets: Theory and practice
Information Sciences, 2006
This special issue encompasses six papers devoted to the recent advancements in the field of fuzzy sets. The seed of the current issue were some of the presentations made in three special sessions organized by the guest editors at the Nineth International Conference on Information Processing and Management of Uncertainty in Knowledge-based Systems (IPMU 2002) that was held in Annecy, France, July 1-5, 2002. These six original contributions have been thoroughly revised and expanded to become the papers currently presented in this issue.
Image analysis via fuzzy reasoning approach: prototype applications at NASA
2004 IEEE International Conference on Fuzzy Systems (IEEE Cat. No.04CH37542), 2004
A set of imaging techniques based on Fuzzy Reasoning (FR) approach was built for NASA at Kennedy Space Center (KSC) to perform complex real-time visualrelated safety prototype tasks, such as, detection and tracking of moving Foreign Objects Debris (FOD) during the NASA Space Shuttle liftoff and visual anomaly detection on slidewires used in the emergency egress system for Space Shuttle at the launch pad. The system has also proved its prospective in enhancing X-ray images used to screen hard-covered items leading to a better visualization. The system capability was used as well during the imaging analysis of the Space Shuttle Columbia accident. These FR-based imaging techniques include novel proprietary adaptive image segmentation, image edge extraction, and image enhancement. Probabilistic Neural Network (PNN) scheme available from NeuroShellTM Classifier and optimized via Genetic Algorithm (GA) was also used along with this set of novel imaging techniques to add powerful learning and image classification capabilities.
This book contains information obtained from authentic and highly regarded sources. Reprinted material is quoted with permission, and sources are indicated. A wide variety of references are listed. Reasonable efforts have been made to publish reliable data and information, but the author and the publisher cannot assume responsibility for the validity of all materials or for the consequences of their use.
Data analysis with fuzzy sets: a short survey
2004
This paper develops a short survey of the fuzzy sets theory and how it can contribute to better, more robust data analysis methods. We briefly cover the major fuzzy sets definitions, the rough sets alternative, fuzzy clustering, fuzzy classification, fuzzy regression, data visualisation and projection. We conclude that the fuzzy sets represent a very important advance for intelligent data analysis.