1,776 research outputs found
The VEX-93 environment as a hybrid tool for developing knowledge systems with different problem solving techniques
The paper describes VEX-93 as a hybrid environment for developing
knowledge-based and problem solver systems. It integrates methods and
techniques from artificial intelligence, image and signal processing and
data analysis, which can be mixed. Two hierarchical levels of reasoning
contains an intelligent toolbox with one upper strategic inference engine
and four lower ones containing specific reasoning models: truth-functional
(rule-based), probabilistic (causal networks), fuzzy (rule-based) and
case-based (frames). There are image/signal processing-analysis capabilities
in the form of programming languages with more than one hundred primitive
functions.
User-made programs are embeddable within knowledge basis, allowing the
combination of perception and reasoning. The data analyzer toolbox contains
a collection of numerical classification, pattern recognition and ordination
methods, with neural network tools and a data base query language at
inference engines's disposal.
VEX-93 is an open system able to communicate with external computer programs
relevant to a particular application. Metaknowledge can be used for
elaborate conclusions, and man-machine interaction includes, besides windows
and graphical interfaces, acceptance of voice commands and production of
speech output.
The system was conceived for real-world applications in general domains, but
an example of a concrete medical diagnostic support system at present under
completion as a cuban-spanish project is mentioned.
Present version of VEX-93 is a huge system composed by about one and half
millions of lines of C code and runs in microcomputers under Windows 3.1.Postprint (published version
Fault Detection in Systems-A Fuzzy Approach
The task of fault detection is important when dealing with failures of crucial nature. After detection of faults in a system, it is advisable to suggest maintenance action before occurrenceof a failure. Fault detection may be done by observing various symptoms of the system during its operational stage. Sometimes, symptoms cannot be quantified easily but can be expressedin linguistic terms. Since linguistic terms are fuzzy quantifiers, these can be represented by fuzzy numbers. In this paper, two cases have been discussed, where a fault likely to affect a particular systemlsystems, is detected. In the first case, this is done by means of a compositional rule of inference. The second case is based on modified similarity measure. For both these cases, linguistic terms have been expressed as trapezoidal fuzzy number
AUTOMATED INTERPRETATION OF THE BACKGROUND EEG USING FUZZY LOGIC
A new framework is described for managing uncertainty and for deahng with artefact
corruption to introduce objectivity in the interpretation of the electroencephalogram
(EEG).
Conventionally, EEG interpretation is time consuming and subjective, and is known to
show significant inter- and intra-personnel variation. A need thus exists to automate the
interpretation of the EEG to provide a more consistent and efficient assessment.
However, automated analysis of EEGs by computers is complicated by two major
factors. The difficulty of adequately capturing in machine form, the skills and subjective
expertise of the experienced electroencephalbgrapher, and the lack of a reliable means of
dealing with the range of EEG artefacts (signal contamination). In this thesis, a new
framework is described which introduces objectivity in two important outcomes of
clinical evaluation of the EEG, namely, the clinical factual report and the clinical
'conclusion', by capturing the subjective expertise of the electroencephalographer and
dealing with the problem of artefact corruption.
The framework is separated into two stages .to assist piecewise optimisation and to cater
for different requirements. The first stage, 'quantitative analysis', relies on novel digital
signal processing algorithms and cluster analysis techniques to reduce data and identify
and describe background activities in the EEG. To deal with artefact corruption, an
artefact removal strategy, based on new reUable techniques for artefact identification is
used to ensure that artefact-free activities only are used in the analysis. The outcome is a
quantitative analysis, which efficiently describes the background activity in the record,
and can support future clinical investigations in neurophysiology. In clinical practice,
many of the EEG features are described by the clinicians in natural language terms, such
as very high, extremely irregular, somewhat abnormal etc. The second stage of the
framework, 'qualitative analysis', captures the subjectivity and linguistic uncertainty
expressed.by the clinical experts, using novel, intelligent models, based on fuzzy logic, to
provide an analysis closely comparable to the clinical interpretation made in practice.
The outcome of this stage is an EEG report with qualitative descriptions to complement
the quantitative analysis.
The system was evaluated using EEG records from 1 patient with Alzheimer's disease
and 2 age-matched normal controls for the factual report, and 3 patients with Alzheimer's
disease and 7 age-matched nonnal controls for the 'conclusion'. Good agreement was
found between factual reports produced by the system and factual reports produced by
qualified clinicians. Further, the 'conclusion' produced by the system achieved 100%
discrimination between the two subject groups. After a thorough evaluation, the system
should significantly aid the process of EEG interpretation and diagnosis
Early Prediction of Diabetes Using Deep Learning Convolution Neural Network and Harris Hawks Optimization
Owing to the gravity of the diabetic disease the minimal level symptoms for diabetic failure in the early stage must be forecasted. The prediction system instantaneous and prior must thus be developed to eliminate serious medical factors. Information gathered from Pima Indian Diabetic dataset are synthesized through a profound learning approach that provides features for diabetic level information. Metadata is used to enhance the recognition process for the profound learned features. The distinct details retrieved by integrated machine and computer technology, including glucose level, health information, age, insulin level, etc. Due to the efficacious Hawks Optimization Algorithm (HOA), the data's insignificant participation in diabetic diagnostic processes is minimized in process analysis luminosity. Diabetic disease has been categorized with Deep Learning Convolution Networks (DLCNN) from among the chosen diabetic characteristics. The process output developed is measured on the basis of test results in terms of error rate, sensitivity, specificity and accuracy
Fuzzy Set Theory in Medicine
Fuzzy set theory has a number of properties that make it suitable for formalizing the uncertain information upon which medical diagnosis and treatment is usually based.
Firstly, it allows us to define inexact medical entities as fuzzy sets. Secondly, it provides a linguistic approach with an excellent approximation to texts. Finally, fuzzy logic offers powerful reasoning methods capable of drawing approximate inferences.
These facts suggest that fuzzy set theory might be a suitable basis for the development of a computerized diagnosis and treatment-recommendation system. This is borne out by trials performed with the medical expert system CADIAG-2, which uses fuzzy set theory to formalize medical relationships
δ-equality of intuitionistic fuzzy sets: a new proximity measure and applications in medical diagnosis
Intuitionistic fuzzy set is capable of handling uncertainty with counterpart falsities which exist in nature. Proximity measure is a convenient way to demonstrate impractical significance of values of memberships in the intuitionistic fuzzy set. However, the related works of Pappis (Fuzzy Sets Syst 39(1):111–115, 1991), Hong and Hwang (Fuzzy Sets Syst 66(3):383–386, 1994), Virant (2000) and Cai (IEEE Trans Fuzzy Syst 9(5):738–750, 2001) did not model the measure in the context of the intuitionistic fuzzy set but in the Zadeh’s fuzzy set instead. In this paper, we examine this problem and propose new notions of δ-equalities for the intuitionistic fuzzy set and δ-equalities for intuitionistic fuzzy relations. Two fuzzy sets are said to be δ-equal if they are equal to an extent of δ. The applications of δ-equalities are important to fuzzy statistics and fuzzy reasoning. Several characteristics of δ-equalities that were not discussed in the previous works are also investigated. We apply the δ-equalities to the application of medical diagnosis to investigate a patient’s diseases from symptoms. The idea is using δ-equalities for intuitionistic fuzzy relations to find groups of intuitionistic fuzzified set with certain equality or similar degrees then combining them. Numerical examples are given to illustrate validity of the proposed algorithm. Further, we conduct experiments on real medical datasets to check the efficiency and applicability on real-world problems. The results obtained are also better in comparison with 10 existing diagnosis methods namely De et al. (Fuzzy Sets Syst 117:209–213, 2001), Samuel and Balamurugan (Appl Math Sci 6(35):1741–1746, 2012), Szmidt and Kacprzyk (2004), Zhang et al. (Procedia Eng 29:4336–4342, 2012), Hung and Yang (Pattern Recogn Lett 25:1603–1611, 2004), Wang and Xin (Pattern Recogn Lett 26:2063–2069, 2005), Vlachos and Sergiadis (Pattern Recogn Lett 28(2):197– 206, 2007), Zhang and Jiang (Inf Sci 178(6):4184–4191, 2008), Maheshwari and Srivastava (J Appl Anal Comput 6(3):772–789, 2016) and Support Vector Machine (SVM)
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