Approximate, quantitative reasoning that is concerned with the linguistic ambiguity which exists in natural or synthetic language. At its core are variables such as good, bad, and young as well as modifiers such as more, less, and very. These ordinary terms represent fuzzy sets in a particular problem. Fuzzy logic plays a key role in many medical expert systems.
The science that investigates the principles governing correct or reliable inference and deals with the canons and criteria of validity in thought and demonstration. This system of reasoning is applicable to any branch of knowledge or study. (Random House Unabridged Dictionary, 2d ed & Sippl, Computer Dictionary, 4th ed)
Education and training outside that for the professions.
A computer architecture, implementable in either hardware or software, modeled after biological neural networks. Like the biological system in which the processing capability is a result of the interconnection strengths between arrays of nonlinear processing nodes, computerized neural networks, often called perceptrons or multilayer connectionist models, consist of neuron-like units. A homogeneous group of units makes up a layer. These networks are good at pattern recognition. They are adaptive, performing tasks by example, and thus are better for decision-making than are linear learning machines or cluster analysis. They do not require explicit programming.

Identification of causal relations between haemodynamic variables, auditory evoked potentials and isoflurane by means of fuzzy logic. (1/394)

The aim of this study was to identify a possible relationship between haemodynamic variables, auditory evoked potentials (AEP) and inspired fraction of isoflurane (ISOFl). Two different models (isoflurane and mean arterial pressure) were identified using the fuzzy inductive reasoning (FIR) methodology. A fuzzy model is able to identify non-linear and linear components of a causal relationship by means of optimization of information content of available data. Nine young female patients undergoing hysterectomy under general anaesthesia were included. Mean arterial pressure (MAP), heart rate (HR), end-tidal expired carbon dioxide (CO2ET), AEP and ISOFl were monitored with a sampling time of 10 s. The AEP was extracted using an autoregressive model with exogenous input (ARX model) which decreased the processing time compared with a moving time average. The AEP was mapped into a scalar, termed the depth of anaesthesia index (DAI) normalized to 100 when the patient was awake and descending to an average of 25 during loss of consciousness. The FIR methodology identified those variables among the input variables (MAP, HR, CO2ET, DAI or ISOFl) that had the highest causal relation with the output variables (ISOFl and MAP). The variables with highest causal relation constitute the ISOFl and MAP models. The isoflurane model predicted the given anaesthetic dose with a mean error of 12.1 (SD 10.0)% and the mean arterial pressure model predicted MAP with a mean error of 8.5 (7.8)%.  (+info)

Fuzzy logic and measles vaccination: designing a control strategy. (2/394)

BACKGROUND: The State of Sao Paulo, the most populous in Brazil, was virtually free of measles from 1987 until the end of 1996 when the number of cases started to rise. It reached alarming numbers in the middle of 1997 and local health authorities decided to implement a mass vaccination campaign. METHODS: Fuzzy Decision Making techniques are applied to the design of the vaccination campaign. RESULTS: The mass vaccination strategy chosen changed the natural course of the epidemic. It had a significant impact on the epidemic in the metropolitan area of Sao Paulo city, but a second epidemic in the State's interior forced the public health authorities to implement a second mass vaccination campaign 2 months after the first. CONCLUSIONS: Fuzzy Logic techniques are a powerful tool for the design of control strategies against epidemics of infectious diseases.  (+info)

Which algorithm for scheduling add-on elective cases maximizes operating room utilization? Use of bin packing algorithms and fuzzy constraints in operating room management. (3/394)

BACKGROUND: The algorithm to schedule add-on elective cases that maximizes operating room (OR) suite utilization is unknown. The goal of this study was to use computer simulation to evaluate 10 scheduling algorithms described in the management sciences literature to determine their relative performance at scheduling as many hours of add-on elective cases as possible into open OR time. METHODS: From a surgical services information system for two separate surgical suites, the authors collected these data: (1) hours of open OR time available for add-on cases in each OR each day and (2) duration of each add-on case. These empirical data were used in computer simulations of case scheduling to compare algorithms appropriate for "variable-sized bin packing with bounded space." "Variable size" refers to differing amounts of open time in each "bin," or OR. The end point of the simulations was OR utilization (time an OR was used divided by the time the OR was available). RESULTS: Each day there were 0.24 +/- 0.11 and 0.28 +/- 0.23 simulated cases (mean +/- SD) scheduled to each OR in each of the two surgical suites. The algorithm that maximized OR utilization, Best Fit Descending with fuzzy constraints, achieved OR utilizations 4% larger than the algorithm with poorest performance. CONCLUSIONS: We identified the algorithm for scheduling add-on elective cases that maximizes OR utilization for surgical suites that usually have zero or one add-on elective case in each OR. The ease of implementation of the algorithm, either manually or in an OR information system, needs to be studied.  (+info)

Evaluation of new online automated embolic signal detection algorithm, including comparison with panel of international experts. (4/394)

BACKGROUND AND PURPOSE: The clinical application of Doppler detection of circulating cerebral emboli will depend on a reliable automated system of embolic signal detection; such a system is not currently available. Previous studies have shown that frequency filtering increases the ratio of embolic signal to background signal intensity and that the incorporation of such an approach into an offline automated detection system markedly improved performance. In this study, we evaluated an online version of the system. In a single-center study, we compared its performance with that of a human expert on data from 2 clinical situations, carotid stenosis and the period immediately after carotid endarterectomy. Because the human expert is currently the "gold standard" for embolic signal detection, we also compared the performance of the system with an international panel of human experts in a multicenter study. METHODS: In the single-center evaluation, the performance of the software was tested against that of a human expert on 20 hours of data from 21 patients with carotid stenosis and 18 hours of data from 9 patients that was recorded after carotid endarterectomy. For the multicenter evaluation, a separate 2-hour data set, recorded from 5 patients after carotid endarterectomy, was analyzed by 6 different human experts using the same equipment and by the software. Agreement was assessed by determining the probability of agreement. RESULTS: In the 20 hours of carotid stenosis data, there were 140 embolic signals with an intensity of > or =7 dB. With the software set at a confidence threshold of 60%, a sensitivity of 85.7% and a specificity of 88.9% for detection of embolic signals were obtained. At higher confidence thresholds, a specificity >95% could be obtained, but this was at the expense of a lower sensitivity. In the 18 hours of post-carotid endarterectomy data, there were 411 embolic signals of > or =7-dB intensity. When the same confidence threshold was used, a sensitivity of 95.4% and a specificity of 97.5% were obtained. In the multicenter evaluation, a total of 127 events were recorded as embolic signals by at least 1 center. The total number of embolic signals detected by the 6 different centers was 84, 93, 108, 92, 63, and 78. The software set at a confidence threshold of 60% detected 90 events as embolic signals. The mean probability of agreement, including all human experts and the software, was 0.83, and this was higher than that for 2 human experts and lower than that for 4 human experts. The mean values for the 6 human observers were averaged to give P=0.84, which was similar to that of the software. CONCLUSIONS: By using the frequency specificity of the intensity increase occurring with embolic signals, we have developed an automated detection system with a much improved sensitivity. Its performance was equal to that of some human experts and only slightly below the mean performance of a panel of human experts  (+info)

A property concept frame representation for flexible image-content retrieval in histopathology databases. (5/394)

In histopathology databases, images descriptions are collections of properties provided by experts. Image content retrieval implies comparison of such properties. The objective of this work is to enrich the traditional attribute-value representation of properties in order to take into account the polymorphism and subjectivity of properties and to manage the comparison process. In this paper we define a property concept frame (PCF) representation based on fuzzy logic to handle both representation and comparison. Seven quantifiable morphological characteristics were selected from histopathological reports to illustrate the variety of fuzzy predicates and linguistic terms in properties. The PCF representation has been tested in the context of breast pathology. It is concluded that the PCF representation provides a unification scheme to retrieve in images morphological characteristics that are described in different ways. It may enhance the relevancy of applications in various contexts such as image content-based retrieval or case-based reasoning from images.  (+info)

Decision trees and fuzzy logic: a comparison of models for the selection of measles vaccination strategies in Brazil. (6/394)

In 1997, health authorities of the state of Sao Paulo, Brazil designed a vaccination campaign against measles based on a decision model that utilized fuzzy logic. The chosen mass vaccination strategy was implemented and changed the natural course of the epidemic in that state. We have built a model using a decision tree and compare it to the fuzzy logic model. Using essentially the same set of assumptions about this problem, we contrast the two approaches. The models identify the same strategy as being the best one, but exhibit differences in the ranking of the remaining strategies.  (+info)

Prevention of haemodialysis-induced hypotension by biofeedback control of ultrafiltration and infusion. (7/394)

BACKGROUND: Haemodialysis-induced hypotension is still a severe complication in spite of all the progress in haemodialysis treatment. Because of its multifactorial causes, haemodialysis-induced hypotension cannot be reliably prevented by conventional ultrafiltration and sodium profiling in open-loop systems, as they are unable to adapt themselves to actual decreases in blood pressure. METHODS: A blood-pressure-guided closed-loop system, for prevention of haemodialysis-induced hypotension by biofeedback-driven computer control of both ultrafiltration and saline infusion was clinically tested in 237 treatments of seven patients prone to hypotension. As medical knowledge on multifactorial causes of hypotension is characterized by a lack in deterministic knowledge, fuzzy logic and linguistic variables were used to involve clinical experience on hypotension phenomena in terms of fuzzy knowledge. Biofeedback control is based on frequent measurements of blood pressure at 5 min intervals. Blood pressure behaviour is described by linguistic variables and fuzzy sets. Adaptive rule bases were used for the simultaneous fuzzy control of both the ultrafiltration and infusion of hypertonic saline (20% NaCl). Proper adaptation of control features to patient's conditions was provided by the critical borderline pressure, which was set by the physician individually at the beginning of each treatment. During the initial and medium phases of the sessions, ultrafiltration rates up to 150% of the average rates were applied as long as decreases in blood pressure could be compensated by saline infusion. The surplus of ultrafiltrate volume was used for blood pressure stabilization in the final phase in most instances by low ultrafiltration rates. RESULTS: The advantages of biofeedback-controlled haemodialysis were demonstrated by both decreasing the frequency of hypotonic episodes and by increasing or maintaining constant levels of systolic blood pressure during the final phase in 88% of treatments. As saline infusion was applied mainly in the initial and medium phases, blood sodium levels were not significantly higher at the end of the sessions, and interdialytic weight gain was not elevated. CONCLUSION: The application of fuzzy logic in the blood-pressure-guided biofeedback control of ultrafiltration and sodium infusion during haemodialysis is able to minimize haemodialysis-induced hypotension.  (+info)

A web exercise in evidence-based medicine using cognitive theory. (8/394)

Our aim was to improve clinical reasoning skills by applying an established theory of memory, cognition, and decision making (fuzzy-trace theory) to instruction in evidence-based medicine. Decision-making tasks concerning chest pain evaluation in women were developed for medical students and internal medicine residents. The fuzzy-trace theory guided the selection of online sources (e.g., target articles) and decision-making tasks. Twelve students and 22 internal medicine residents attended didactic conferences emphasizing search, evaluation, and clinical application of relevant evidence. A 17-item Likert scale questionnaire assessed participants' evaluation of the instruction. Ratings for each of the 17 items differed significantly from chance in favor of this alternative approach to instruction. We concluded that fuzzy-trace theory may be a useful guide for developing learning exercises in evidence-based medicine.  (+info)

I'm sorry for any confusion, but "Fuzzy Logic" is actually a term from the field of mathematics and computer science, not medicine. It is a form of many-valued logic that deals with reasoning that is approximate rather than fixed and exact. In contrast to traditional logic, where binary sets have distinct boundaries (true or false, 0 or 1, etc.), fuzzy logic allows for continuous values between 0 and 1, making it particularly useful in areas where precise definitions are difficult, such as medical diagnosis or robotics.

I'm sorry for any confusion, but "logic" is a term that is more commonly used in philosophy, mathematics, and computer science rather than in medicine. It refers to the principles of valid reasoning and argument. In the context of medicine, healthcare professionals may use logical thinking and reasoning in making diagnoses, evaluating treatment options, and making decisions about patient care. However, there isn't a specific medical definition for "logic" itself.

"Non-professional education" in a medical context typically refers to education and training related to healthcare that is not provided through an accredited professional degree or certification program. This type of education may be focused on providing knowledge and skills to individuals who work in support roles within the healthcare system, such as administrative staff, patient care technicians, or community health workers. Non-professional education programs may cover topics such as basic anatomy and physiology, medical terminology, infection control, patient communication, and other relevant subjects. The goal of non-professional education is to help individuals develop the skills and knowledge necessary to contribute to high-quality patient care in a supportive role, while recognizing that they are not qualified to provide professional medical services or make clinical decisions.

... "fuzzy logic", most of which are in the family of t-norm fuzzy logics. The most important propositional fuzzy logics are: ... Fuzzy logic had, however, been studied since the 1920s, as infinite-valued logic-notably by Łukasiewicz and Tarski. Fuzzy logic ... Fuzzy concept Fuzzy Control Language Fuzzy control system Fuzzy electronics Fuzzy subalgebra FuzzyCLIPS High Performance Fuzzy ... fuzzy comparators, fuzzy constants, fuzzy constraints, fuzzy thresholds, linguistic labels etc. In mathematical logic, there ...
Fuzzy Logic Toolbox provides MATLAB functions, apps, and a Simulink block for analyzing, designing, and simulating systems ... Fuzzy Logic in Simulink. Evaluate and test the performance of your fuzzy inference system in Simulink using the Fuzzy Logic ... Fuzzy Logic Designer. Use the Fuzzy Logic Designer app or command-line functions to interactively design and simulate fuzzy ... Fuzzy Logic Toolbox provides MATLAB functions, apps, and a Simulink block for analyzing, designing, and simulating fuzzy logic ...
I think Ill come back to this but Im not quite sure where Im at with it, I like the chords but its a bit over bearing and its a pain in the neck to edit. ...
5 year impact factor: 5.275. Resilience Alliance is a registered 501 (c)(3) non-profit organization. Permissions and Copyright Information. Online and Open Access since 1997. Ecology and Society is now licensing all its articles under the Creative Commons Attribution 4.0 International License. Ecology and Society ISSN: 1708-3087. ...
Fuzzy Sets and Fuzzy Logic. ISBN 0131011715. *Kosko, Bart. 1993. Fuzzy Thinking: The New Science of Fuzzy Logic. Hyperion. ISBN ... Fuzzy logic is the same as "imprecise logic.". Fuzzy logic is not any less precise than any other form of logic: it is an ... Formal Fuzzy Logics. Fuzzy logic, when narrowly construed, is an extension of ordinary logics. The basic idea is that, in fuzzy ... Versions of Fuzzy Propositional Logic. *_ukasiewicz fuzzy logic is a special case of basic fuzzy logic where conjunction is _ ...
... Sendren Sheng-Dong Xu. ,1Hao Ying. ,2Pablo Carbonell. ,3Ching- ... Fuzzy logic has shown itself to be a powerful design and analysis methodology in control theory, enabling the implementation of ... Four of the manuscripts discuss the effectiveness in applying fuzzy logic to solving control issues. The other three papers ... Fuzzy Logic Applications in Control Theory and Systems Biology. View this Special Issue ...
Fuzzy Sets and Fuzzy Logic (1995) ISBN 0-13-101171-5. *Gerla G., Fuzzy logic: Mathematical Tools for Approximate Reasoning, ... Hájek P., Metamathematics of fuzzy logic. Kluwer 1998.. *Hájek P., Arithmetical complexity of fuzzy predicate logics - a survey ... Logic, 44 (2005) 97-114.. *Novák V., Perfilieva I, Mockor J., Mathematical Principles of Fuzzy Logic, Kluwer Academic ... Novák V., Fuzzy logic with countable evaluated syntax revisited, Fuzzy Sets and Systems, 158 (2007) 929-936. ...
Then you can make fuzzy logic statements like: y is very low which would evaluate to (y is low) * (y is low). One can think of ...
This article presents a new method for image segmentation using fuzzy logic algorithm to overcome the existing difficulties ... Fuzzy Logic, Object Segmentation Abstract. This article presents a new method for image segmentation using fuzzy logic ... By defining a set of critical points for the training process in fuzzy-logic rule base, the method is capable of extracting the ... Innovative Image Segmentation Method Employing Fuzzy Logic Algorithm Liang-Chia Chen and Xuan-Loc Nguyen ...
Master Computational Logic (MCL-AI, MCL-KR, MCL-TCSL) Master Informatik, Diplom Informatik (INF-BAS6, INF-VERT6, INF-PM-FOR) ... Bachelor Informatik (INF-B-510, INF-B-520) The course covers fuzzy … ... Fuzzy Description Logic Master Computational Logic (MCL-AI, MCL-KR, MCL-TCSL). Master Informatik, Diplom Informatik (INF-BAS6, ... The course covers fuzzy Description Logics as formalisms for representing and reasoning with vague or imprecise knowledge. We ...
The fuzzy logic gives decision rules and fusion... ... mage fusion based on fuzzy sets The fuzzy logic approach is ... mage fusion based on fuzzy sets. The fuzzy logic approach is widely used in image process-ing. The fuzzy logic gives decision ... Advantages Of Fuzzy Logic. A fuzzy logic system (FLS) can be defined as the nonlinear mapping of an input data set to a scalar ... Literature Review On Fuzzy Logic. George J. Kilr and Bo Yuan [32] Fuzzy logic is a way to formalize the human decision capacity ...
Fuzzy logic is an AI technique that represents expert knowledge and subjective reasoning mathematically, which she combines ... Using artificial intelligence and fuzzy logic to help plan the future of energy. Aminah Robinson Fayeks research will help ... fuzzy logic. "We want to create artificial intelligence and simulation models to help in decision-making," Fayek says. ... This week, Aminah Robinson Fayek was named the Canada Research Chair (CRC) in Fuzzy Hybrid System Decision Support for Systems ...
Início » Comunidade » Álbuns » Zandvoort 1994 » Savage (Fuzzy Logic). Savage (Fuzzy Logic). por MSX Resource Center em 18-10- ...
Fuzzy Logic in Artificial Intelligence. Proceedings of the Workshop on Fuzzy Logic in AI (FLinAI-15). co-located with the 24th ... Fuzzy Logic Models in some Categories. Jiri Mockor * Deep Color Semantics for E-commerce Content-based Image Retrieval. Pakizar ... Type-2 Fuzzy Uncertainty in Goal Programming. Juan S. Patino-Callejas, Krisna Y. Espinosa-Ayala, Juan C. Figueroa-Garcia ... Rough-Fuzzy Granularity in the Study of Optical Phenomena. Ana L. Dai Pra, Lucia I. Passoni ...
... Front Plant Sci. 2022 Oct 19;13:999106. doi ... Through these results, the feasibility of a home cultivation system using fuzzy logic was demonstrated, and it is expected that ... To this end, Pearsons correlation coefficients were used, and the direction of correction of the fuzzy logic system was ... Keywords: controlled environment agriculture; fuzzy logic; growth stage; home food gardening; indoor farming; light quality; ...
A surface map of this issue was prepared with a fuzzy logic model. Furthermore, fuzzy logic was employed to the whole modeling ... The experimental outputs were modeled with multiple linear regressions (MLR) and fuzzy logic. MLR results suggested that color ... Fuzzy Logic Modeling. Multiple-input and multiple-output fuzzy logic modeling was applied to the achieved experimental results ... A fuzzy logic system consists of four essential components, which are fuzzification, fuzzy rule base, fuzzy inference engine, ...
... and basic operations for fuzzy sets. It describes linguistic variables and linguistic values and explains ... fuzzy if-then rules, and fuzzy reasoning. The chapter presents the main ideas underlying fuzzy logic and points out the many ... Fuzzy rules and fuzzy reasoning are the basic components of fuzzy inference systems, which are the most important modelling ... The "fuzzy inference system" is a popular computing framework based on the concepts of fuzzy set theory, ...
The item you just added is unavailable. Please select another product or variant.. ...
... Florida Congressman Alan Grayson, the new Al Franken-like star of the Democratic ... Hoisting Grayson by his own hyperbole and fuzzy logic is so easy, it may become habit-forming.. (Psst, in case you were ... So using Graysons logic, since Grayson wants to push us towards a British-style system, and under such a system cancer ...
Gearshift Schedule with Takagi-Sugeno Fuzzy Logic Interference on Two-speed EVs ... Gearshift Schedule with Takagi-Sugeno Fuzzy Logic Interference on Two-speed EVs. ... fuzzy control based on the drivers intentions. Firstly, this paper focuses on the gearshift schedule for two-speed ... this paper establishes a three-parameter shifting schedule with T-S fuzzy control to detect the drivers intention, which is ...
Behaviour Analysis of Amazon customer using novel POS-NEG composition-based Pythagorean fuzzy logic. Publication Type : Journal ... HomePublicationsBehaviour Analysis of Amazon customer using novel POS-NEG composition-based Pythagorean fuzzy logic ... The main feature of Pythagorean fuzzy sets is its relatively novel mathematical framework in the fuzzy family with higher ... reduces complexity of the analysis and it is compared and proved to be accurate than fuzzy set and intuitionistic fuzzy set. ...
This paper proposes a fuzzy logic-based fault detection and identification method for open-circuit switch fault in grid-tied ph ... Fuzzy logic control (FLC) systems have found wide utilization in several industrial applications. ... The proposed fuzzy logic-based FDI (FL-FDI) method is based on employing the fuzzy logic concept for detecting and identifying ... fuzzy logic; T-type inverter; photovoltaic (PV) Cite This Article. M. Aly and H. Rezk, "An efficient fuzzy logic fault ...
Fuzzy Logic has been a prominent feature of the local Dublin scene for over six years, so it is appropriate that the album has ... Fuzzy Logic is Irelands largest and longest-running big band - or contemporary improvising ensemble as composer and founder ... riffs-and-solos approach that is far from Fuzzy Logics sound range and musical vocabulary. Yet the band is very much part of a ...
In this paper, combined with the rough set fuzzy logic algorithm ... Issue title: Fuzzy logic systems for transportation engineering ... In this paper, combined with the rough set fuzzy logic algorithm, in response to the features of the large-scale vehicle ... Decision-making support for transportation and logistics combining rough set fuzzy logic algorithm ... Journal: Journal of Intelligent & Fuzzy Systems, vol. 41, no. 4, pp. 4863-4872, 2021 ...
Most of the previous researches in this field have been focused on fuzzy algorithms with linear membership function however in ... The application of fuzzy algorithms in the response control of a base isolated building with MR dampers is investigated in this ... to appropriately determine the MR damper voltage using fuzzy logic algorithms and then analyzing the whole system too. Finally, ... Molavi-Tabrizi A H, Khoshnoudian F. Responses of isolated building with MR Dampers and Fuzzy Logic. IJCE 2012; 10 (3) :222-231 ...
My Early Researches on Fuzzy Set and Fuzzy Logic Authors. * Yong Shi Chinese Academy of Sciences ... Both fuzzy integral of type I developed by M. Sugeno and the fuzzy integral of type II have been playing an important role in ... fuzzy subgroup, fuzzy integral, binary numeral system, IQ test, artificial intelligence Abstract. This paper presents the ... 1 (2021): International Journal of Computers Communications & Control (February): Special issue on fuzzy logic dedicated to the ...
Fuzzy Logic Robotics Aims to Revolutionize Industrial Robotics with Fuzzy Studio Fuzzy Logic Robotics is on a mission to ... By Mary M,2023-02-22T18:31:37+00:00February 22nd, 2023,Recent News,Comments Off on Fuzzy Logic Robotics Aims to Revolutionize ...
Libre.fm is supported by Bytemark and The Internet Archive.. You have noticed some things are broken around here. Get in touch ([email protected]) if things are really broken. Sorry.. ...

No FAQ available that match "fuzzy logic"

No images available that match "fuzzy logic"