The Influence of Ergonomics of Human-Machine Systems on the Emergence and Development of Cognitive Function Disorders

The aim of the work is to obtain mathematical models for predicting and early diagnosis of cognitive disorders of operators of human-machine systems, provoked by prolonged psycho-emotional stress and chronic fatigue arising from ergonomic risk factors. The work uses technical means of monitoring the state of various components of such cognitive functions as attention, memory, thinking and energy characteristics of biologically active points “associated” with the studied cognitive functions. As a basic mathematical apparatus, the synthesis methodology of hybrid fuzzy decision rules is used. In the course of the research, mathematical models were obtained for predicting and early diagnosis of impaired attention and memory functions associated with the professional activities of operators of human-machine systems. During mathematical modeling, expert assessment and statistical tests, it was found that the confidence in the correct decision-making using the obtained mathematical models exceeds 0.85.

[1]  Florin Ionescu,et al.  Modelling and parameter estimation for operator intelligence in man-machine systems , 2012, Int. J. Model. Identif. Control..

[2]  E. N. Korovin,et al.  Classification of Functional States and Assessment of Psychoemotional Stress and Fatigue Levels Based on Hybrid Fuzzy Models , 2013, Meditsinskaia tekhnika.

[3]  R. Al-Kasasbeh,et al.  Application of fuzzy analysis with the energy condition of bioactive points to the prediction and diagnosis of gastrointestinal tract diseases , 2013 .

[4]  Riad Taha Al-Kasasbeh,et al.  Developing a biotech scheme using fuzzy logic model to predict occurrence of diseases using person's functional state , 2020, Int. J. Comput. Appl. Technol..

[5]  Nikolay Korenevskiy,et al.  Prediction and prenosological diagnostics of heart diseases based on energy characteristics of acupuncture points and fuzzy logic , 2012, Computer methods in biomechanics and biomedical engineering.

[6]  Dmitry M. Klionskiy,et al.  Bioengineering System for Prediction and Early Prenosological Diagnostics of Stomach Diseases based on Energy Characteristics of Bioactive Points with Fuzzy Logic , 2015 .

[7]  R. Al-Kasasbeh,et al.  Synthesis of fuzzy logic for prediction and medical diagnostics by energy characteristics of acupuncture points. , 2011, Journal of acupuncture and meridian studies.

[8]  Florin Ionescu,et al.  Fuzzy prediction and early detection of stomach diseases by means of combined iteration fuzzy models , 2019, International Journal of Biomedical Engineering and Technology.

[9]  Adnan Mukattash,et al.  A biotech measurement scheme and software application for the level determination of a person's functional reserve-based fuzzy logic rules , 2019, Int. J. Model. Identif. Control..

[10]  Riad Taha Al-Kasasbeh,et al.  Software features for the estimation of an operators' group activity in man-machine system , 2011, Adv. Eng. Softw..

[11]  Dmitry M. Klionskiy,et al.  Numerical software algorithms for monitoring control processes and correcting health by synthesis of hybrid fuzzy rules of decision-making on the basis of changes in energetic characteristics of biologically active points , 2016, Int. J. Model. Identif. Control..

[12]  Abdullah Alwadie,et al.  Biotechnical measurement and software system for the prediction and diagnosis of osteochondrosis of the lumbar region with the use of fuzzy logic rules , 2013, Biomedizinische Technik. Biomedical engineering.

[13]  S. A. Gorbatenko,et al.  Generation of fuzzy network models taught on basis of data structure for medical expert systems , 2008, Meditsinskaia tekhnika.

[14]  R. Al-Kasasbeh,et al.  Prediction of gastric ulcers based on the change in electrical resistance of acupuncture points using fuzzy logic decision-making , 2013, Computer methods in biomechanics and biomedical engineering.

[15]  Mahdi Alshamasin,et al.  Automated Detection of Artifacts in Electroencephalography Signals Using a Linear Prediction Model , 2009, Meditsinskaia tekhnika.

[16]  S. A. Gorbatenko,et al.  Design of Network-Based Fuzzy Knowledge Bases for Medical Decision-Making Support Systems , 2009, Meditsinskaia tekhnika.

[17]  N. A. Korenevskiy,et al.  Assessment and Management of the State of Health Based on Rasch Models , 2016, BioMed 2016.

[18]  Adrian Basarab,et al.  Using smart offices to predict occupational stress , 2018, International Journal of Industrial Ergonomics.

[19]  Riad Taha Al-Kasasbeh,et al.  Biotechnical measurement and software system controlled features for determining the level of psycho-emotional tension on man-machine systems by fuzzy measures , 2012, Adv. Eng. Softw..

[20]  Dov Zohar,et al.  Beyond safety outcomes: An investigation of the impact of safety climate on job satisfaction, employee engagement and turnover using social exchange theory as the theoretical framework. , 2016, Applied ergonomics.

[21]  Riad Taha Al-Kasasbeh,et al.  Fuzzy Model Evaluation of Vehicles Ergonomics and Its Influence on Occupational Diseases , 2018, Advances in Intelligent Systems and Computing.

[22]  Florin Ionescu,et al.  A biotech measurement software system using controlled features for determining the level of psycho-emotional tension on man-machine system operators by bio-active points based on fuzzy logic measures , 2014, Int. J. Model. Identif. Control..

[23]  A. A. Kuz’min,et al.  System for Studying Specific Features of Attention and Memory , 2010, Meditsinskaia tekhnika.

[24]  D. E. Skopin,et al.  Automated Detection and Selection of Artifacts in Encephalography Signals , 2008 .

[25]  V. N. Gadalov,et al.  Assessment of Ergonomics of Biotechnical Systems Using Shortliffe Fuzzy Models , 2013, Meditsinskaia tekhnika.

[26]  Lobzin Vy Comprehensive early diagnosis of cognitive impairment , 2015 .

[27]  Riad Taha Al-Kasasbeh,et al.  Hybrid fuzzy logic modelling and software for ergonomics assessment of biotechnical systems , 2019 .

[28]  N. A. Korenevskiy,et al.  Application of Fuzzy Logic for Decision-Making in Medical Expert Systems , 2015 .

[29]  A. V. Novikov,et al.  Use of an Interactive Method for Classification in Problems of Medical Diagnosis , 2013, Meditsinskaia tekhnika.

[30]  Riad Taha Al-Kasasbeh,et al.  Method of Ergonomics Assessment of Technical Systems and Its Influence on Operators Heath on Basis of Hybrid Fuzzy Models , 2017, AHFE.

[31]  G. Salvendy,et al.  Occupational Stress: Review and Reappraisal , 1982, Human factors.