Research Article
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Year 2023, Volume: 5 Issue: 1, 20 - 26, 31.03.2023
https://doi.org/10.51537/chaos.1183849

Abstract

References

  • Abarbanel, H. D., R. Brown, and M. Kennel, 1991 Lyapunov exponents in chaotic systems: their importance and their evaluation using observed data. International Journal of Modern Physics B 5: 1347–1375.
  • Akgül, A., E. E. ¸Sahin, and F. Y. ¸Senol, 2022 Blockchain-based cryptocurrency price prediction with chaos theory, onchain analysis, sentiment analysis and fundamental-technical analysis. Chaos Theory and Applications 4: 157 – 168.
  • Akgul, A., S. Hussain, and I. Pehlivan, 2016 A new threedimensional chaotic system, its dynamical analysis and electronic circuit applications. Optik 127: 7062–7071.
  • Ayres, J., B. Forsberg, I. Annesi-Maesano, R. Dey, K. Ebi, et al., 2009 Climate change and respiratory disease: European respiratory society position statement. European Respiratory Journal 34: 295–302.
  • Aziz, M. M. et al., 2021 Stability, chaos diagnose and adaptive control of two dimensional discrete-time dynamical system. Open Access Library Journal 8: 1.
  • Banerjee, S., L. Rondoni, and M. Mitra, 2012 Applications of Chaos and Nonlinear Dynamics in Science and Engineering-Vol. 2. Springer. Bhat, G. S., N. Shankar, D. Kim, D. J. Song, S. Seo, et al., 2021
  • Machine learning-based asthma risk prediction using iot and smartphone applications. IEEE Access 9: 118708–118715.
  • Bhimala, K. R., G. K. Patra, R. Mopuri, and S. R. Mutheneni, 2022 Prediction of covid-19 cases using the weather integrated deep learning approach for india. Transboundary and Emerging Diseases 69: 1349–1363.
  • Chen, G. and T. Ueta, 1999 Yet another chaotic attractor. International Journal of Bifurcation and chaos 9: 1465–1466.
  • D’Amato, G., L. Cecchi, M. D’Amato, and I. Annesi-Maesano, 2014 Climate change and respiratory diseases.
  • D’Amato, G., C. Vitale, M. Lanza, A. Molino, and M. D’Amato, 2016 Climate change, air pollution, and allergic respiratory diseases: an update. Current opinion in allergy and clinical immunology 16: 434–440.
  • de la Fraga, L. G., E. Tlelo-Cuautle, V. Carbajal-Gómez, and J. Munoz-Pacheco, 2012 On maximizing positive lyapunov exponents in a chaotic oscillator with heuristics. Revista mexicana de física 58: 274–281.
  • Diaconescu, E., 2008 The use of narx neural networks to predict chaotic time series. Wseas Transactions on computer research 3: 182–191.
  • Ditto, W. and T. Munakata, 1995 Principles and applications of chaotic systems. Communications of the ACM 38: 96–102.
  • Duan, R.-R., K. Hao, and T. Yang, 2020 Air pollution and chronic obstructive pulmonary disease. Chronic diseases and translational medicine 6: 260–269.
  • Gleick, J., 1987 The butterfly effect. Chaos: Making a New Science pp. 9–32.
  • Hilborn, R. C. et al., 2000 Chaos and nonlinear dynamics: an introduction for scientists and engineers. Oxford University Press on Demand.
  • Holbrook, M. B., 2003 Adventures in complexity: An essay on dynamic open complex adaptive systems, butterfly effects, selforganizing order, coevolution, the ecological perspective, fitness landscapes, market spaces, emergent beauty at the edge of chaos, and all that jazz. Academy of Marketing Science Review 6: 1– 184.
  • Jensen, R. V. and R. Urban, 1984 Chaotic price behavior in a nonlinear cobweb model. Economics Letters 15: 235–240.
  • Joshi, M., H. Goraya, A. Joshi, and T. Bartter, 2020 Climate change and respiratory diseases: a 2020 perspective. Current Opinion in Pulmonary Medicine 26: 119–127.
  • Jun, M., 2022 Chaos theory and applications: the physical evidence, mechanism are important in chaotic systems. Chaos Theory and Applications 4: 1–3.
  • Kennedy, M. P., 1995 Experimental chaos from autonomous electronic circuits. Philosophical Transactions of the Royal Society of London. Series A: Physical and Engineering Sciences 353: 13–32.
  • Kia, B., 2011 Chaos computing: from theory to application. Technical report, Arizona State University.
  • Kinsner, W., 2006 Characterizing chaos through lyapunov metrics. IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews) 36: 141–151.
  • Kuhfittig, P. K. and T. W. Davis, 1990 Predicting the unpredictable. Cost Engineering 32: 7.
  • Lee, E. S., J.-Y. Kim, Y.-H. Yoon, S. B. Kim, H. Kahng, et al., 2022 A machine learning-based study of the effects of air pollution and weather in respiratory disease patients visiting emergency departments. Emergency Medicine International 2022.
  • Lin, T., B. G. Horne, P. Tino, and C. L. Giles, 1996 Learning longterm dependencies in narx recurrent neural networks. IEEE Transactions on Neural Networks 7: 1329–1338.
  • Lorenz, E. N., 1963 Deterministic nonperiodic flow. Journal of atmospheric sciences 20: 130–141.
  • Martínez-García, J. A., A. M. González-Zapata, E. J. Rechy-Ramírez, and E. Tlelo-Cuautle, 2008 On the prediction of chaotic time series using neural networks. Chaos Theory and Applications 4: 94–103.
  • Mirsaeidi, M., H. Motahari, M. Taghizadeh Khamesi, A. Sharifi, M. Campos, et al., 2016 Climate change and respiratory infections. Annals of the American Thoracic Society 13: 1223–1230.
  • Nishimura, T., E. A. Rashed, S. Kodera, H. Shirakami, R. Kawaguchi, et al., 2021 Social implementation and intervention with estimated morbidity of heat-related illnesses from weather data: A case study from nagoya city, japan. Sustainable Cities and Society 74: 103203.
  • Qiu, H., X. Xu, Z. Jiang, K. Sun, and C. Cao, 2023 Dynamical behaviors, circuit design, and synchronization of a novel symmetric chaotic system with coexisting attractors. Scientific Reports 13: 1893.
  • Quinn, A. and J. Shaman, 2017 Health symptoms in relation to temperature, humidity, and self-reported perceptions of climate in new york city residential environments. International journal of biometeorology 61: 1209–1220.
  • Rikitake, T., 1958 Oscillations of a system of disk dynamos. In Mathematical Proceedings of the Cambridge Philosophical Society, volume 54, pp. 89–105, Cambridge University Press.
  • Rössler, O. E., 1976 An equation for continuous chaos. Physics Letters A 57: 397–398.
  • Shaman, J. and M. Kohn, 2009 Absolute humidity modulates influenza survival, transmission, and seasonality. Proceedings of the National Academy of Sciences 106: 3243–3248.
  • Siegelmann, H. T. and S. Fishman, 1998 Analog computation with dynamical systems. Physica D: Nonlinear Phenomena 120: 214– 235.
  • Siegelmann, H. T., B. G. Horne, and C. L. Giles, 1997 Computational capabilities of recurrent narx neural networks. IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics) 27: 208–215.
  • Sprott, J. C., 1994 Some simple chaotic flows. Physical review E 50: R647.
  • Van der Pol, B. and J. Van Der Mark, 1927 Frequency demultiplication. Nature 120: 363–364.
  • Vitkina, T. I., L. V. Veremchuk, E. E. Mineeva, T. A. Gvozdenko, M. V. Antonyuk, et al., 2019 The influence of weather and climate on patients with respiratory diseases in vladivostok as a global health implication. Journal of Environmental Health Science and Engineering 17: 907–916.
  • Xirasagar, S., H.-C. Lin, and T.-C. Liu, 2006 Seasonality in pediatric asthma admissions: the role of climate and environmental factors. European journal of pediatrics 165: 747–752.
  • Yavari, M., A. Nazemi, and M. Mortezaee, 2022 On chaos control of nonlinear fractional chaotic systems via a neural collocation optimization scheme and some applications. New Astronomy 94: 101794.

Respiratory Diseases Prediction from a Novel Chaotic System

Year 2023, Volume: 5 Issue: 1, 20 - 26, 31.03.2023
https://doi.org/10.51537/chaos.1183849

Abstract

Pandemics can have a significant impact on international health systems. Researchers have found that there is a correlation between weather conditions and respiratory diseases. This paper focuses on the non-linear analysis of respiratory diseases and their relationship to weather conditions. Chaos events may appear random, but they may actually have underlying patterns. Edward Lorenz referred to this phenomenon in the context of weather conditions as the butterfly effect. This inspired us to define a chaotic system that could capture the properties of respiratory diseases. The chaotic analysis was performed and was related to the difference in the daily number of cases received from real data. Stability analysis was conducted to determine the stability of the system and it was found that the new chaotic system was unstable. Lyapunov exponent analysis was performed and found that the new chaotic system had Lyapunov exponents of (+, 0, -, -). A dynamic neural architecture for input-output modeling of nonlinear dynamic systems was developed to analyze the findings from the chaotic system and real data. A NARX network with inputs (maximum temperature, pressure, and humidity) and one output was used to to overcome any delay effects and analyze derived variables and real data (patients number). Upon solving the system equations, it was found that the correlation between the daily predicted number of patients and the solution of the new chaotic equation was 90.16%. In the future, this equation could be implemented in a real-time warning system for use by national health services.

References

  • Abarbanel, H. D., R. Brown, and M. Kennel, 1991 Lyapunov exponents in chaotic systems: their importance and their evaluation using observed data. International Journal of Modern Physics B 5: 1347–1375.
  • Akgül, A., E. E. ¸Sahin, and F. Y. ¸Senol, 2022 Blockchain-based cryptocurrency price prediction with chaos theory, onchain analysis, sentiment analysis and fundamental-technical analysis. Chaos Theory and Applications 4: 157 – 168.
  • Akgul, A., S. Hussain, and I. Pehlivan, 2016 A new threedimensional chaotic system, its dynamical analysis and electronic circuit applications. Optik 127: 7062–7071.
  • Ayres, J., B. Forsberg, I. Annesi-Maesano, R. Dey, K. Ebi, et al., 2009 Climate change and respiratory disease: European respiratory society position statement. European Respiratory Journal 34: 295–302.
  • Aziz, M. M. et al., 2021 Stability, chaos diagnose and adaptive control of two dimensional discrete-time dynamical system. Open Access Library Journal 8: 1.
  • Banerjee, S., L. Rondoni, and M. Mitra, 2012 Applications of Chaos and Nonlinear Dynamics in Science and Engineering-Vol. 2. Springer. Bhat, G. S., N. Shankar, D. Kim, D. J. Song, S. Seo, et al., 2021
  • Machine learning-based asthma risk prediction using iot and smartphone applications. IEEE Access 9: 118708–118715.
  • Bhimala, K. R., G. K. Patra, R. Mopuri, and S. R. Mutheneni, 2022 Prediction of covid-19 cases using the weather integrated deep learning approach for india. Transboundary and Emerging Diseases 69: 1349–1363.
  • Chen, G. and T. Ueta, 1999 Yet another chaotic attractor. International Journal of Bifurcation and chaos 9: 1465–1466.
  • D’Amato, G., L. Cecchi, M. D’Amato, and I. Annesi-Maesano, 2014 Climate change and respiratory diseases.
  • D’Amato, G., C. Vitale, M. Lanza, A. Molino, and M. D’Amato, 2016 Climate change, air pollution, and allergic respiratory diseases: an update. Current opinion in allergy and clinical immunology 16: 434–440.
  • de la Fraga, L. G., E. Tlelo-Cuautle, V. Carbajal-Gómez, and J. Munoz-Pacheco, 2012 On maximizing positive lyapunov exponents in a chaotic oscillator with heuristics. Revista mexicana de física 58: 274–281.
  • Diaconescu, E., 2008 The use of narx neural networks to predict chaotic time series. Wseas Transactions on computer research 3: 182–191.
  • Ditto, W. and T. Munakata, 1995 Principles and applications of chaotic systems. Communications of the ACM 38: 96–102.
  • Duan, R.-R., K. Hao, and T. Yang, 2020 Air pollution and chronic obstructive pulmonary disease. Chronic diseases and translational medicine 6: 260–269.
  • Gleick, J., 1987 The butterfly effect. Chaos: Making a New Science pp. 9–32.
  • Hilborn, R. C. et al., 2000 Chaos and nonlinear dynamics: an introduction for scientists and engineers. Oxford University Press on Demand.
  • Holbrook, M. B., 2003 Adventures in complexity: An essay on dynamic open complex adaptive systems, butterfly effects, selforganizing order, coevolution, the ecological perspective, fitness landscapes, market spaces, emergent beauty at the edge of chaos, and all that jazz. Academy of Marketing Science Review 6: 1– 184.
  • Jensen, R. V. and R. Urban, 1984 Chaotic price behavior in a nonlinear cobweb model. Economics Letters 15: 235–240.
  • Joshi, M., H. Goraya, A. Joshi, and T. Bartter, 2020 Climate change and respiratory diseases: a 2020 perspective. Current Opinion in Pulmonary Medicine 26: 119–127.
  • Jun, M., 2022 Chaos theory and applications: the physical evidence, mechanism are important in chaotic systems. Chaos Theory and Applications 4: 1–3.
  • Kennedy, M. P., 1995 Experimental chaos from autonomous electronic circuits. Philosophical Transactions of the Royal Society of London. Series A: Physical and Engineering Sciences 353: 13–32.
  • Kia, B., 2011 Chaos computing: from theory to application. Technical report, Arizona State University.
  • Kinsner, W., 2006 Characterizing chaos through lyapunov metrics. IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews) 36: 141–151.
  • Kuhfittig, P. K. and T. W. Davis, 1990 Predicting the unpredictable. Cost Engineering 32: 7.
  • Lee, E. S., J.-Y. Kim, Y.-H. Yoon, S. B. Kim, H. Kahng, et al., 2022 A machine learning-based study of the effects of air pollution and weather in respiratory disease patients visiting emergency departments. Emergency Medicine International 2022.
  • Lin, T., B. G. Horne, P. Tino, and C. L. Giles, 1996 Learning longterm dependencies in narx recurrent neural networks. IEEE Transactions on Neural Networks 7: 1329–1338.
  • Lorenz, E. N., 1963 Deterministic nonperiodic flow. Journal of atmospheric sciences 20: 130–141.
  • Martínez-García, J. A., A. M. González-Zapata, E. J. Rechy-Ramírez, and E. Tlelo-Cuautle, 2008 On the prediction of chaotic time series using neural networks. Chaos Theory and Applications 4: 94–103.
  • Mirsaeidi, M., H. Motahari, M. Taghizadeh Khamesi, A. Sharifi, M. Campos, et al., 2016 Climate change and respiratory infections. Annals of the American Thoracic Society 13: 1223–1230.
  • Nishimura, T., E. A. Rashed, S. Kodera, H. Shirakami, R. Kawaguchi, et al., 2021 Social implementation and intervention with estimated morbidity of heat-related illnesses from weather data: A case study from nagoya city, japan. Sustainable Cities and Society 74: 103203.
  • Qiu, H., X. Xu, Z. Jiang, K. Sun, and C. Cao, 2023 Dynamical behaviors, circuit design, and synchronization of a novel symmetric chaotic system with coexisting attractors. Scientific Reports 13: 1893.
  • Quinn, A. and J. Shaman, 2017 Health symptoms in relation to temperature, humidity, and self-reported perceptions of climate in new york city residential environments. International journal of biometeorology 61: 1209–1220.
  • Rikitake, T., 1958 Oscillations of a system of disk dynamos. In Mathematical Proceedings of the Cambridge Philosophical Society, volume 54, pp. 89–105, Cambridge University Press.
  • Rössler, O. E., 1976 An equation for continuous chaos. Physics Letters A 57: 397–398.
  • Shaman, J. and M. Kohn, 2009 Absolute humidity modulates influenza survival, transmission, and seasonality. Proceedings of the National Academy of Sciences 106: 3243–3248.
  • Siegelmann, H. T. and S. Fishman, 1998 Analog computation with dynamical systems. Physica D: Nonlinear Phenomena 120: 214– 235.
  • Siegelmann, H. T., B. G. Horne, and C. L. Giles, 1997 Computational capabilities of recurrent narx neural networks. IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics) 27: 208–215.
  • Sprott, J. C., 1994 Some simple chaotic flows. Physical review E 50: R647.
  • Van der Pol, B. and J. Van Der Mark, 1927 Frequency demultiplication. Nature 120: 363–364.
  • Vitkina, T. I., L. V. Veremchuk, E. E. Mineeva, T. A. Gvozdenko, M. V. Antonyuk, et al., 2019 The influence of weather and climate on patients with respiratory diseases in vladivostok as a global health implication. Journal of Environmental Health Science and Engineering 17: 907–916.
  • Xirasagar, S., H.-C. Lin, and T.-C. Liu, 2006 Seasonality in pediatric asthma admissions: the role of climate and environmental factors. European journal of pediatrics 165: 747–752.
  • Yavari, M., A. Nazemi, and M. Mortezaee, 2022 On chaos control of nonlinear fractional chaotic systems via a neural collocation optimization scheme and some applications. New Astronomy 94: 101794.
There are 43 citations in total.

Details

Primary Language English
Subjects Mathematical Physics
Journal Section Research Articles
Authors

Mohammed Mansour 0000-0001-9672-0106

Turker Berk Donmez 0000-0002-1008-547X

Mustafa Çağrı Kutlu 0000-0003-1663-2523

Chris Freeman 0000-0003-0305-9246

Publication Date March 31, 2023
Published in Issue Year 2023 Volume: 5 Issue: 1

Cite

APA Mansour, M., Donmez, T. B., Kutlu, M. Ç., Freeman, C. (2023). Respiratory Diseases Prediction from a Novel Chaotic System. Chaos Theory and Applications, 5(1), 20-26. https://doi.org/10.51537/chaos.1183849

Chaos Theory and Applications in Applied Sciences and Engineering: An interdisciplinary journal of nonlinear science 23830 28903   

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