Scholarship 18/19150-6 - Modelagem de sistemas, Redes bayesianas - BV FAPESP
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Resilience of complex systems with the use of dynamic Bayesian networks: a probabilistic approach

Grant number: 18/19150-6
Support Opportunities:Scholarships abroad - Research
Start date: December 01, 2018
End date: January 31, 2019
Field of knowledge:Engineering - Electrical Engineering - Power Systems
Principal Investigator:Carlos Dias Maciel
Grantee:Carlos Dias Maciel
Host Investigator: Marco Aiello
Host Institution: Escola de Engenharia de São Carlos (EESC). Universidade de São Paulo (USP). São Carlos , SP, Brazil
Institution abroad: University of Stuttgart, Germany  
Associated research grant:14/50851-0 - INCT 2014: National Institute of Science and Technology for Cooperative Autonomous Systems Applied in Security and Environment, AP.TEM

Abstract

Complex systems are composed of different elements, but in opposition to other systems, their overall behavior appears as a non-trivial combination of their parts. As they are organized without any general rule, such phenomena are seen both in nature and in modern engineering systems, and their behavior is related to the connectivity and dynamics of the elements. Resilience is related to a system's ability to be robust to loss of performance, to overcome the consequences of damage after harmful events and to be improved for future damage occurrences. Increasing the complexity of systems imposes constraints on observability and modeling, and their variables and the internal process need to be treated as random variables. Pearl (2016) shows that the search for dependence between these processes indicates the concepts of causality and the possibility of a deeper understanding of the behavior of the system. The use of probabilistic models has become one of the main approaches to evaluating complex systems - using the prior information of the systems along with collected data (or evidence) can determine the possible causes of failures and future actions. The use of graphical models to represent causality information is known as Bayesian (dynamic) RBD networks. Dynamic Bayesian networks are graphical models that use an acyclic graph directed towards the representation of cause and effect models and their temporal evolution. The learning of Bayesian networks presents many challenges, since these models have a super exponential growth, necessitating computationally intense algorithms and using parallel approaches. The present project aims at the use of RBD to model the performance of critical systems, especially the energy distribution, aiming at a better use of the concepts of resilience. (AU)

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Scientific publications (13)
(References retrieved automatically from Web of Science and SciELO through information on FAPESP grants and their corresponding numbers as mentioned in the publications by the authors)
FANUCCHI, RODRIGO Z.; BESSANI, MICHEL; CAMILLO, MARCOS H. M.; SOARES, ANDERSON DA S.; LONDON JR, JOAO B. A.; DESUO, LUIZ; MACIEL, CARLOS D.. Stochastic indexes for power distribution systems resilience analysis. IET GENERATION TRANSMISSION & DISTRIBUTION, v. 13, n. 12, p. 2507-2516, . (14/50851-0, 18/19150-6)
FOGLIATTO, MATHEUS S. S.; DESUO, LUIZ N.; RIBEIRO, RAFAEL R. M.; MONTEIRO, JOSE ROBERTO B. A.; LONDON, JOAO B. A.; BESSANI, MICHEL; MACIEL, CARLOS D.. Lifetime Study of Electrical Power Distribution Systems Failures. JOURNAL OF CONTROL AUTOMATION AND ELECTRICAL SYSTEMS, . (18/19150-6, 14/50851-0)
MASSIGNAN, JULIO A. D.; LONDON, JR., JOAO B. A.; BESSANI, MICHEL; MACIEL, CARLOS D.; FANNUCCHI, RODRIGO Z.; MIRANDA, VLADIMIRO. ayesian Inference Approach for Information Fusion in Distribution System State Estimatio. IEEE TRANSACTIONS ON SMART GRID, v. 13, n. 1, p. 526-540, . (18/19150-6, 18/00214-4, 14/50851-0)
NATAL, JORDAO; AVILA, IVONETE; TSUKAHARA, VICTOR BATISTA; PINHEIRO, MARCELO; MACIEL, CARLOS DIAS. Entropy: From Thermodynamics to Information Processing. Entropy, v. 23, n. 10, . (18/19150-6, 14/50851-0)
FANUCCHI, RODRIGO Z.; BESSANI, MICHEL; CAMILLO, MARCOS H. M.; DESUO NETO, LUIZ; DA S. SOARES, ANDERSON; DE LIMA, TELMA W.; LONDON JR, JOAO B. A.; DANTAS, LUCIANO B.; MACIEL, CARLOS D.. A multi-objective algorithm to determine patrol sequences for out-of-service nodes in power distribution feeders. Electric Power Systems Research, v. 196, . (14/50851-0, 18/19150-6)
FOGLIATTO, M. S. S.; CAETANO, H. O.; DESUO N, L.; MASSIGNAN, J. A. D.; FANUCCHI, R. Z.; LONDON, J. B. A.; PEREIRA, B. R.; BESSANI, M.; MACIEL, C. D.. Power distribution system interruption duration model using reliability. Electric Power Systems Research, v. 211, p. 12-pg., . (18/19150-6, 21/12220-1, 14/50851-0)
DESUO, N. LUIZ; FOGLIATTO, MATHEUS S. S.; CAETANO, HENRIQUE O.; PEREIRA, J. BENVINDO R.; LONDON J, J. JOAO B. A.; MACIEL, CARLOS D.. A Multilayer System and Optimization Framework for Team Dispatch Towards Service Recovery. IEEE TRANSACTIONS ON RELIABILITY, v. N/A, p. 14-pg., . (19/07665-4, 21/12220-1, 14/50851-0, 18/19150-6)
SANT'ANNA FOGLIATTO, MATHEUS DE SOUZA; NETO, LUIZ DESUO; CAETANO, HENRIQUE DE OLIVEIRA; FANUCCHI, RODRIGO ZEMPULSKI; MACIEL, CARLOS DIAS; IEEE. A Multilevel Crews Patrolling Framework for Distribution System Recovering. SYSCON 2022: THE 16TH ANNUAL IEEE INTERNATIONAL SYSTEMS CONFERENCE (SYSCON), v. N/A, p. 8-pg., . (14/50851-0, 18/19150-6)
BATISTA TSUKAHARA, VICTOR HUGO; DE OLIVEIRA JUNIOR, JORDAO NATAL; BARTH, VITOR BRUNO DE OLIVEIRA; DE OLIVEIRA, JASIARA CARLA; COTA, VINICIUS ROSA; MACIEL, CARLOS DIAS. Data-Driven Network Dynamical Model of Rat Brains During Acute Ictogenesis. FRONTIERS IN NEURAL CIRCUITS, v. 16, p. 13-pg., . (14/50851-0, 18/19150-6)
RIBEIRO, VITOR P.; CUNHA, ANGELA S. M.; DUARTE, SERGIO N.; PADOVANI, CARLOS R.; MARQUES, PATRICIA A. A.; MACIEL, CARLOS D.; BALESTIERI, JOSE ANTONIO P.; IEEE. Bayesian Network for Hydrological Model: an inference approach. 2022 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), v. N/A, p. 7-pg., . (14/50851-0, 21/02464-0, 18/19150-6)
DOURADO, JONAS R.; DE OLIVEIRA JUNIOR, JORDAO NATAL; MACIEL, CARLOS D.. Parallelism Strategies for Big Data Delayed Transfer Entropy Evaluation. ALGORITHMS, v. 12, n. 9, . (14/50851-0, 18/19150-6)
CAETANO, HENRIQUE O.; DESUO, N. LUIZ; FOGLIATTO, MATHEUS S. S.; MACIEL, CARLOS D.. Distribution systems cost reduction based on switches upgrades: A stochastic. Electric Power Systems Research, v. 216, p. 6-pg., . (14/50851-0, 21/12220-1, 19/06531-4, 18/19150-6)
SANTOS, TALYSSON M. O.; JUNIOR, JORDAO N. O.; BESSANI, MICHEL; MACIEL, CARLOS D.; IEEE. CO2 Emissions Forecasting in Multi-Source Power Generation Systems Using Dynamic Bayesian Network. 2021 15TH ANNUAL IEEE INTERNATIONAL SYSTEMS CONFERENCE (SYSCON 2021), v. N/A, p. 8-pg., . (14/50851-0, 18/19150-6)

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