Data - driven Bayesian networks for reliability of supply from renewable sources

Author(s):  
Alexandra Ciobanu ◽  
Florin Munteanu ◽  
Ciprian Nemes ◽  
Dragos Astanei
Author(s):  
Yasmín Hernández ◽  
Marilú Cervantes-Salgado ◽  
Miguel Pérez-Ramírez ◽  
Manuel Mejía-Lavalle

2020 ◽  
Vol 25 (2) ◽  
pp. 37 ◽  
Author(s):  
Vicente-Josué Aguilera-Rueda ◽  
Nicandro Cruz-Ramírez ◽  
Efrén Mezura-Montes

We present a novel bi-objective approach to address the data-driven learning problem of Bayesian networks. Both the log-likelihood and the complexity of each candidate Bayesian network are considered as objectives to be optimized by our proposed algorithm named Nondominated Sorting Genetic Algorithm for learning Bayesian networks (NS2BN) which is based on the well-known NSGA-II algorithm. The core idea is to reduce the implicit selection bias-variance decomposition while identifying a set of competitive models using both objectives. Numerical results suggest that, in stark contrast to the single-objective approach, our bi-objective approach is useful to find competitive Bayesian networks especially in the complexity. Furthermore, our approach presents the end user with a set of solutions by showing different Bayesian network and their respective MDL and classification accuracy results.


Biometrics ◽  
2017 ◽  
Vol 74 (2) ◽  
pp. 403-406 ◽  
Author(s):  
Thomas S. Richardson ◽  
James M. Robins ◽  
Linbo Wang

2021 ◽  
Author(s):  
Zhang Cheng ◽  
Shiyun Yao ◽  
Heyang Yuan

AbstractMechanistic and data-driven models have been developed to provide predictive insights into the design and optimization of engineered bioprocesses. These two modeling strategies can be combined to form hybrid models to address the issues of parameter identifiability and prediction interpretability. Herein, we developed a novel and robust hybrid modeling strategy by incorporating microbial population dynamics into model construction. The hybrid model was constructed using bioelectrochemical systems (BES) as a platform system. We collected 77 samples from 13 publications, in which the BES were operated under diverse conditions, and performed holistic processing of the 16S rRNA amplicon sequencing data. Community analysis revealed core populations composed of putative electroactive taxa Geobacter, Desulfovibrio, Pseudomonas, and Acinetobacter. Primary Bayesian networks were trained with the core populations and environmental parameters, and directed Bayesian networks were trained by defining the operating parameters to improve the prediction interpretability. Both networks were validated with Bray-Curtis similarly, relative root-mean-square error (RMSE), and a null model. The hybrid model was developed by first building a three-population mechanistic component and subsequently feeding the estimated microbial kinetic parameters into network training. The hybrid model generated a simulated community that shared a Bray-Curtis similarity of 72% with the actual microbial community and an average relative RMSE of 7% for individual taxa. When examined with additional samples that were not included in network training, the hybrid model achieved accurate prediction of current production with a relative error-based RMSE of 0.8 and outperformed the data-driven models. The genomics-enabled hybrid modeling strategy represents a significant step toward robust simulation of a variety of engineered bioprocesses.


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