Title
Intelligent backpropagation networks with bayesian regularization for mathematical models of environmental economic systems
Date Issued
01 September 2021
Access level
open access
Resource Type
journal article
Author(s)
Kiani A.K.
Khan W.U.
Raja M.A.Z.
He Y.
Shoaib M.
Hazara University
Publisher(s)
MDPI
Abstract
The research community of environmental economics has had a growing interest for the exploration of artificial intelligence (AI)-based systems to provide enriched efficiencies and strengthened human knacks in daily live maneuvers, business stratagems, and society evolution. In this investigation, AI-based intelligent backpropagation networks of Bayesian regularization (IBNs-BR) were exploited for the numerical treatment of mathematical models representing environmental economic systems (EESs). The governing relations of EESs were presented in the form of differential models representing their fundamental compartments or indicators for economic and environmental parameters. The reference datasets of EESs were assembled using the Adams numerical solver for different EES scenarios and were used as targets of IBNs-BR to find the approximate solutions. Comparative studies based on convergence curves on the mean square error (MSE) and absolute deviation from the reference results were used to verify the correctness of IBNs-BR for solving EESs, i.e., MSE of around 10−9 to 10−10 and absolute error close to 10−5 to 10−7 . The endorsement of results was further validated through performance evaluation by means of error histogram analysis, the regression index, and the mean squared deviation-based figure of merit for each EES scenario.
Volume
13
Issue
17
Language
English
OCDE Knowledge area
Matemáticas Ingeniería ambiental y geológica
Scopus EID
2-s2.0-85113912596
Source
Sustainability (Switzerland)
ISSN of the container
20711050
Sponsor(s)
Funding: This work was supported by the National Natural Science Foundation of China under Grant Nos. 51977153, 51977161, and 51577046, the State Key Program of National Natural Science Foundation of China under Grant No. 51637004, the National Key Research and Development Plan “Important Scientific Instruments and Equipment Development” Grant No. 2016YFF0102200, the Equipment research project in advance Grant No. 41402040301, and the Wuhan Science and Technology Plan Project Grant No. 20201G01.
Sources of information: Directorio de Producción Científica Scopus