Application of Bayesian networks in a hierarchical structure for environmental risk assessment: a case study of the Gabric Dam, Iran

Environ Monit Assess. 2018 Apr 13;190(5):279. doi: 10.1007/s10661-018-6609-3.

Abstract

Environmental risk assessment (ERA) is a commonly used, effective tool applied to reduce adverse effects of environmental risk factors. In this study, ERA was investigated using the Bayesian network (BN) model based on a hierarchical structure of variables in an influence diagram (ID). ID facilitated ranking of the different alternatives under uncertainty that were then used to evaluate comparisons of the different risk factors. BN was used to present a new model for ERA applicable to complicated development projects such as dam construction. The methodology was applied to the Gabric Dam, in southern Iran. The main environmental risk factors in the region, presented by the Gabric Dam, were identified based on the Delphi technique and specific features of the study area. These included the following: flood, water pollution, earthquake, changes in land use, erosion and sedimentation, effects on the population, and ecosensitivity. These risk factors were then categorized based on results from the output decision node of the BN, including expected utility values for risk factors in the decision node. ERA was performed for the Gabric Dam using the analytical hierarchy process (AHP) method to compare results of BN modeling with those of conventional methods. Results determined that a BN-based hierarchical structure to ERA present acceptable and reasonable risk assessment prioritization in proposing suitable solutions to reduce environmental risks and can be used as a powerful decision support system for evaluating environmental risks.

Keywords: Bayesian networks (BNs); Environmental risk assessment (ERA); Gabric Dam, Iran; Influence diagram (ID); Risk factors; Risk ranking.

MeSH terms

  • Bayes Theorem*
  • Environmental Monitoring / methods*
  • Floods / statistics & numerical data
  • Iran
  • Neural Networks, Computer*
  • Risk Assessment / methods
  • Uncertainty
  • Water Pollution / statistics & numerical data