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Wetland Restoration Prioritization Using Artificial Neural Networks

MALEKI NAJAFABADI S., SAFIANIAN A., SOLTANI KOPAEI S., BAGHDADI N., EL-HAJJ M., SHEIKHOLESLAM F., POURMANAFI S., WETLANDS , ۲۰۱۹.

Abstract: Wetland destruction is currentlyone of the greatest environmental problems in the world. Despite the functions of wetlands, thesevaluable ecosystems have steadilydecreased because of human activities and climate change. To protect these valuable ecosystems,wetland restoration and rehabilitation are important operations that have been conducted worldwide. Since a wetland is a complexecosystem with a variety of phenomena, increasing the number of variables considered during a restoration project will further boostthe success rate of a restoration project. However, the inclusion of more variables will increase the complexity of the analysis. Thus,a method that can analyze complex models using many input variables is valuable. In most scientificstudies, artificial intelligencealgorithms have been widely applied to complex projects. However, the main question is whether these algorithms can learn theecological patterns of a restoration project. For this reason, a multilayer perceptron (MLP) neural network was applied in this paperto investigate the ability to use these algorithms for wetland restoration. An artificial neural network (ANN) with one hidden layerand 15 neurons was used to determine the best areas for wetland restoration. The neural network was trained using the Levenberg-Marquardt algorithm; then, the trained ANN was used to determine the best areas for wetland restoration. The root mean square error(RMSE) of the model that was trained to prioritize wetland restoration was 0.04 ha. Becauseof water limitations in the study area, itis not possible to restore entire wetlands. Therefore, areas for restoration are prioritized based on ecological objectives. The results ofthe ANN demonstrate its ability to learn the ecological patterns and illustrates the performance of using this method for wetlandrestoration. Neural networks can calculate the final weights mathematically, and these algorithms are able to analyze complexmodels using many input variables; thus, ANNs are practical for wetland restoration.

 

Journal Papers
Month/Season: 
Spring
Year: 
2019

تحت نظارت وف ایرانی

Wetland Restoration Prioritization Using Artificial Neural Networks | Dr. Ali Reza Soffianian

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تحت نظارت وف ایرانی