Browsing by Author "Bayrak, Mustafa"
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Article An Example of Artificial Neural Networks Modeling the Distribution of Mercury (hg), Which Poses a Risk To Human Health in the Selection of Settlements: Sarayönü (türkiye)(2023) Çolak, Andaç Batur; Horasan, Bilgehan Yabgu; Öztürk, Alican; Bayrak, MustafaAs part of this research, the Ladik-Sarayönü area of Konya province’s air quality has been assessed utilizing an AI (Artifcial Intelligence) method. A total of 103 feld samples were analyzed experimentally. Data from experiments was used to inform the design of a multi-layer perceptron feed-forward back-propagation artifcial neural network model. The Bayesian method has been employed as the training procedure in an artifcial neural network model with 15 neurons in its hidden layer. One hundred experimental data points were used to develop a network model that predicts mercury values of the geoaccumulation index value in the output layer based on the following input variables: mercury, distance to the pollution source, source of pollution, characteristics of the sampled place and the primary factor that controls moving parameters. The majority (90%) of the data is used for the model’s training process, while the remaining (10%) is used for validation. By comparing the model’s anticipated outcomes with experimental data, an artifcial neural network was used to evaluate the model’s prediction performance. To forecast mercury values of the geoaccumulation index, the created artifcial neural network had an error rate of−4.04 to 3.98% (with an average of−0.58%). The MSE for the network model is 2.1× 10−1, and the R value is 0.9533.Conference Object Researching the Use of Artificial Intelligence in Predicting the Pollution Distribution of Settlements(2022) Çolak, Andaç Batur; Horasan, Bilgehan Yabgu; Öztürk, Alican; Bayrak, MustafaAccurate prediction of the pollution analysis to be made with the data to be obtained as a result of experimental studies is of great importance in terms of time and cost advantages. In this study, a model has been developed to predict regional pollution values with artificial intelligence approach. An artificial neural network model has been developed using previously obtained experimental data. In the developed network model, mercury, distance from the pollution source, pollution source, the characteristics of the sample location and the primary factor controlling the moving parameters were accepted as the input variables and the geo-accumulation index values were estimated. Accuracy analysis was performed by comparing the estimation results with the experimental data. The obtained results have shown that artificial neural networks are the ideal engineering tool that can be used in the estimation of pollution values.

