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Application of cascade feed forward neural network to predict coagulant dose

Dnyaneshwar Vasant Wadkar, Rahul Karale, Manoj Pandurang Wagh

2021Journal of Applied Water Engineering and Research24 citationsDOI

Abstract

Inlet water quality fluctuations affect mainly coagulant dose, and outlet water quality of the water treatment plant (WTP). Many complex physical and chemical processes are involved in WTP and water distribution networks (WDN). These technologies show non-linear behavior, which is challenging to be described by linear mathematical models. Thus, there is a need to develop prediction models for coagulation dose. The present study involves the application of cascade feed-forward neural networks (CFFNN) to predict coagulant dose. CFFNN Model was developed by using the Levenberg-Marquardt Training Algorithm and Bayesian Regularization Training Algorithm to predict coagulant dose. During the development of these models, hidden nodes are varied from 15 to 60, and R is found between 0.914 and 0.947. The best results were obtained by the CFFNN model using the Bayesian Regularization Training Algorithm (CFNNCD2) with hidden node 40, where R = 0.945 for training and 0.947 for testing.

Topics & Concepts

Artificial neural networkCascadeWater qualityRegularization (linguistics)Bayesian probabilityComputer scienceCoagulation cascadeLevenberg–Marquardt algorithmInletMachine learningArtificial intelligenceEngineeringImmunologyPlateletChemical engineeringThrombinMechanical engineeringBiologyEcologyWater Quality Monitoring TechnologiesWater Quality Monitoring and AnalysisMachine Learning and ELM
Application of cascade feed forward neural network to predict coagulant dose | Litcius