Litcius/Paper detail

Prediction of runoff using BPNN, FFBPNN, CFBPNN algorithm in arid watershed: A case study

Sandeep Samantaray, Abinash Sahoo

2020International Journal of Knowledge-based and Intelligent Engineering Systems23 citationsDOI

Abstract

Here, an endeavor has been made to predict the correspondence between rainfall and runoff and modeling are demonstrated using Feed Forward Back Propagation Neural Network (FFBPNN), Back Propagation Neural Network (BPNN), and Cascade Forward Back Propagation Neural Network (CFBPNN), for predicting runoff. Various indicators like mean square error (MSE), Root Mean Square Error (RMSE), and coefficient of determination (R2) for training and testing phase are used to appraise performance of model. BPNN performs paramount among three networks having model architecture 4-5-1 utilizing Log-sig transfer function, having R2 for training and testing is correspondingly 96.43 and 95.98. Similarly for FFBPNN, with Tan-sig function preeminent model architecture is seen to be 4-5-1 which possess MSE training and testing value 0.000483, 0.001025, RMSE training and testing value 0.02316, 0.03085 and R2 for training and testing as 0.9925, 0.9611, respectively. But for FFBPNN the value of R2 in training and testing is 0.8765 0.8976. Outcomes on the whole recommend that assessment of runoff is suitable to BPNN as contrasted to CFBPNN and FFBPNN. This consequence helps to plan, arrange and manage hydraulic structures of watershed.

Topics & Concepts

Mean squared errorSurface runoffArtificial neural networkBackpropagationComputer scienceWatershedAlgorithmStatisticsFunction (biology)Machine learningMathematicsArtificial intelligenceData miningBiologyEvolutionary biologyEcologyHydrological Forecasting Using AIHydrology and Watershed Management StudiesFlood Risk Assessment and Management