Article ID Journal Published Year Pages File Type
385543 Expert Systems with Applications 2011 8 Pages PDF
Abstract

This study proposes a modular neural network (MNN) that is designed to accomplish both artificial intelligent prediction and programming. Each modular element adopts a high-order neural network to create a formula that considers both weights and exponents. MNN represents practical problems in mathematical terms using modular functions, weight coefficients and exponents. This paper employed genetic algorithms to optimize MNN parameters and designed a target function to avoid over-fitting. Input parameters were identified and modular function influences were addressed in manner that significantly improved previous practices. In order to compare the effectiveness of results, a reference study on high-strength concrete was adopted, which had been previously studied using a genetic programming (GP) approach. In comparison with GP, MNN calculations were more accurate, used more concise programmed formulas, and allowed the potential to conduct parameter studies. The proposed MNN is a valid alternative approach to prediction and programming using artificial neural networks.

► A modular neural network is proposed for both predicting and programming problems. ► The programming is able to represent problems in modular functions mathematically. ► Parameter impacts and functional influences were addressed for concrete strengths. ► Good accuracies and programmed formulas were provided for high strength concrete.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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