A. M. Gerrard
Chemical Engineering, Process Manufacturing and Design Section School of Science and Technology
University of Teesside Middlesbrough TS1 3BA England
J. Brass
Computing, Department of Business and Management
Hartlepool College of Further Education
Hartlepool TS24 7BR England
Résumé
The aim of the project was to generate cost estimation formulae using the minimum amount of design information. Capital cost data for pressure vessels were analysed with a range of techniques including regression analysis, neural networks, rational polynomials, non-linear equations and fuzzy matching. Two sets of real industrial cost information were studied. The results showed that regression analysis using a power-law (or multiplicative function) gave convenient and reasonable cost correlations. The best overall technique was a neural network having a particularly simple structure (i.e., a single hidden layer with just one or two elements within it).