“…Availability of the quantitative relationship between photocatalyst preparation variables such as calcination tem-perature, dopant ionic radius, oxidation number, etc., and the photoactivity for organic pollutant destruction has led to the design of new visible-light activated codoped titania for photocatalysis. 6 In many ANN modeling studies, the optimal network architecture was often selected based on the candidate with the smallest value of one of a class of error indices, such as the residual sum of squares errors (SSE), the mean square error (MSE), the root-mean square error (RMSE), the mean absolute error (MAE), and the mean absolute percentage error (MAPE). However, since different error indices measure different extents and types of mismatch between the ANN model and the data, it is rare that a single ANN will have the smallest value for all five types of error indices from among a set of ANNs originally culled for consideration.…”