The present paper describes the application of a neural network technique f
or the prediction of tensile strength (TS) test results for steels heat tre
ated using a batch heat treatment process. Industrial process data often co
ntain outlying points, some of which can be spurious for a number of reason
s. A data cleaning technique has been used to ensure that spurious data poi
nts are not present in the final neural model, which would otherwise hinder
the model's representation of the true process. The effectiveness of this
technique is demonstrated by comparison of the TS model trained on cleaned
and uncleaned data. A model trained on cleaned data is generated for the pr
ediction of TS in the form of an ensemble network, which was found to provi
de more reliable predictions and give a better representation of the degree
of uncertainty in the network predictions. The performance of the model is
evaluated from a metallurgical perspective. Application areas for the mode
l are examined with particular attention being drawn to the need for cautio
n when entering inputs into the neural model. An assessment of the model's
ability to generalise to new treatment sites and new steel compositions is
made, together with experimentation to determine the effect of measurement
tolerances on the predicted values from the model.