A novel
dynamic just-in-time (JIT) learning framework is proposed
in this paper for the data driven modeling of batch process. In the
proposed JIT framework, we employ a searching strategy based on “profile
similarity” which takes into account the dynamicity of batch
process instead of “sample similarity” measures as reported
in previous literature. This is achieved by a “modified edit
distance time warping” framework that is proposed in this work.
In addition, a new weighting strategy that assigns space, time, and
batch weights to data points is introduced to capture the complete
dynamics of the batch process. Furthermore, the proposed method can
detect and accommodate outliers in the historical data sets. To test
the efficacy, we have validated the proposed approach with various
simulation studies, namely, (i) a numerical example, (ii) the batch
polymerization process, and (iii) the batch transesterification process.