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- 2016 AIChE Spring Meeting and 12th Global Congress on Process Safety
- 2nd Big Data Analytics
- Big Data Analytics and Statistics I
- (149b) Batch Process Monitoring By Dynamic Time Warping and k-Means Clustering
Historical data (e.g., flows, temperatures, pressures) are gathered from a membrane manufacturing process, which consists of several steps of variable duration. Through a combination of interactions between researchers and subject matter experts, a set of “ideal” and “bad” recipes are identified which is used as a training set for the model. Historical operation is then compared with the ideal and bad recipes, and a unified distance metric is used to then cluster the operational data using k-Means clustering. Encouraging results are reported from practice.