2019 AIChE Annual Meeting

Session: Data Driven Optimization

Data from simulations or from process industries can be high-dimensional, sparse, uncertain, heterogeneous, multi-scale and represent discontinuous nonlinear functions. Novel methodology is required for data-driven optimization for applications in design, real-time optimization, scheduling, and process operations. This session seeks presentations on new mathematical optimization algorithms for data-driven optimization and/or applications to the process industries. Contributions may incorporate (i) model-free methods such as hardware-in-the-loop for process development, (ii) the development and use of surrogate models, (iii) methodologies for dealing with large-scale data sets, extracted from simulation or industrial historical data, and the information content in these data sets.

Chairs

Misener, R., Imperial College London
Schmal, P., Process Systems Enterprise Inc.

Co-Chair

Soroush, M., Drexel University