Educational guide School of Chemical Engineering |
english |
Chemical Engineering (2013) |
Subjects |
PRODUCT AND PROCESS DESIGN I |
Contents |
IDENTIFYING DATA | 2022_23 |
Subject | PRODUCT AND PROCESS DESIGN I | Code | 20695105 | |||||
Study programme |
|
Cycle | 2nd | |||||
Descriptors | Credits | Type | Year | Period | ||||
4.5 | Compulsory | First | 1Q |
Competences | Learning outcomes | Contents |
Planning | Methodologies | Personalized attention |
Assessment | Sources of information | Recommendations |
Topic | Sub-topic |
Fundamentals of product and process design. |
- Why modelling? - Fundamentals of optimization |
Product and process design using mathematical programming & optimization. Decision support tool: solver MSExcel | - Easy things I have to say - Solver Excel Training: toy examples - Practical issues - Examples: toy examples, power generation, allocation (with carryover), cutting pieces, 2 echelons supply chain, 3 echelons supply chain, multiproduct supply chain, facility closing, HHRR scheduling, HHRR scheduling with workers preference, process synthesis (superestructures), dynamic optimization, multiobjective optimization - Advanced aspects |
Product and process design of batch processes |
- Overview of batch processes: Operation mode, up & down streams, Gantt chart - Scheduling of single product plants: Non-overlapping & overlapping - Scheduling of multiple products plants: Flow/jobshop, product campaigns (single and mixed), transfer policies (Zero wait, no-intermediate storage tank & unlimited intermediate storage tank) - Design and retrofit batch processes: Beer batch production -Paper and pencil case studies. - Lessons learnt |
Batch product and process design. Decision support tool: SuperPro | - Modelling batch processes: decision making. - Super Pro minitutorial. Case studies. - SuperPro workshops. - Case studies: beta galactose, WWTP, SPD, continuos, cost analysis, databanks, MAB, brewery, carrageeenan, corn refinery, WFI. |
Product and proces design: Optimization | General concepts and NLP - Introduction to optimization - Convexity of an optimization problem - Karush-Kuhn Tucker conditions of an optimization problem Linear Programming: - Introduction to linear programming - Sensitivity analysis in LP - How to solve simple LPs in Excel MILP & MINLP: - Fundamentals of MILP - Branch and bound method - Fundamentals of MINLP |