Hector Jorquera Claudio A. Gelmi Jorquera Numerical Methods in Chemical Process Engineering Using Python

Numerical Methods in Chemical Process Engineering Using Python

von Hector Jorquera Claudio A. Gelmi

Tools for Modeling, Simulation, and Optimization

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Beschreibung

This book provides an overview of the most widely used numerical methods in chemical process engineering organized by increasing levels of complexity.

The book begins with numerical linear algebra, which is essential for solving large systems of equations, and continues with nonlinear equations, a cornerstone for modeling equilibrium and reaction kinetics. Ordinary differential equations are then addressed, covering both initial value and boundary value problems, with an emphasis on their role in describing dynamic behavior and transport phenomena. The section concludes with partial differential equations, which are fundamental for capturing spatial and temporal variations in heat, mass, and momentum transfer.

The second part of the book presents a curated set of solved problems, each supported by Python code and figures. Covering topics such as parameter estimation, confidence intervals, and bioreactor optimization, the problems emphasize both steady-state and dynamic systems. Each example covers the deriving governing equations, related code, and interpreting results, providing a consistent learning path, while additional discussions encourage students to explore related concepts beyond the presented problem.


This book provides an overview of the most widely used numerical methods in chemical process engineering organized by increasing levels of complexity.

The book begins with numerical linear algebra, which is essential for solving large systems of equations, and continues with nonlinear equations, a cornerstone for modeling equilibrium and reaction kinetics. Ordinary differential equations are then addressed, covering both initial value and boundary value problems, with an emphasis on their role in describing dynamic behavior and transport phenomena. The section concludes with partial differential equations, which are fundamental for capturing spatial and temporal variations in heat, mass, and momentum transfer.

The second part of the book presents a curated set of solved problems, each supported by Python code and figures. Covering topics such as parameter estimation, confidence intervals, and bioreactor optimization, the problems emphasize both steady-state and dynamic systems. Each example covers the deriving governing equations, related code, and interpreting results, providing a consistent learning path, while additional discussions encourage students to explore related concepts beyond the presented problem.


The first Python-based textbook on numerical methods in the field of chemical process engineering Includes step‑by‑step case studies with mathematical derivation, annotated Python code and diagnostic plots Relies on the open source Python and its scientific stack, which is useful for students and those industrial practice

Autor*in

Hector Jorquera

Themen in »Numerical Methods in Chemical Process Engineering Using Python«

Numerical methods in engineering Python programming language Chemical process engineering Chemical process modeling and simulation Parameter estimation Ordinary differential equations Partial differential equations

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Details

ISBN: 9783032229588
Verlag: Springer International Publishing
Erscheinung: 11.08.2026

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