Design of Experiments for Optimisation

DoE using R: Response Surface Methodology, Lack-of-Fit, Central Composite Designs, Box-Behnken Designs

4.23 (223 reviews)
Udemy
platform
English
language
Other Teaching & Academi
category
instructor
Design of Experiments for Optimisation
1,331
students
3 hours
content
Mar 2024
last update
$59.99
regular price

What you will learn

- Basic concepts of regression models;

- Factorial designs with central points;

- Lack-of-fit test;

- Inaccurate levels in the design factors and missing observations

- Response surface methodology;

- Path of the steepest ascent;

- Central Composite Designs;

- Face-Centred Composite Designs;

- Box-Behnken Designs.

- Analysing several responses simultaneously.

Why take this course?

Welcome to "Design of Experiments for Optimisation"!

Experimentation plays an important role in science, technology, product design and formulation, commercialization, and process improvement. A well-designed experiment is essential once the results and conclusions that can be drawn from the experiment depend on the way the data is collected.

This course will cover the basic concepts behind the Response Surface Methodology and Experimental Designs for maximising or minimising response variables.

This is not a beginner course, so to get the most of it, you need to be familiar with some basic concepts underlying the design of experiments, such as analysis of variance and factorial designs.

You can find it in my course “Design and Analysis of Experiments” or on several other courses and resources on the market.

The course starts with a basic introduction to linear regression models and how to build regression models to fit experimental data and check the model adequacy. The next section covers experimental designs for linear models and the use of central points to check the model’s linearity (lack-of-fit). By the end of the section, we will be using linear models to fit experiments with inaccurate levels in the design factors and missing observations.

By then, we will be ready for Response Surface Methodology. We will start with a factorial design to fit a linear model and find the path of the steepest ascent. And then, we are going to use a central composite design to fit a quadratic model and find the experimental conditions that maximise the response. Moreover, we will see how to analyse several responses simultaneously using two very illustrative and broad examples.

Finally, we will see how to use three-level designs: Box-Behnken and face-centred composite designs.

The whole learning process is illustrated with real examples from research in the industry and in the academy.

The analysis of the data will be performed using R-Studio. Although this is not an R course, even students who are not familiar with R can enrol in it. The R codes and the data files used in the course can be downloaded, the functions will be briefly explained, and the codes can be easily adapted to analyse the student’s own data.

However, if you are already familiar with using other DoE software, feel free to download the data and reproduce the analysis using the software of your choice. The results will be exactly the same.

Any person who performs experiments can benefit from this course, mainly researchers from the academy and the industry, Master and PhD students and engineers.

Screenshots

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Reviews

Edoardo
June 27, 2023
Assolutamente positiva, volevo i dettagli del primo corso sul DoE e qui sono spiegati chiaramente. Inoltre, trattasi di un corso fondamentale che segue il precedente, per ottimizzare qualsiasi tipo di esperimento (chimico, fisico ma anche in cucina).
Nordin
March 30, 2023
The course module is very excellent. Start with the concept, and do it together with the instructor with R-studio. The concept and result from R-studio can be compared to enhance understanding. Not only that, but many examples given are from actual experimental results. I highly suggest who want to conduct experiments and optimization, use this material as a reference and you will not be regretted.
Jardar
February 15, 2023
Interesting and to the point. Good lectures on R (and DoE of course). I will find good use for this in my daily job. I miss the lecture notes, because they were excellent in the lecturers other course on DoE.
Souvik
December 23, 2022
A brief and to-the-point explanation is what I always prefer and it is being delivered by Rosane. Only some English words and I am from the Indian subcontinent, face some problems. Thanks and Regards Souvik
Deborah
November 7, 2022
The level of explanation is clear and concise without being too high level. It is frustrating when a course doesn't go into any of the mathematical details but Rosane does a great job
Abdullahi
September 22, 2022
This course is all you need to fully understand what design of experiment and interpretation of the DOE result. Thank Prof for this opportunity.
Victor
June 23, 2022
The Instructor is one of the best i have seen so far. She made the course so simple and interesting. Hope to see some of her other courses soon. Thank You
Lorenzo
May 15, 2022
One of the best DoE courses. I was able to understand every single concept from start to end, thanks to an always linear explanation in which every single word is full of meaning. Thanks.
Carlos
April 28, 2022
Well above my expectations. This is one of the best courses I've taken in Udemy. The explanations are well organized to build up the level of complexity, the instructor is an absolutely expert on this topic, the R scripts are very clear and serve as reference for future applications of this knowledge, and the lectures cover a good deal of methodologies for many real life applications for optimizations.
Tri
February 19, 2022
this course is actually what i need to get. this lecture helps me to understand why we have to use DoE and why we have to choose the design that we need to run. i was able to get several ideas of this course but sometime i need to search outside this course to get more clear information since i don't have any past experience or learn this particular object. thank you
Alexander
October 30, 2021
Great course. Thanks. It is not long, so I still remember what we are talking about. :-) I added (...,pch=16, col=2) to make plot data a bit more visible.
Ahmed
September 22, 2021
I have been amazed by my level of understanding of DOE, and more interesting is that we used an open source R Studio. I think I am ready to for my research. Thank you very much Dr. Rosane Rech for every think.
Héctor
June 14, 2021
I loved the course, I'm biotechnology engineer and I'm appling it in the optimization process of culture medium and bioreactor conditions for biopesticides production. I would like more course like that. Thank you!
Sebastian
May 11, 2021
Great overview with hands-on coding examples that will for sure help a lot at work! Combined with the first course, I am feeling very well equipped to design, analyze and optimise my experimental work in the future. Thank you so much!

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3826524
udemy ID
2/5/2021
course created date
3/30/2021
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