Design of experiments | Optimal decisions | Regression analysis | Mathematical optimization | Statistical theory

Optimal design

In the design of experiments, optimal designs (or optimum designs) are a class of experimental designs that are optimal with respect to some statistical criterion. The creation of this field of statistics has been credited to Danish statistician Kirstine Smith. In the design of experiments for estimating statistical models, optimal designs allow parameters to be estimated without bias and with minimum variance. A non-optimal design requires a greater number of experimental runs to estimate the parameters with the same precision as an optimal design. In practical terms, optimal experiments can reduce the costs of experimentation. The optimality of a design depends on the statistical model and is assessed with respect to a statistical criterion, which is related to the variance-matrix of the estimator. Specifying an appropriate model and specifying a suitable criterion function both require understanding of statistical theory and practical knowledge with designing experiments. (Wikipedia).

Optimal design
Video thumbnail

What is Sustainable Design?: Understanding Design

Sustainable design and development should meet the needs of people in the present without compromising the needs of future generations. According to serial entrepreneur John Elkington, organizations need to consider profit, people and the planet when thinking about new innovations. Join

From playlist Understanding Design

Video thumbnail

Design Thinking

If you are interested in learning more about this topic, please visit http://www.gcflearnfree.org/ to view the entire tutorial on our website. It includes instructional text, informational graphics, examples, and even interactives for you to practice and apply what you've learned.

From playlist Design Thinking

Video thumbnail

What Is Design Thinking?

Design thinking can improve anything from a water bottle to a community water system. See how design thinking improves the creative process, from Professor Stefanos Zenios: http://stanford.io/1mgkHGR

From playlist More

Video thumbnail

What is Beauty in Design?: Understanding Design

Designers strive to fill up the world with beautiful environments, packaging, products and landscapes. These can be defined as aesthetic experiences wherein designers use the study of beauty to create pleasurable experiences for humans to interact with items and spaces. Join Prasad Borad

From playlist Understanding Design

Video thumbnail

What Do Interior Designers Do?: Understanding Design

Interior design is a multifaceted profession. Interior designers must craft aesthetically attractive, functional designs that improve the quality of life for the occupants and be aesthetically attractive. Join Prasad Boradkar, a professor emeritus of industrial design at Arizona State Un

From playlist Understanding Design

Video thumbnail

What Is Industrial Design?: Understanding Design

Industrial design, which is also known as product design, is the creation of consumer goods, from the smallest spoon to the largest machine. Industrial designers seek to optimize the function, value and appearance of products and systems. Join Prasad Boradkar, a professor emeritus of ind

From playlist Understanding Design

Video thumbnail

Best Mobile App Design Tools For Developers | #appdesign #mobileapp #programming

In this video, we will talk about the best mobile app design tools for developers. Design is a critical element of mobile app development. Without an excellent design, it is nearly impossible for a mobile app to enjoy any market success. For a developer, the increasing demand for mobile

From playlist Programming Tutorials

Video thumbnail

What Is Design?: Understanding Design

Design is the process of creating objects, systems, buildings and more. In this video, you’ll learn to answer the question, what is design, with broad definitions from a famous economist, philosopher and Swiss architect. Prasad Boradkar, a professor emeritus of industrial design at Arizon

From playlist Understanding Design

Video thumbnail

Mobile UX Design: Rules and Guidelines

Mobile UX design is tricky. There are so many things we have to consider, including the growing list of mobile devices, the ways people interact with them, and the fact that people want consistent experiences across all device types. To create great mobile UX, you need to follow the best

From playlist Mobile Development

Video thumbnail

Physical Modeling Tutorial, Part 11: Design Optimization

Learn what Simulink Design Optimization™ is and how to select and design parameters, set requirements or design goals, and optimize model parameters. - Enter the MATLAB and Simulink Racing Lounge: http://bit.ly/2HhcXnU - Download Example Files: Physical Modeling for Formula Student: htt

From playlist Physical Modeling Tutorials

Video thumbnail

Optimizing HEV Models

Learn about HEV modeling and simulation. In this video, you will: - Get an introduction to optimization and learn about MATLAB® and Simulink® optimization tools. - Learn how to simultaneously optimize control and component parameters. - Find a common set of control parameters for various

From playlist Hybrid Electric Vehicles

Video thumbnail

Model Aircraft Design Optimization with MATLAB

Guilherme and Connell go through the “Aircraft Design Optimization with the Fixed-Wing Object” example shipped with Aerospace Toolbox in R2022b. The example uses the rules for the Regular Class aircraft of the 2020–2021 Society of Automotive Engineers (SAE®) Aero Design competition and opt

From playlist Aerospace: Student Tutorials and Videos

Video thumbnail

MFEM Workshop 2022 | Shape and Topology Optimization Powered by MFEM

The LLNL-led MFEM (Modular Finite Element Methods) project provides high-order mathematical calculations for large-scale scientific simulations. The project’s second community workshop was held on October 25, 2022, with participants around the world. Learn more about MFEM at https://mfem.o

From playlist MFEM Community Workshop 2022

Video thumbnail

6. Design Definition and Multidisciplinary Optimization

MIT 16.842 Fundamentals of Systems Engineering, Fall 2015 View the complete course: http://ocw.mit.edu/16-842F15 Instructor: Olivier de Weck In this lecture, students learned the process overview in the NASA design definition process and how to optimize the design. License: Creative Comm

From playlist MIT 16.842 Fundamentals of Systems Engineering, Fall 2015

Video thumbnail

Design Optimization: What's Behind It?

Sarah Drewes and Christoph Hahn of MathWorks set up an optimization task for a suspension assembly in Simulink Design Optimization™. They look at the mathematics involved and share best practices to obtain optimal results in an efficient manner. The underlying models are available on MATLA

From playlist MATLAB and Simulink Basics: MATLAB and Simulink Racing Lounge

Video thumbnail

Stanford CS330: Deep Multi-task & Meta Learning I 2021 I Lecture 16

For more information about Stanford's Artificial Intelligence professional and graduate programs visit: https://stanford.io/ai To follow along with the course, visit: http://cs330.stanford.edu/fall2021/index.html To view all online courses and programs offered by Stanford, visit: http:/

From playlist Stanford CS330: Deep Multi-Task & Meta Learning I Autumn 2021I Professor Chelsea Finn

Video thumbnail

Design of a Cooke Triplet | MIT 2.71 Optics, Spring 2009

Design of a Cooke Triplet Instructor: Wonjoon Choi, Ryan Cooper, Qunya Ong, Matthew Smith View the complete course: http://ocw.mit.edu/2-71S09 License: Creative Commons BY-NC-SA More information at http://ocw.mit.edu/terms More courses at http://ocw.mit.edu

From playlist MIT 2.71 Optics, Spring 2009

Video thumbnail

Robust Design Discovery and Exploration in Bayesian Optimization

A Google TechTalk, presented by Ilija Bogunovic, 2022/10/04 BayesOpt Speaker Series - ABSTRACT: Whether in biological design, causal discovery, material production, or physical sciences, one often faces decisions regarding which new data to collect or which experiments to perform. There is

From playlist Google BayesOpt Speaker Series 2021-2022

Video thumbnail

Optimizing a Wind Turbine Blade Pitch Control System

Get a Free Trial: https://goo.gl/C2Y9A5 Get Pricing Info: https://goo.gl/kDvGHt Ready to Buy: https://goo.gl/vsIeA5 Optimize model parameters to meet time-domain design objectives. For more videos, visit http://www.mathworks.com/products/sl-design-optimization/examples.html

From playlist Control System Design and Analysis

Related pages

Polynomial regression | Computer experiment | Analysis of variance | Central composite design | Gauss–Markov theorem | Stochastic approximation | Invariant estimator | Stochastic programming | Differential entropy | Functional (mathematics) | Covariance matrix | Optimal decision | Invariant theory | Quasiconvex function | Response surface methodology | Approximation | Statistical model | Least squares | Blocking (statistics) | Control theory | Discretization | Real number | Probability measure | Parametric model | Charles Sanders Peirce | Contrast (statistics) | Subgradient method | Trace (linear algebra) | Fenchel's duality theorem | Fisher information | Estimation theory | Conical combination | Box–Behnken design | Statistical theory | Adaptive design (medicine) | Convex optimization | Estimation | Replication (statistics) | Optimal control | Global optimization | Expected value | Stochastic optimization | Matrix (mathematics) | Bayesian inference | Glossary of experimental design | Convex function | Admissible decision rule | Linear algebra | Nuisance parameter | Efficiency (statistics) | Determinant | Minimum-variance unbiased estimator | Diagonal | Variance | Robust statistics | George E. P. Box | Entropy (information theory) | Exponential family | Crossover study | Abraham Wald | Design of experiments | Parameter | Coordinate vector | Sequential analysis | Convex analysis | Hadamard's maximal determinant problem | Random assignment | Information theory | Bias of an estimator | System identification | Summary statistics | R (programming language) | Convex conjugate | Linear combination | Legendre transformation | Bayesian experimental design | Support (measure theory) | Invertible matrix