2022
DOI: 10.1021/acs.chemmater.2c02924
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Design of Experiments for Nanocrystal Syntheses: A How-To Guide for Proper Implementation

Abstract: The understanding and control of colloidal nanocrystal syntheses are essential for discovery and optimization of desired properties and therefore play a key role in the applications of these materials. Typical one variable at a time (OVAT) methods limit the ability of researchers to achieve such goals by providing one-dimensional insight into a complex, multidimensional experimental domain, wasting precious resources in the process. Design of experiments (DoE) in conjunction with response surface methodology (… Show more

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Cited by 24 publications
(28 citation statements)
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“…DoE screening and optimization matrices were utilized to construct the surrogate model. Despite the inability of the data to be modeled via regression because of its discrete nature, DoE provides an orthogonally balanced experimental sampling of the design space. , This prevents the over- and under-sampling of any one region in the n -dimensional domain, which can occur when other techniques like random sampling are used …”
Section: Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…DoE screening and optimization matrices were utilized to construct the surrogate model. Despite the inability of the data to be modeled via regression because of its discrete nature, DoE provides an orthogonally balanced experimental sampling of the design space. , This prevents the over- and under-sampling of any one region in the n -dimensional domain, which can occur when other techniques like random sampling are used …”
Section: Resultsmentioning
confidence: 99%
“…One solution is to utilize data-driven learning to render synthetic phase maps that allow for rational targeting of materials within the high-dimensional variable space. Because phase is a categorical (or discrete) outcome, regression-based multivariate techniques like design of experiments (DoE) and response surface methodology (RSM) cannot be used because they require continuous outcomes. , Deep learning techniques like convolutional neural networks can map the multidimensional variable space, but they require large data sets that are not feasible when novel chemistry is being employed and/or done in a low-throughput manner. , On the other hand, a trained classification algorithm can handle both smaller data sets and categorical variables, making it a tractable solution to this problem …”
Section: Introductionmentioning
confidence: 99%
“…[ 26–29 ] Here, AI can help to analyze data and to predict suitable synthetic routes, taking experimental data (usually from electron microscopy) into account. [ 30–33 ]…”
Section: Introductionmentioning
confidence: 99%
“…[26][27][28][29] Here, AI can help to analyze data and to predict suitable synthetic routes, taking experimental data (usually from electron microscopy) into account. [30][31][32][33] Here, we present a considerable enhancement of the GAN procedure by introducing image depth information in the form of simulated height maps. This gives the GAN additional information on the particle positions and improves the simulation quality.…”
Section: Introductionmentioning
confidence: 99%
“…Thanks to ELNs, new researchers can easily access current synthesis protocols and also learn what has already been tried within the lab. Last but not least, ELNs represent a huge resource for data-driven discovery, which many materials chemists are pursuing in collaboration with computational scientists. , Using reliable data generated within the same laboratory and under standardized conditions is invaluable for comparison with larger data sets extracted via data mining from the literature, which is challenged by the lack of completeness and reporting standardization across different laboratories . Because ELNs provide the primary interface to research data, an opportunity exists to directly integrate computational approaches in order to automatically derive insights into the data and suggest the next step in the synthesis development.…”
mentioning
confidence: 99%