Close Menu
The Daily PostingThe Daily Posting
  • Home
  • Android
  • Business
  • IPhone
    • Lifestyle
  • Politics
  • Europe
  • Science
    • Top Post
  • USA
  • World
Facebook X (Twitter) Instagram
Trending
  • Jennifer Lopez and Ben Affleck reveal summer plans after Europe trip
  • T20 World Cup: Quiet contributions from Akshar Patel, Kuldeep Yadav and Ravindra Jadeja justify Rohit Sharma’s spin vision | Cricket News
  • The impact of a sedentary lifestyle on health
  • Bartok: The World of Lilette
  • Economists say the sharp rise in the U.S. budget deficit will put a strain on Americans’ incomes
  • Our Times: Williams memorial unveiled on July 4th | Lifestyle
  • Heatwaves in Europe are becoming more dangerous: what it means for travelers
  • Christian Science speaker to visit Chatauqua Institute Sunday | News, Sports, Jobs
Facebook X (Twitter) Instagram
The Daily PostingThe Daily Posting
  • Home
  • Android
  • Business
  • IPhone
    • Lifestyle
  • Politics
  • Europe
  • Science
    • Top Post
  • USA
  • World
The Daily PostingThe Daily Posting
Science

Development of a data science approach for nanoparticle synthesis

thedailyposting.comBy thedailyposting.comFebruary 12, 2024No Comments

[ad_1]

Typically, researchers seeking to synthesize specifically targeted material particles have had to rely on intuition or trial-and-error methods. This approach can be inefficient and requires a significant investment of time and resources.

To overcome the ambiguity of this approach, PNNL researchers harnessed the power of data science and ML techniques to streamline the synthetic development of iron oxide particles. This study chemical engineering journal.

Their approach addressed two critical issues: identifying viable experimental conditions and predicting potential particle properties for a given set of synthesis parameters. The trained model predicts potential particle sizes and phases over a range of experimental conditions and identifies promising and feasible synthesis parameters to explore.

This innovative approach represents a paradigm shift in metal oxide particle synthesis and has the potential to significantly save time and effort spent on ad hoc iterative synthesis approaches. By training an ML model based on careful experimental characterization, this approach demonstrated remarkable accuracy in predicting iron oxide outcomes based on synthesis reaction parameters. The search and ranking algorithms provided reasonable reaction conditions to explore from the input dataset. We also uncovered the previously overlooked importance of the pressure applied during synthesis on the resulting phase and particle size.

For more information:
Juejing Liu et al., Phase and Size Controlled Synthesis of Iron Oxide Particles Using Machine Learning, chemical engineering journal (2023). DOI: 10.1016/j.cej.2023.145216

[ad_2]

Source link

thedailyposting.com
  • Website

Related Posts

Christian Science speaker to visit Chatauqua Institute Sunday | News, Sports, Jobs

June 28, 2024

Hundreds of basketball-sized space rocks hit Mars every year

June 28, 2024

Space Cadet’s Emma Roberts opens up about middle school science trauma

June 28, 2024
Leave A Reply Cancel Reply

ads
© 2025 thedailyposting. Designed by thedailyposting.
  • Home
  • About us
  • Contact us
  • DMCA
  • Privacy Policy
  • Terms of Service
  • Advertise with Us
  • 1711155001.38
  • xtw183871351
  • 1711198661.96
  • xtw18387e4df
  • 1711246166.83
  • xtw1838741a9
  • 1711297158.04
  • xtw183870dc6
  • 1711365188.39
  • xtw183879911
  • 1711458621.62
  • xtw183874e29
  • 1711522190.64
  • xtw18387be76
  • 1711635077.58
  • xtw183874e27
  • 1711714028.74
  • xtw1838754ad
  • 1711793634.63
  • xtw183873b1e
  • 1711873287.71
  • xtw18387a946
  • 1711952126.28
  • xtw183873d99
  • 1712132776.67
  • xtw183875fe9
  • 1712201530.51
  • xtw1838743c5
  • 1712261945.28
  • xtw1838783be
  • 1712334324.07
  • xtw183873bb0
  • 1712401644.34
  • xtw183875eec
  • 1712468158.74
  • xtw18387760f
  • 1712534919.1
  • xtw183876b5c
  • 1712590059.33
  • xtw18387aa85
  • 1712647858.45
  • xtw18387da62
  • 1712898798.94
  • xtw1838737c0
  • 1712953686.67
  • xtw1838795b7
  • 1713008581.31
  • xtw18387ae6a
  • 1713063246.27
  • xtw183879b3c
  • 1713116334.31
  • xtw183872b3a
  • 1713169981.74
  • xtw18387bf0d
  • 1713224008.61
  • xtw183873807
  • 1713277771.7
  • xtw183872845
  • 1713329335.4
  • xtw183874890
  • 1716105960.56
  • xtw183870dd9
  • 1716140543.34
  • xtw18387691b

Type above and press Enter to search. Press Esc to cancel.