Machine learning improves particle accelerator diagnostics

Operators of Jefferson Lab’s primary particle accelerator are getting a new tool to help them quickly address issues that can prevent it from running smoothly. The machine learning system has passed its first two-week test, correctly identifying glitchy accelerator components and the type of glitches they’re experiencing in near-real-time. An analysis of the results of the first field test of the custom-built machine learning system was recently published.

Source: sciencedaily.com

Related posts

Infertility treatment doubles the risk of postpartum heart disease

Scientists want to know how the smells of nature benefit our health

Killer whales breathe just once between dives, study confirms