Kolmogorov Flow
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New discovery upends an 80-year-old theory of turbulence
New discovery upends an 80-year-old theory of turbulence Scientists have found a way to steer the flow of turbulent energy, overturning a long-held rule. - Date: - June 3, 2026 - Source: - University of Pittsburgh - Summary: - Researchers discovered a way to reverse the direction of energy flow in turbulence, challenging a theory that has stood for more than 80 years.
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