Magnetized Fast Isochoric Laser Heating for Efficient Creation of Ultra-High-Energy-Density States
Shohei Sakata, Seungho Lee, Tomoyuki Johzaki, Hiroshi Sawada, Yuki, Iwasa, Hiroki Morita, Kazuki Matsuo, King Fai Farley Law, Akira Yao, Masayasu, Hata, Atsushi Sunahara, Sadaoki Kojima, Yuki Abe, Hidetaka Kishimoto, Aneez, Syuhada, Takashi Shiroto, Alessio Morace, Akifumi Yogo

TL;DR
This paper demonstrates that applying a strong magnetic field to guide relativistic electron beams significantly improves laser-to-core energy coupling in fast isochoric laser heating, advancing the potential for inertial confinement fusion ignition.
Contribution
The study introduces magnetized fast isochoric heating, showing enhanced energy coupling and visualizing guided electron transport, which could lead to higher efficiency in fusion ignition schemes.
Findings
Achieved 7.7% energy coupling with small core density.
Visualized guided electron transport using Cu-Kα imaging.
Model predicts >15% coupling for larger, ignition-scale cores.
Abstract
The quest for the inertial confinement fusion (ICF) ignition is a grand challenge, as exemplified by extraordinary large laser facilities. Fast isochoric heating of a pre-compressed plasma core with a high-intensity short-pulse laser is an attractive and alternative approach to create ultra-high-energy-density states like those found in ICF ignition sparks. This avoids the ignition quench caused by the hot spark mixing with the surrounding cold fuel, which is the crucial problem of the currently pursued ignition scheme. High-intensity lasers efficiently produce relativistic electron beams (REB). A part of the REB kinetic energy is deposited in the core, and then the heated region becomes the hot spark to trigger the ignition. However, only a small portion of the REB collides with the core because of its large divergence. Here we have demonstrated enhanced laser-to-core energy coupling…
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