Español

Researchers use machine learning to optimize high-power laser experiments

127
2024-05-24 14:21:53
Ver traducción

High intensity and high repetition lasers rapidly and continuously emit powerful bursts of light, capable of emitting multiple times per second. Commercial fusion energy factories and advanced compact radiation sources are common examples of systems that rely on such laser systems. However, humans are a major limiting factor as their response time is insufficient to manage such rapid shooting systems.

To address this challenge, scientists are searching for different ways to leverage the power of automation and artificial intelligence, which have real-time monitoring capabilities and can perform high-intensity operations.

A group of researchers from the Lawrence Livermore National Laboratory (LLNL), the Fraunhofer Laser Technology Institute (ILT), and the Aurora Infrastructure (ELI ERIC) are conducting an experiment at the ELI beamline facility in the Czech Republic to optimize high-power lasers using machine learning (ML).

Researchers trained LLNL's cognitive simulation development ML code on laser target interaction data, allowing researchers to adjust as the experiment progressed. The output is fed back to the ML optimizer, allowing it to fine tune the pulse shape in real time.

The laser experiment lasted for three weeks, each lasting about 12 hours. During this period, the laser fired 500 times at 5-second intervals. After every 120 shots, stop the laser to replace the copper target foil and check the vaporized target.

"Our goal is to demonstrate reliable diagnosis of laser accelerated ions and electrons from solid targets with high intensity and repeatability," said Matthew Hill, chief researcher at LLNL. "With the support of machine learning optimization algorithms' fast feedback to the laser front-end, the total ion yield of the system can be maximized."

Researchers have made significant progress in understanding the complex physics of laser plasma interactions using the most advanced high repetition rate advanced pulse laser system (L3-HAPLS) and innovative ML technology.

So far, researchers have relied on more traditional scientific methods, which require manual intervention and adjustment. With the help of machine learning capabilities, scientists are now able to analyze large datasets more accurately and make real-time adjustments during experiments.

The success of the experiment also highlights the ability of L3-HAPLS, L3-HAPLS is one of the most powerful and fastest high-intensity laser systems in the world. The experiment has proven that L3-HAPLS has excellent performance repeatability, focus quality, and extremely stable alignment.

Hill and his LLNL team spent about a year collaborating with the Fraunhofer ILT and ELI Beamlines teams to prepare for the experiment. The Livermore team utilized several new instruments developed under laboratory led research and development plans, including representative scintillation imaging systems and REPPS magnetic spectrometers.

The lengthy preparation work paid off as the experiment successfully generated reliable data that can serve as the foundation for progress in various fields including fusion energy, materials science, and medical treatment.

GenAI technology has always been at the forefront of scientific innovation and discovery. It is helping researchers break through the boundaries of scientific possibilities. Last week, researchers from MIT and the University of Basel in Switzerland developed a new machine learning framework to reveal new insights into materials science. Last week, artificial intelligence was proven to play an important role in drug discovery.

Source: Laser Net

Recomendaciones relacionadas
  • Renishao provides customized laser ruler solutions for ASML

    Renishao collaborated with ASML to meet a range of strict manufacturing and performance requirements and developed a differential interferometer system for providing direct position feedback in metrology applications. Customized encoder solutions can achieve step wise improvements in speed and throughput.Modern semiconductor technology relies on precise control of various processes used in integra...

    2023-12-14
    Ver traducción
  • Germany's Tongkuai Laser Austria's Parsing Intelligent Factory Completed Expansion

    This month, German laser giant Trumpf completed an expansion project at its smart factory in Pasing, Austria. The opening ceremony was held in the presence of members of the Tongkuai Group family and representatives from the business and political circles. Over the past two years, Tongkuai has invested approximately 40 million euros in the expansion of the factory. The company has built two new...

    2024-09-14
    Ver traducción
  • Aalyria plans to establish a laser link mesh network to quickly transmit data on land, in the air, in the ocean, and in space

    Aalyria is establishing a laser link mesh network to quickly transmit data on land, in the air, in the ocean, and in space. The maritime part of the plan is about to be pushed forward.Recently, this DC based laser communication network company announced the signing of a memorandum of understanding with HICO Investment Group, which focuses on investing in shipping and logistics companies. According...

    2023-10-26
    Ver traducción
  • BOFA launches the latest generation of high-temperature 3D printing filtration technology

    BOFA has consolidated its position as a market leader in additive manufacturing of portable smoke and particle filtration systems with the latest generation of 3D PrintPRO technology designed specifically for high-temperature processes.3D PrintPRO HT focuses on the 230V market and can filter high-temperature particles, gases, and nanoparticles emitted during polymer processing in the printing room...

    2024-04-15
    Ver traducción
  • Tsinghua University makes progress in the field of pre sensing optical computing

    In the era of the Internet of Things, visual image sensors, as key devices in the intelligent society, are embedded in various devices such as mobile communication terminals, smart wearable devices, automobiles, and industrial machines. With the continuous expansion of applications, higher requirements have been put forward for the system power consumption, response speed, safety performance, and ...

    2024-08-05
    Ver traducción