Home Technology peripherals AI Eight mysterious radio signals from alien planets were detected by a new AI algorithm and confirmed by analysis.

Eight mysterious radio signals from alien planets were detected by a new AI algorithm and confirmed by analysis.

May 08, 2023 pm 07:49 PM
AI ai new algorithm

On February 21, astronomers discovered eight "suspicious" radio signals, which they said may be evidence of "technological life beyond Earth."

AI 新算法检测到八个神秘无线电信号,分析显示来自外星球

A team of experts led by University of Toronto student Peter Ma developed a new artificial intelligence algorithm using observations of 820 stars using the Green Bank Telescope in West Virginia. Finally, the algorithm helped them discover these signals.

According to IT House, the artificial intelligence algorithm uses machine learning to distinguish signals caused by humans - such as signals from GPS satellites and mobile phones, and alien signals. Due to interference, these eight suspicious signals were not detected in past observations by the Green Bank Telescope.

"We need to distinguish exciting radio signals in space from those coming from Earth," Ma declared in his paper, published late last month in the journal Nature Astronomy . He said that while these eight signals were not conclusive evidence of life beyond Earth, they were certainly unexplainable.

AI 新算法检测到八个神秘无线电信号,分析显示来自外星球

Researchers created this graphic showing these eight strange signals

The vast majority of signals detected by our telescopes come from Earth, the reason why these eight signals may come from alien planets is because they are "narrowband", while signals caused by humans are often "broadband". Additionally, these signals have a "slope," meaning the signal's source has some acceleration relative to our antenna, so it cannot come from Earth.

These results greatly illustrate the power of applying modern machine learning and computer vision methods to data analysis in astronomy, and their large-scale application will be transformative to the science of radio technology signatures.

Peter Ma hopes to use artificial intelligence algorithms to examine more stars and a wider range of space, and ultimately hopes to expand this work to examine 1 million stars through the MeerKAT telescope in South Africa. He believes this work will help speed up our efforts to answer the question: Are we alone in the universe?

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