ЭЛЕКТРОМИОГРАФИЯ СИГНАЛИНИНГ ФАОЛ ПОТЕНЦИАЛ ЧЕГАРАСИНИ АНИҚЛАШДА ЯНГИЧА ЁНДАШУВ

Authors

  • Зоҳиров Қудратжон Рафиқович Тошкент ахборот технологиялари университети Қарши филиали

Keywords:

электромиография, биосигналлар, актив чегара, частота, стандарт оғиш, ўртача хатолик

Abstract

Ушбу мақолада электромиография сигналининг актив потенциал қисмини аниқлашда янгича усул келтирилган ва бошқа мавжуд алгоритмлар билан солиштирилган. Усулда электромиография сигналининг стандарт оғишини инобатга олинган. Ушбу усул ёрдамида келажакда инсон-машина тизимларини яратишда тезкорликни ва аниқликни таъминлашда фойдаланилади.

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Published

2023-10-09

How to Cite

Зоҳиров , Қ. (2023). ЭЛЕКТРОМИОГРАФИЯ СИГНАЛИНИНГ ФАОЛ ПОТЕНЦИАЛ ЧЕГАРАСИНИ АНИҚЛАШДА ЯНГИЧА ЁНДАШУВ. DIGITAL TRANSFORMATION AND ARTIFICIAL INTELLIGENCE, 1(3), 1–6. Retrieved from https://dtai.tsue.uz/index.php/dtai/article/view/v1i31