SUN’IY NEYRON TARMOQLARI YORDAMIDA ZAMONAVIY ELEKTR ENERGETIKA TIZIMLARIDA ENERGIYA TEJASH QURILMALARINI TAKOMILLASHTIRISH
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Keywords

Energiya tejash, sun’iy neyron tarmoqlari, boshqaruv tizimi, elektr energetika, optimallashtirish, samaradorlik

Abstract

Ushbu maqolada zamonaviy elektr energetika tizimlarida energiya tejash qurilmalarini optimallashtirish masalalari sun’iy neyron tarmoqlari yordamida o‘rganildi. Tadqiqot davomida nasos stansiyalari va boshqa energiya tejash qurilmalarining ish holati kuzatildi, ularning samaradorligini oshirish uchun boshqaruv algoritmlari ishlab chiqildi.

Tadqiqot natijalari shuni ko‘rsatdiki, neyron tarmoqlari asosida yaratilgan boshqaruv tizimlari energiya tejashni sezilarli darajada oshiradi, qurilmalarni optimal rejimda ishlashga yo‘naltiradi va nosozliklarni oldindan aniqlash imkonini beradi. Shuningdek, maqolada sun’iy neyron tarmoqlarining real tizimlarda qo‘llanishi, an’anaviy boshqaruv usullari bilan solishtirganda afzalliklari va kelajakda keng tatbiq etish imkoniyatlari muhokama qilinadi.

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