QUYOSH ELEMENTLARI UCHUN Sb2(SxSe1-x)3-YUPQA QATLAMLARI OLISH JARAYONLARINING TAHLILLARI
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Sb2(SxSe1-x)3 yupqa qatlamlarini ishlab chiqarish jarayoni yupqa qatlamning fizik xususiyatlari va quyosh elementlari
samaradorligida muhim rol o‘ynaydi. Ishlab chiqarish jarayonini optimallashtirish va qurilma samaradorligini oshirish uchun o‘sish
sharoitlari parametrlari o‘rtasidagi o‘zaro ta’sirni o‘rganish vaqt va resurslarni talab qiladi. Ushbu ishda biz Sb2(SxSe1-x)3 yupqa
qatlamlarini ishlab chiqarish jarayonini optimallashtirish uchun tajribaviy ma’lumotlardan foydalanib, mashinaviy o‘qitish usullari
yordamida tahlil qilindi. Optimallashtirilgan ML modellari VOC ni prognoz qilishda o‘rtacha kvadratik xato 1% va Pearson
koeffitsienti r 0.9 ga yuqori aniqlikni namoyish etadi.
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