TISHLI QUTILI PAXTA TOZALASH MASHINASINING HOLATINI BASHORATLI KUZATUV UCHUN FIZIKAGA ASOSLANGAN GIBRID MODELLASHTIRISH
Mualliflar:
Annotatsiya Aylanma mexanizmlarning ishonchliligi sanoat samaradorligining asosiy tayanchi sifatida qolmoqda, ayniqsa paxta tozalash korxonalarida, bu yerda paxta tozalash mashinalari o‘zgaruvchan mexanik yuklamalar ostida faoliyat yuritadi. Transmissiyadagi kutilmagan nosozliklar ishlab chiqarishdagi jiddiy zararlar va energiya sarfini oshirishga sabab bo‘lishi mumkin. Ushbu ishda 75 kVt quvvatli asinxron motor bilan ishlaydigan tishli qutili paxta tozalash mashinasining holatini bashoratli monitoring qilish uchun fizik tamoyillarga asoslangan gibrid model taklif etiladi. Kalit so'zlar: bashoratli texnik xizmat ko'rsatish, gibrid modellashtirish, tebranish diagnostikasi, vites qutisi dinamikasi, Kalman filtri, holatni kuzatish, paxta tozalash mashinasi, sanoat tahlili.
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