ELEKTR TARMOKLARI O`TKINCHI XOLATLARINI SIMULINK TIZIMIDA XISOBLASH

Abstract

“Elektr tarmoqlari o`tkinchi xolatlarini Simulink tizimida xisoblash”. Ushbu ishda Simulink paketidan foydalangan holda elektr ta'minoti tizimlarini modellashtirish asoslarini taqdim etadi MATLAB dasturi. Simulink to'plami MATLAB dasturining juda mustaqil ilovasi bo'lib, u bilan ishlashda umuman dasturlash tillarini bilish shart emas.  Bu ishni juda osonlashtiradi vaziyatlarni va mumkin bo'lgan ish rejimlarini modellashtirish ustida ishlash elektr ta'minoti tizimlarini ko`rsatadi, ammo ishonchli natijalarga erishish uchun u modellashtirmoqchi bo'lgan jarayonlar fizikasini aniq tushunish va umuman olganda, ular haqida tasavvurga ega bo'lish kerak. Tegishli elementlardan monitor ekranida kerakli virtual elektr zanjirini yaratib, uni bajarishingiz mumkin uni barqaror holat va vaqtinchalik sharoitlarda o'rganish uchun to'liq tahlil qilish. Shu bilan birga, sxemani to'g'ri yig'ish bilan tadqiqot natijalari real sxemadagi tadqiqotlar natijalariga to'g'ri keladi. Simulyatsiya modellashtirish ba'zan bir qator laboratoriya ishlarini bajarish uchun mo'ljallangan ba'zi zamonaviy ko'p maqsadli laboratoriya stendlarida ishlashdan ko'ra yanada aniqroq va aniqroq bo'lishi mumkin.

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