PDA

توجه ! این یک نسخه آرشیو شده میباشد و در این حالت شما عکسی را مشاهده نمیکنید برای مشاهده کامل متن و عکسها بر روی لینک مقابل کلیک کنید : پرسش: رسم نمودار بر اساس دو پارامتر



romans
2021/06/17, 12:52
سلام
من یک سری پارامتر تعریف کردیم با شرط و شروط مختلف و در نهایت رسیدم به یک فرمول که بر اساس متغیر t محاسبه میشه که در این جا زمان هست
کسی می تونی من رو راهنمایی کنه که چطوری می تونم با توجه به اعدادمختلف t نمودار رو برای بازه ی زمانی مثلا 4 ثانیه رسم کنم ( مثلا به ازای هر 0.05 محاسبه کنه و توی نمودار بزاره)
نمودارم باید بر اساس b و t باشه برای پارامتر b فرمول نویسی انجام دادم که خودش پارامترهای بیشتری داره

و مقادیر محاسبه شده رو بر اساس b و t توی دو ستون مجزا نشون بده
کسی اگر بتونه توی رسم نمودار b در بازه ی زمانی مثلا 4 ثانیه کمک کنه ممنون میشم

A.saffari1991
2021/07/15, 15:50
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