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: مشکل در درونیابی
nimashahbazi
2021/12/20, 22:37
با سلام و خسته نباشید
من تعداد زیادی داده دارم که مربوط به رکورد زلزله هست زمان بندی داده ها متغیره و من میخوام ثابت بشه یعنی به ترتیب 0 -0.01-0.02-0.03 و... بشه یعنی یک صدم یک صدم افزایش پیدا کنه ... از دستور forecast استفاده کردم اشتباه شد یه جا خوندم باید توابع match و ofset ترکیب بشه ... اما نتونستم انجام بدم ... ممنون میشم راهنمایی کنید و اگه میشه روی فایل اکسل انجامش بدید لطفا
با سلام و خسته نباشید
من تعداد زیادی داده دارم که مربوط به رکورد زلزله هست زمان بندی داده ها متغیره و من میخوام ثابت بشه یعنی به ترتیب 0 -0.01-0.02-0.03 و... بشه یعنی یک صدم یک صدم افزایش پیدا کنه ... از دستور forecast استفاده کردم اشتباه شد یه جا خوندم باید توابع match و ofset ترکیب بشه ... اما نتونستم انجام بدم ... ممنون میشم راهنمایی کنید و اگه میشه روی فایل اکسل انجامش بدید لطفا
بیشتر توضیح بدهید، شما که خودتان در ستون e انجام داده اید
nimashahbazi
2021/12/20, 23:03
بیشتر توضیح بدهید، شما که خودتان در ستون e انجام داده اید
ستون e اعدادی از محور افقی هستند که به انها نیاز دارم در واقع ستون a محور افقی و ستون b محور قایم هست و ستون e مقادیری از ستون a هست که مقدار متناظر انها را در ستون b نیاز دارم
- - - Updated - - -
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این نمودار داده ها هست ... برای وارد کردن به نرم افزار های خاص باید گام زمانی ثابت باشه و ورودی نرم افزار مقدار گام افزایشی زمان رو از من میخواد برای مثال میگیم هر 0.01 ثانیه مقادیر تغییر میکنند23435
در تخصص من نیست ولی قبل از توضیحات فکر می کردم با تناسب درست میشه و یک فایل آماده کردم در ستون f
nimashahbazi
2021/12/21, 01:34
در تخصص من نیست ولی قبل از توضیحات فکر می کردم با تناسب درست میشه و یک فایل آماده کردم در ستون f
ممنونم از لطفتون
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