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: 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

kazamie
2021/12/20, 22:46
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

kazamie
2021/12/20, 23:35
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

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