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How do you create a calibration curve for electric balance? 


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To create a calibration curve for an electronic balance, several methods can be used. One method involves using a calibration data acquisition unit to acquire optical spectra and perform independent component analysis to obtain component calibration spectra. The correlation degree between the component calibration spectrum and the evaluation spectrum is then calculated, and a component calibration spectrum causing the greatest comprehensive evaluation value is selected as the target component calibration spectrum . Another method involves placing a beaker containing pure water on the balance tray and immersing a cylinder in the water. The volume of the cylinder immersed in the water is used to calculate the force applied to the balance, which is then used as the standard value for calibration . Additionally, a method involves determining the distance between the end stops of the transfer mechanism in the calibration arrangement and using this information to calculate the rest position and calibration position .

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The paper does not provide information on how to create a calibration curve for an electronic balance.
The electronic balance calibration method involves immersing a cylinder in pure water, measuring the force applied to the balance, and using it as the standard value for calibration.
The paper does not provide information on creating a calibration curve for an electric balance.
The paper does not provide information on creating a calibration curve for an electronic balance.
The provided information does not mention the creation of a calibration curve for an electronic balance.

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