How to fit a model to experimental data #2984
manishkothakonda
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You might want to try pybamm-param, which is a package for fitting PyBaMM models to data. Note that the package is under development so is neither stable nor well-tested at the moment. We can not advise on which parameters to fit, as this is a research question. |
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I am attaching a screenshot of the data I am working on here, which is constant discharge data of a 10Ah battery from 100% SOC to 0% SOC for a 0.1C discharge rate for a temperature of 40°C
I have other data in the spreadsheet related to 10Ah battery from 100% SOC to 0% SOC for a 0.2C, and 1C discharge rate for a temperature of 40°C, 25°C, 5°C, and -25°C,
I would like some assistance on what path could I take to fit this data into a model, and the parameters to optimize.
I would like to evaluate the fitted battery model to 1C constant current discharge from 100% SOC at an ambient temperature of -25°C for the following time periods in seconds: t = 0, 20, 40, 60, 80, 100, …, 3000, 3020, 3040, 3060, 3080, 3100
This is my first time using PyBaMM and I am an adept user of Python.
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