Dissertation, Malaysia Fast Energy Generation Prediction Using Automated Solar PV System Design Optimization
Title: Fast Energy Generation Prediction Using Automated Solar PV System Design Optimization.
A dissertation does not require novelty.
Description
To create an app. Based on an area (input), the app should be able to calculate the number of solar panels needed and the total energy generated. but there might be another add-on required. for now
I need a progress report to be done, due on 25/4/22. The dateline for my dissertation is mid of august. The platform used to create the design is Matlab. this is the initial stage. Later on, it should be an app that is downloadable to devices. The solar panels used should comply with Malaysia’s standard solar panels.
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