This project applies an interpretation of a k-NN algorithm to a library of GPS commuter data for speed prediction. The overall goal is to lay the foundation for a power management protocol for use in electric vehicles with hybrid energy storage.

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Categories

Machine Learning

License

Academic Free License (AFL)

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Additional Project Details

Operating Systems

Windows

Intended Audience

Science/Research

Programming Language

MATLAB

Related Categories

MATLAB Machine Learning Software

Registered

2010-10-29