Publication: Embedded Dense Neural Networks for Battery Cyclability Prediction on Automotive Microcontroller Devices
No Thumbnail Available
Open/View Files
Date
2021-06-03
Authors
Published Version
Published Version
Journal Title
Journal ISSN
Volume Title
Publisher
The Harvard community has made this article openly available. Please share how this access benefits you.
Citation
Rotaru, Adriana. 2021. Embedded Dense Neural Networks for Battery Cyclability Prediction on Automotive Microcontroller Devices. Bachelor's thesis, Harvard College.
Research Data
Abstract
Recent increase in energy demand has resulted in an upsurge of interest in developing efficient battery storage systems and designing scalable machine learning models that predict the performance of these batteries. This paper explores the development of a testing methodology in the context of accurately predicting future battery performance using machine learning. In particular, I propose a Dense Neural Network Model that can predict battery life using data from the first 50 cycles in the battery life. The model has an accuracy of 91.43% and is 1 − 2 orders of magnitude smaller in size than baseline models proposed in the literature, which allows it to be deployed on a SPC584B-DIS board that runs on a 32-bit e200z4 power architecture and 2MB flash memory. This paper also describes and implements extensive feature extraction based on Principal Component Analysis, using knowledge of the chemical and physical processes that occur during battery degradation. I suggest a methodology for reducing the model size using quantization to fit the memory constraints of the board, and for deploying and running the model on-device for energy- and memory-efficient inferences.
Description
Other Available Sources
Keywords
Batteries, Embedded Devices, Energy, Machine Learning, Computer science, Physics
Terms of Use
This article is made available under the terms and conditions applicable to Other Posted Material (LAA), as set forth at Terms of Service