Battery Modelling using Data-Driven Machine Learning | AISC

Published on ● Video Link: https://www.youtube.com/watch?v=32rUTSz7llw



Duration: 55:55
5,577 views
122


For slides and more information on the paper, visit https://ai.science/e/battery-modelling-using-data-driven-machine-learning--L8eQwA8StCpd3Lsh0OGK

Speaker: Gareth Conduit; Host: Sajeda Mokbel

Motivation:
In the field of energy storage, machine learning has recently emerged as a promising modelling approach to determine the state of charge, state of health and remaining useful life of batteries. First, we review the two most studied types of battery models in the literature for battery state prediction: the equivalent circuit and physics-based models. Based on the current limitations of these models, we showcase the promise of various machine learning techniques for fast and accurate battery state prediction. Finally, we highlight the major challenges involved, especially in accurate modelling over length and time, performing in situ calculations and high-throughput data generation. Overall, this work provides insights into real-time, explainable machine learning for battery production, management and optimization in the future.




Other Videos By LLMs Explained - Aggregate Intellect - AI.SCIENCE


2020-11-05Da Xu (Walmart Labs): Inductive Representation Learning on Temporal Graphs | AISC
2020-11-04AI, Democracy, & Disinformation
2020-10-29Application of Bayesian neural networks for aircraft safety | AISC
2020-10-28AI and ML toward Telcom future | AISC
2020-10-27Investing in Emerging Technology & The Nuts & Bolts of How to Raise Money for your Startup | AISC
2020-10-23The People, Politics, & Histories Behind Machine Learning Datasets | AISC
2020-10-23Detecting and Correcting Unfairness in Machine Learning | AISC
2020-10-23Highly Recommended: A Fireside Chat with AISC's Resident Experts on Recommender Systems
2020-10-23A Fireside Chat with AISC NLP experts
2020-10-22Machine Learning in Environmental Science and Prediction: An Overview | AISC
2020-10-22Battery Modelling using Data-Driven Machine Learning | AISC
2020-10-21BERTology Meets Biology: Interpreting Attention in Protein Language Models | AISC
2020-10-20Design for Augmentation (not Automation) | AISC
2020-10-16Genomics with Deep Learning: A Concise Overview | AISC
2020-10-15Designing quantum computers with generative models | AISC
2020-10-15Explainable AI for Time Series - Literature Review | AISC
2020-10-15Towards a Critical Race Methodology in Algorithmic Fairness | AISC
2020-10-14An eye on AI in Healthcare | AISC
2020-10-13Some Salient Issues with Saliency Models | AISC
2020-10-13The Messy Side of AI Products | AISC
2020-10-09Human Aware AI: Reducing Transportation Energy of a City by Influencing Individual Behaviour