The 7th International Conference on Next Generation Computing 2021 (2021.11)바로가기
페이지
pp.152-154
저자
Muhammad Munsif, Noman Khan, Tanveer Hussain, Muhammad Sajjad, Mi Young Lee
언어
영어(ENG)
URL
https://www.earticle.net/Article/A448031
원문정보
초록
영어
Renewable energies use clean sources for energy generation and have the potential to balance the supply and demand of power. One of the best ways to save energy for high-demand time is to preserve it in a battery energy storage system (BESS). Various methods are presented in the last two decades for battery state of charge (SOC) estimation, however, most of them are focused only on a single battery pack and use data without accurate preprocessing and feature selection strategy. Therefore, in this paper, we conduct a comparative analysis of machine learning (ML) models with a specific preprocessing strategy and suggest a high performer model for battery rack SOC estimation. First, we preprocess the data by cleaning, normalizing, selecting important attributes, and then split it into training and testing sets. Next, four ML models are trained using the training data for SOC estimation, and finally, for better evaluation, each model is evaluated on the testing data using various error metrics. After comprehensive experiments, we suggest multilayer perceptron (MLP) due to high performance for batteries rack SOC estimation.
목차
Abstract I. INTRODUCTION II. LITERATURE REVIEW III. THE PROPOSED CHARGE ESTIMATION METHOD A. Preprocessing B. Models Training C. Evaluation IV. EXPERIMENTAL RESULTS A. Dataset B. Results V. CONCLUSION ACKNOWLEDGMENT REFERENCES
키워드
battery energy storage systemmachine learningrenewable energiesstate of chargepower generation
저자
Muhammad Munsif [ Islamia College Peshawar Peshawar, Pakistan ]
Noman Khan [ Sejong University Seoul, Republic of Korea ]
Tanveer Hussain [ Sejong University Seoul, Republic of Korea ]
Muhammad Sajjad [ Islamia College Peshawar Peshawar, Pakistan ]
Mi Young Lee [ Sejong University Seoul, Republic of Korea ]