Abstract

In this article, an improved grey prediction model is proposed to address low-accuracy prediction issue of grey forecasting model. The first step is using a trigonometric function to transform the original data sequence to smooth the data, which is called smoothness of grey prediction model, and then a grey support vector machine model by integrating the improved grey model with support vector machine is introduced. At the initial stage of the model, trigonometric functions and accumulation generation operation can be used to preprocess the data, which enhances the smoothness of the data and reduces the associated randomness. In addition, support vector machine is implemented to establish a prediction model for the pre-processed data and select the optimal model parameters via genetic algorithms. Finally, the data are restored through the ‘regressive generate’ operation to obtain the forecasting data. To prove that the grey support vector machine model is superior to the other models, the battery life data from the Center for Advanced Life Cycle Engineering are selected, and the presented model is used to predict the remaining useful life of the battery. The predicted result is compared to that of grey model and support vector machines. For a more intuitive comparison of the three models, this article quantifies the root mean square errors for these three different models in the case of different ratio of training samples and prediction samples. The results show that the effect of grey support vector machine model is optimal, and the corresponding root mean square error is only 3.18%.

Highlights

  • Lithium-ion battery is an ideal battery in the 21st century

  • Due to the fact that support vector machine (SVM) itself has a strong predicting ability, to demonstrate the effect of the proposed SGMSVM, a further research should be conducted on the predicting results of a single SVM, including determination of the model parameters of SVM, selection of the historical data of different length from the first training data and establishment of forecasting model to predict the rest of the data

  • The results show that the predicting accuracy of smoothness of grey prediction model (SGM)-SVM is higher than that of grey model (GM) and SVM models

Read more

Summary

Introduction

Lithium-ion battery is an ideal battery in the 21st century. Along with the improvement of performance, the battery can be widely applied in many areas.[1]. Keywords Grey forecasting model, trigonometric function, support vector machine, genetic algorithms, root mean square error W Gu et al.[7] proposed a data-driven modelling approach, based on grey system theory, for lithium-ion battery accelerated life testing.

Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.