Abstract

Several researchers have developed intelligent medical devices to support the systems and further to enhance the ability to diagnose and predict heart diseases. However, there are few studies that look at the capabilities of ensemble methods in developing a heart disease detection and prediction model. In this study, the researchers assessed that how to use ensemble model, which proposes a more stable performance than the use of base learning algorithm and these leads to better results than other heart disease prediction models. The University of California, Irvine (UCI) Machine Learning Repository archive was used to extract patient heart disease data records. To achieve the aim of this study, the researcher developed the meta-algorithm. The ensemble model is a superior solution in terms of high predictive accuracy and diagnostics output reliability, as per the results of the experiments. An ensemble heart disease prediction model is also presented in this work as a valuable, cost-effective, and timely predictive option with a user-friendly graphical user interface that is scalable and expandable. From the finding, the researcher suggests that Bagging is the best ensemble classifier to be adopted as the extended algorithm that has the high prediction probability score in the implementation of heart disease prediction.

Highlights

  • In the modern era, human life is dependent on new electronic devices

  • If we take a good look at the periodic table, we will be ended up with a lot of elements that are used in energy storage batteries

  • Energy can be stored in batteries, fuel cells, and capacitors

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Summary

Introduction

Human life is dependent on new electronic devices. Electronic devices like mobile, laptop, camera, cars, machines, and many other devices are dependent on energy. Because it has low cost and cathode which has 239 mAh/g initial discharge gives a high negative reduction at -2.356V, the capacity.it becomes a much higher battery that high volumetric energy density of 3832mAh cm-3 and standard class of safety operation. Potassium Based Material K-ions batteries are used for stationary energy storage as potassium resources are much abundant in the world.

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