Determining the Landing Error Scoring System after a Jump by Artificial Intelligence

Sabriye Ercan, Ahmet Ali Süzen, F. Başkurt, Zeliha Başkurt
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Abstract

Objective: The study aims to examine the predictability of the Landing Error Scoring System (LESS) results after the jump with the Adaptive Boosting (AdaBoost) algorithm. Materials and Methods: A model has been developed by artificial intelligence to shorten the scoring system significantly. In the data preprocessing stage, 17 different items contained in the original dataset were reduced to 13. A total of 3790 data items were included in the dataset used in the study, and the dataset was divided into 4 different sub-datasets. AdaBoost was chosen to give the highest accuracy tested in five different machine learning used for regression. The model's reliability was evaluated by testing the proposed AdaBoost model with performance metrics. Results: The error score given by the clinician in the LESS was in the range of 0-86.6%. Recommended AdaBoost model for Sub1, Sub2, Sub3, and Sub4 respectively 98%, 87%, 88%, 89% accuracy has been achieved. Conclusions: The score given to the LESS's 8th, 10th, 16th, and 17th items can be predicted with high accuracy, and the total score can be reached through the model proposed in the research.
用人工智能确定跳伞后的着陆误差评分系统
研究目的本研究旨在通过自适应提升(AdaBoost)算法,检验起跳后着陆误差评分系统(LESS)结果的可预测性。材料和方法:通过人工智能开发了一个模型,以大大缩短评分系统。在数据预处理阶段,原始数据集中包含的 17 个不同项目被减少到 13 个。研究中使用的数据集共包含 3790 个数据项,数据集被分为 4 个不同的子数据集。AdaBoost 被选为在用于回归的 5 种不同机器学习中准确率最高的一种。通过对所提出的 AdaBoost 模型进行性能指标测试,评估了模型的可靠性。结果:临床医生在 LESS 中给出的误差率在 0-86.6% 之间。推荐的 AdaBoost 模型对 Sub1、Sub2、Sub3 和 Sub4 的准确率分别达到了 98%、87%、88% 和 89%。结论通过本研究提出的模型,可以较准确地预测 LESS 的第 8、10、16 和 17 个项目的得分,并得出总分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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